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Artificial Intelligence Algorithms and Natural Language Processing for the Recognition of Syncope Patients on Emergency Department Medical Records

机译:人工智能算法和自然语言处理用于急诊科病历中晕厥患者的识别

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摘要

Background: Enrollment of large cohorts of syncope patients from administrative data is crucial for proper risk stratification but is limited by the enormous amount of time required for manual revision of medical records. Aim: To develop a Natural Language Processing (NLP) algorithm to automatically identify syncope from Emergency Department (ED) electronic medical records (EMRs). Methods: De-identified EMRs of all consecutive patients evaluated at Humanitas Research Hospital ED from 1 December 2013 to 31 March 2014 and from 1 December 2015 to 31 March 2016 were manually annotated to identify syncope. Records were combined in a single dataset and classified. The performance of combined multiple NLP feature selectors and classifiers was tested. Primary Outcomes: NLP algorithms’ accuracy, sensitivity, specificity, positive predictive value, negative predictive value, and F3 score. Results: 15,098 and 15,222 records from 2013 and 2015 datasets were analyzed. Syncope was present in 571 records. Normalized Gini Index feature selector combined with Support Vector Machines classifier obtained the best F3 value (84.0%), with 92.2% sensitivity and 47.4% positive predictive value. A 96% analysis time reduction was computed, compared with EMRs manual review. Conclusions: This artificial intelligence algorithm enabled the automatic identification of a large population of syncope patients using EMRs.
机译:背景:从管理数据中招募大批晕厥患者对于正确进行风险分层至关重要,但受限于手动修改病历所需的大量时间。目的:开发一种自然语言处理(NLP)算法,以自动从急诊科(ED)电子病历(EMR)中识别晕厥。方法:手动注释在2013年12月1日至2014年3月31日以及2015年12月1日至2016年3月31日在Humanitas Research Hospital ED进行评估的所有连续患者的EMR手动注释,以鉴定晕厥。将记录合并到单个数据集中并进行分类。测试了多个NLP功能选择器和分类器的组合性能。主要结果:NLP算法的准确性,敏感性,特异性,阳性预测值,阴性预测值和F3得分。结果:分析了2013年和2015年数据集的15098条和15222条记录。晕厥出现在571条记录中。归一化的Gini指数特征选择器与Support Vector Machines分类器相结合,获得了最佳的F3值(84.0%),灵敏度为92.2%,阳性预测值为47.4%。与EMR的人工审核相比,分析时间减少了96%。结论:这种人工智能算法能够使用EMR自动识别大量晕厥患者。

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