Machine Learning Identifies Microbiome and Clinical Predictors of Sustained Weight Loss Following Prolonged Fasting

Journal: medRxiv
Published Date:

Abstract

Prolonged fasting may benefit metabolic health, but data in healthy individuals remain limited. We performed a randomized, waitlist-controlled study (LEANER study), with 38 healthy participants completing a 5-day-fasting intervention with 12-week follow-up. Fasting acutely lowered body mass index (BMI), via fat mass loss. These changes partially persisted at follow-up. Fasting altered the gut microbiome composition and induced metabolite shifts in plasma and feces. Changes to gut microbiome alpha diversity after fasting correlated with baseline microbiome diversity. Long-term BMI response at follow-up could be predicted through machine learning (ML) using baseline microbiome and clinical data, highlighting an unknown Faecalibacterium sp., Oscillibacter sp. 50_27, LDL cholesterol, and systolic blood pressure as key predictors. This ML model was validated in independent patient cohorts with metabolic syndrome and multiple sclerosis. These findings support prolonged fasting as an effective metabolic intervention and demonstrate that individual responses to fasting interventions can be predicted using pre-intervention features. Trial registration: ClinicalTrials.gov, NCT04452916. Registered on June 26, 2020

Authors

  • Gelsomina N. Kaufhold; Theda U. P. Bartolomaeus; Kristin Kräker; Till Schütte; Sakshi Kamboj; Ulrike Löber; Gabriele Rahn; Victoria McParland; Lena Braun; Lajos Markó; Matanat Mammadli; Alexander Krannich; Lina S. Bahr; Friederike Gutmann; Friedemann Paul; Nicola Wilck; Alma Zernecke; Peter J. Oefner; Wolfram Gronwald; Dominik N. Müller; Sofia K. Forslund-Startceva; Sylvia Bähring; Hendrik Bartolomaeus; Nadja Siebert

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