TEMPTED: Time-informed dimensionality reduction for longitudinal microbiome studies

Anru Zhang Co-Author
Duke University
 
Pixu Shi Co-Author
Duke University
 
Rungang Han Co-Author
Duke University
 
Anru Zhang Speaker
Duke University
 
Tuesday, Aug 5: 3:25 PM - 3:45 PM
Topic-Contributed Paper Session 
Music City Center 
Longitudinal studies are crucial for understanding complex microbiome dynamics and their link to health. In this talk, we introduce TEMPoral TEnsor Decomposition (TEMPTED), a time-informed dimensionality reduction method for high-dimensional longitudinal data that treats time as a continuous variable, effectively characterizing temporal information and handling varying temporal sampling. TEMPTED captures key microbial dynamics, facilitates beta-diversity analysis, and enhances reproducibility by transferring learned representations to new data. In simulations, it achieves 90% accuracy in phenotype classification, significantly outperforming existing methods. In real data, TEMPTED identifies vaginal microbial markers linked to term and preterm births, demonstrating robust performance across datasets and sequencing platforms.

Keywords

microbiome

tensor