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Multi-Task Learning to Identify Outcome-Specific Risk Factors that Distinguish Individual Micro and Macrovascular Complications of Type 2 Diabetes

机译:多任务学习以识别可区分2型糖尿病个体微血管和大血管并发症的特定结果风险因素

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摘要

Because deterioration in overall metabolic health underlies multiple complications of Type 2 Diabetes Mellitus, a substantial overlap among risk factors for the complications exists, and this makes the outcomes difficult to distinguish. We hypothesized each risk factor had two roles: describing the extent of deteriorating overall metabolic health and signaling a particular complication the patient is progressing towards. We aimed to examine feasibility of our proposed methodology that separates these two roles, thereby, improving interpretation of predictions and helping prioritize which complication to target first. To separate these two roles, we built models for six complications utilizing Multi-Task Learning—a machine learning technique for modeling multiple related outcomes by exploiting their commonality—in 80% of EHR data (N=9,793) from a university hospital and validated them in remaining 20% of the data. Additionally, we externally validated the models in claims and EHR data from the OptumLabs™ Data Warehouse (N=72,720). Our methodology successfully separated the two roles, revealing distinguishing outcome-specific risk factors without compromising predictive performance. We believe that our methodology has a great potential to generate more understandable thus actionable clinical information to make a more accurate and timely prognosis for the patients.
机译:由于总体代谢健康状况恶化是2型糖尿病多种并发症的基础,因此存在并发症风险因素之间存在实质性重叠,这使得结果难以区分。我们假设每种危险因素都有两个作用:描述整体代谢健康状况恶化的程度,并向患者表明正在发生的特定并发症。我们旨在研究将这两个角色分开的拟议方法的可行性,从而改善对预测的解释,并帮助确定优先考虑的并发症为先。为了区分这两个角色,我们利用多任务学习(一种通过利用通用性对多个相关结果进行建模的机器学习技术)在大学医院的80%EHR数据(N = 9,793)中建立了六个并发症的模型,并对其进行了验证在剩余的20%数据中。此外,我们从OptumLabs™数据仓库(N = 72,720)外部验证了索赔和EHR数据中的模型。我们的方法成功地将这两个角色分开,揭示了针对特定结果的风险因素,而又不影响预测性能。我们相信,我们的方法学具有巨大的潜力,可以产生更易理解且可行的临床信息,从而为患者提供更准确,及时的预后。

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