The intent of this site to assist people with health issues that are, or could be, microbiome connected. There are MANY conditions known to have the severity being a function of the microbiome dysfunction, including Autism, Alzheimer’s, Anxiety and Depression. See this list of studies from the US National Library of Medicine. Individual symptoms like brain fog, anxiety and depression have strong statistical association to the microbiome. A few of them are listed here.
The base rule of the site is to avoid speculation, keep to facts from published studies and to facts from statistical analysis(with the source data available for those wish to replicate the results). Internet hearsay is avoid like the plague it is.
This is derived from “Asymptomatic: No Health Issues” Odd-Ratio Model (See this post). These ranges should apply to any test. It applies to only bacteria that are reported by the test.
If you are interested in the mathematics see my prior posts.
Tax_Name
Tax_Rank
(No column name)
Bacteroidota/Chlorobiota group
clade
Above 10.6%ile
delta/epsilon subdivisions
clade
Above 9.4%ile
Bacteria candidate phyla
clade
Above 54%ile
PVC group
clade
Above 6.7%ile
FCB group
clade
Above 10.6%ile
Terrabacteria group
clade
Above 10.6%ile
Cyanobacteriota/Melainabacteria group
clade
Above 13.5%ile
Methanomada group
clade
Above 5.9%ile
Balneolia
class
Above 49.4%ile
Chitinophagia
class
Above 15%ile
Desulfobacteria
class
Above 26.7%ile
Cyanophyceae
class
Above 12.3%ile
Desulfovibrionia
class
Above 8.9%ile
Ignavibacteria
class
Above 59.5%ile
Cytophagia
class
Above 15.8%ile
Negativicutes
class
Above 10.5%ile
Lentisphaeria
class
Above 25%ile
Tissierellia
class
Above 6.3%ile
Bacteroidia
class
Above 10.4%ile
Verrucomicrobiia
class
Above 2.3%ile
Fibrobacteria
class
Above 1.1%ile
Dehalococcoidia
class
Above 8.9%ile
Caldilineae
class
Above 4%ile
Erysipelotrichia
class
Above 10.6%ile
Holophagae
class
Above 3.4%ile
Synergistia
class
Above 0.8%ile
Acidimicrobiia
class
Above 2.1%ile
Coriobacteriia
class
Above 10.3%ile
Bacilli
class
Above 10.5%ile
Flavobacteriia
class
Above 6.1%ile
Sphingobacteriia
class
Above 9.6%ile
Methanobacteria
class
Above 5.9%ile
Clostridia
class
Above 10.4%ile
Gammaproteobacteria
class
Above 9.4%ile
Actinomycetes
class
Above 10.6%ile
Alphaproteobacteria
class
Above 5.7%ile
Betaproteobacteria
class
Above 9.9%ile
Deltaproteobacteria
class
Above 8.6%ile
Myxococcia
class
Above 1.6%ile
Lysobacteraceae
family
Above 3.9%ile
Bifidobacteriaceae
family
Above 7.7%ile
Veillonellaceae
family
Above 9.7%ile
Clostridiaceae
family
Above 10.5%ile
Lactobacillaceae
family
Above 9.1%ile
Halomonadaceae
family
Above 5.3%ile
Actinomycetaceae
family
Above 5.2%ile
Mycoplasmataceae
family
Above 8.3%ile
Spiroplasmataceae
family
Above 48.8%ile
Acholeplasmataceae
family
Above 9.6%ile
Methanobacteriaceae
family
Above 5.9%ile
Streptococcaceae
family
Above 10%ile
Corynebacteriaceae
family
Above 7.4%ile
Moraxellaceae
family
Above 0.8%ile
Enterobacteriaceae
family
Above 6.9%ile
Pasteurellaceae
family
Above 3.9%ile
Bacteroidaceae
family
Above 10.4%ile
Chromatiaceae
family
Above 4.5%ile
Lachnospiraceae
family
Above 10.7%ile
Peptostreptococcaceae
family
Above 10.5%ile
Eubacteriaceae
family
Above 3.7%ile
Peptococcaceae
family
Above 7.1%ile
unclassified Clostridiales
family
Above 49.8%ile
Thermoanaerobacteraceae
family
Above 2.7%ile
Bacillaceae
family
Above 1.7%ile
Planococcaceae
family
Above 15.8%ile
Paenibacillaceae
family
Above 3.1%ile
Thermoactinomycetaceae
family
Above 9.5%ile
Piscirickettsiaceae
family
Above 1.3%ile
Rikenellaceae
family
Above 26.8%ile
Porphyromonadaceae
family
Above 7.4%ile
Prevotellaceae
family
Above 6.9%ile
unclassified Burkholderiales
family
Above 22.7%ile
Cytophagaceae
family
Above 12.4%ile
Erysipelotrichaceae
family
Above 10.6%ile
Pseudomonadaceae
family
Above 15.7%ile
Acidimicrobiaceae
family
Above 2.4%ile
Nocardioidaceae
family
Above 18.2%ile
Microbacteriaceae
family
Above 18.8%ile
Sphingobacteriaceae
family
Above 9.8%ile
Coriobacteriaceae
family
Above 10.1%ile
Syntrophomonadaceae
family
Above 3.6%ile
Hyphomonadaceae
family
Above 37.4%ile
Rhodocyclaceae
family
Above 1.5%ile
Enterococcaceae
family
Above 1.4%ile
Rhodospirillaceae
family
Above 4.1%ile
Sphingomonadaceae
family
Above 12.2%ile
Flavobacteriaceae
family
Above 6.2%ile
Halobacteroidaceae
family
Above 36.6%ile
Holophagaceae
family
Above 3.3%ile
Kiloniellaceae
family
Above 2.8%ile
Bacillales Family X. Incertae Sedis
family
Above 10.2%ile
Gemellaceae
family
Above 0.6%ile
Ruminococcaceae
family
Above 11.1%ile
Eubacteriales Family XII. Incertae Sedis
family
Above 2.6%ile
Eubacteriales Family XIII. Incertae Sedis
family
Above 10.1%ile
Marinilabiliaceae
family
Above 57.3%ile
Cyclobacteriaceae
family
Above 29%ile
Chitinophagaceae
family
Above 15.6%ile
Caldilineaceae
family
Above 4%ile
Desulfarculaceae
family
Above 23.8%ile
Victivallaceae
family
Above 35.8%ile
Verrucomicrobiaceae
family
Above 1.4%ile
Desulfovibrionaceae
family
Above 8.5%ile
Desulfomicrobiaceae
family
Above 9%ile
Desulfobacteraceae
family
Above 25.9%ile
Oscillospiraceae
family
Above 10.4%ile
Akkermansiaceae
family
Above 3.5%ile
Peptoniphilaceae
family
Above 6.5%ile
Eggerthellaceae
family
Above 10.1%ile
Melioribacteraceae
family
Above 71.4%ile
Proteinivoraceae
family
Above 4.2%ile
Acidaminococcaceae
family
Above 6.4%ile
Christensenellaceae
family
Above 11.5%ile
Sutterellaceae
family
Above 9.7%ile
Desulfurisporaceae
family
Above 11.3%ile
Coprobacillaceae
family
Above 5.6%ile
Turicibacteraceae
family
Above 6.8%ile
Tepidimicrobiaceae
family
Above 48%ile
Kribbellaceae
family
Above 2.6%ile
Azospirillaceae
family
Above 8.6%ile
Rhodovibrionaceae
family
Above 17.8%ile
Thalassospiraceae
family
Above 19.6%ile
Thermohalobacteraceae
family
Above 80.4%ile
Metamycoplasmataceae
family
Above 1.9%ile
Spirosomataceae
family
Above 1.6%ile
Desulfitobacteriaceae
family
Above 11%ile
Desulfotomaculaceae
family
Above 1.9%ile
Tissierellaceae
family
Above 34.5%ile
Sporomusaceae
family
Above 6.7%ile
Balneolaceae
family
Above 49.5%ile
Hungateiclostridiaceae
family
Above 5.6%ile
Odoribacteraceae
family
Above 8.7%ile
Pectobacteriaceae
family
Above 25.9%ile
Morganellaceae
family
Above 20%ile
Barnesiellaceae
family
Above 24.7%ile
Dysgonomonadaceae
family
Above 10.8%ile
Tannerellaceae
family
Above 9.6%ile
Desulfofarcimen
genus
Above 9.3%ile
Desulfohalotomaculum
genus
Above 35.9%ile
Clostridioides
genus
Above 45.8%ile
Hungateiclostridium
genus
Above 37.3%ile
Mediterraneibacter
genus
Above 18%ile
Schaalia
genus
Above 6%ile
Anaerocolumna
genus
Above 66.8%ile
Hathewaya
genus
Above 11%ile
Segatella
genus
Above 15.4%ile
Hoylesella
genus
Above 0.7%ile
Leyella
genus
Above 5.5%ile
Paracholeplasma
genus
Above 71.1%ile
Oleidesulfovibrio
genus
Above 54.4%ile
Limosilactobacillus
genus
Above 13.2%ile
Thomasclavelia
genus
Above 23.3%ile
Christensenella
genus
Above 11.9%ile
Pseudoflavonifractor
genus
Above 24.6%ile
Melioribacter
genus
Above 73.3%ile
Murdochiella
genus
Above 34.1%ile
Alloprevotella
genus
Above 4.3%ile
Flavonifractor
genus
Above 31.8%ile
Phocaeicola
genus
Above 10.1%ile
Cellulosilyticum
genus
Above 71.6%ile
Romboutsia
genus
Above 25.9%ile
Terrisporobacter
genus
Above 32.4%ile
Intestinibacter
genus
Above 41.9%ile
Erysipelatoclostridium
genus
Above 34%ile
Ruminiclostridium
genus
Above 13.6%ile
Brassicibacter
genus
Above 83.9%ile
Fretibacterium
genus
Above 13.3%ile
Candidatus Soleaferrea
genus
Below 47.5%ile
Kosakonia
genus
Above 14.3%ile
Coprobacter
genus
Above 26.9%ile
Intestinimonas
genus
Above 30.4%ile
Fusicatenibacter
genus
Above 35.9%ile
Acetatifactor
genus
Below 52.3%ile
Eisenbergiella
genus
Above 31.1%ile
Aestuariispira
genus
Below 24.8%ile
Dielma
genus
Above 23.1%ile
Senegalimassilia
genus
Above 26.6%ile
Peptoclostridium
genus
Above 53.5%ile
Holdemanella
genus
Above 9.7%ile
Ezakiella
genus
Above 44.4%ile
Aminicella
genus
Below 30.1%ile
Hungatella
genus
Above 66.5%ile
Herbinix
genus
Above 36.5%ile
Fenollaria
genus
Above 71.9%ile
Pseudoscardovia
genus
Above 75.6%ile
Casaltella
genus
Above 49.4%ile
Faecalibacterium
genus
Above 10.3%ile
Alistipes
genus
Above 29%ile
Akkermansia
genus
Above 3.1%ile
Gemmiger
genus
Below 45.3%ile
Anaerostipes
genus
Above 10.6%ile
Acetoanaerobium
genus
Above 49.4%ile
Dorea
genus
Above 10.7%ile
Sedimentibacter
genus
Above 2.8%ile
Turicibacter
genus
Above 7.4%ile
Marvinbryantia
genus
Above 31.9%ile
Ethanoligenens
genus
Above 25.8%ile
Hespellia
genus
Above 27.1%ile
Anaerotruncus
genus
Above 10.8%ile
Anaerospora
genus
Above 54.1%ile
Acetanaerobacterium
genus
Above 8.6%ile
Odoribacter
genus
Above 8.7%ile
Tepidimicrobium
genus
Above 50%ile
Oribacterium
genus
Above 20.6%ile
Subdoligranulum
genus
Above 35.2%ile
Gracilibacter
genus
Above 77.7%ile
Henriciella
genus
Above 42.8%ile
Oscillibacter
genus
Above 29.1%ile
Lactonifactor
genus
Above 30.5%ile
Adlercreutzia
genus
Above 8.4%ile
Pelosinus
genus
Above 36.2%ile
Parabacteroides
genus
Above 9.7%ile
Niabella
genus
Above 18.1%ile
Barnesiella
genus
Above 21.5%ile
Howardella
genus
Above 6.6%ile
Proteiniborus
genus
Below 35.9%ile
Moryella
genus
Above 22.2%ile
Desulfurispora
genus
Above 11.3%ile
Blautia
genus
Above 10.7%ile
Butyricimonas
genus
Above 4.2%ile
Parasutterella
genus
Above 29.4%ile
Enterorhabdus
genus
Above 27.3%ile
Robinsoniella
genus
Above 8.4%ile
Gordonibacter
genus
Above 26.9%ile
Anaerosporobacter
genus
Above 40.3%ile
Propioniferax
genus
Below 52.3%ile
Holdemania
genus
Above 8.2%ile
Acidaminobacter
genus
Above 0.5%ile
Hallella
genus
Above 1.4%ile
Anaerofilum
genus
Above 3.5%ile
Pantoea
genus
Above 21.1%ile
Pseudobutyrivibrio
genus
Above 11.2%ile
Anaerobranca
genus
Above 1.2%ile
Johnsonella
genus
Above 13.6%ile
Sutterella
genus
Above 6.9%ile
Catonella
genus
Above 17.5%ile
Paenibacillus
genus
Above 10.5%ile
Caloramator
genus
Above 12.9%ile
Filifactor
genus
Above 7%ile
Geothrix
genus
Above 1.5%ile
Sporobacter
genus
Above 23.4%ile
Weissella
genus
Above 13.3%ile
Facklamia
genus
Above 60.7%ile
Brenneria
genus
Above 31.6%ile
Slackia
genus
Above 3.2%ile
Eggerthella
genus
Above 1.6%ile
Pedobacter
genus
Above 3.6%ile
Halochromatium
genus
Above 3%ile
Mogibacterium
genus
Above 1.8%ile
Papillibacter
genus
Above 31.1%ile
Coprobacillus
genus
Above 1%ile
Thermicanus
genus
Above 9.8%ile
Collinsella
genus
Above 12.2%ile
Olsenella
genus
Above 26.9%ile
Granulicatella
genus
Above 6%ile
Parasporobacterium
genus
Above 19.5%ile
Oscillospira
genus
Above 10.7%ile
Victivallis
genus
Above 35.1%ile
Anaerococcus
genus
Above 10.1%ile
Thalassospira
genus
Above 17.9%ile
Lachnobacterium
genus
Above 14.5%ile
Finegoldia
genus
Above 10.6%ile
Dysgonomonas
genus
Above 10.4%ile
Peptoniphilus
genus
Above 4.4%ile
Varibaculum
genus
Above 5.8%ile
Kribbella
genus
Above 2.6%ile
Porphyromonas
genus
Above 4%ile
Prevotella
genus
Above 5.3%ile
Syntrophomonas
genus
Above 3%ile
Desulfovibrio
genus
Above 4%ile
Desulfomicrobium
genus
Above 9.5%ile
Acidaminococcus
genus
Above 7.3%ile
Megasphaera
genus
Above 3.9%ile
Shigella
genus
Above 42.9%ile
Butyrivibrio
genus
Above 4.9%ile
Roseburia
genus
Above 10.5%ile
Oxalobacter
genus
Above 5%ile
Bacteroides
genus
Above 10.3%ile
Haemophilus
genus
Above 5.7%ile
Kluyvera
genus
Above 70.8%ile
Proteus
genus
Above 9.1%ile
Azospirillum
genus
Above 8.4%ile
Campylobacter
genus
Above 0.7%ile
Flavobacterium
genus
Above 40.1%ile
Pseudomonas
genus
Above 15.7%ile
Actinomyces
genus
Above 6.9%ile
Bifidobacterium
genus
Above 8.1%ile
Corynebacterium
genus
Above 6.9%ile
Eubacterium
genus
Above 0.9%ile
Bacillus
genus
Above 4.8%ile
Clostridium
genus
Above 10.5%ile
Desulfotomaculum
genus
Above 11.5%ile
Sporosarcina
genus
Above 34.2%ile
Lactobacillus
genus
Above 7%ile
Erysipelothrix
genus
Above 9.2%ile
Streptococcus
genus
Above 10%ile
Ruminococcus
genus
Above 18.2%ile
Gemella
genus
Above 0.7%ile
Atopobium
genus
Above 1.6%ile
Methanobrevibacter
genus
Above 3.3%ile
Peptococcus
genus
Above 4.5%ile
Acholeplasma
genus
Above 1.1%ile
Sarcina
genus
Above 17.7%ile
Spiroplasma
genus
Above 49%ile
Mycoplasma
genus
Above 4.9%ile
Halomonas
genus
Above 25%ile
Sphingomonas
genus
Above 20.6%ile
Lachnospira
genus
Above 9.6%ile
Microbacterium
genus
Above 1.3%ile
Acetobacterium
genus
Above 5%ile
Dialister
genus
Above 6.1%ile
Acetivibrio
genus
Above 17.1%ile
Bilophila
genus
Above 10.6%ile
Acetitomaculum
genus
Above 8.8%ile
Veillonella
genus
Above 7.5%ile
Coprococcus
genus
Above 18.3%ile
Phascolarctobacterium
genus
Above 6.7%ile
Bacillota sensu stricto incertae sedis
no rank
Above 64.6%ile
cellular organisms
no rank
Above 1.3%ile
Bacteria incertae sedis
no rank
Above 33.5%ile
Eubacteriales incertae sedis
no rank
Above 8%ile
Oscillospiraceae incertae sedis
no rank
Above 68.7%ile
Peptostreptococcaceae incertae sedis
no rank
Above 4.4%ile
Tissierellia incertae sedis
no rank
Above 11.6%ile
unclassified Streptococcus
no rank
Above 81%ile
unclassified Alistipes
no rank
Above 72.1%ile
unclassified Veillonella
no rank
Above 87.9%ile
unclassified Peptoniphilus
no rank
Above 73.6%ile
unclassified Bacteroides
no rank
Above 76.7%ile
unclassified Blautia
no rank
Above 61.5%ile
unclassified Parabacteroides
no rank
Above 36.5%ile
Chitinophagales
order
Above 15%ile
Balneolales
order
Above 49.4%ile
Acidaminococcales
order
Above 6.5%ile
Veillonellales
order
Above 9.7%ile
Marinilabiliales
order
Above 45.9%ile
Mycoplasmoidales
order
Above 1.8%ile
Hyphomonadales
order
Above 42.3%ile
Moraxellales
order
Above 0.8%ile
Tissierellales
order
Above 6.5%ile
Cellvibrionales
order
Above 9.7%ile
Eggerthellales
order
Above 10.1%ile
Ignavibacteriales
order
Above 60.3%ile
Selenomonadales
order
Above 5.7%ile
Cytophagales
order
Above 15.8%ile
Rhodospirillales
order
Above 3.5%ile
Rhodobacterales
order
Above 25.9%ile
Sphingomonadales
order
Above 17.4%ile
Flavobacteriales
order
Above 5.9%ile
Sphingobacteriales
order
Above 9.6%ile
Desulfovibrionales
order
Above 8.9%ile
Desulfobacterales
order
Above 26.9%ile
Fibrobacterales
order
Above 1.1%ile
Victivallales
order
Above 25.9%ile
Erysipelotrichales
order
Above 10.6%ile
Holophagales
order
Above 3.3%ile
Synergistales
order
Above 0.8%ile
Caldilineales
order
Above 4%ile
Desulfarculales
order
Above 24.3%ile
Verrucomicrobiales
order
Above 2.3%ile
Halanaerobiales
order
Above 21.5%ile
Coriobacteriales
order
Above 10.4%ile
Bifidobacteriales
order
Above 7.7%ile
Mycobacteriales
order
Above 4.3%ile
Streptosporangiales
order
Above 1.6%ile
Acidimicrobiales
order
Above 2.1%ile
Thiotrichales
order
Above 1.8%ile
Pseudomonadales
order
Above 10%ile
Chromatiales
order
Above 8%ile
Lysobacterales
order
Above 7%ile
Alteromonadales
order
Above 6.1%ile
Aeromonadales
order
Above 7.9%ile
Pasteurellales
order
Above 3.9%ile
Burkholderiales
order
Above 9.8%ile
Enterobacterales
order
Above 6.1%ile
Bacteroidales
order
Above 10.4%ile
Eubacteriales
order
Above 10.4%ile
Entomoplasmatales
order
Above 13.1%ile
Acholeplasmatales
order
Above 10.2%ile
Lactobacillales
order
Above 10.4%ile
Oceanospirillales
order
Above 11.5%ile
Mycoplasmatales
order
Above 12.4%ile
Actinomycetales
order
Above 7%ile
Methanobacteriales
order
Above 5.9%ile
Bacillales
order
Above 6.2%ile
Oscillatoriales
order
Above 17.5%ile
Nostocales
order
Above 2%ile
Hyphomicrobiales
order
Above 8.3%ile
Myxococcales
order
Above 1.8%ile
Bacteroidota
phylum
Above 10.4%ile
Cyanobacteriota
phylum
Above 13.6%ile
Pseudomonadota
phylum
Above 10.3%ile
Bacillota
phylum
Above 10.5%ile
Euryarchaeota
phylum
Above 4.2%ile
Candidatus Saccharibacteria
phylum
Above 28.8%ile
Verrucomicrobiota
phylum
Above 6.3%ile
Synergistota
phylum
Above 0.8%ile
Lentisphaerota
phylum
Above 24.1%ile
Chloroflexota
phylum
Above 11%ile
Thermodesulfobacteriota
phylum
Above 6.5%ile
Actinomycetota
phylum
Above 10.3%ile
Ignavibacteriota
phylum
Above 57.9%ile
Myxococcota
phylum
Above 1.6%ile
Balneolota
phylum
Above 42.4%ile
Melioribacter roseus
species
Above 65.1%ile
Fusicatenibacter saccharivorans
species
Above 33.2%ile
Intestinimonas butyriciproducens
species
Above 8.4%ile
Ruminococcus champanellensis
species
Above 63.9%ile
Parabacteroides faecis
species
Above 59.4%ile
Dielma fastidiosa
species
Above 21.5%ile
Coprobacter fastidiosus
species
Above 21.4%ile
Tepidimicrobium xylanilyticum
species
Above 52.3%ile
Bacteroides reticulotermitis
species
Above 85.9%ile
Anaerostipes sp. 5_1_63FAA
species
Above 86.3%ile
Casaltella massiliensis
species
Above 51.8%ile
Anaerococcus provencensis
species
Above 26.2%ile
Blautia stercoris
species
Above 13.6%ile
Blautia faecis
species
Above 35.3%ile
[Lactobacillus] rogosae
species
Below 62.3%ile
Phocaeicola paurosaccharolyticus
species
Above 15.9%ile
Brassicibacter mesophilus
species
Above 80.3%ile
Gemmiger formicilis
species
Below 45.8%ile
Eisenbergiella tayi
species
Above 30.1%ile
Dysgonomonas macrotermitis
species
Above 45.5%ile
Butyricimonas faecihominis
species
Above 31.8%ile
Aestuariispira insulae
species
Below 29.5%ile
Oleidesulfovibrio vietnamensis
species
Above 57%ile
Oribacterium sinus
species
Above 18.4%ile
Akkermansia muciniphila
species
Above 3.9%ile
Dialister invisus
species
Above 1.3%ile
Bifidobacterium longum
species
Above 8.5%ile
Subdoligranulum variabile
species
Above 31.5%ile
Alistipes finegoldii
species
Above 28.7%ile
Phocaeicola massiliensis
species
Above 4.2%ile
Clostridium frigoris
species
Above 2.2%ile
Ethanoligenens harbinense
species
Above 49.2%ile
Bifidobacterium thermacidophilum
species
Above 20%ile
Bacteroides cellulosilyticus
species
Above 14.3%ile
Bacteroides helcogenes
species
Above 34.5%ile
Eubacterium coprostanoligenes
species
Above 82%ile
Anaerosporobacter mobilis
species
Above 31.2%ile
Acholeplasma hippikon
species
Above 6.2%ile
Desulfurispora thermophila
species
Above 11.5%ile
Flavonifractor plautii
species
Above 29.5%ile
Gracilibacter thermotolerans
species
Above 77.2%ile
Mediterraneibacter glycyrrhizinilyticus
species
Below 27%ile
Oscillibacter valericigenes
species
Above 6.2%ile
Phocaeicola dorei
species
Above 7.2%ile
Roseburia inulinivorans
species
Above 26.1%ile
Leyella stercorea
species
Above 5.5%ile
Roseburia faecis
species
Above 8.4%ile
Dialister propionicifaciens
species
Above 25.3%ile
Phocaeicola plebeius
species
Above 11.1%ile
Phocaeicola coprocola
species
Above 14.8%ile
Bacteroides pyogenes
species
Above 78.9%ile
Acetivibrio alkalicellulosi
species
Above 15.2%ile
Parabacteroides goldsteinii
species
Above 1.7%ile
Alistipes onderdonkii
species
Above 64.3%ile
Alistipes shahii
species
Above 26.4%ile
Bacteroides finegoldii
species
Above 7.9%ile
Lactonifactor longoviformis
species
Above 21%ile
Bacteroides graminisolvens
species
Above 11%ile
Barnesiella intestinihominis
species
Above 25.1%ile
Parasutterella excrementihominis
species
Above 29.4%ile
Porphyromonas bennonis
species
Above 6.8%ile
Butyricicoccus pullicaecorum
species
Below 66.3%ile
Alistipes sp. EBA6-25cl2
species
Below 67.6%ile
Bacteroides sp. EBA5-17
species
Below 82.8%ile
Aminicella lysinilytica
species
Below 43.8%ile
Bacteroides sp. 2_2_4
species
Above 59%ile
Gordonibacter pamelaeae
species
Above 29.5%ile
Bifidobacterium bombi
species
Above 27.1%ile
Sutterella parvirubra
species
Above 14%ile
Segatella maculosa
species
Above 1.5%ile
Adlercreutzia equolifaciens
species
Above 6.1%ile
Blautia wexlerae
species
Above 10.7%ile
Howardella ureilytica
species
Above 4.9%ile
Niabella aurantiaca
species
Above 8.3%ile
[Bacteroides] pectinophilus
species
Above 58.7%ile
Phocaeicola coprophilus
species
Above 23.4%ile
Phocaeicola salanitronis
species
Above 11.8%ile
Bacteroides gallinarum
species
Above 13%ile
Pelosinus fermentans
species
Above 38.9%ile
Bacteroides xylanisolvens
species
Above 1.4%ile
Anaerostipes hadrus
species
Above 16%ile
Phocaeicola sartorii
species
Above 12.4%ile
Bacteroides faecis
species
Above 7.9%ile
Bacteroides rodentium
species
Above 16.8%ile
Mediterraneibacter faecis
species
Below 41.2%ile
Bacteroides fluxus
species
Above 10.2%ile
Alistipes indistinctus
species
Above 18.1%ile
Slackia piriformis
species
Above 8.5%ile
Phascolarctobacterium succinatutens
species
Above 1.2%ile
Slackia isoflavoniconvertens
species
Above 12.8%ile
Blautia glucerasea
species
Above 0.5%ile
Collinsella aerofaciens
species
Above 8.4%ile
Thomasclavelia cocleata
species
Below 52.6%ile
[Clostridium] methylpentosum
species
Above 82.7%ile
Segatella albensis
species
Above 21%ile
Bifidobacterium boum
species
Above 48.8%ile
Kluyvera georgiana
species
Above 68.1%ile
Paracholeplasma vituli
species
Above 72.7%ile
Eggerthella lenta
species
Above 4.8%ile
Bacteroides acidifaciens
species
Above 3.7%ile
[Ruminococcus] lactaris
species
Below 67.3%ile
Acidaminobacter hydrogenoformans
species
Above 0.5%ile
Lachnoclostridium phytofermentans
species
Above 50%ile
Holdemania filiformis
species
Above 34.5%ile
Anaerococcus octavius
species
Above 11%ile
Desulfofarcimen acetoxidans
species
Above 15.8%ile
Parabacteroides merdae
species
Above 6.8%ile
Bacteroides stercoris
species
Above 2.1%ile
[Clostridium] viride
species
Above 53.5%ile
Bacteroides caccae
species
Above 9.5%ile
Sporobacter termitidis
species
Above 58%ile
Catonella morbi
species
Above 7.6%ile
Succiniclasticum ruminis
species
Above 24.8%ile
Johnsonella ignava
species
Above 9.9%ile
Clostridium putrefaciens
species
Above 33.3%ile
Anaerostipes caccae
species
Above 6%ile
Pseudoflavonifractor capillosus
species
Above 26.8%ile
Coprobacillus cateniformis
species
Above 7%ile
Catenibacterium mitsuokai
species
Above 9.7%ile
Dorea longicatena
species
Above 32.1%ile
Blautia luti
species
Above 33.3%ile
[Clostridium] hylemonae
species
Above 68.2%ile
Coprococcus catus
species
Above 20.4%ile
Filifactor alocis
species
Above 16.4%ile
Lactobacillus iners
species
Above 13.9%ile
Segatella copri
species
Above 15%ile
Hungatella hathewayi
species
Above 40.6%ile
Turicibacter sanguinis
species
Above 7.3%ile
Anaerotruncus colihominis
species
Above 3.8%ile
Roseburia intestinalis
species
Above 28.9%ile
Marvinbryantia formatexigens
species
Below 32.2%ile
Victivallis vadensis
species
Above 11.9%ile
Blautia schinkii
species
Above 12%ile
Robinsoniella peoriensis
species
Above 58.3%ile
Varibaculum cambriense
species
Above 29.4%ile
[Clostridium] cellulosi
species
Above 65.3%ile
Caloramator fervidus
species
Above 5.4%ile
Alkalithermobacter thermoalcaliphilus
species
Above 8.3%ile
[Clostridium] scindens
species
Above 61.5%ile
Thomasclavelia spiroformis
species
Below 51.4%ile
Clostridium chartatabidum
species
Above 28.7%ile
[Clostridium] polysaccharolyticum
species
Below 17.3%ile
Gemella morbillorum
species
Above 23%ile
Lachnospira pectinoschiza
species
Above 7.2%ile
Bacteroides ovatus
species
Above 5.7%ile
Alistipes putredinis
species
Above 28.6%ile
Odoribacter splanchnicus
species
Above 29.6%ile
Prevotella corporis
species
Above 2.1%ile
Bifidobacterium animalis
species
Above 3.6%ile
Bifidobacterium pseudocatenulatum
species
Above 18.5%ile
Peptococcus niger
species
Above 5.5%ile
Methanobrevibacter smithii
species
Above 3.4%ile
Ruminococcus bromii
species
Above 21.6%ile
Ruminococcus callidus
species
Above 14.7%ile
Blautia obeum
species
Above 18.8%ile
Bilophila wadsworthia
species
Above 8.9%ile
Terrisporobacter glycolicus
species
Above 17.5%ile
Clostridium intestinale
species
Above 63.5%ile
Dorea formicigenerans
species
Above 10%ile
[Eubacterium] siraeum
species
Above 68.9%ile
Veillonella atypica
species
Above 0%ile
Veillonella dispar
species
Above 7.7%ile
Phascolarctobacterium faecium
species
Above 5.8%ile
Peptoniphilus lacrimalis
species
Above 0.7%ile
Blautia producta
species
Above 20.9%ile
Anaerococcus vaginalis
species
Above 11.2%ile
Mediterraneibacter gnavus
species
Above 17.2%ile
[Ruminococcus] torques
species
Above 21.6%ile
Coprococcus eutactus
species
Above 20.1%ile
Veillonella parvula
species
Above 0.4%ile
Finegoldia magna
species
Above 5.9%ile
Ruminococcus albus
species
Above 19.2%ile
Ruminococcus flavefaciens
species
Above 38.8%ile
Streptococcus sanguinis
species
Above 1.3%ile
Streptococcus thermophilus
species
Above 3.5%ile
Streptococcus parasanguinis
species
Above 9%ile
Blautia hansenii
species
Above 3.4%ile
Streptococcus anginosus
species
Above 10.5%ile
Enterococcus faecalis
species
Above 9.1%ile
Lactococcus lactis
species
Above 4.3%ile
Clostridioides difficile
species
Above 53.7%ile
Clostridium kluyveri
species
Above 24.5%ile
[Clostridium] leptum
species
Above 74.7%ile
Thomasclavelia ramosa
species
Above 31%ile
Faecalispora sporosphaeroides
species
Above 89.2%ile
Eubacterium oxidoreducens
species
Below 14.9%ile
Holdemanella biformis
species
Above 10.1%ile
Eubacterium limosum
species
Above 1.3%ile
Propioniferax innocua
species
Below 52%ile
Bifidobacterium indicum
species
Above 6.3%ile
Bifidobacterium magnum
species
Above 54%ile
Schaalia odontolytica
species
Above 8%ile
Hoylesella loescheii
species
Above 6.2%ile
Butyrivibrio fibrisolvens
species
Above 61.2%ile
Oxalobacter formigenes
species
Above 4.5%ile
Faecalibacterium prausnitzii
species
Above 9.9%ile
Proteus mirabilis
species
Above 11.1%ile
Haemophilus parainfluenzae
species
Above 5.5%ile
Aggregatibacter aphrophilus
species
Above 9.8%ile
Bacteroides fragilis
species
Above 6.1%ile
Bacteroides thetaiotaomicron
species
Above 9.2%ile
Bacteroides uniformis
species
Above 8.8%ile
Phocaeicola vulgatus
species
Above 9.3%ile
Parabacteroides distasonis
species
Above 9.4%ile
Lactobacillus casei group
species group
Above 23.9%ile
Streptococcus anginosus group
species group
Above 4.4%ile
Oscillatoriophycideae
subclass
Above 6.3%ile
Archaea
superkingdom
Above 7%ile
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Past analyses have explored the prediction of symptoms using odds ratios derived from populations that utilized the same microbiome test and data-processing pipeline. A colleague recently inquired whether percentile-based comparisons could potentially be applied across different microbiome testing platforms.
The core issue, as well documented in the literature, stems from a severe lack of standardization in microbiome data processing (See discussion here). This report presents results derived from all available data encompassing multiple test sources.
An important methodological concern arises from potential double-counting when odds ratios are calculated simultaneously for a strain, its parent species, and its broader taxonomic family. To address this, I apply odds ratios at distinct taxonomic ranks to ensure proper separation of these hierarchies.
A secondary consideration involves the subjective nature of symptom reporting. As symptoms are self-reported, respondents tend to record only the most severe experiences, resulting in an expected underreporting of minor or moderate symptoms. This introduces reporting bias that likely reduces overall agreement levels.
Forecast agreement with Report
The table below provides insight into which taxonomic ranks may be most predictive. It is truncated at a 10% agreement threshold for clarity.
Rank
Predicted
Agreement
Percentage
species subgroup
126
55
43.7
subkingdom
42
17
40.5
superphylum
1124
379
33.7
superfamily
2187
438
20.0
infraclass
669
126
18.8
cohort
692
130
18.8
superorder
1034
193
18.7
suborder
18539
3147
17.0
subphylum
8339
1373
16.5
subfamily
5424
834
15.4
kingdom
19385
2779
14.3
strain
28091
3855
13.7
subspecies
49169
6714
13.7
species group
149291
17646
11.8
superkingdom
114214
12513
11.0
Reported with Forecast Odds < 1.0
Looking at symptoms reported where the odds was less than 1.0 (i.e. not elevated odds), we have a much shorter table. Looking at some ranks we see that we have around a 2:1 ratio between the tables, i.e. 66% (2/3)
species subgroup
30
7
23.3
superphylum
1782
311
17.5
subkingdom
22
3
13.6
suborder
14242
1707
12.0
subphylum
7540
872
11.6
infraclass
787
85
10.8
Clinical Implications
A More Effective Intake Process
Using forecast results as an interview checklist for clinicians could significantly improve patient assessment. Early data suggest that approximately two-thirds of the checklist items will correspond to reported symptoms. Directly asking patients about specific symptoms is typically more reliable than relying on spontaneous disclosure, as individuals tend to report only their most severe issues.
Improved Identification of Symptom-Associated Bacteria
When a patient confirms the presence of a symptom, this information can be leveraged to identify bacterial taxa most likely contributing to it. This approach contrasts with the traditional method of labeling deviations greater than two standard deviations from the mean as problematic. Instead, it establishes distinct, data-driven thresholds, which sometimes produce counterintuitive but statistically supported findings.
SymptomName
Tax_Name
Critical Percentile
Odds Ratio
Comorbid: Histamine or Mast Cell issues
Cystobacterineae
46.4
0.04
Comorbid: Histamine or Mast Cell issues
Actinomycineae
58
3.46
Comorbid: Histamine or Mast Cell issues
Nannocystineae
22.4
0.1
Sleep: Waking up early in the morning (e.g. 3 AM)
Cystobacterineae
54.2
5.33
Sleep: Waking up early in the morning (e.g. 3 AM)
Nannocystineae
22.4
0.13
Sleep: Waking up early in the morning (e.g. 3 AM)
Coriobacterineae
65.3
0.32
Post-exertional malaise: Next-day soreness after everyday activities
Sternorrhyncha
31.9
0.11
Post-exertional malaise: Next-day soreness after everyday activities
Cystobacterineae
10.6
8.49
Post-exertional malaise: Next-day soreness after everyday activities
Nannocystineae
16.7
0.18
For example, in cases of post-exertional malaise (next-day soreness following ordinary activities):
Individuals above the 31st percentile for Sternorrhyncha have an 18% reduction in odds.
Those above the 16th percentile for Cystobacterineae experience an 849% increase in odds.
Individuals above the 16th percentile for Nannocystineae show an 11% reduction in odds.
These relationships indicate that increasing two bacterial groups (if their abundances are below threshold) and decreasing one (if above threshold) could normalize the microbiome toward a healthier state. For the other two conditions presented, the decision points cluster near the median rather than at the extremes, reinforcing that not all microbial influences occur at outlier levels.
Implications for Generating Therapeutic Suggestions
To refine microbial intervention strategies, I employ the Monte Carlo method. In essence, multiple algorithms independently select bacterial targets and propose compensatory actions. The aggregate of these independent results identifies interventions with high consensus and robustness.
Furthermore, using different taxonomic ranks yields multiple independent bacterial subsets—ideal for Monte Carlo modeling—providing a more reliable foundation for therapeutic recommendation generation.
Caveat: The best odds-ratios are based by the same microbiome processing that is used for odds ratio. The intent of this was to see if reasonable results may be obtain at a generic level. IMHO, the answer is yes.
Try it yourself
I have exposed the data on this page. Just paste (or call by API) your data in the format shown. No charge. No limit on use of this Api.
The samples used for illustrations are obtained randomly from samples from a different lab (no data from this lab was used to compute the odds ratios) that are from “healthy individuals”. These samples tend to have the top symptom being “Asymptomatic: No Health Issues” which is consistent with the claim of “healthy individuals”.
Freq: Is the number of taxonomic ranks that predicted this symptom
Estimate: Indicates the magnitude of the prediction.
Email me at Research@MicrobiomePrescription.com with comments and opinions.
My exploration of microbiome modification began with reading studies archived in the U.S. National Library of Medicine. As someone who has been developing expert systems since the 1990s, my instinct was to encode the findings from these studies as facts within an expert system—letting logic determine the optimal course of action.
In artificial intelligence (AI), an expert system is a computer system emulating the decision-making ability of a human expert. Expert systems are designed to solve complex problems by reasoning through bodies of knowledge, represented mainly as if–then rules rather than through conventional procedural programming code — Wikipedia
Some Difficult Discoveries
As I built the knowledge base, some major problems quickly emerged:
Results from different studies often contradicted one another.
Some results were replicated consistently, while others produced conflicting outcomes.
Certain findings were reported only once and never replicated.
There was significant uncertainty about bacterial identification due to non-standardized testing methods (see this explanation).
Studies tended to report results at a single taxonomy rank—often not the rank relevant to my analysis.
To address the first issue, I incorporated fuzzy logic into the expert system, allowing it to handle ambiguity and partial truths rather than rigid yes/no classifications.
Fuzzy logic is based on the observation that people make decisions based on imprecise and non-numerical information. Fuzzy models or fuzzy sets are mathematical means of representing vagueness and imprecise information (hence the term fuzzy). These models have the capability of recognising, representing, manipulating, interpreting, and using data and information that are vague and lack certainty. — Wikipedia
The second issue required a different approach. I began using bacterial association data (available here) to infer relationships between taxa. For example, if a compound influenced the genus Bifidobacterium, I could reasonably infer a similar effect for its species. This two-way relationship also works in reverse: if you want to increase Bifidobacterium overall, the species Bifidobacterium longum—a readily available probiotic—shows the strongest positive association.
Species Name
Estimate Percentage Inference
Bifidobacterium actinocoloniiforme
18.8
Bifidobacterium adolescentis
54.8
Bifidobacterium angulatum
26.6
Bifidobacterium animalis
14.5
Bifidobacterium asteroides
40.2
Bifidobacterium avesanii
34.2
Bifidobacterium bifidum
25.5
Bifidobacterium bohemicum
52.7
Bifidobacterium bombi
57.7
Bifidobacterium boum
64.1
Bifidobacterium breve
52.4
Bifidobacterium catenulatum
33.9
Bifidobacterium choerinum
66.6
Bifidobacterium commune
45.4
Bifidobacterium cuniculi
21.8
Bifidobacterium dentium
23.2
Bifidobacterium gallicum
30.8
Bifidobacterium indicum
52.9
Bifidobacterium lemurum
50.4
Bifidobacterium longum
73.7
Bifidobacterium magnum
62.5
Bifidobacterium minimum
27.5
Bifidobacterium mongoliense
31.9
Bifidobacterium pseudocatenulatum
31.2
Bifidobacterium pullorum
30.2
Bifidobacterium ruminantium
20.4
Bifidobacterium scardovii
16.9
Bifidobacterium subtile
38.8
Bifidobacterium thermacidophilum
44.5
Bifidobacterium thermophilum
29.8
Bifidobacterium tsurumiense
11.7
With fuzzy logic, study findings indicating increases or decreases could be translated into numerical values. Using bacterial association data, I could then adjust those values to create a more accurate estimate of impact.
Why Do the Mathematics?
Modern AI models, particularly Large Language Models (LLMs), operate differently. They generate responses by finding text that resembles the question rather than reasoning from factual relationships. LLMs do not distinguish whether data comes from a single study or many, nor do they analyze hierarchical relationships within bacterial taxonomy. As a result, taxonomic nuances—such as the difference between Lactobacillus reuteri and Limosilactobacillus reuteri—are often overlooked because the evolution of bacterial naming conventions is ignored.
At the other end of the treatment spectrum is a “whole health” influencer who might recall a single study about Bifidobacterium dentium and use it to infer a complete treatment plan. My approach is simpler: I prefer actions grounded in probability—ones that have the best odds of success.
This is a bit of the engine used on my free site for individuals, Microbiome Prescription. At present we have 14,388,582 million facts over 1,882 modifiers.
Recently on my Microbiome Sites I added a table of metabolites whose presence or absence is associated with various symptoms. Technical details is give in this post: Metabolites and Symptoms. The volume of data is overwhelming.
Today I realized that a good solution is to have the page frame a question that people can paste into their favorite AI.
These metabolites have been identified statistically: their levels, estimated from the microbiome, are abnormally low with P < 0.001 for people reporting this symptom pattern (for example, ME/CFS without IBS). They are hypothesis-generating signals only and have not been validated in clinical trials. In my opinion, they highlight candidates that could be explored in formal clinical research or cautiously by an experienced physician with individual patients. None of these AI-assisted suggestions should be used without review and approval by an appropriate medical professional.
For example ME/CFS without IBS link as an example or to look at other symptoms go to that page and change the drop down. In terms of PROBIOTIC TRIALS, you want to see which of these substances are produced by bacteria.
Instead of “Are any of the following available as supplements or prescriptible from MDs:” ask, “Are any of the following available produced by species uses as probiotics” or more explicit “According to KEGG are any produced by lactobacillus species”
Perplexity Response
None of the listed KEGG compounds appear to be commonly prescribable by MDs as pharmaceuticals. A few are available or derivable as dietary supplements, primarily those related to natural pigments and vitamins found in plants or bacteria.
Available Supplements
Chlorophyll a (KEGG: C05306) is widely sold as a supplement in forms like chlorophyllin for odor control, detoxification, and general health support, often derived from alfalfa or algae.
Ectoine (KEGG: C06231) is offered in over-the-counter supplements, eye drops, and skincare for dry eye relief, skin protection, and anti-inflammatory effects.
Vitamin E Forms
Alpha-tocopherol (KEGG: C02477), beta-tocopherol (KEGG: C14152), alpha-tocotrienol (KEGG: C14153), and beta-tocotrienol (KEGG: C14154) are standard vitamin E components available in tocopherol/tocotrienol supplements for antioxidant and cardiovascular support.
Unavailable Compounds
All others, including bacteriochlorophylls (e.g., C11242, C18155, C21217), complex lipids, CoA derivatives, and specialized bacterial metabolites like archaeal lipids or mycothiol conjugates, show no evidence of commercial supplements or prescriptions; they remain research or biochemical intermediates.
Claude AI Response
Based on my research, I can provide you with information about which compounds from your list are available as supplements or prescribable by physicians. Here’s a summary:
Compounds Available as Supplements:
Chlorophyll a – Available as dietary supplements, typically sold as “chlorophyllin” (a water-soluble derivative with copper instead of magnesium). Available in liquid drops, capsules, and tablets at most health food stores and drug stores WebMDWebMD.
Arachidonate (Arachidonic acid) – Marketed as a dietary supplement, particularly for bodybuilding and muscle growth Wikipedia. Available over-the-counter in capsule form.
Raffinose – Not typically taken as a standalone supplement, though it occurs naturally in foods and may have prebiotic properties Nutrients ReviewWikipedia. Used primarily in research and cryopreservation applications.
Alpha-Tocopherol (Vitamin E) – Widely available as a dietary supplement in capsule, gel capsule, and liquid forms, and can also be prescribed by doctors for certain conditions MedlinePlusWikipedia. In 2023, it was the 290th most commonly prescribed medication in the United States Wikipedia.
Beta-Tocopherol, Alpha-Tocotrienol, Beta-Tocotrienol – Available in mixed vitamin E supplements containing various tocopherols and tocotrienols.
Compounds with Medical/Prescribable Uses:
Bilirubin – Not available as a supplement. Medications like phenobarbital can be prescribed to reduce bilirubin levels in conditions like Crigler-Najjar syndrome and Gilbert’s syndrome Medscape, but bilirubin itself is not supplemented.
D-Xylose – Used primarily as a diagnostic tool in medical testing for malabsorption.
Important Notes:
The vast majority of the compounds on your list are:
Biochemical intermediates in metabolic pathways
Research chemicals
Bacterial/plant-specific compounds
Not available as supplements or prescription medications
Only a very small number (primarily the vitamin E forms, chlorophyll, and arachidonic acid) are commercially available as dietary supplements. I’m not a medical professional, so if you’re considering any of these supplements for health purposes, please consult with a healthcare provider.
This is intended for MD and Researchers
None of the listed KEGG compounds have robust clinical trial validation for therapeutic use. They represent microbiome-derived metabolites with statistically low levels (P < 0.001), suggesting potential biological roles worth exploring in formal trials or under MD supervision.
Key Caveat
Always consult a medical professional before trying any supplement or intervention based on these findings. AI suggestions are not medical advice.
In recent discussions with microbiome startup teams, a key question emerged: which metabolites correlate with specific symptoms? I recommended odds ratios as the optimal analytical approach, and one team is now considering integrating this into their product.
My prior analysis of KEGG-derived metabolite data from various labs revealed stronger consistency in metabolite patterns than bacterial profiles. Symptoms likely arise from adverse metabolite combinations circulating systemically—one metabolite can stem from hundreds of bacteria, and one bacterium can influence hundreds of metabolites—creating a complex web akin to an oversized Gordian knot.
Humans naturally gravitate toward simple “sound bites.” Asked for the highest odds of criminality, people might cite race, city neighborhood, or age range (with 0-5-year-olds showing near-zero risk). True predictive power comes from aggregating all statistically significant odds ratios—in this case, all reported metabolites with meaningful associations.
Using 4500 symptom-annotated samples from BiomeSight, this post explores that approach.
Convert the amount for each metabolite to Percentile ranking. This allows the results to be applied to other pipeline data that may produce different values.
Compute the Chi2 for each integer Percentile rank(100) for each metabolite and symptom (with at least 30 reports, i.e. 207)
2,690 x 100 x 207 = 55,683,000 Chi2 computations
Take the most significant vector with P < 0.001 or Chi2 > 10.83.
Then compute the odds ratio for it
The calculations were brutal with the CPU pegged for days (with some overclocking). If you are running on a cloud service, I trust you have a fat bitcoin wallet.
The results were over 585,094 significant metabolites for our 207 symptoms, or about 1% of the cases has a significant association found.
Using Odds Ratios
Human nature likes simplicity. “Give me just one factor to determine if a person is likely an illegal resident in the USA.” A 2025 report cites there are 150,000 illegal Irish citizens in the US, why is an Irish accent not used as a flag by a certain paramilitary group? With the microbiome data, we suffer a similar bias for simplicity with exclusion of inconvenient facts.
Looking at the odds ratios in detail, we may see large numbers. We should avoid using just one numberin isolation. The table for General: Fatigue is below. For example for the first two, metabolites if one is above and one is below, the resulting Odds ratio is about 1.09 (62.60 * 0.0174), i.e. no major risk. In short all available metabolites should be used, not just one or two.
There is another interesting pattern that arise. Every metabolite is most significant for being present or ot present. This is a natural pattern to use for various machine learning and AI methods, for example
Logistic Regression: Outputs probabilities for binary decisions via sigmoid.
Support Vector Machines (SVM): Finds hyperplanes separating binary classes.
Decision Trees: Splits data into binary paths leading to class labels.
Naive Bayes: Probabilistic classifier assuming feature independence for binary outcomes.
Perceptrons: Single-layer neural nets for linearly separable binary problems.
Random Forests: Ensemble of trees voting on binary predictions
Clinical Use No, Research Use Yes
With a few exceptions, clinical use is limited. For most metabolites there are no easy ways to explicitly, safely, increase or decrease it.
One interesting exception was for C06570: Tetracycline. If this is not seen, then with Chronic Fatigue Syndrome (ME/CFS), the odds of having it is 22x higher. Tetracycline family of probiotics have had significant positive effects on ME/CFS patients. Other similar metabolites include:
Oxytetracycline (C06571)
Chlortetracycline (C11453)
Penicillin G (C06925)
Streptomycin (C04282)
Erythromycin (C06911)
In other words, detecting the absence of naturally occurring antibiotics in a patient with a matching symptom suggests specific antibiotics could be tried.
For items like probiotics, the impact is very strain specific. Very few probiotics are sold by strain (and those that do, often lack data). A simple example for Limosilactobacillus reuteri is illustrated below.
With bacteria Odds ratio I did a “double odds ratio”. A Double Odds ratio means:
Determining Odds ratio for Detected or Not Detected.
Determining the Optimal Odds Ratio when it is Detected.
This was done because I was focused on computing suggestions on individual samples.
These are coarse (single) odds tables because we are not evaluating individual samples but a collection of samples. It is very possible to do a double odds ratio for metabolites — but at present, it appears to have low utilization because of the extremely low number of possible interventions. If interested, contact me at Research at MicrobiomePrescription (US decimal point) com
The reader with Multiple Chemistry Sensitivity(MCS) also has a diagnosed Mast Cell Activation Syndrome (MCAS). We will add this anchorite request. On the symptom list, I will be using a more generic :
After seeing results, I said to myself “This is NOT what I was expecting”. The first thing that I noted was that the number of significant bacteria was at 98%ile, i.e. 98 of 100 symptoms have less significant bacteria. There are a lot of bacteria that are statistically associated with this symptom!
What are we dealing with
Mast Cell Activation Syndrome (MCAS) is thought to stem from abnormally sensitive or dysregulated mast cells that release mediators too easily, often in response to everyday triggers, with genetics, immune dysregulation, and environmental factors all suspected contributors [2024]
My KISS model for symptoms that are statistically significant is that the metabolites (chemicals) released into the body have become unbalanced because the bacteria in the microbiome has become unbalanced. There are several thousands possible metabolites and we lack any in depth studies for the mixtures seen with MCAS.
Existing Common Treatments
All of these are reducing symptom severity and not curing the cause.
Histamine blockade (H1 + H2 antihistamines)
Non‑sedating H1 blockers (e.g., cetirizine, loratadine) plus H2 blockers (e.g., famotidine) are widely used as first‑line and help a large proportion of patients by blocking a key mediator, histamine.
Doses are often higher and more frequent than standard allergy dosing, under medical supervision.
Mast‑cell stabilizers
Cromolyn sodium (especially for GI symptoms) and ketotifen (dual mast‑cell stabilizer + H1 blocker) reduce mediator release and can markedly improve flushing, GI, and some neurologic symptoms over weeks to months.
These are usually added when antihistamines alone are insufficient.
Targeted add‑ons (often leukotriene blockers or biologics) plus trigger control
Leukotriene receptor antagonists (e.g., montelukast) are commonly used to dampen mediator‑driven inflammation, especially in respiratory or systemic symptoms.
In more refractory or IgE‑linked cases, omalizumab (Xolair) is increasingly used off‑label and has helped some patients by reducing IgE‑mediated activation.
Systematic trigger identification and avoidance (food, temperature, chemicals, stress) is considered a core part of effective management in all major reviews.
Digging into our data
I am going to skip the explorations that I did in the earlier posts. As with prior post, Odds Ratio has better fine level identification. We also see a lot more bacteria are identified than with the prior two. There are several thousands possible metabolites and we lack any in depth studies for the mixtures seen with MCAS.
Classic
Odds Ratio
Bacteria Considered
213
298
Bacteria In Common
52
52
Species
20
108
Genus
33
76
Family
54
46
Order
36
34
Class
23
16
What about MCAS occurring with other symptoms? I just put a page up on the odds. Multiple Chemical Sensitivity is reported just 18% of the time, and light sensitivity at 37% of the time. There is not a strong association.
I did a comparison of the net Log(odd ratio) between people. A person without these issues is expected to have a Log(Odds Ratio) < 0. This Post Person reports moderate light sensitivity.
Person
Light Sensitivity
MCS
MCAS
Last Post Person
11.8
17.3
26.1
Anchorite
5.7
16.4
13.8
Odds based Suggestions are now available
See this video on how to do it. The following suggestions were computed for the Anchorite. There were 24 bacteria deemed significant with Biomesight data, with the top high one being Mycobacterium
Probiotics to take and avoid
There are no really outstanding recommendations, but three are available and likely worth an experiment.
The suggestions are based on studies from the US National Library of Medicine (PubMed). First, I should point out that Lactobacillus plantarum {L. plantarum} is not in the R2 list because there was not sufficient impact computed. PubMed data is less precise for multiple reasons.
The avoid list is almost 4x longer. I noticed that a lot of herbs and spices are listed as avoid.
Second Opinion using Ombre
The person had done testing with Ombre, then uploaded their FastQ files to Biomesight — so we have two different reports on the bacteria and the amounts. We also have two different sets of Odds Ratio — each is based on a specific testing lab. 101 bacteria were deemed significant with three being especially too high:
We have similarity with to take suggestions. None of the probiotics suggested were on the above list; this is not unexpected because we are using data from the US National Library of Medicine (PubMed) that is a lot less precise and more fuzzy.
As always, when there is disagreement – go with items that there is agreement with.
The to avoid list is shorter here.
Summary
I discussed some of these finding with folks at PrecisionBiome.Eu and they pointed out that herbs are often avoided because of the belief that they contain histamines. An alternative explanation is that they shift the microbiome; in some cases, they may promote sudden cell death with a release of metabolites into the system (i.e. see Jarisch–Herxheimer reaction).
Why herbs are tricky in MCAS
MCAS mast cells are hypersensitive, and many different chemicals, including plant constituents, can trigger degranulation, especially in multi‑ingredient herbal mixes.
Case experience and MCAS guidance note that herbal and “natural” supplements can provoke flares (e.g., some antimicrobial herbs, moringa with high oxalates, concentrated essential oils), so they should be approached like medications, not “automatically safe” foods.
The algorithm that computed suggestions about things to avoid knows nothing about histamines. The calculations are done solely on the bacteria increases and decreases they cause.
This cause the following interpretation speculation of these results:
The likely cause is not enough of good bacteria to keep the bad ones in balance/control
The key word is “balance”
Unless a herb or spice is a strong recommendation, avoid them as much as is practical. There is the appearance that they contribute to inbalance.
The same may be said of antibiotics
Probiotics are unlikely to be a “cure all” with low benefit for most and adverse effects with others
Last item, remember the Microbiome Prescription suggestions are best efforts given the lack of standardization of microbiome tests reporting your results, the lack of standardization of microbiome tests used in published studies, etc. It is a fuzzy logic expert system.
If you have multiple samples, compute suggestions for each one and look for commonality. MCAS is a long duration symptom that persists across multiple samples. Increase your odds by looking for consensus in the To Take, and also aggregate the to avoid into a master list of avoids.
A reader with Multiple Chemistry Sensitivity(MCS) read my Light Sensitivity Exploration post and asked me to look at her sample because her MCS has been getting worse and she is hoping to slow and ideally reverse it. She does not want to become an anchorite with complete isolation from people. On her symptom list it is:
Comorbid: Multiple Chemical Sensitivity
Mast Cell Activation Syndrome (Next Post)
Looking at Comorbidity from our contributed data
14% of people with Photo Sensitivity have MCS, but 89% have MCAS/Histamine issues
17% of people with MCAS/Histamine issues have MCS, but 51% have Photo Sensitivity
Photo Sensitivity
MCS
MCAS
Photo Sensitivity
427
60
383
MCS
238
135
MCAS
753
I am going to skip the explorations that I did in the earlier post. As with prior post, Odds Ratio has better fine level identification.
Classic
Odds Ratio
Bacteria Considered
85
103
Bacteria In Common
17
15
Species
6
37
Genus
16
35
Family
24
13
Order
17
10
Class
10
4
Since Light Sensitivity and MCS tends to go hand in hand, I did a comparison of the net Log(odd ratio) between people. A person without these issues is expected to have a Log(Odds Ratio) < 0. This Post’s anchorite has moderate light sensitivity in reality.
Person
Light Sensitivity
MCS
Last Post Person
11.8
17.3
Anchorite
5.7
16.4
This feature is now available on the web site for samples from Biomesight, Ombre, Thorne and uBiome. How to get to it and use it is shown below.
Probiotics Suggestions for MCS
The full list is below (remember only probiotic bacteria reported by Biomesight are included). The list for the Last Post person for MCS was very similar.
Tax_name
Impact
Bifidobacterium longum
2.22
Bifidobacterium adolescentis
1.92
Enterococcus faecalis
1.89
Bifidobacterium breve
1.83
Clostridium butyricum
1.78
Faecalibacterium prausnitzii
1.73
Streptococcus thermophilus
1.54
Bifidobacterium bifidum
0.89
Bifidobacterium catenulatum
0.8
Ruminobacter amylophilus
0.55
Bifidobacterium animalis
0.51
Bifidobacterium pseudocatenulatum
0.51
Enterococcus durans
0.47
Lactobacillus johnsonii
0.4
Leuconostoc mesenteroides
0.33
Roseburia faecis
0.32
Veillonella atypica
0.23
Lacticaseibacillus paracasei
0.2
Phocaeicola coprophilus
0.18
Bacillus velezensis
0.08
Lactobacillus acidophilus
-0.05
Bacteroides thetaiotaomicron
-0.23
Bacteroides uniformis
-0.3
Limosilactobacillus reuteri
-0.3
Bacillus amyloliquefaciens group
-0.3
Lentilactobacillus parakefiri
-0.31
Phocaeicola dorei
-0.32
Bacillus subtilis group
-0.32
Limosilactobacillus vaginalis
-0.32
Enterococcus faecium
-0.33
Bacillus subtilis
-0.7
Lactobacillus helveticus
-0.85
Lactobacillus jensenii
-0.85
Pediococcus acidilactici
-1.05
I should note that Pediococcus acidilactici is a high take for Light Sensitivity and a take for MCS for the light sensitive person. It is a to be avoided for the Anchorite in both cases. This goes back to the old saying “No probiotics can serve two people with the same symptoms” (Matt 6:24, Microbiome Translation).
Take Suggestions
These match the general pattern seen for Long COVID and ME/CFS
Modifier
Net
Take
Avoid
(2->1)-beta-D-fructofuranan {Inulin}
133
137
4
dietary fiber
82
106
25
oligosaccharides {oligosaccharides}
78
90
12
Slow digestible carbohydrates. {Low Glycemic}
77
106
29
Fiber, total dietary
69
91
21
fruit
60
80
21
Lactobacillus plantarum {L. plantarum}
50
67
18
fruit/legume fibre
48
67
19
fructo-oligosaccharides
48
51
3
synthetic disaccharide derivative of lactose {Lactulose}
46
48
2
Human milk oligosaccharides (prebiotic, Holigos, Stachyose)
38
46
8
Cichorium intybus {Chicory}
36
39
3
wheat
35
40
6
Hordeum vulgare {Barley}
34
44
11
whole-grain diet
33
46
13
ß-glucan {Beta-Glucan}
33
38
5
High-fibre diet {Whole food diet}
32
48
16
Bovine Milk Products {Dairy}
32
46
13
resistant starch
32
40
8
Avoid Suggestions
We have a few herbs or spices showing up as an avoid. When we look at MCAS, we see a very atypical avoid list.
Nitrogen Oxide x Particulate Matter {Urban air pollutant}
-6
2
8
High-protein diet {Atkins low-carbohydrate diet}
-6
4
10
vegetarians
-6
4
10
low fodmap diet
-6
8
15
Azadirachta indica {Neem}
-4
0
4
Silver nanoparticles {Colloidal silver}
-4
0
4
Summary
The new offering is easy to use, just follow the video above. Remember, most symptoms are caused by combinations of bacteria that alters the metabolites (chemicals) that the body gets. There are many distinct combinations that can produce a symptom. Above is NOT a general guidance, it shows the results for a specific person using their microbiome. The suggestions for your microbiome may be different. Testing is not optional if you want to make progress.
My daughter’s light sensitivity is now so bad, she’s screaming in pain at daylight and won’t let her flatmate put up the blinds! Of course it’s related to her autism. Now we’ve uploaded her new sample, is there anything implicated in her current dysbiosis that might lessen this? She is tormented by this..
I believe we just have enough data to get some traction. I will first use the new Odds Ratio because it give an objective measurement of the importance of each bacteria. Second, I will use the older methodology to simply get a second opinion of which bacteria (unfortunately, this does not indicate importance of each bacteria).
There are three symptom choices related. The difference in count is a reflection of when the symptom was added (the earliest one had the highest count).
DePaul University Fatigue Questionnaire : Abnormal sensitivity to light 259 samples
Other:Light sensitivity (photophobia) 5
The sample above was done using biomesight and we have 148 different bacteria using Odds that are statistically significant for increasing or reducing the odds.
The Odds of her having light sensitivity is quite high: log(Odds)=11.8,
These notes document ongoing work on this issue. The goal is both to address her request and to deepen our understanding of how the MP classic method compares to the newer Odds Ratio approach. The MP classic method has produced good results so far, and Odds Ratios may further improve them. For details on how Odds Ratios are calculated, see this related post: Odds Ratio for the Microbiome 101.
In subsequent posts I will look at two symptoms that are very often seen with light sensisitivy:
Multiple Chemical Sensitivity
Mast Cell Activation Syndrome
Comparison of “MP Classic” and Odds Ratio Algorithms
Across all symptoms, using Biomesight data, we see consistent patterns in which bacterial levels are involved. The Odds Ratio analysis focuses on more specific bacterial taxa and is therefore more targeted. For example, instead of simply indicating low Lactobacillus, the Odds Ratio can highlight a particular species such as Lactobacillus reuteri. This higher resolution enables more precise selection of probiotics.
Taxonomy Rank
MP Classic
Odds Ratio
Species
1727
13541
Genus
5130
10040
Family
8463
6158
Order
5860
3269
Class
3663
1437
Overview of all Samples
The list of bacteria that DOUBLES or more the odds when present in larger amounts
Bacteria
Rank
Odds Ratio
Salidesulfovibrio
genus
5.9
Salidesulfovibrio brasiliensis
species
5.9
Ethanoligenens
genus
4.9
Peptoniphilus lacrimalis
species
4.3
Slackia faecicanis
species
4.2
Collinsella tanakaei
species
3.8
Finegoldia magna
species
3.5
Viviparoidea
superfamily
3.5
Architaenioglossa
order
3.5
Rivularia
genus
3.5
Viviparidae
family
3.5
Rivularia atra
species
3.5
Rivularia
genus
3.5
Finegoldia
genus
3.4
Lysobacter
genus
3.4
Desulfovibrio fairfieldensis
species
3.3
Aerococcaceae
family
3.3
Anaerococcus
genus
3.2
Streptococcus anginosus
species
3.1
Luteolibacter
genus
3
Luteolibacter algae
species
3
Anaerotruncus colihominis
species
3
Odoribacter denticanis
species
3
Filifactor
genus
2.8
Lactobacillus gallinarum
species
2.8
Peptoniphilus asaccharolyticus
species
2.8
Selenomonas infelix
species
2.7
Corynebacterium striatum
species
2.7
Adlercreutzia equolifaciens
species
2.6
Streptococcus anginosus group
species group
2.6
Glutamicibacter soli
species
2.6
Anaerotruncus
genus
2.5
Rubritaleaceae
family
2.5
Rubritalea
genus
2.5
Gardnerella
genus
2.4
Oscillatoriales
order
2.3
Amedibacillus dolichus
species
2.3
Amedibacillus
genus
2.3
Glutamicibacter
genus
2.2
Anaerococcus prevotii
species
2.2
Azospirillum palatum
species
2.2
Eggerthella sinensis
species
2.2
Sphingomonas abaci
species
2.2
Alcanivorax
genus
2.1
Alcanivoracaceae
family
2.1
Haploplasma
genus
2.1
Haploplasma cavigenitalium
species
2.1
Isoalcanivorax
genus
2.1
Isoalcanivorax indicus
species
2.1
Oscillatoriaceae
family
2.1
Selenomonadales
order
2.1
Nisaea nitritireducens
species
2.1
Anaerococcus tetradius
species
2.1
Selenomonadaceae
family
2.1
Lactobacillus acidophilus
species
2.1
Anaerococcus lactolyticus
species
2.1
On the other end, the bacteria that reduces the odds when present in higher amounts are:
Propionibacteriales
order
0.1
Dyadobacter
genus
0.3
Herbaspirillum magnetovibrio
species
0.3
Calditrichia
class
0.4
Calditrichales
order
0.4
Calditrichaceae
family
0.4
Caldithrix
genus
0.4
Calditrichota
phylum
0.4
Desulfitobacteriaceae
family
0.4
Bifidobacterium adolescentis
species
0.4
Bifidobacterium longum
species
0.4
In terms of probiotics, we see some quick observations: good and bad.
Two Lactobacillus probiotics significantly increases the odds — i.e. AVOID, especially yogurts!
Two Bifidobacterium species (and the genus as a whole) significantly decreases the odds — TAKE A LARGER DOSAGE.
Looking at this specific sample
We found no lactobacillus at all, and Bifidobacterium adolescentis is too low. Bifidobacterium longum was found but the amount was significant for reducing the risk.
Getting best probiotics via modelling
This is done using the Correlation Coefficient between bacteria from the R2 site (using the lab specific numbers). We focused solely on the bacteria that increased the odds significantly, and then compute the probiotics (based on only the species what Biomesight reports) that will shift them in the right direction.
Tax_name
Impact
Pediococcus acidilactici
4.28
Bacillus amyloliquefaciens group
3.89
Limosilactobacillus vaginalis
2.95
Bifidobacterium
2.5
Enterococcus faecalis
1.73
Bifidobacterium pseudocatenulatum
1.6
Leuconostoc mesenteroides
1.6
Heyndrickxia coagulans (bacillus coagulans)
1.53
Bifidobacterium longum
1.49
Clostridium butyricum
1.46
Lacticaseibacillus paracasei
1.35
Lactococcus lactis
1.33
Bifidobacterium breve
1.28
Lactobacillus helveticus
1.27
Enterococcus faecium
1.24
Bacillus subtilis group
1.16
Lactiplantibacillus plantarum
1.08
Bifidobacterium bifidum
0.96
Bifidobacterium adolescentis
0.84
Taking these same bacteria using the odds ratios and our usual suggestions engine, we get the following as the top suggestions.
Modifier
Net
Take
Avoid
Slow digestible carbohydrates. {Low Glycemic}
37
52
16
dietary fiber
29
45
16
Fiber, total dietary
24
38
14
fruit
22
34
12
fruit/legume fibre
20
32
12
(2->1)-beta-D-fructofuranan {Inulin}
20
23
3
High-fibre diet {Whole food diet}
19
32
13
oligosaccharides {oligosaccharides}
19
26
6
whole-grain diet
18
25
7
Lactobacillus plantarum {L. plantarum}
17
29
12
bifidobacterium
15
16
1
wheat
12
14
2
The Avoids. I noticed that Bofutsushosan is an avoid. This is a promoter of Akkermansia — which was on our avoid probiotics list. There appears to be reasonable consistency although we are using two different sources and mechanism to get these suggestions.
Modifier
Net
Take
Avoid
high-fat diets
-8
3
11
Ganoderma sichuanense {Reishi Mushroom}
-5
1
6
Pulvis ledebouriellae compositae {Bofutsushosan}
-4
0
5
2-aminoacetic acid {glycine}
-4
0
4
Bacteriophages LH01,T4D,LL12,LL5 {PreforPro}
-4
0
4
laminaria hyperborea {Cuvie}
-4
0
4
low protein diet
-4
1
6
D-glucose {Glucose}
-4
1
6
Ferrum {Iron Supplements}
-4
1
5
Ulmus rubra {slippery elm}
-4
2
6
Honey {Honey }
-4
2
6
Going Old School Suggestions
This is done the usual way but we temporarily clear all of the symptomsand then just marked this single symptom. We are wanting to focus solely on this one horrible symptom.
Clicking on this one symptom, we then get 10 bacteria associated
And also suggestions. I note some agreements between the methods:
Disagreement: Bifidobacterium Longum – this gets interesting because the Odds Ratio indicate that the amount of Bifidobacterium Longum present was sufficient to reduce the odds to below 1.0
Summary
I generally favor a consensus of recommendations as the safest course. In this case, my impression is that using Odds Ratios leads to better identification of the bacteria involved (10 versus 24 for this sample), with the added benefit of indicating the relative importance of each bacterium. With Odds Ratios, the thresholds for being too high or too low are symptom-specific, rather than some magical universal cutoff that applies to all conditions.
Believing that there is one magic reference range for any bacteria is simply naive and ignoring the data.
I need to do some more refining of the code as well as enhancement to handle multiple symptoms concurrently; in time, this will be added to the sight.
Using Odds Ratio is now available on the site. The video below shows how to access it.
Technical Notes
Doing a low level comparison between the “classic forecast method” and the “Odds Ratio method I generated the table below. The Odds Ratio identified bacteria at a much more at a finer level (species) and most people would interpret that as being more targeted and likely better outcomes.
Measure
Classic
Odds Ratio
Bacteria Considered
115
148
Bacteria in common
20
20
Species
8
57
Genus
22
51
Family
33
21
Order
23
10
Class
14
3
This also implies that only Genus and Species should be considered with Odds Ratio. Statistically this is preferred to reduce the amount of double counting.
Revisiting Suggestions using only Genus and Species with Odds Ratio
The R2 Probiotics are similar. Most probiotics are more challenging to obtain — see this page for known sources. The avoids are:
Lactobacillus johnsonii
Akkermansia muciniphila
Bacillus subtilis
Note: Pediococcus acidilactici and L.Plantarum (positive) mixtures is likely the easiest to obtain.
By Kenneth Lassesen, B.Sc.(Statistics), M.Sc.(Operations Research)
Odds Ratio and Chi2 are two sides of the same coin. The worth of this coin is far more than the fourréesseen with studies using averages.
The simplest case is how often is a specific bacteria reported with the control versus study groups. This is easy computed and can be placed in a table such as the one below
Control (without Symptom)
Study (or with Symptom)
Bacteria Seen
300
90
Bacteria Not Seen
600
700
Just looking at the table, it is obvious that this bacteria is less likely to be seen in a study group. We can just drop these numbers in a page like this one, and get the results.
Converting to odds ratio is simple:
Compute odds for study group: 90300=3.333.
Compute odds for control group: 700600≈0.857.
Odds ratio: that seeing this bacteria put you likely not in the study group
Or 1/3.89 = 0.257 if seeing this bacteria, places you in the study group
Second Tier: The amount
This is identical to the above, except there is a little mathematics needed to compute the best range of bacteria for odds ratio.
At 0.04%
Control (without Symptom)
Study (or with Symptom)
Above or Equal
100
60
Below
200
30
Again a simple computation with great statistical significant.
And again the Odds Ratio is calculated the same as above.
100/60 = 1.66
200/30 = 6.66
OR = 1.66 / 6.66 = 0.25 (or 4.00 for the reverse.
We have a tri-state odds ratio
Bacteria not seen: 0.257 of having symptom (i.e. bacteria is rarely seen with symptom)
Bacteria see but above or equals to 0.04%: 3.89 * 4 =15.56
Bacteria see but below 0.04%: 3.89 * .25 = 0.9725, almost no effect.
In this example, we used above or below 0.04%; we could have also used in the range (0.03 to 0.07) or not in the range.
Key points
Use only bacteria with P < 0.001 or better
Check Present or not Present
There is a finite enumeration of possible ranges when a bacteria present.
With today’s powerful computers, this is not a challenge
Check all bacteria that satisfies the minimum size constraint for the function used for the 2×2 table
For some symptoms we have:
over 450 bacteria with significant odds ratios for some conditions.
Highest Odds ratio over 92 for some bacteria
Performance
This data is based on self-declared symptoms from users. Often the symptoms entered are incomplete (some users had over 100 symptoms entered). While not rigorous, this appears to work for getting sample annotations entered in a citizen science context and for demonstration of the concept. There was enough consistency of data to get results.
The best news: The following had the Odds Ratio > 1.0, over a dozen in the sampling and agreement with entered symptoms.
Source
SymptomName
Accurate %
BiomeSight
Official Diagnosis: Mood Disorders
100
Thryve
DePaul University Fatigue Questionnaire : Frequently get words or numbers in the wrong order
100
Thryve
Autism: More Repetitive Movements
100
Thryve
Autonomic Manifestations: cardiac arrhythmias
100
Thryve
Condition: Acne
100
Thryve
DePaul University Fatigue Questionnaire : Pain in Multiple Joints without Swelling or Redness
100
Thryve
DePaul University Fatigue Questionnaire : Feeling like you have a temperature
100
Thryve
Official Diagnosis: Diabetes Type 1
100
Thryve
Neurological: Spatial instability and disorientation
Looking at the biggest sets. we see very good performance for some symptoms and poor performance for items like gender. Unrefreshing Sleep is interesting:
Unrefreshed sleep: 88.6% accurate
Unrefreshing Sleep, that is waking up feeling tired: 36.7% accurate
Is the cause, the fineness of definition (and lack of clarity by users entering) or some other issues?
Source
Symptom
% Correct
Size
BiomeSight
General: Fatigue
98.70317
694
BiomeSight
Neurocognitive: Brain Fog
98.18182
660
BiomeSight
Sleep: Unrefreshed sleep
88.57616
604
BiomeSight
Neurocognitive: Difficulty paying attention for a long period of time
75.54113
462
BiomeSight
Immune Manifestations: Bloating
90.13761
436
BiomeSight
DePaul University Fatigue Questionnaire : Fatigue
85.96491
399
BiomeSight
Gender: Male
59.79644
393
BiomeSight
Comorbid: Histamine or Mast Cell issues
88.0102
392
BiomeSight
Official Diagnosis: COVID19 (Long Hauler)
97.87798
377
BiomeSight
DePaul University Fatigue Questionnaire : Unrefreshing Sleep, that is waking up feeling tired
36.66667
360
BiomeSight
Neurocognitive: Can only focus on one thing at a time
63.76404
356
BiomeSight
Neuroendocrine Manifestations: worsening of symptoms with stress.
70.26239
343
BiomeSight
Neurological-Audio: Tinnitus (ringing in ear)
60.71429
336
BiomeSight
Neurocognitive: Problems remembering things
47.00599
334
BiomeSight
Age: 30-40
97.14286
315
BiomeSight
DePaul University Fatigue Questionnaire : Post-exertional malaise, feeling worse after doing activities that require either physical or mental exertion
92.33227
313
BiomeSight
Neurocognitive: Absent-mindedness or forgetfulness
62.7907
301
BiomeSight
Sleep: Daytime drowsiness
69.33333
300
BiomeSight
Post-exertional malaise: General
85.95318
299
BiomeSight
Immune Manifestations: Constipation
83.22148
298
Lab Performance
Identification by Age exhibits the reality of all labs are not equal. If Odds Ratios from the microbiome was not statistically significant for estimating age, we would see 14% for accuracy. We far exceed that.
Lab
Symptom
Accuracy
Size
BiomeSight
Age: 0-10
86.2
29
Ombre
Age: 0-10
76.3
59
BiomeSight
Age: 10-20
80
25
Ombre
Age: 10-20
94.7
19
BiomeSight
Age: 20-30
58.5
135
Ombre
Age: 20-30
64.7
34
BiomeSight
Age: 30-40
97.1
315
Ombre
Age: 30-40
66.3
104
BiomeSight
Age: 40-50
22.2
203
Ombre
Age: 40-50
71.4
63
BiomeSight
Age: 50-60
29.7
111
Ombre
Age: 50-60
61.7
47
BiomeSight
Age: 60-70
52.5
59
Ombre
Age: 60-70
18.1
83
BiomeSight
Age: 70-80
90
20
This difference of labs is seen with other symptoms — some of which has associations reported in the literature.
Source
SymptomName
Ratio
Size
BiomeSight
General: Depression
67.7
195
Ombre
General: Depression
13.9
108
BiomeSight
General: Fatigue
98.7
694
Ombre
General: Fatigue
20.8
149
BiomeSight
General: Headaches
71.6
197
Ombre
General: Headaches
15.5
103
Summary
The use of odds ratios provides statistically significant evidence for identifying probable symptoms. While not definitive—acknowledging that few diagnostic tests achieve complete certainty—the results demonstrate that both the selected testing method and its interpretation (for example, in relation to bacterial associations) materially influence diagnostic accuracy.
In clinical contexts, reliance on odds ratios offers greater methodological rigor than studies reporting merely “higher or lower levels of certain bacteria with .” A notable clinical strength of this approach lies in its capacity to generate a structured list of potential symptoms for further inquiry, including those that patients may not have initially disclosed.
Nota Bene: It should be noted that the observed error rate is likely attributable, at least in part, to underreporting of symptoms. Patients often disclose only the symptoms they perceive as most severe, thereby introducing reporting bias into the dataset.
The table below shows the accuracy from 4 different labs. It is not a surprise that Shotgun data is more accurate than 16s tests.
I just pushed a new feature that is shown in the video below
The differences of the two methods are:
Old method looks at the level of bacteria that you have only. This is ideal for making suggestions because we want to alter what is there.
New, Odds Ratio method, looks at which bacteria were found (or missing) and their levels. Addressing missing bacteria is not trivial — unless it is a known probiotics species (99% are not)
Odds Ratio is likely more accurate because it considers what is there, the amount and what is missing. It is not an ideal choice for computing suggestions.
Remember Odds Ratios do not say you will have a symptom, it merely indicates increased odds of having the symptom.
Example below of two samples taken 5 years apart. Earlier sample, patient was 68, later sample 73. In general reflects well the symptoms reported.
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