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首页> 外文期刊>Scientific reports. >Abnormalities in hubs location and nodes centrality predict cognitive slowing and increased performance variability in first-episode schizophrenia patients
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Abnormalities in hubs location and nodes centrality predict cognitive slowing and increased performance variability in first-episode schizophrenia patients

机译:集线器位置和节点中心的异常预测了第一集精神分裂症患者的认知放缓和增加的性能变异性

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摘要

Introducing the Minimum Spanning Tree (MST) algorithms to neural networks science eliminated the problem of arbitrary setting of the threshold for connectivity strength. Despite these advantages, MST has been rarely used to study network abnormalities in schizophrenia. An MST graph mapping a network structure is its simplification, therefore, it is important to verify whether the reconfigured network is significantly related to the behavioural dimensions of the clinical picture of schizophrenia. 35 first-episode schizophrenia patients and 35 matched healthy controls underwent an assessment of information processing speed, cognitive inter-trial variability modelled with ex-Gaussian distributional analysis of reaction times and resting-state EEG recordings to obtain frequency-specific functional connectivity matrices from which MST graphs were computed. The patients' network had a more random structure and star-like arrangement with overloaded hubs positioned more posteriorly than it was in the case of the control group. Deficient processing speed in the group of patients was predicted by increased maximal betweenness centrality in beta and gamma bands, while decreased consistency in cognitive processing was predicted by the betweenness centrality of posterior nodes in the gamma band, together with duration of illness. The betweenness centrality of posterior nodes in the gamma band was also significantly correlated with positive psychotic symptoms in the clinical group.
机译:将最小生成树(MST)算法介绍到神经网络科学中,消除了连接力阈值的任意设置问题。尽管有这些优势,但MST很少用于研究精神分裂症的网络异常。映射网络结构的MST图是其简化,因此,重要的是验证重新配置的网络是否与精神分裂症的临床图像的行为尺寸显着相关。 35次发作精神分裂症患者和35名匹配的健康对照进行了对信息处理速度的评估,对反应时间和休息状态EEG录制的前高斯分布分析建模的认知间可变异,从而获得频率特定的功能连通矩阵计算MST图形。患者的网络具有更随机的结构和明星样的布置,具有超负荷的枢纽,其位于对照组的情况下。通过增加β和γ条带来的最大中心性增加,预测患者组中的缺乏处理速度,同时通过伽马带中的后节点之间的度量与疾病的持续时间增加,预测认知处理的一致性降低。 γ带中的后节点之间的度量与临床组中的阳性精神病症状也显着相关。

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