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关于全面收集病历信息对收集操作特征是否有用的横断面研究。

A Cross-Sectional Study on Whether Comprehensively Gathering Information From Medical Records Is Useful for the Collection of Operational Characteristics.

作者信息

Yokokawa Daiki, Uehara Takanori, Ohira Yoshiyuki, Noda Kazutaka, Higuchi Naofumi, Kikuchi Eigo, Enatsu Kazuaki, Ikusaka Masatomi

机构信息

General Medicine, Chiba University Hospital, Chiba, JPN.

General Medicine, International University of Health and Welfare Narita Hospital, Chiba, JPN.

出版信息

Cureus. 2024 Jun 4;16(6):e61641. doi: 10.7759/cureus.61641. eCollection 2024 Jun.

Abstract

This study tests whether comprehensively gathering information from medical records is useful for developing clinical decision support systems using Bayes' theorem. Using a single-center cross-sectional study, we retrospectively extracted medical records of 270 patients aged ≥16 years who visited the emergency room at the Tokyo Metropolitan Tama Medical Center with a chief complaint of experiencing headaches. The medical records of cases were analyzed in this study. We manually extracted diagnoses, unique keywords, and annotated keywords, classifying them as either positive or negative. Cross tables were created, and the proportion of combinations for which the likelihood ratios could be calculated was evaluated. Probability functions for the appearance of new unique keywords were modeled, and theoretical values were calculated. We extracted 623 unique keywords, 26 diagnoses, and 6,904 annotated keywords. Likelihood ratios could be calculated only for 276 combinations (1.70%), of which 24 (0.15%) exhibited significant differences. The power function+constant was the best fit for new unique keywords. The increase in the number of combinations after increasing the number of cases indicated that while it is theoretically possible to comprehensively gather information from medical records in this way, doing so presents difficulties related to human costs. It also does not necessarily solve the fundamental issues with medical informatics or with developing clinical decision support systems. Therefore, we recommend using methods other than comprehensive information gathering with Bayes' theorem as the classifier to develop such systems.

摘要

本研究旨在测试全面收集病历信息对于使用贝叶斯定理开发临床决策支持系统是否有用。我们采用单中心横断面研究,回顾性提取了270例年龄≥16岁、以头痛为主诉就诊于东京都立多摩医疗中心急诊科的患者的病历。本研究分析了这些病例的病历。我们手动提取了诊断、唯一关键词和注释关键词,并将它们分类为阳性或阴性。创建了交叉表,并评估了可以计算似然比的组合比例。对新出现的唯一关键词的概率函数进行建模,并计算理论值。我们提取了623个唯一关键词、26种诊断和6904个注释关键词。仅276种组合(1.70%)可以计算似然比,其中24种(0.15%)表现出显著差异。幂函数+常数最适合新的唯一关键词。增加病例数后组合数量的增加表明,虽然理论上可以通过这种方式全面收集病历信息,但这样做存在人力成本方面的困难。它也不一定能解决医学信息学或开发临床决策支持系统的根本问题。因此,我们建议使用除贝叶斯定理全面信息收集之外的其他方法作为分类器来开发此类系统。

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