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Modeling Complex Disease Trajectories using Deep Generative Models with Semi-Supervised Latent Processes

Authors :
Trottet, Cécile
Schürch, Manuel
Allam, Ahmed
Barua, Imon
Petelytska, Liubov
Distler, Oliver
Hoffmann-Vold, Anna-Maria
Krauthammer, Michael
collaborators, the EUSTAR
Publication Year :
2023

Abstract

In this paper, we propose a deep generative time series approach using latent temporal processes for modeling and holistically analyzing complex disease trajectories. We aim to find meaningful temporal latent representations of an underlying generative process that explain the observed disease trajectories in an interpretable and comprehensive way. To enhance the interpretability of these latent temporal processes, we develop a semi-supervised approach for disentangling the latent space using established medical concepts. By combining the generative approach with medical knowledge, we leverage the ability to discover novel aspects of the disease while integrating medical concepts into the model. We show that the learned temporal latent processes can be utilized for further data analysis and clinical hypothesis testing, including finding similar patients and clustering the disease into new sub-types. Moreover, our method enables personalized online monitoring and prediction of multivariate time series including uncertainty quantification. We demonstrate the effectiveness of our approach in modeling systemic sclerosis, showcasing the potential of our machine learning model to capture complex disease trajectories and acquire new medical knowledge.<br />Comment: Extended Abstract presented at Machine Learning for Health (ML4H) symposium 2023, December 10th, 2023, New Orleans, United States, 23 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.08149
Document Type :
Working Paper