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Prognostication and Outcome-specific Risk Factor Identification for Diabetes Care via Private-shared Multi-task Learning

机译:通过私有共享多任务学习的糖尿病护理的预后和特异性危险因素鉴定

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Diabetes is a chronic diseases that affects nearly half a billion people around the globe, and is almost always associated with a number of complications, including kidney failure, blindness, stroke, and heart attack. An important step towards improved diabetes care is to accurately predict the risk of diabetes complications and to identify the corresponding risk factors associated with the onset of each complication. In this paper, we study the problem of risk prediction and outcome-specific risk factor identification from readily available patient medical record data. We adopt a private-shared multi-task learning (MTL) model, which jointly models multiple complications with each task corresponding to the risk modeling of one complication. The MTL formulation not only boosts prediction performance but also enables identification of outcome-specific risk factors. Specifically, we decompose the coefficient matrix, in which each column (vector) corresponds to the coefficient of one complication risk model, into a shared component and an outcome-specific private component. The shared component is assumed to be low-rank to capture the relationships among complications in terms of overall diabetes health condition. The private component is assumed to be non-overlapping and sparse so that they are discriminative among the different complication outcomes. Further, the shared component and the private component for the same complication are assumed to be orthogonal. Extensive experimental results on a type 2 diabetes cohort extracted from a large electronic medical claims database show that the proposed method outperforms baseline models by a significant margin. Also the identified outcome-specific risk factors provide meaningful clinical insights. The results demonstrate that simultaneously modeling multiple risks through MTL not only improves prediction performance but also enables identification of outcome-specific risk factors.
机译:糖尿病是一种慢性疾病,影响全球近10亿人,几乎总是与许多并发症相关,包括肾衰竭,失明,中风和心脏病发作。改善糖尿病护理的重要步骤是准确地预测糖尿病并发症的风险,并确定与每个并发症发作相关的相应危险因素。在本文中,我们研究了从易于使用的患者医疗记录数据中的风险预测和结果特异性风险因子识别问题。我们采用私有共享的多任务学习(MTL)模型,该模型与对应于一个复杂性的风险建模的每个任务共同模拟多个并发症。 MTL制剂不仅提高了预测性能,还可以识别特定于结果的危险因素。具体地,我们分解了系数矩阵,其中每个列(向量)对应于一个复杂性风险模型的系数,进入共享组件和结果特定的私有组件。共享组分被认为是低秩,以捕获在整体糖尿病健康状况方面的并发症之间的关系。私有组件被认为是非重叠和稀疏,因此它们在不同的并发症结果中是歧视性的。此外,假设共享组件和具有相同并发症的私有组件是正交的。从大型电子医疗权利要求数据库中提取的2型糖尿病群体的广泛实验结果表明,所提出的方法优于基线模型的显着边距。还确定了特定的结果特定风险因素提供了有意义的临床洞察力。结果表明,通过MTL同时建模多种风险不仅可以提高预测性能,而且还可以实现特定于结果的风险因素。

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