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用于预测患者贫血风险的综合指标。

A Comprehensive Index for Predicting Risk of Anemia from Patients' Diagnoses.

机构信息

1 Veterans Affairs Medical Center , Washington, District of Columbia.

2 Department of Health Administration and Policy, George Mason University , Fairfax, Virginia.

出版信息

Big Data. 2017 Mar;5(1):42-52. doi: 10.1089/big.2016.0073.

Abstract

This article demonstrates how time-dependent, interacting, and repeating risk factors can be used to create more accurate predictive medicine. In particular, we show how emergence of anemia can be predicted from medical history within electronic health records. We used the Veterans Affairs Informatics and Computing Infrastructure database to examine a retrospective cohort of 9,738,838 veterans over an 11-year period. Using International Clinical Diagnoses Version 9 codes organized into 25 major diagnostic categories, we measured progression of disease by examining changes in risk over time, interactions in risk of combination of diseases, and elevated risk associated with repeated hospitalization for the same diagnostic category. The maximum risk associated with each diagnostic category was used to predict anemia. The accuracy of the model was assessed using a validation cohort. Age and several diagnostic categories significantly contributed to the prediction of anemia. The largest contributors were health status ([Formula: see text] = -1075, t = -92, p < 0.000), diseases of the endocrine ([Formula: see text] = -1046, t = -87, p < 0.000), hepatobiliary ([Formula: see text] = -1043, t = -72, p < 0.000), kidney ([Formula: see text] = -1125, t = -111, p < 0.000), and respiratory systems ([Formula: see text] = -1151, t = -89, p < 0.000). The AUC for the additive model was 0.751 (confidence interval 74.95%-75.26%). The magnitude of AUC suggests that the model may assist clinicians in determining which patients are likely to develop anemia. The procedures used for examining changes in risk factors over time may also be helpful in other predictive medicine projects.

摘要

本文展示了如何使用时变、相互作用和重复的风险因素来创建更准确的预测医学。特别是,我们展示了如何从电子健康记录中的病史预测贫血的发生。我们使用退伍军人事务部信息学和计算基础设施数据库,在 11 年的时间里对 9738838 名退伍军人进行了回顾性队列研究。我们使用国际临床诊断版本 9 代码,将其组织成 25 个主要诊断类别,通过检查随时间推移的风险变化、疾病风险组合的相互作用以及同一诊断类别的重复住院与风险升高,来衡量疾病的进展。使用每个诊断类别相关的最大风险来预测贫血。使用验证队列评估模型的准确性。年龄和几个诊断类别对贫血的预测有显著贡献。最大的贡献者是健康状况 ([Formula: see text] = -1075, t = -92, p < 0.000)、内分泌疾病 ([Formula: see text] = -1046, t = -87, p < 0.000)、肝胆疾病 ([Formula: see text] = -1043, t = -72, p < 0.000)、肾脏 ([Formula: see text] = -1125, t = -111, p < 0.000) 和呼吸系统 ([Formula: see text] = -1151, t = -89, p < 0.000)。加性模型的 AUC 为 0.751(置信区间为 74.95%-75.26%)。AUC 的大小表明,该模型可能有助于临床医生确定哪些患者可能会发生贫血。检查随时间推移的风险因素变化的过程也可能对其他预测医学项目有帮助。

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