{"title":"估算电子健康记录中大量缺失标签的糖尿病视网膜病变患病率","authors":"Ye Liang , Ru Wang , Yuchen Wang , Tieming Liu","doi":"10.1016/j.ibmed.2024.100154","DOIUrl":null,"url":null,"abstract":"<div><h3>Objective</h3><p>The paper aims to address the problem of massive unlabeled patients in electronic health records (EHR) who potentially have undiagnosed diabetic retinopathy (DR). It is desired to estimate the actual DR prevalence in EHR with 96 % missing labels.</p></div><div><h3>Materials and methods</h3><p>The Cerner Health Facts data are used in the study, with 3749 labeled DR patients and 97,876 unlabeled diabetic patients. This extensive dataset spans the demographics of the United States over the past two decades. We implemented state-of-art positive-unlabeled learning methods, including ensemble-based support vector machine, ensemble-based random forest, and Bayesian finite mixture modeling.</p></div><div><h3>Results</h3><p>The estimated DR prevalence in the population represented by Cerner EHR is approximately 25 % and the classification techniques generally achieve an AUC of around 87 %. As a by-product, a predictive inference on the risk of DR based on a patient's personalized medical information is derived.</p></div><div><h3>Discussion</h3><p>Missing labels is a common issue for EHR data quality. Ignoring these missing labels can lead to biased results in the analyses of EHR data. The problem is especially severe in the context of DR. It is thus important to use machine learning or statistical tools to identify the unlabeled patients. The tool in this paper helps both data analysts and clinicians in their practices.</p></div>","PeriodicalId":73399,"journal":{"name":"Intelligence-based medicine","volume":"10 ","pages":"Article 100154"},"PeriodicalIF":0.0000,"publicationDate":"2024-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2666521224000218/pdfft?md5=0b269311073371904a3317a4df15d0e5&pid=1-s2.0-S2666521224000218-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Estimating the prevalence of diabetic retinopathy in electronic health records with massive missing labels\",\"authors\":\"Ye Liang , Ru Wang , Yuchen Wang , Tieming Liu\",\"doi\":\"10.1016/j.ibmed.2024.100154\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><h3>Objective</h3><p>The paper aims to address the problem of massive unlabeled patients in electronic health records (EHR) who potentially have undiagnosed diabetic retinopathy (DR). It is desired to estimate the actual DR prevalence in EHR with 96 % missing labels.</p></div><div><h3>Materials and methods</h3><p>The Cerner Health Facts data are used in the study, with 3749 labeled DR patients and 97,876 unlabeled diabetic patients. This extensive dataset spans the demographics of the United States over the past two decades. We implemented state-of-art positive-unlabeled learning methods, including ensemble-based support vector machine, ensemble-based random forest, and Bayesian finite mixture modeling.</p></div><div><h3>Results</h3><p>The estimated DR prevalence in the population represented by Cerner EHR is approximately 25 % and the classification techniques generally achieve an AUC of around 87 %. As a by-product, a predictive inference on the risk of DR based on a patient's personalized medical information is derived.</p></div><div><h3>Discussion</h3><p>Missing labels is a common issue for EHR data quality. Ignoring these missing labels can lead to biased results in the analyses of EHR data. The problem is especially severe in the context of DR. It is thus important to use machine learning or statistical tools to identify the unlabeled patients. 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引用次数: 0
摘要
本文旨在解决电子健康记录(EHR)中大量未标记患者的问题,这些患者可能患有未诊断的糖尿病视网膜病变(DR)。研究使用了 Cerner Health Facts 数据,其中包括 3749 名已标记的 DR 患者和 97,876 名未标记的糖尿病患者。这一广泛的数据集涵盖了美国过去二十年的人口统计数据。我们采用了最先进的正向无标记学习方法,包括基于集合的支持向量机、基于集合的随机森林和贝叶斯有限混合建模。作为副产品,根据患者的个性化医疗信息得出了 DR 风险的预测推断。忽略这些缺失标签会导致 EHR 数据分析结果出现偏差。这一问题在 DR 中尤为严重。因此,使用机器学习或统计工具来识别未标记的患者非常重要。本文中的工具对数据分析师和临床医生的实践都有帮助。
Estimating the prevalence of diabetic retinopathy in electronic health records with massive missing labels
Objective
The paper aims to address the problem of massive unlabeled patients in electronic health records (EHR) who potentially have undiagnosed diabetic retinopathy (DR). It is desired to estimate the actual DR prevalence in EHR with 96 % missing labels.
Materials and methods
The Cerner Health Facts data are used in the study, with 3749 labeled DR patients and 97,876 unlabeled diabetic patients. This extensive dataset spans the demographics of the United States over the past two decades. We implemented state-of-art positive-unlabeled learning methods, including ensemble-based support vector machine, ensemble-based random forest, and Bayesian finite mixture modeling.
Results
The estimated DR prevalence in the population represented by Cerner EHR is approximately 25 % and the classification techniques generally achieve an AUC of around 87 %. As a by-product, a predictive inference on the risk of DR based on a patient's personalized medical information is derived.
Discussion
Missing labels is a common issue for EHR data quality. Ignoring these missing labels can lead to biased results in the analyses of EHR data. The problem is especially severe in the context of DR. It is thus important to use machine learning or statistical tools to identify the unlabeled patients. The tool in this paper helps both data analysts and clinicians in their practices.