首页> 外文期刊>JMIR Medical Informatics >Predicting Inpatient Falls Using Natural Language Processing of Nursing Records Obtained From Japanese Electronic Medical Records: Case-Control Study
【24h】

Predicting Inpatient Falls Using Natural Language Processing of Nursing Records Obtained From Japanese Electronic Medical Records: Case-Control Study

机译:预测住院病人使用从日本电子医疗记录获得的护理记录的自然语言处理:案例对照研究

获取原文
       

摘要

Background Falls in hospitals are the most common risk factor that affects the safety of inpatients and can result in severe harm. Therefore, preventing falls is one of the most important areas of risk management for health care organizations. However, existing methods for predicting falls are laborious and costly. Objective The objective of this study is to verify whether hospital inpatient falls can be predicted through the analysis of a single input—unstructured nursing records obtained from Japanese electronic medical records (EMRs)—using a natural language processing (NLP) algorithm and machine learning. Methods The nursing records of 335 fallers and 408 nonfallers for a 12-month period were extracted from the EMRs of an acute care hospital and randomly divided into a learning data set and test data set. The former data set was subjected to NLP and machine learning to extract morphemes that contributed to separating fallers from nonfallers to construct a model for predicting falls. Then, the latter data set was used to determine the predictive value of the model using receiver operating characteristic (ROC) analysis. Results The prediction of falls using the test data set showed high accuracy, with an area under the ROC curve, sensitivity, specificity, and odds ratio of mean 0.834 (SD 0.005), mean 0.769 (SD 0.013), mean 0.785 (SD 0.020), and mean 12.27 (SD 1.11) for five independent experiments, respectively. The morphemes incorporated into the final model included many words closely related to known risk factors for falls, such as the use of psychotropic drugs, state of consciousness, and mobility, thereby demonstrating that an NLP algorithm combined with machine learning can effectively extract risk factors for falls from nursing records. Conclusions We successfully established that falls among hospital inpatients can be predicted by analyzing nursing records using an NLP algorithm and machine learning. Therefore, it may be possible to develop a fall risk monitoring system that analyzes nursing records daily and alerts health care professionals when the fall risk of an inpatient is increased.
机译:背景下落在医院是影响住院患者安全性的最常见的危险因素,并且可能导致严重的伤害。因此,预防跌幅是医疗保健组织最重要的风险管理领域之一。然而,预测瀑布的现有方法是艰苦的且昂贵的。目的本研究的目的是通过分析从日本电子医疗记录(EMRS)获得的单一输入非结构化护理记录来预测医院住院病程度的落户是否可以预测。 - 用于自然语言处理(NLP)算法和机器学习。方法从急性护理医院的EMRS中提取335次衰落和408个非降临的护理记录,并从急性护理医院的EMR中提取,并随机分为学习数据集和测试数据集。前者数据集经过NLP和机器学习,以提取有助于从非降级人分离衰落以构建预测瀑布模型的语素。然后,使用后一个数据集用于使用接收器操作特征(ROC)分析来确定模型的预测值。结果使用测试数据集的跌落预测显示出高精度,下降曲线下的面积,敏感性,特异性和平均值的比例为平均值0.834(SD 0.005),平均值0.769(SD 0.013),平均0.785(SD 0.020) ,以及五个独立实验的平均值12.27(SD 1.11)。纳入最终模型的语素包括许多与堕落风险因素密切相关的单词,例如使用精神药物,意识状态和移动性,从而证明了NLP算法与机器学习结合可以有效提取风险因素从护理记录下降。结论我们成功地确定了医院住院患者的跌落,可以通过使用NLP算法和机器学习分析护理记录来预测。因此,有可能制定一个秋季风险监测系统,当入住住院性的危险时,每天分析每日护理记录并提醒医疗保健专业人员。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号