基于fNIRS-VFT功能连通性的阈下抑郁识别:一种机器学习方法

IF 3.3 2区 医学 Q1 PSYCHIATRY
Lin Li, Jingxuan Liu, Yifan Zheng, Chengchao Shi, Wenting Bai
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引用次数: 0

摘要

背景:阈下抑郁(SD)被认为是重度抑郁症(MDD)的前驱阶段和重要的危险因素。及时识别SD具有重要的临床意义。本研究旨在建立一个机器学习(ML)分类模型,利用功能近红外光谱成像(fNIRS)和语言流畅性任务(VFT)对SD个体进行识别。方法:本研究共招募了70名SD患者和73名健康对照(hc),采用可解释随机森林(RF)分类模型,根据fnir - vft期间的功能连接(FC)特征对两组进行区分。结果:RF模型识别SD参与者的曲线下面积(AUC)为0.77,准确度(ACC)为75.86%,灵敏度为75.00%,特异性为76.00%,F1评分为0.75。就重要性而言,排名最高的FC特征在通道(CH) 26(右侧额叶视野)和CH 30(右侧额叶视野),通道3(左侧运动前和辅助运动皮层(pmc和sma))和通道42(右侧pmc和sma)以及通道26(右侧FEF)和CH 32(右侧初级体感皮层(PSC))之间被确定。结论:基于fnir - vft的异常FC特征,尤其是右侧FEF、双侧PSC和右侧pmc - sma的异常FC特征,RF模型能够有效地对SD疗效个体进行分类。本研究结果为SD人群的大规模筛查奠定了基础,为MDD的早期诊断和预防提供了有希望的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification of Subthreshold Depression Based on fNIRS–VFT Functional Connectivity: A Machine Learning Approach

Identification of Subthreshold Depression Based on fNIRS–VFT Functional Connectivity: A Machine Learning Approach

Background: Subthreshold depression (SD) is regarded as a prodromal stage and a substantial risk factor for major depressive disorder (MDD). The timely identification of SD is of critical clinical significance. This study aimed to develop a machine learning (ML) classification model for the identification of individuals with SD using functional near-infrared spectroscopic imaging (fNIRS) and the verbal fluency task (VFT).

Methods: This study recruited a total of 70 participants with SD and matched 73 healthy controls (HCs) to differentiate between the two groups based on functional connectivity (FC) features during fNIRS–VFT, using an interpretable random forest (RF) classification model.

Results: The RF model demonstrated an area under the curve (AUC) of 0.77, an accuracy (ACC) of 75.86%, a sensitivity of 75.00%, a specificity of 76.00% and an F1 score of 0.75 for identifying participants with SD. The highest-ranked FC features, in terms of importance, were identified between Channel (CH) 26 (the right frontal eye fields (FEFs)) and CH 30 (the right FEF), CH 3 (the left premotor and supplementary motor cortex (PMC-and-SMA)) and CH 42 (the right PMC-and-SMA), as well as CH 26 (the right FEF) and CH 32 (the right primary somatosensory cortex (PSC)).

Conclusion: The RF model has the capacity to effectively classify individuals with SD efficacy based on the abnormal FC features of fNIRS–VFT, particularly in the right FEF, bilateral PSC and right PMC-and-SMA. The findings of this study have provided a foundation for large-scale screening of SD populations, offering promising opportunities for the early diagnosis and prevention of MDD.

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来源期刊
Depression and Anxiety
Depression and Anxiety 医学-精神病学
CiteScore
15.00
自引率
1.40%
发文量
81
审稿时长
4-8 weeks
期刊介绍: Depression and Anxiety is a scientific journal that focuses on the study of mood and anxiety disorders, as well as related phenomena in humans. The journal is dedicated to publishing high-quality research and review articles that contribute to the understanding and treatment of these conditions. The journal places a particular emphasis on articles that contribute to the clinical evaluation and care of individuals affected by mood and anxiety disorders. It prioritizes the publication of treatment-related research and review papers, as well as those that present novel findings that can directly impact clinical practice. The journal's goal is to advance the field by disseminating knowledge that can lead to better diagnosis, treatment, and management of these disorders, ultimately improving the quality of life for those who suffer from them.
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