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 language | English |
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Number of pages | 7 |
Publication status | Published - 28 Jul 2023 |
MoE publication type | Not Eligible |
Event | Workshop on Interpretable Machine Learning in Healthcare - Hawaii Convention Center, Hawaii, United States Duration: 28 Jul 2023 → 28 Jul 2023 https://sites.google.com/view/imlh2023/home?authuser=1 |
Workshop
Workshop | Workshop on Interpretable Machine Learning in Healthcare |
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Abbreviated title | IMLH |
Country/Territory | United States |
City | Hawaii |
Period | 28/07/2023 → 28/07/2023 |
Internet address |