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In the pursuit of partnership: patient and family engagement in critical care medicine.追求合作:患者和家属参与重症监护医学。
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自然语言处理测量医疗保健专业人员和危重病患者家属之间的沟通频率和模式。

Natural language processing to measure the frequency and mode of communication between healthcare professionals and family members of critically ill patients.

机构信息

Department of Critical Care Medicine, Cumming School of Medicine, University of Calgary and Alberta Health Services, Calgary, Alberta, Canada.

Data Intelligence for Health Lab, Cumming School of Medicine, University of Calgary, Calgary, Alberta, Canada.

出版信息

J Am Med Inform Assoc. 2021 Mar 1;28(3):541-548. doi: 10.1093/jamia/ocaa263.

DOI:10.1093/jamia/ocaa263
PMID:33201981
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7936522/
Abstract

OBJECTIVE

To apply natural language processing (NLP) techniques to identify individual events and modes of communication between healthcare professionals and families of critically ill patients from electronic medical records (EMR).

MATERIALS AND METHODS

Retrospective cohort study of 280 randomly selected adult patients admitted to 1 of 15 intensive care units (ICU) in Alberta, Canada from June 19, 2012 to June 11, 2018. Individual events and modes of communication were independently abstracted using NLP and manual chart review (reference standard). Preprocessing techniques and 2 NLP approaches (rule-based and machine learning) were evaluated using sensitivity, specificity, and area under the receiver operating characteristic curves (AUROC).

RESULTS

Over 2700 combinations of NLP methods and hyperparameters were evaluated for each mode of communication using a holdout subset. The rule-based approach had the highest AUROC in 65 datasets compared to the machine learning approach in 21 datasets. Both approaches had similar performance in 17 datasets. The rule-based AUROC for the grouped categories of patient documented to have family or friends (0.972, 95% CI 0.934-1.000), visit by family/friend (0.882 95% CI 0.820-0.943) and phone call with family/friend (0.975, 95% CI: 0.952-0.998) were high.

DISCUSSION

We report an automated method to quantify communication between healthcare professionals and family members of adult patients from free-text EMRs. A rule-based NLP approach had better overall operating characteristics than a machine learning approach.

CONCLUSION

NLP can automatically and accurately measure frequency and mode of documented family visitation and communication from unstructured free-text EMRs, to support patient- and family-centered care initiatives.

摘要

目的

应用自然语言处理(NLP)技术从电子病历(EMR)中识别医疗保健专业人员与危重症患者家属之间的个体事件和沟通模式。

材料与方法

回顾性队列研究,纳入 2012 年 6 月 19 日至 2018 年 6 月 11 日期间在加拿大阿尔伯塔省 15 个重症监护病房(ICU)之一随机选取的 280 名成年患者。使用 NLP 和手动图表审查(参考标准)独立提取个体事件和沟通模式。使用灵敏度、特异性和接收者操作特征曲线下的面积(AUROC)评估预处理技术和 2 种 NLP 方法(基于规则和机器学习)。

结果

在使用预留子集评估每种沟通模式时,对超过 2700 种 NLP 方法和超参数组合进行了评估。与 21 个数据集相比,基于规则的方法在 65 个数据集中具有最高的 AUROC。在 17 个数据集中,两种方法的性能相似。基于规则的 AUROC 对于记录有家属或朋友的患者(0.972,95%CI 0.934-1.000)、家属/朋友探视(0.882,95%CI 0.820-0.943)和与家属/朋友通话(0.975,95%CI:0.952-0.998)的分组类别较高。

讨论

我们报告了一种从自由文本 EMR 自动量化医疗保健专业人员与成年患者家属之间沟通的方法。基于规则的 NLP 方法的整体操作特征优于机器学习方法。

结论

NLP 可以自动且准确地从非结构化自由文本 EMR 中测量记录的家属探视和沟通的频率和模式,以支持以患者和家庭为中心的护理计划。