
5.3K
Downloads
101
Episodes
Listen to author interviews, commentaries from thought leaders, and insightful discussions about important topics in physiology and scientific publishing. Brought to you by the American Physiological Society (APS) Publications.
Listen to author interviews, commentaries from thought leaders, and insightful discussions about important topics in physiology and scientific publishing. Brought to you by the American Physiological Society (APS) Publications.
Episodes

Wednesday Jan 07, 2026
Transcriptome-driven Health-status Transversal-predictors
Wednesday Jan 07, 2026
Wednesday Jan 07, 2026
In this episode of the APS Publications Podcast, Dr. Ralph Rühl discusses his team’s new article in Physiological Genomics, “Transcriptome-driven Health-status Transversal-predictor Analysis for health, food, microbiome and disease markers for understanding of lifestyle diseases.” The article outlines the development of a novel artificial intelligence approach based on machine-learning to predict general health and food-intake parameters. This novel technique, which is based on PBMC transcriptomics from human blood, can predict a wide range of health-related markers.
Todt T, van Bussel I, Afman L, Brennan L, Ivanova DG, Kiselova-Kaneva Y, Thomas EL, Rühl R. Transcriptome-driven Health-status Transversal-predictor Analysis for health, food, microbiome and disease markers for understanding of lifestyle diseases. Physiol Genomics. 2025 Nov 19. doi: 10.1152/physiolgenomics.00026.2025. PMID: 41259124.

No comments yet. Be the first to say something!