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Can Staff Distinguish Falls: Experimental Hypothesis Verification Using Japanese Incident Reports and Natural Language Processing

机译:员工可以区分下降:使用日本事件报告和自然语言处理的实验假设核查

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摘要

Falls are generally classified into two groups in clinical settings in Japan: falls from the same level and falls from one level to another. We verified whether clinical staff could distinguish between these two types of falls by comparing 3,078 free-text incident reports about falls using a natural language processing technique and a machine learning technique. Common terms were used in reports for both types of falls, but the similarity score between the two types of reports was low, and the performance of identification based on the classification model constructed by support vector machine and deep learning was low. Although it is possible that adjustment of hyper parameters during construction of the classification model was required, we believe that clinical staff cannot distinguish between the two types of falls and do not record the distinction in incident reports.
机译:跌倒通常被分为日本的临床环境中的两组:从同一水平落下并从一个级别落到另一个水平。我们通过使用自然语言处理技术和机器学习技术比较了3,078个自由文本报告,验证了临床人员是否可以区分这两种类型的跌落。常见术语用于两种类型的跌倒报告中,但两种类型的报告之间的相似性得分低,并且基于支持向量机和深度学习构成的分类模型的识别性能低。虽然需要调整分类模型期间的超参数,但我们认为临床工作人员不能区分两种类型的跌落,并没有记录事件报告中的区别。

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