Odds Ratio Snapshots: Unrefreshed sleep

This document presents the results of statistical analysis on symptoms from viable, self-annotated Biomesight microbiome samples. The methodology for data acquisition is outlined in New Standards for Microbiome Analysis?.

Tables have been refined to display only genus- and species-level taxa, the 20 most prominent entries per group, and associations achieving statistical significance (P < 0.01).

The following sections provide the processed data, accompanied by guidance on interpretation and application. Counts of significant bacterial taxa are included, reflecting the application of non-standard but rigorously validated statistical approaches to extensive sample and reference populations, where statistical power derives from dataset scale.

SignificanceGenus
p < 0.01149
p < 0.001121
p < 0.000196
p < 0.0000179

Averages and Medians

I prefer medians over averages. Medians are the values where half of the people have less and half has more. If the data was a bell-curve, then the values will almost be the same… with bacteria that happens rarely. Look at Bacteroides uniformis below, we see that the average is above and the median below.

If symptom median is higher than reference median, it means there is more of this bacteria. If lower, then less. This ignores how often the bacteria is seen (we average only over reports).

tax_nameRankSymptom AvarageReference AverageSymptom MedianReference Median
Bacteroidesgenus28.50425.67423.87227.629
Bacteroides uniformisspecies3.0782.6781.511.977
Coprococcusgenus1.2581.4580.750.539
Bifidobacteriumgenus0.6770.9740.1350.064
Bacteroides cellulosilyticusspecies1.060.8220.0730.126
Bilophilagenus0.3970.3430.2060.252
Bilophila wadsworthiaspecies0.3850.3350.1960.239
Alkaliphilusgenus0.2510.2990.070.041
Alkaliphilus crotonatoxidansspecies0.2450.2910.0650.037
Collinsellagenus0.1460.1880.0580.036
Bifidobacterium longumspecies0.2210.3380.0520.03
Bacteroides stercorirosorisspecies0.2160.190.1340.156
Collinsella aerofaciensspecies0.1380.1750.0560.036
Caloramator mitchellensisspecies0.7980.8730.0540.035
Anaerotruncusgenus0.1950.1860.1360.155
Bacteroides salyersiaespecies0.2620.3670.0220.004
Bacteroides faecisspecies0.1450.1180.0550.071
Anaerotruncus colihominisspecies0.1840.1740.1330.147
Oxalobactergenus0.0360.030.0180.027
Luteibacter anthropispecies0.0510.080.0160.009

Bacteria Incidence – How often is it reported

The common sense belief is that if a bacteria is reported more often, then the amount should be higher. This is often not true. The microbiome is a complex thing. Look at Bacteroides uniformis below, we see that the average is above and the median below

tax_nameRankIncidence Odds RatioChi2Symptoms %Reference %
Bifidobacterium scardoviispecies0.716.612.317.2

More or Less often based on Symptom Median All Incidence

This is a little more complex to understand. If we compute the mid point for people with the symptom, then if the bacteria was not involved then half of the reference should be above this value and half below this value. If not, it means that the symptom tends to over or under growth.

tax_nameRankSymptom MedianOdds RatioChi2BelowAbove
Niabella aurantiacaspecies0.0020.3479.6484165
Psychrobacter glacialisspecies0.0020.3778.5594218
Niabellagenus0.0020.3966516201
Viridibacillus neideispecies0.0020.3861.6426163
Actinopolysporagenus0.0020.461.5489195
Chromatiumgenus0.0020.461.4473187
Chromatium weisseispecies0.0020.461.1472187
Lentibacillusgenus0.0020.458.9459184
Lentibacillus salinarumspecies0.0020.4156.7444180
Thermoanaerobacteriumgenus0.0020.4253.1438183
Thiorhodococcusgenus0.0020.4453.1524229
Thermoanaerobacterium islandicumspecies0.0020.4251.3432183
Syntrophomonas sapovoransspecies0.0020.4450.8482211
Thermodesulfovibrio thiophilusspecies0.0020.4449.5481213
Thermodesulfovibriogenus0.0020.4746.8552258
Desulfofundulusgenus0.0020.4546.7449201
Helicobacter suncusspecies0.0020.4946.3669325
Oenococcusgenus0.0020.4745.1529249
Vagococcus penaeispecies0.0030.4936.1427211
Viridibacillusgenus0.0020.534.8437220

More or Less often based on Reference Median All Incidence

This is like the above, but with a different line in the sand. Instead of the median of those with the condition, we use the median of the reference set.

tax_nameRankReference MedianOdds RatioChi2BelowAbove
Psychrobacter glacialisspecies0.0020.37144.3594218
Niabella aurantiacaspecies0.0020.34134.5484165
Niabellagenus0.0020.39116.9516201
Bacteroides heparinolyticusspecies0.0030.49111.1858423
Actinopolysporagenus0.0020.4107.5489195
Chromatiumgenus0.0020.4106473187
Chromatium weisseispecies0.0020.4105.4472187
Viridibacillus neideispecies0.0020.38102426163
Lentibacillusgenus0.0020.4100.9459184
Thiorhodococcusgenus0.0020.4496.8524229
Lentibacillus salinarumspecies0.0020.4196.2444180
Helicobacter suncusspecies0.0020.4994.8669325
Thermoanaerobacteriumgenus0.0020.4290.2438183
Syntrophomonas sapovoransspecies0.0020.4489.9482211
Thermodesulfovibriogenus0.0020.4788.2552258
Thermodesulfovibrio thiophilusspecies0.0020.4487.8481213
Thermoanaerobacterium islandicumspecies0.0020.4287432183
Oenococcusgenus0.0020.4783.9529249
Hydrogenophilusgenus0.0030.5881.21019589
Desulfofundulusgenus0.0020.4581449201

More or Less often based on Symptom Median High Incidence

Above we see that many of the top bacteria identified are sparse, that is not reported often. We then restrict them to those that occur above 50% or the time.

tax_nameRankSymptom Median FreqOdds RatioChi2BelowAbove
Clostridium taeniosporumspecies0.0030.6224.81203751
Dethiosulfovibriogenus0.0040.6817.51353917
Tetragenococcus doogicusspecies0.0030.6915.81214836
Hydrocarboniphaga daqingensisspecies0.0040.7113.814531032
Mycoplasmopsisgenus0.0050.7213.316001147
Pediococcusgenus0.0040.768.71168886
Propionisporagenus0.0050.777.913741060
Propionispora hippeispecies0.0050.777.913741060
Tetragenococcusgenus0.0030.786.71186931

More or Less often based on Reference Median High Incidence

Above we see that many of the top bacteria identified are sparse, that is not reported often. We then restrict them to those that occur above 50% or the time.

tax_nameRankReference Median FreqOdds RatioChi2BelowAbove
Psychrobacter glacialisspecies0.0020.37144.3594218
Niabella aurantiacaspecies0.0020.34134.5484165
Niabellagenus0.0020.39116.9516201
Bacteroides heparinolyticusspecies0.0030.49111.1858423
Actinopolysporagenus0.0020.4107.5489195
Chromatiumgenus0.0020.4106473187
Chromatium weisseispecies0.0020.4105.4472187
Viridibacillus neideispecies0.0020.38102426163
Lentibacillusgenus0.0020.4100.9459184
Thiorhodococcusgenus0.0020.4496.8524229
Lentibacillus salinarumspecies0.0020.4196.2444180
Helicobacter suncusspecies0.0020.4994.8669325
Thermoanaerobacteriumgenus0.0020.4290.2438183
Syntrophomonas sapovoransspecies0.0020.4489.9482211
Thermodesulfovibriogenus0.0020.4788.2552258
Thermodesulfovibrio thiophilusspecies0.0020.4487.8481213
Thermoanaerobacterium islandicumspecies0.0020.4287432183
Oenococcusgenus0.0020.4783.9529249
Hydrogenophilusgenus0.0030.5881.21019589
Desulfofundulusgenus0.0020.4581449201

Summary

A large number of bacterial taxa exhibit shifts with P < 0.01 in association with this condition. The subsequent challenge is determining how to modulate these taxa, since the volume of candidates exceeds what most individuals can practically consider. Moreover, for many of the taxa identified, there is no published evidence in the U.S. National Library of Medicine describing how to alter their abundance.

A deep optimization model, such as the one implemented on the Microbiome Taxa R2 site, can be used to inform probiotic selection. This model provides coverage for each identified taxon and infers which probiotics are most likely to shift their levels. Its output may then be integrated with more conventional recommendations derived from literature indexed in the U.S. National Library of Medicine where such evidence exists, with the two recommendation sets reconciled by giving priority to probiotic-based suggestions.

Development of a dedicated database based on Biomesight samples is in progress. The current model uses data contributed by PrecisionBiome, and datasets generated with differing laboratory processing pipelines cannot be safely combined, as discussed in The taxonomy nightmare before Christmas…. Once the Biomesight-specific database is complete, an option for generating (offline-only) personalized suggestions will be added to the Microbiome Prescription website.

Probiotics Suggestions

The following are based on a simplified algorithm using R2 data for Biomesight. These are tentative numbers subject to future refinements. Bacteria listed are only for probiotics detected with Biomesight tests. Probiotics include some that are available only in some countries and some that are pending approval for retail sale.

  • Good Count: Number of bacteria expected to shift in desired direction
  • Bad Count: Number of bacteria expected to shift in wrong direction
  • Impact: Estimator of impact based on Chi-2, Slope and R2 vectors
Probiotic SpeciesImpactGood CountBad Count
Bifidobacterium breve53.54160
Blautia hansenii52.64120
Bifidobacterium longum48.23190
Segatella copri45.2350
Bifidobacterium adolescentis35.47150
Lactobacillus helveticus20.587511
Akkermansia muciniphila18.74161
Faecalibacterium prausnitzii15.5930
Bifidobacterium bifidum10.9160
Bifidobacterium catenulatum10.1150
Enterococcus faecalis9.155510
Escherichia coli6.2980
Bifidobacterium animalis4.9270
Lactobacillus johnsonii3.79515
Enterococcus faecium3.77283
Enterococcus durans3.18391
Streptococcus thermophilus1.6430
Blautia wexlerae1.5610
Limosilactobacillus vaginalis1.06346
Lactobacillus jensenii0.854110
Limosilactobacillus reuteri0.52236
Clostridium butyricum0.49193
Bifidobacterium pseudocatenulatum0.37230
Bacillus amyloliquefaciens group0.314411
Lacticaseibacillus paracasei0.31101
Lactobacillus acidophilus0.27241
Veillonella atypica0.2760
Heyndrickxia coagulans0.26202
Lactobacillus crispatus0.24172
Ligilactobacillus salivarius0.1690
Lacticaseibacillus casei0.1472
Lactiplantibacillus pentosus0.1450
Bacillus subtilis group0.13224
Limosilactobacillus fermentum0.12135
Lactococcus lactis0.1250
Leuconostoc mesenteroides0.11141
Lactiplantibacillus plantarum0.141
Lacticaseibacillus rhamnosus0.0940
Pediococcus0.0740
Bacillus0.0720
Bacillus subtilis-0.323112
Pediococcus acidilactici-2.332812
Parabacteroides goldsteinii-13.7408
Parabacteroides distasonis-27.708
Bacteroides uniformis-246.88013
Bacteroides thetaiotaomicron-265.51014

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