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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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.