Department of Biomedical Engineering, The University of Melbourne, Victoria, Australia.
Melbourne Brain Centre Imaging Unit, The University of Melbourne, Victoria, Australia.
Hum Brain Mapp. 2019 May;40(7):2212-2228. doi: 10.1002/hbm.24519. Epub 2019 Jan 21.
Complex human behavior emerges from dynamic patterns of neural activity that transiently synchronize between distributed brain networks. This study aims to model the dynamics of neural activity in individuals with schizophrenia and to investigate whether the attributes of these dynamics associate with the disorder's behavioral and cognitive deficits. A hidden Markov model (HMM) was inferred from resting-state functional magnetic resonance imaging (fMRI) data that was temporally concatenated across individuals with schizophrenia (n = 41) and healthy comparison individuals (n = 41). Under the HMM, fluctuations in fMRI activity within 14 canonical resting-state networks were described using a repertoire of 12 brain states. The proportion of time spent in each state and the mean length of visits to each state were compared between groups, and canonical correlation analysis was used to test for associations between these state descriptors and symptom severity. Individuals with schizophrenia activated default mode and executive networks for a significantly shorter proportion of the 8-min acquisition than healthy comparison individuals. While the default mode was activated less frequently in schizophrenia, the duration of each activation was on average 4-5 s longer than the comparison group. Severity of positive symptoms was associated with a longer proportion of time spent in states characterized by inactive default mode and executive networks, together with heightened activity in sensory networks. Furthermore, classifiers trained on the state descriptors predicted individual diagnostic status with an accuracy of 76-85%.
复杂的人类行为源于神经活动的动态模式,这些模式在分布式大脑网络之间短暂同步。本研究旨在对精神分裂症患者的神经活动动力学进行建模,并探讨这些动力学的特征是否与该疾病的行为和认知缺陷相关。从静息状态功能磁共振成像 (fMRI) 数据中推断出隐马尔可夫模型 (HMM),该数据在精神分裂症患者 (n = 41) 和健康对照个体 (n = 41) 之间进行了时间上的串联。在 HMM 下,使用 12 种大脑状态的库来描述 14 个典型静息状态网络内的 fMRI 活动波动。比较组间每个状态的时间比例和每个状态的平均停留时间,并使用典型相关分析测试这些状态描述符与症状严重程度之间的关联。与健康对照个体相比,精神分裂症患者在 8 分钟采集过程中处于默认模式和执行网络的时间比例明显缩短。尽管精神分裂症中默认模式的激活频率较低,但每次激活的持续时间平均比对照组长 4-5 秒。阳性症状的严重程度与以默认模式和执行网络不活跃为特征的状态的时间比例增加以及感觉网络的活性增加有关。此外,基于状态描述符训练的分类器可以以 76-85%的准确度预测个体的诊断状态。