论文标题
跨模式皮层中的网络可控性预测精神病谱系症状
Network controllability in transmodal cortex predicts psychosis spectrum symptoms
论文作者
论文摘要
精神病谱与集中在跨模式结合皮层中的结构性障碍性有关。但是,对这种病理生理学的理解受到专注于与区域的直接连接的专有的限制。使用网络控制理论,我们测量了直接和间接结构连接到一个区域的变化,以获得对精神病谱系病理生理学的新见解。 我们使用了来自费城神经发育群体的8至22岁的1,068名年轻人,使用了精神病症状数据和结构连通性。应用网络控制理论指标,称为平均可控性,我们估计了每个大脑区域利用其直接和间接结构连接的能力来控制线性脑动力学。接下来,使用非线性回归,我们确定了平均可控性可以预测样本外测试中的阴性和阳性精神病谱系症状的准确性。我们还比较了平均可控性与强度的预测性能,该预测性能仅索引与区域的直接连接。最后,我们评估了精神病谱系症状的预测性能在跨越跨模式皮质的功能层次结构中如何变化。 平均可控性优于预测阳性精神病谱系症状方面的强度,表明将间接结构连接索引到区域改善了预测性能。至关重要的是,改进的预测集中在平均可控性的关联皮层中,而在整个皮质中的强度预测性能均匀,这表明索引间接连接在关联皮层中至关重要。 检查直接和间接结构连接与关联皮层的个人间变化对于准确预测阳性精神病谱系症状至关重要。
The psychosis spectrum is associated with structural dysconnectivity concentrated in transmodal association cortex. However, understanding of this pathophysiology has been limited by an exclusive focus on the direct connections to a region. Using Network Control Theory, we measured variation in both direct and indirect structural connections to a region to gain new insights into the pathophysiology of the psychosis spectrum. We used psychosis symptom data and structural connectivity in 1,068 youths aged 8 to 22 years from the Philadelphia Neurodevelopmental Cohort. Applying a Network Control Theory metric called average controllability, we estimated each brain region's capacity to leverage its direct and indirect structural connections to control linear brain dynamics. Next, using non-linear regression, we determined the accuracy with which average controllability could predict negative and positive psychosis spectrum symptoms in out-of-sample testing. We also compared prediction performance for average controllability versus strength, which indexes only direct connections to a region. Finally, we assessed how the prediction performance for psychosis spectrum symptoms varied over the functional hierarchy spanning unimodal to transmodal cortex. Average controllability outperformed strength at predicting positive psychosis spectrum symptoms, demonstrating that indexing indirect structural connections to a region improved prediction performance. Critically, improved prediction was concentrated in association cortex for average controllability, whereas prediction performance for strength was uniform across the cortex, suggesting that indexing indirect connections is crucial in association cortex. Examining inter-individual variation in direct and indirect structural connections to association cortex is crucial for accurate prediction of positive psychosis spectrum symptoms.