Deep Learning Prediction of Mild Cognitive Impairment using Electronic Health Records.

Sajjad Fouladvand, Michelle M Mielke, Maria Vassilaki, Jennifer St Sauver, Ronald C Petersen, Sunghwan Sohn
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Abstract

About 44.4 million people have been diagnosed with dementia worldwide, and it is estimated that this number will be almost tripled by 2050. Predicting mild cognitive impairment (MCI), an intermediate state between normal cognition and dementia and an important risk factor for the development of dementia is crucial in aging populations. MCI is formally determined by health professionals through a comprehensive cognitive evaluation, together with a clinical examination, medical history and often the input of an informant (an individual that know the patient very well). However, this is not routinely performed in primary care visits, and could result in a significant delay in diagnosis. In this study, we used deep learning and machine learning techniques to predict the progression from cognitively unimpaired to MCI and also to analyze the potential for patient clustering using routinely-collected electronic health records (EHRs). Our analysis of EHRs indicates that temporal characteristics of patient data incorporated in a deep learning model provides increased power in predicting MCI.

利用电子健康记录对轻度认知障碍进行深度学习预测。
全世界约有 4440 万人被诊断患有痴呆症,据估计,到 2050 年,这一数字将增加近两倍。轻度认知障碍(MCI)是介于正常认知和痴呆症之间的一种中间状态,也是痴呆症发病的一个重要风险因素,预测轻度认知障碍对老龄化人群至关重要。轻度认知障碍(MCI)是由专业医护人员通过全面的认知评估、临床检查、病史以及信息提供者(非常了解患者的个人)的意见来正式确定的。然而,这并不是初级保健就诊中的常规做法,可能会导致诊断的严重延误。在这项研究中,我们使用了深度学习和机器学习技术来预测从认知功能未受损到 MCI 的进展,并使用常规收集的电子健康记录(EHR)来分析患者聚类的可能性。我们对电子病历的分析表明,将患者数据的时间特征纳入深度学习模型可提高预测 MCI 的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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