A Conjoint Graph Representation Learning Framework for Hypertension Comorbidity Risk Prediction
- URL: http://arxiv.org/abs/2505.05094v2
- Date: Thu, 12 Jun 2025 08:33:39 GMT
- Title: A Conjoint Graph Representation Learning Framework for Hypertension Comorbidity Risk Prediction
- Authors: Leming Zhou, Zuo Wang, Zhixuan Duan,
- Abstract summary: We develop a Conjoint Graph Representation Learning framework to predict the risks of diabetes and coronary heart disease in patients.<n>The framework provides more accurate predictions than other strong models in terms of accuracy.
- Score: 0.6718184400443239
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The comorbidities of hypertension impose a heavy burden on patients and society. Early identification is necessary to prompt intervention, but it remains a challenging task. This study aims to address this challenge by combining joint graph learning with network analysis. Motivated by this discovery, we develop a Conjoint Graph Representation Learning (CGRL) framework that: a) constructs two networks based on disease coding, including the patient network and the disease difference network. Three comorbidity network features were generated based on the basic difference network to capture the potential relationship between comorbidities and risk diseases; b) incorporates computational structure intervention and learning feature representation, CGRL was developed to predict the risks of diabetes and coronary heart disease in patients; and c) analysis the comorbidity patterns and exploring the pathways of disease progression, the pathological pathogenesis of diabetes and coronary heart disease may be revealed. The results show that the network features extracted based on the difference network are important, and the framework we proposed provides more accurate predictions than other strong models in terms of accuracy.
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