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Sentiment Analysis Based on the Nursing Notes on In-Hospital 28-Day Mortality of Sepsis Patients Utilizing the MIMIC-III Database 원문보기

Computational and mathematical methods in medicine : CMMM, v.2021, 2021년, pp.3440778 -   

Gao, Qiaoyan (Nursing Department, Weihai Central Hospital, Weihai, 264400 Shandong, China) ,  Wang, Dandan (Nursing Department, Weihai Central Hospital, Weihai, 264400 Shandong, China) ,  Sun, Pingping (Nursing Department, Weihai Central Hospital, Weihai, 264400 Shandong, China) ,  Luan, Xiaorong (Nursing Department, Qilu Hospital of Shandong University, Jinan, 250012 Shandong, China) ,  Wang, Wenfeng (School of Science, Shanghai Institute of Technology, Shanghai 201418, China)

Abstract AI-Helper 아이콘AI-Helper

In medical visualization, nursing notes contain rich information about a patient's pathological condition. However, they are not widely used in the prediction of clinical outcomes. With advances in the processing of natural language, information begins to be extracted from large-scale unstructured d...

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