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Initial Results in Alzheimer's Disease Progression Modeling Using Imputed Health State Profiles

机译:使用推算的健康状态档案进行的阿尔茨海默氏病疾病进展建模的初步结果

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This paper describes an initial step in developing a set of quasi-patient profiles, each representing a complete longitudinal medical history of Alzheimer's disease (AD) - from normal health to the clinical emergence of the disease and beyond. Quasi-patient is the term given to a unified medical record created through the optimal imputation of individual records, and the guided merger and completion of multiple patient records from the Alzheimer's Disease Neuroimaging Initiative (ADNI). In the present paper, imputation strategies and boosted ensemble decision trees are used to characterize the health states of patients in the ADNI database which consistently yield year-by-year health state predictions of 80% or greater accuracy. In addition, relative to ordinarily ignoring missing medical records in a patient's history, imputation and state estimation guided by globally-optimal decision criteria resulted in an accuracy increase from 76.1% to 81.9%.
机译:本文介绍了开发一组准患者档案的第一步,每个档案都代表了阿尔茨海默氏病(AD)的完整纵向医学史-从正常健康到该疾病的临床出现及以后。准患者是指通过最佳记录个人记录,以及阿尔茨海默氏病神经影像学倡议(ADNI)指导的合并和完成多个患者记录而创建的统一病历的术语。在本文中,使用插补策略和增强的集成决策树来表征ADNI数据库中患者的健康状况,这些数据一致地得出每年80%或更高准确度的健康状况预测。另外,相对于通常忽略患者历史记录中缺少的医疗记录,以全局最佳决策标准为指导的归因和状态估计将准确性从76.1%提高到81.9%。

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