发现功能性消化不良患者识别模式的关键症状:医生的决定和机器学习。

IF 2.8 4区 医学 Q2 INTEGRATIVE & COMPLEMENTARY MEDICINE
Da-Eun Yoon , Heeyoung Moon , In-Seon Lee , Younbyoung Chae
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引用次数: 0

摘要

背景:辨证是东亚传统医学的一个重要诊断过程,对症状类型相似的患者进行分类。本研究旨在使用显性(基于医生决策)和隐性(基于计算模型)方法确定功能性消化不良(FD)患者区分模式的关键症状。方法:收集21例FD患者的资料,以标准化格式提供给3位医生。每个医生都确定了三种类型:脾胃虚弱,脾虚气滞/肝胃不和,食物潴留。医生评估了功能性消化不良问卷模式识别标准工具中项目所指示的症状的重要性。明确的重要性是通过医生的调查,通过一般评价和选择具体信息用于诊断病人的情况下确定的。通过随机森林分类模型中的特征重要性评估隐含重要性,随机森林分类模型对三种类型进行一般区分,对特定类型进行二值分类。结果:通过两种方法确定了区分FD模式的关键症状。明确的重要性强调饮食和恶心相关的症状,而隐含的重要性认为肤色或胸闷通常是至关重要的。对特定模式类型重要的特定症状也被确定,并且在类型1和3中观察到内隐和外显重要性得分之间的显著相关性。结论:本研究为鉴别FD患者提供了重要的临床资料。我们的研究结果表明,这些方法有助于开发具有更高准确性和可靠性的模式识别工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering the key symptoms for identifying patterns in functional dyspepsia patients: Doctor's decision and machine learning

Background

Pattern identification is a crucial diagnostic process in Traditional East Asian Medicine, classifying patients with similar symptom patterns. This study aims to identify key symptoms for distinguishing patterns in patients with functional dyspepsia (FD) using explicit (doctor's decision-based) and implicit (computational model-based) approaches.

Methods

Data from twenty-one FD patients were collected from local clinics of traditional Korean Medicine and provided to three doctors in a standardized format. Each doctor identified patterns among three types: spleen-stomach weakness, spleen deficiency with qi stagnation/liver-stomach disharmony, and food retention. Doctors evaluated the importance of the symptoms indicated by items in the Standard Tool for Pattern Identification of Functional Dyspepsia questionnaire. Explicit importance was determined through doctors’ survey by general evaluation and by selecting specific information used for the diagnosis of patient cases. Implicit importance was assessed by feature importance from the random forest classification models, which classify three types for general differentiation and perform binary classification for specific types.

Results

Key symptoms for distinguishing FD patterns were identified using two approaches. Explicit importance highlighted dietary and nausea-related symptoms, while implicit importance identified complexion or chest tightness as generally crucial. Specific symptoms important for particular pattern types were also identified, and significant correlation between implicit and explicit importance scores was observed for types 1 and 3.

Conclusion

This study showed important clinical information for differentiating FD patients using real patient data. Our findings suggest that these approaches can contribute to developing tools for pattern identification with enhanced accuracy and reliability.
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来源期刊
Integrative Medicine Research
Integrative Medicine Research Medicine-Complementary and Alternative Medicine
CiteScore
6.50
自引率
2.90%
发文量
65
审稿时长
12 weeks
期刊介绍: Integrative Medicine Research (IMR) is a quarterly, peer-reviewed journal focused on scientific research for integrative medicine including traditional medicine (emphasis on acupuncture and herbal medicine), complementary and alternative medicine, and systems medicine. The journal includes papers on basic research, clinical research, methodology, theory, computational analysis and modelling, topical reviews, medical history, education and policy based on physiology, pathology, diagnosis and the systems approach in the field of integrative medicine.
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