Abstract

The analysis of compositional longitudinal data, particularly in microbiome time-series, is a challenging task due to its high-dimensional, sparse, and compositional nature. In this paper, we introduce a novel Gaussian process (GP) prior variational autoencoder for longitudinal data analysis with a multinomial likelihood (MNLVAE) that is specifically designed for compositional time-series analysis. Our generative deep learning model captures complex interactions among microbial taxa while accounting for the compositional structure of the data. We utilize centered log-ratio (CLR) and isometric log-ratio (ILR) transformations to preprocess and transform compositional count data, and utilize a latent multi-output additive GP model to enable prediction of future observations. Our experiments demonstrate that MNLVAE outperforms competing method, offering improved prediction performance across different longitudinal microbiome datasets.
Original languageEnglish
Number of pages7
Publication statusPublished - 28 Jul 2023
MoE publication typeNot Eligible
EventWorkshop on Interpretable Machine Learning in Healthcare - Hawaii Convention Center, Hawaii, United States
Duration: 28 Jul 202328 Jul 2023
https://sites.google.com/view/imlh2023/home?authuser=1

Workshop

WorkshopWorkshop on Interpretable Machine Learning in Healthcare
Abbreviated titleIMLH
Country/TerritoryUnited States
CityHawaii
Period28/07/202328/07/2023
Internet address

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