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Mapping PTSD symptoms to brain networks: a machine learning study

机译:将PTSD症状映射到脑网络:机器学习研究

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Posttraumatic Stress Disorder (PTSD) is a prevalent and debilitating condition with complex and variable presentation. While PTSD symptom domains (intrusion, avoidance, cognition/mood, and arousal/reactivity) correlate highly, the relative importance of these symptom subsets often differs across patients. In this study, we used machine learning to derive how PTSD symptom subsets differ based upon brain functional connectivity. We acquired resting-state magnetic resonance imaging in a sample (N?=?50) of PTSD patients and characterized clinical features using the PTSD Checklist for DSM-5 (PCL-5). We compared connectivity among 100 cortical and subcortical regions within the default mode, salience, executive, and affective networks. We then used principal component analysis and least-angle regression (LARS) to identify relationships between symptom domain severity and brain networks. We found connectivity predicted PTSD symptom profiles. The goodness of fit (R2) for total PCL-5 score was 0.29 and the R2 for intrusion, avoidance, cognition/mood, and arousal/reactivity symptoms was 0.33, 0.23, ?0.01, and 0.06, respectively. The model performed significantly better than chance in predicting total PCL-5 score (p?=?0.030) as well as intrusion and avoidance scores (p?=?0.002 and p?=?0.034). It was not able to predict cognition and arousal scores (p?=?0.412 and p?=?0.164). While this work requires replication, these findings demonstrate that this computational approach can directly link PTSD symptom domains with neural network connectivity patterns. This line of research provides an important step toward data-driven diagnostic assessments in PTSD, and the use of computational methods to identify individual patterns of network pathology that can be leveraged toward individualized treatment.
机译:后测试性应激障碍(PTSD)是一种普遍和衰弱的条件,具有复杂和变量的呈现。虽然PTSD症状结构域(入侵,避税,认知/心情和唤醒性/反应性)高度相关,但这些症状子集的相对重要性通常对患者常见。在这项研究中,我们使用机器学习来派生PTSD症状子集的基于脑功能连通性。我们在PTSD患者的样品(N = = 50)中获得了休息状态磁共振成像,并使用PTSD清单用于DSM-5(PCL-5)的特征临床特征。我们在默认模式,显着性,执行和情感网络中比较了100个皮质和皮质区域之间的连接。然后,我们使用了主成分分析和最小角度回归(LARS)来识别症状域严重程度和大脑网络之间的关系。我们发现连接预测的PTSD症状轮廓。合适(R2)的良好(R2)分别为0.29,侵扰,避免,认知/心情和唤起/反应性症状的R2分别为0.33,0.23,Δ01和0.06。该模型比预测总PCL-5分数的机会显着更好(P?= 0.030)以及侵入和避免分数(P?= 0.002和P?= 0.034)。它无法预测认知和唤起分数(p?= 0.412和p?= 0.164)。虽然这项工作需要复制,但这些发现表明,这种计算方法可以直接将具有神经网络连接模式的PTSD症状域。这一研究系列为PTSD的数据驱动诊断评估提供了重要的一步,以及使用计算方法来识别可以利用个性化治疗的网络病理学的单独模式。

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