Explainable Machine Learning Reveals 12-Fold Ucp1 Upregulation and Thermogenic Reprogramming in Female Mouse White Adipose Tissue After 37 Days of Microgravity: First AI/ML Analysis of NASA OSD-970
Md. Rashadul Islam

TL;DR
This study uses explainable machine learning to analyze NASA space biology data, revealing significant Ucp1 upregulation and thermogenic reprogramming in female mouse white adipose tissue after 37 days in microgravity.
Contribution
It is the first ML-based analysis of NASA data on female adipose tissue in space, identifying key genes and pathways involved in microgravity-induced thermogenesis.
Findings
12-fold upregulation of Ucp1 in microgravity WAT
ML model achieved over 92% AUC in classifying space vs. ground samples
SHAP analysis identified Ucp1 and transcription factors as top features
Abstract
Microgravity induces profound metabolic adaptations in mammalian physiology, yet the molecular mechanisms governing thermogenesis in female white adipose tissue (WAT) remain poorly characterized. This paper presents the first machine learning (ML) analysis of NASA Open Science Data Repository (OSDR) dataset OSD-970, derived from the Rodent Research-1 (RR-1) mission. Using RT-qPCR data from 89 adipogenesis and thermogenesis pathway genes in gonadal WAT of 16 female C57BL/6J mice (8 flight, 8 ground control) following 37 days aboard the International Space Station (ISS), we applied differential expression analysis, multiple ML classifiers with Leave-One-Out Cross-Validation (LOO-CV), and Explainable AI via SHapley Additive exPlanations (SHAP). The most striking finding is a dramatic 12.21-fold upregulation of Ucp1 (Delta-Delta-Ct = -3.61, p = 0.0167) in microgravity-exposed WAT,…
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