Simultaneous Utilization of Mood Disorder Questionnaire and Bipolar Spectrum Diagnostic Scale for Machine Learning-Based Classification of Patients With Bipolar Disorders and Depressive Disorders.

IF 1.8 4区 医学 Q3 PSYCHIATRY Psychiatry Investigation Pub Date : 2024-08-01 Epub Date: 2024-08-02 DOI:10.30773/pi.2023.0361
Kyungwon Kim, Hyun Ju Lim, Je-Min Park, Byung-Dae Lee, Young-Min Lee, Hwagyu Suh, Eunsoo Moon
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Abstract

Objective: Bipolar and depressive disorders are distinct disorders with clearly different clinical courses, however, distinguishing between them often presents clinical challenges. This study investigates the utility of self-report questionnaires, the Mood Disorder Questionnaire (MDQ) and Bipolar Spectrum Diagnostic Scale (BSDS), with machine learning-based multivariate analysis, to classify patients with bipolar and depressive disorders.

Methods: A total of 189 patients with bipolar disorders and depressive disorders were included in the study, and all participants completed both the MDQ and BSDS questionnaires. Machine-learning classifiers, including support vector machine (SVM) and linear discriminant analysis (LDA), were exploited for multivariate analysis. Classification performance was assessed through cross-validation.

Results: Both MDQ and BSDS demonstrated significant differences in each item and total scores between the two groups. Machine learning-based multivariate analysis, including SVM, achieved excellent discrimination levels with area under the ROC curve (AUC) values exceeding 0.8 for each questionnaire individually. In particular, the combination of MDQ and BSDS further improved classification performance, yielding an AUC of 0.8762.

Conclusion: This study suggests the application of machine learning to MDQ and BSDS can assist in distinguishing between bipolar and depressive disorders. The potential of combining high-dimensional psychiatric data with machine learning-based multivariate analysis as an effective approach to psychiatric disorders.

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基于机器学习的双相情感障碍和抑郁障碍患者分类同时使用情绪障碍问卷和双相情感谱系诊断量表
目的:双相情感障碍和抑郁症是两种截然不同的疾病,其临床病程明显不同,然而,如何区分这两种疾病往往是临床难题。本研究通过基于机器学习的多变量分析,研究了自我报告问卷、情绪障碍问卷(MDQ)和躁郁症诊断量表(BSDS)对双相情感障碍和抑郁障碍患者进行分类的实用性:研究共纳入了189名双相情感障碍和抑郁障碍患者,所有参与者都填写了MDQ和BSDS问卷。机器学习分类器,包括支持向量机(SVM)和线性判别分析(LDA),被用于多变量分析。分类性能通过交叉验证进行评估:结果:MDQ 和 BSDS 在各项目和总分上都显示出两组间的显著差异。基于机器学习的多变量分析(包括 SVM)达到了极佳的分辨水平,每份问卷的 ROC 曲线下面积(AUC)值均超过 0.8。特别是,MDQ 和 BSDS 的组合进一步提高了分类性能,AUC 达到 0.8762:本研究表明,将机器学习应用于 MDQ 和 BSDS 可以帮助区分双相情感障碍和抑郁障碍。将高维精神病学数据与基于机器学习的多元分析相结合,有望成为治疗精神病的有效方法。
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来源期刊
CiteScore
4.10
自引率
3.70%
发文量
105
审稿时长
6-12 weeks
期刊介绍: The Psychiatry Investigation is published on the 25th day of every month in English by the Korean Neuropsychiatric Association (KNPA). The Journal covers the whole range of psychiatry and neuroscience. Both basic and clinical contributions are encouraged from all disciplines and research areas relevant to the pathophysiology and management of neuropsychiatric disorders and symptoms, as well as researches related to cross cultural psychiatry and ethnic issues in psychiatry. The Journal publishes editorials, review articles, original articles, brief reports, viewpoints and correspondences. All research articles are peer reviewed. Contributions are accepted for publication on the condition that their substance has not been published or submitted for publication elsewhere. Authors submitting papers to the Journal (serially or otherwise) with a common theme or using data derived from the same sample (or a subset thereof) must send details of all relevant previous publications and simultaneous submissions. The Journal is not responsible for statements made by contributors. Material in the Journal does not necessarily reflect the views of the Editor or of the KNPA. Manuscripts accepted for publication are copy-edited to improve readability and to ensure conformity with house style.
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