从电子健康记录中提取抑郁症状和功能障碍

You-Chen Zhang, Chung-Hong Lee, Tyng-Yeu Liang, Wei-Che Chung, Kuei-Han Li, Cheng-Chieh Huang, Hong-Jie Dai, Chi-Shin Wu, C. Kuo, Chu-Hsien Su, Horng-Chang Yang
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引用次数: 1

摘要

本研究旨在从电子健康记录(EHRs)中提取重度抑郁症的症状特征和功能障碍。本研究由三名注释者对台湾某医疗中心随机抽取的500份出院病历进行图表审查,编制9种抑郁症状和4种功能障碍的注释语料库。命名实体识别技术包括基于字典的方法。、条件随机场模型和深度学习方法被开发用于从电子病历中识别抑郁症状和功能障碍的任务。结果表明,监督学习方法提取抑郁症状的平均微f值几乎是完美的(>0.90),但提取功能障碍的准确度较低。
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Depressive Symptoms and Functional Impairments Extraction From Electronic Health Records
This study aims to extract symptom profiles and functional impairments of major depressive disorder from electronic health records (EHRs). A chart review was conducted by three annotators on 500 discharge notes randomly selected from a medical center in Taiwan to compile annotated corpora for nine depressive symptoms and four types of functional impairment. Named entity recognition techniques including the dictionary-based approach., a conditional random field model, and deep learning approaches were developed for the task of recognizing depressive symptoms and functional impairments from EHRs. The results show that the average micro-F-measures of the supervised learning approaches in extracting depressive symptoms is almost perfect (>0.90) but less accurate for the extraction of functional impairment.
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