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Increased Cortical-Limbic Anatomical Network Connectivity in Major Depression Revealed by Diffusion Tensor Imaging

机译:抑郁症患者增加的皮质边缘系统解剖网络连接通过弥散张量成像技术揭示

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摘要

Magnetic resonance imaging studies have reported significant functional and structural differences between depressed patients and controls. Little attention has been given, however, to the abnormalities in anatomical connectivity in depressed patients. In the present study, we aim to investigate the alterations in connectivity of whole-brain anatomical networks in those suffering from major depression by using machine learning approaches. Brain anatomical networks were extracted from diffusion magnetic resonance images obtained from both 22 first-episode, treatment-naive adults with major depressive disorder and 26 matched healthy controls. Using machine learning approaches, we differentiated depressed patients from healthy controls based on their whole-brain anatomical connectivity patterns and identified the most discriminating features that represent between-group differences. Classification results showed that 91.7% (patients = 86.4%, controls = 96.2%; permutation test, p<0.0001) of subjects were correctly classified via leave-one-out cross-validation. Moreover, the strengths of all the most discriminating connections were increased in depressed patients relative to the controls, and these connections were primarily located within the cortical-limbic network, especially the frontal-limbic network. These results not only provide initial steps toward the development of neurobiological diagnostic markers for major depressive disorder, but also suggest that abnormal cortical-limbic anatomical networks may contribute to the anatomical basis of emotional dysregulation and cognitive impairments associated with this disease.
机译:磁共振成像研究报告了抑郁症患者与对照组之间在功能和结构上存在显着差异。然而,对抑郁症患者的解剖学连接异常很少关注。在本研究中,我们旨在通过使用机器学习方法研究患有严重抑郁症的人的全脑解剖网络的连通性变化。从从22例初治,未治疗的成年人中患有重性抑郁症的成人和26位相匹配的健康对照中获得的扩散磁共振图像中提取大脑解剖网络。使用机器学习方法,我们根据抑郁症患者的全脑解剖学连接方式将其与健康对照者区分开来,并确定了代表组间差异的最有区别的特征。分类结果表明,通过留一法交叉验证对91.7%(患者= 86.4%,对照= 96.2%;置换检验,p <0.0001)的受试者进行了正确分类。而且,相对于对照,抑郁症患者的所有最有区别的连接的强度都增加了,并且这些连接主要位于皮质-边缘网络内,尤其是额-边缘网络内。这些结果不仅为发展针对重度抑郁症的神经生物学诊断标志物提供了初步步骤,而且还表明异常的皮质-边缘解剖网络可能有助于与这种疾病相关的情绪失调和认知障碍的解剖学基础。

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