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Complication Risk Profiling in Diabetes Care: A Bayesian Multi-Task and Feature Relationship Learning Approach

机译:糖尿病护理中的并发症风险分析:贝叶斯多任务和特征关系学习方法

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摘要

Diabetes mellitus, commonly known as diabetes, is a chronic disease that often results in multiple complications. Risk prediction of diabetes complications is critical for healthcare professionals to design personalized treatment plans for patients in diabetes care for improved outcomes. In this paper, focusing on Type 2 diabetes mellitus (T2DM), we study the risk of developing complications after the initial T2DM diagnosis from longitudinal patient records. We propose a novel multi-task learning approach to simultaneously model multiple complications where each task corresponds to the risk modeling of one complication. Specifically, the proposed method strategically captures the relationships (1) between the risks of multiple T2DM complications, (2) between different risk factors, and (3) between the risk factor selection patterns, which assumes similar complications have similar contributing risk factors. The method uses coefficient shrinkage to identify an informative subset of risk factors from high-dimensional data, and uses a hierarchical Bayesian framework to allow domain knowledge to be incorporated as priors. The proposed method is favorable for healthcare applications because in addition to improved prediction performance, relationships among the different risks and among risk factors are also identified. Extensive experimental results on a large electronic medical claims database show that the proposed method outperforms state-of-the-art models by a significant margin. Furthermore, we show that the risk associations learned and the risk factors identified lead to meaningful clinical insights.
机译:糖尿病,俗称糖尿病,是一种慢性疾病,通常导致多重并发症。糖尿病并发症的风险预测对于医疗保健专业人员来说至关重要,为糖尿病护理患者设计个性化治疗计划,以改善结果。在本文中,专注于2型糖尿病(T2DM),我们研究纵向患者记录初始T2DM诊断后开发并发症的风险。我们提出了一种新的多任务学习方法,同时模拟多个并发症,其中每个任务对应于一个并发症的风险建模。具体而言,该方法策略性地捕获多个T2DM并发症的风险之间的关系(1),(2)在风险因素选择模式之间的不同风险因素与(3)之间,这假设类似的并发症具有类似的促进风险因素。该方法使用系数收缩来识别来自高维数据的信息性危险因素的信息,并且使用分层贝叶斯框架来允许域知识结合为前沿。该方法有利于医疗保健应用,因为除了改进的预测性能外,还确定了不同风险和风险因素之间的关系。对大型电子医疗权利要求数据库的广泛实验结果表明,所提出的方法优于最先进的模型,通过显着的余量。此外,我们表明,识别的风险协会和确定的风险因素导致有意义的临床洞察力。

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