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Learning Dynamic and Personalized Comorbidity Networks from Event Data using Deep Diffusion Processes

Authors :
Qian, Zhaozhi
Alaa, Ahmed M.
Bellot, Alexis
Rashbass, Jem
van der Schaar, Mihaela
Publication Year :
2020

Abstract

Comorbid diseases co-occur and progress via complex temporal patterns that vary among individuals. In electronic health records we can observe the different diseases a patient has, but can only infer the temporal relationship between each co-morbid condition. Learning such temporal patterns from event data is crucial for understanding disease pathology and predicting prognoses. To this end, we develop deep diffusion processes (DDP) to model "dynamic comorbidity networks", i.e., the temporal relationships between comorbid disease onsets expressed through a dynamic graph. A DDP comprises events modelled as a multi-dimensional point process, with an intensity function parameterized by the edges of a dynamic weighted graph. The graph structure is modulated by a neural network that maps patient history to edge weights, enabling rich temporal representations for disease trajectories. The DDP parameters decouple into clinically meaningful components, which enables serving the dual purpose of accurate risk prediction and intelligible representation of disease pathology. We illustrate these features in experiments using cancer registry data.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.02585
Document Type :
Working Paper