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Aberrant Functional Network Connectivity Transition Probability in Major Depressive Disorder

机译:严重抑郁症的异常功能性网络连接转移概率

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Major depressive disorder (MDD) is a common and serious mental disorder characterized by a persistent negative feeling and tremendous sadness. In recent decades, several studies used functional network connectivity (FNC), estimated from resting state functional magnetic resonance imaging (fMRI), to investigate the biological signature of MDD. However, the majority of them have ignored the temporal change of brain interaction by focusing on static FNC (sFNC). Dynamic functional network connectivity (dFNC) that explores temporal patterns of functional connectivity (FC) might provide additional information to its static counterpart. In the current study, by applying k-means clustering on dFNC of MDD and healthy subjects (HCs), we estimated 5 different states. Next, we use the hidden Markov model as a potential biomarker to differentiate the dFNC pattern of MDD patients from HCs. Comparing MDD and HC subjects’ hidden Markov model (HMM) features, we have highlighted the role of transition probabilities between states as potential biomarkers and identified that transition probability from a lightly- connected state to highly connected one reduces as symptom severity increases in MDD subjects.Index Terms— Major depressive disorder, Dynamic functional network connectivity, Machine learning, Resting- state functional magnetic resonance imaging, Hidden Markov model
机译:重度抑郁症(MDD)是一种常见且严重的精神障碍,其特征是持续的负面感觉和巨大的悲伤感。近几十年来,一些研究使用了功能网络连接性(FNC)(从静止状态功能磁共振成像(fMRI)估计)来研究MDD的生物学特征。但是,大多数人通过关注静态FNC(sFNC)忽略了大脑互动的时间变化。探索功能连接(FC)的时间模式的动态功能网络连接(dFNC)可能会为其静态对应项提供其他信息。在当前的研究中,通过对MDD和健康受试者(HCs)的dFNC应用k均值聚类,我们估计了5种不同的状态。接下来,我们将隐马尔可夫模型用作潜在的生物标记,以区分MDD患者和HCs的dFNC模式。比较MDD和HC受试者的隐马尔可夫模型(HMM)功能,我们强调了状态之间的转移概率作为潜在生物标志物的作用,并确定了随轻度连接状态到高度连接状态的转移概率随着MDD受试者症状严重程度的增加而降低。关键词:重度抑郁症,动态功能网络连接,机器学习,静止状态功能磁共振成像,隐马尔可夫模型

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