迈向自动化早期败血症警报:从护理记录中识别感染患者

Emilia Apostolova, Tom Velez
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引用次数: 5

摘要

严重败血症和感染性休克影响数百万患者,死亡率接近50%。早期识别高危患者可显著改善预后。电子监测工具已经开发出来,用于监测结构化的电子医疗记录,并自动识别败血症的早期迹象。然而,许多脓毒症的危险因素(如感染的症状和体征)往往只在免费文本临床记录中被捕获。在这项研究中,我们开发了一种自动监测感染体征和症状的护理笔记的方法。我们使用了一种创造性的方法来自动生成带注释的数据集。该数据集被用来创建一个机器学习模型,该模型的f1得分范围从79到96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Automated Early Sepsis Alerting: Identifying Infection Patients from Nursing Notes
Severe sepsis and septic shock are conditions that affect millions of patients and have close to 50% mortality rate. Early identification of at-risk patients significantly improves outcomes. Electronic surveillance tools have been developed to monitor structured Electronic Medical Records and automatically recognize early signs of sepsis. However, many sepsis risk factors (e.g. symptoms and signs of infection) are often captured only in free text clinical notes. In this study, we developed a method for automatic monitoring of nursing notes for signs and symptoms of infection. We utilized a creative approach to automatically generate an annotated dataset. The dataset was used to create a Machine Learning model that achieved an F1-score ranging from 79 to 96%.
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