利用社会风险因素增加医院评分以提高对急性心肌梗死后30天再入院的预测

Iben Ricket, Michael E Matheny, Ruth M Reeves, Rashmee U Shah, Christine A Goodrich, Glenn Gobbel, Meagan E Stabler, Amy M Perkins, Freneka Minter, Chad Dorn, Bruce E Bray, Lee Christensen, Ramkiran Gouripeddi, John Higgins, Wendy W Chapman, Todd MacKenzie, Jeremiah R Brown
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引用次数: 0

摘要

背景:医院评分是一种众所周知的、经过验证的工具,用于预测不同患者群体的再入院风险。使用自然语言处理将社会风险因素与医院评分相结合,可以提高其预测急性心肌梗死后30天再入院的能力。方法:回顾性队列纳入2007年1月1日至2016年12月31日在范德比尔特大学医学中心住院的患者,主要指标诊断为急性心肌梗死,出院时存活。为了补充30天再入院的确定,数据与医疗保险和医疗补助服务中心(CMS)的管理数据相关联。从队列中提取临床记录,并部署自然语言处理模型,计算提及的八个社会风险因素。使用医院评分、其组成变量和自然语言处理衍生的社会风险因素,运行逻辑回归预测模型。进行ROC比较分析。结果:纳入独特患者6165例,其中男性4137例(67.1%),黑人或其他有色人种1020例(16.5%),平均年龄67岁(SD: 13), 30天再入院率15.1% (N=934)。最终的测试集auroc在0.635 ~ 0.669之间。包含医院评分成分变量和自然语言处理衍生的社会风险因素的模型获得最高的AUROC。讨论:使用自然语言处理提取的社会风险因素在添加到医院评分组合时改善了模型的性能。临床医生和卫生系统在使用医院评分综合评估急性心肌梗死住院患者再入院风险时应考虑纳入社会风险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmenting the Hospital Score with social risk factors to improve prediction for 30-day readmission following acute myocardial infarction.

Background: Hospital Score is a well-known and validated tool for predicting readmission risk among diverse patient populations. Integrating social risk factors using natural language processing with the Hospital Score may improve its ability to predict 30-day readmissions following an acute myocardial infarction.

Methods: A retrospective cohort included patients hospitalized at Vanderbilt University Medical Center between January 1, 2007, and December 31, 2016, with a primary index diagnosis of acute myocardial infarction, who were discharged alive. To supplement ascertainment of 30-day readmissions, data were linked to Center for Medicare & Medicaid Services (CMS) administrative data. Clinical notes from the cohort were extracted, and a natural language processing model was deployed, counting mentions of eight social risk factors. A logistic regression prediction model was run using the Hospital Score composite, its component variables, and the natural language processing-derived social risk factors. ROC comparison analysis was performed.

Results: The cohort included 6,165 unique patients, where 4,137 (67.1%) were male, 1,020 (16.5%) were Black or other people of color, the average age was 67 years (SD: 13), and the 30-day hospital readmission rate was 15.1% (N=934). The final test-set AUROCs were between 0.635 and 0.669. The model containing the Hospital Score component variables and the natural language processing-derived social risk factors obtained the highest AUROC.

Discussion: Social risk factors extracted using natural language processing improved model performance when added to the Hospital Score composite. Clinicians and health systems should consider incorporating social risk factors when using the Hospital Score composite to evaluate risk for readmission among patients hospitalized for acute myocardial infarction.

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