Collaborative Management for Chronic Diseases and Depression: A Double Heterogeneity-based Multi-Task Learning Method
Yidong Chai, Haoxin Liu, Jiaheng Xie, Chaopeng Wang, Xiao Fang

TL;DR
This paper introduces ADH-MTL, a novel multi-task learning approach that effectively models the complex heterogeneity in physical and mental health assessments using wearable sensor data, improving collaborative chronic disease management.
Contribution
It proposes the ADH-MTL method with innovations like group-level modeling, decomposition, and Bayesian networks to address double heterogeneity in multi-disease assessment.
Findings
ADH-MTL outperforms baseline methods on real-world data.
Each innovation in ADH-MTL contributes to improved accuracy.
The approach supports integrated physical and mental healthcare.
Abstract
Wearable sensor technologies and deep learning are transforming healthcare management. Yet, most health sensing studies focus narrowly on physical chronic diseases. This overlooks the critical need for joint assessment of comorbid physical chronic diseases and depression, which is essential for collaborative chronic care. We conceptualize multi-disease assessment, including both physical diseases and depression, as a multi-task learning (MTL) problem, where each disease assessment is modeled as a task. This joint formulation leverages inter-disease relationships to improve accuracy, but it also introduces the challenge of double heterogeneity: chronic diseases differ in their manifestation (disease heterogeneity), and patients with the same disease show varied patterns (patient heterogeneity). To address these issues, we first adopt existing techniques and propose a base method. Given…
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Taxonomy
TopicsMachine Learning in Healthcare · Digital Mental Health Interventions · Mental Health via Writing
