使用聚类模型识别慢性肾病患者的进展风险

Michael Lenart, Nikhil Mascarenhas, Ruisi Xiong, Abigail A. Flower
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引用次数: 4

摘要

慢性肾脏疾病(“CKD”)及其合并症,糖尿病,高血压和心血管疾病(“CVD”),经常通过常规程序和实验室测试来测量,从而产生大量关于该患者群体的历史数据。在本文中,我们基于电子健康记录(“EHR”)数据进行了一项回顾性研究,以确定CKD发展的模式。特别是,我们使用了一种聚类方法来定量识别有进展为CKD晚期风险的糖尿病患者。使用常规测量和实验室测试的值,如收缩压、舒张压、体重指数(BMI)、血红蛋白A1c (HbAlc)、甘油三酯和高密度脂质胆固醇(HDL胆固醇),将患者分为四组,每组实验室测试的最佳值与最差值之间有明显的区分。我们使用每次后续访问的实验室值来计算进展分数,使用到最佳和最差群集的距离,这表明患者的健康状况是在改善还是在恶化。我们相信,这种方法有望成为未来的工具,因为它能够提供一个有序的患者名单,这些患者有更大的恶化风险,应该从医疗保健提供者的干预中受益。本文得出的结论旨在对CKD进展可能性较高的患者进行及时监测和早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying risk of progression for patients with Chronic Kidney Disease using clustering models
Chronic Kidney Disease ("CKD") and its comorbidities, diabetes, hypertension and cardiovascular disease ("CVD"), are frequently measured by routine procedures and lab tests, creating a large amount of historical data about this patient population. In this paper, we conducted a retrospective study based on Electronic Health Records ("EHR") data, in order to identify patterns in the development of CKD. In particular, we used a clustering approach to quantifiably identify diabetic patients who are at risk of progressing to advanced stages of CKD. Using values from routine measurements and lab tests such as systolic blood pressure, diastolic blood pressure, body mass index ("BMI"), Hemoglobin A1c ("HbAlc"), triglycerides and high density lipid cholesterol ("HDL cholesterol"), patients were classified into four clusters with a distinct separation between the cluster with the best value for each lab test and a cluster with the worst value for each lab test. We used lab values from each subsequent visit to calculate a progression score using the distance to the best and worst clusters, which indicated whether a patient's health was improving or deteriorating. We believe that this approach holds promise for future tools, as it is able to provide an ordered list of patients who are at greater risk of deterioration and should benefit from intervention by healthcare providers. The conclusions made in this paper are aimed at enabling timely monitoring and earlier intervention for patients that are associated with higher possibility of CKD progression.
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