脑岛和杏仁核之间的疼痛回避和功能连接使用机器学习识别重度抑郁症患者的自杀企图者。

IF 2.8 2区 心理学 Q2 NEUROSCIENCES
Ziyu Hao, Huanhuan Li, Lisheng Ouyang, Fang Sun, Xiaotong Wen, Xiang Wang
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引用次数: 2

摘要

疼痛回避可以有效区分重度抑郁症患者的自杀企图者和非自杀企图者。然而,自杀未遂者疼痛处理背后的神经回路尚未被全面描述。在研究1中,我们招募了有自杀企图史(MDD- sa)和没有自杀企图史(MDD- nsa)的重度抑郁症患者,使用潜在特征分析来检查心理疼痛的模式。此外,在研究2中,包括MDD-SA、MDD-NSA和健康对照在内的参与者进行了静息状态功能磁共振成像。我们使用了包括灰质体积(GMV)特征、感兴趣区域的功能连接(FC)大脑模式和行为数据在内的机器学习来识别自杀未遂者。结果确定了MDD患者心理疼痛的3种潜在类型:低痛型(18.9%)、疼痛感觉型(37.2%)和疼痛回避型(43.9%)。此外,高度回避痛苦的自杀企图者比例最高。多模态分类器的准确率(63% ~ 92%)明显高于纯脑分类器(56% ~ 85%)和纯行为分类器(64% ~ 73%)。在自杀企图分类模型的最优特征集中,疼痛回避排名第一。脑成像的关键特征为左杏仁核与右脑岛、右眼窝额叶与左丘脑、左前扣带皮层与左脑岛、右眼窝额叶、杏仁核、右丘脑GMV。此外,还提供了识别自杀企图者的最佳特征集,包括疼痛回避和心理疼痛神经回路的关键脑模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pain avoidance and functional connectivity between insula and amygdala identifies suicidal attempters in patients with major depressive disorder using machine learning.

Pain avoidance can effectively classify suicide attempters from non-attempters among patients with major depressive disorder (MDD). However, the neural circuits underlying pain processing in suicide attempters have not been described comprehensively. In Study 1, we recruited MDD patients with a history of suicide attempts (MDD-SA), and those without (MDD-NSA) to examine the patterns of psychological pain using the latent profile analysis. Further, in Study 2, participants including the MDD-SA, MDD-NSA, and healthy controls underwent resting-state functional magnetic resonance imaging. We used machine learning that included features of gray matter volume (GMV), the functional connectivity (FC) brain patterns of the region of interest, and behavioral data to identify suicide attempters. The results identified three latent classes of psychological pain in MDD patients: the low pain class (18.9%), the painful feeling class (37.2%), and the pain avoidance class (43.9%). Furthermore, the proportion of suicide attempters with high pain avoidance was the highest. The accuracy of multimodality classifiers (63%-92%) was significantly higher than that of brain-only classifiers (56%-85%) and behavior-only classifiers (64%-73%). Pain avoidance ranked first in the optimal feature set of the suicide attempt classification model. The crucial brain imaging features were FC between the left amygdala and right insula, right orbitofrontal and left thalamus, left anterior cingulate cortex and left insula, right orbitofrontal, amygdala, and the GMV of right thalamus. Additionally, the optimal feature set, including pain avoidance and crucial brain patterns of psychological pain neural circuits, was provided for the identification of suicide attempters.

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来源期刊
Psychophysiology
Psychophysiology 医学-神经科学
CiteScore
6.80
自引率
8.10%
发文量
225
审稿时长
2 months
期刊介绍: Founded in 1964, Psychophysiology is the most established journal in the world specifically dedicated to the dissemination of psychophysiological science. The journal continues to play a key role in advancing human neuroscience in its many forms and methodologies (including central and peripheral measures), covering research on the interrelationships between the physiological and psychological aspects of brain and behavior. Typically, studies published in Psychophysiology include psychological independent variables and noninvasive physiological dependent variables (hemodynamic, optical, and electromagnetic brain imaging and/or peripheral measures such as respiratory sinus arrhythmia, electromyography, pupillography, and many others). The majority of studies published in the journal involve human participants, but work using animal models of such phenomena is occasionally published. Psychophysiology welcomes submissions on new theoretical, empirical, and methodological advances in: cognitive, affective, clinical and social neuroscience, psychopathology and psychiatry, health science and behavioral medicine, and biomedical engineering. The journal publishes theoretical papers, evaluative reviews of literature, empirical papers, and methodological papers, with submissions welcome from scientists in any fields mentioned above.
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