4.6 Article

Fecal Bacteria as Biomarkers for Predicting Food Intake in Healthy Adults

Journal

JOURNAL OF NUTRITION
Volume 151, Issue 2, Pages 423-433

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jn/nxaa285

Keywords

gastrointestinal microbiota; fidelity measures; dietary intake biomarker; machine learning; multiclass

Funding

  1. Foundation for Food and Agriculture Research New Innovator Award
  2. USDA National Institute of Food and Agriculture [1009249]
  3. ACES Jonathan Baldwin Turner Fellowship
  4. National Center for Supercomputing Applications (NCSA) at the University of Illinois at Urbana-Champaign

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This study identified fecal microbial biomarkers that can accurately predict food intake, showing high classification accuracy for various foods in healthy adults. The use of fecal microbiota as biomarkers provides a useful tool for assessing nutrition study compliance and predicting specific food intake.
Background: Diet affects the human gastrointestinal microbiota. Blood and urine samples have been used to determine nutritional biomarkers. However, there is a dearth of knowledge on the utility of fecal biomarkers, including microbes, as biomarkers of food intake. Objectives: This study aimed to identify a compact set of fecal microbial biomarkers of food intake with high predictive accuracy. Methods: Data were aggregated from 5 controlled feeding studies in metabolically healthy adults (n = 285; 21-75 y; BMI 19-59 kg/m(2); 340 data observations) that studied the impact of specific foods (almonds, avocados, broccoli, walnuts, and whole-grain barley and whole-grain oats) on the human gastrointestinal microbiota. Fecal DNA was sequenced using 16S ribosomal RNA gene sequencing. Marginal screening was performed on all species-level taxa to examine the differences between the 6 foods and their respective controls. The top 20 species were selected and pooled together to predict study food consumption using a random forest model and out-of-bag estimation. The number of taxa was further decreased based on variable importance scores to determine the most compact, yet accurate feature set. Results: Using the change in relative abundance of the 22 taxa remaining after feature selection, the overall model classification accuracy of all 6 foods was 70%. Collapsing barley and oats into 1 grains category increased the model accuracy to 77% with 23 unique taxa. Overall model accuracy was 85% using 15 unique taxa when classifying almonds (76% accurate), avocados (88% accurate), walnuts (72% accurate), and whole grains (96% accurate). Additional statistical validation was conducted to confirm that the model was predictive of specific food intake and not the studies themselves. Conclusions: Food consumption by healthy adults can be predicted using fecal bacteria as biomarkers. The fecal microbiota may provide useful fidelity measures to ascertain nutrition study compliance.

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