Mental Health Center & Psychiatric Laboratory, State Key Laboratory of Biotherapy, West China Hospital, Sichuan University, 610041, Chengdu, Sichuan, China.
West China Brain Research Centre, West China Hospital, Sichuan University, 610041, Chengdu, Sichuan, China.
Neuropsychopharmacology. 2021 Jul;46(8):1502-1509. doi: 10.1038/s41386-020-00926-y. Epub 2021 Jan 6.
Schizophrenia is a complex disorder associated with aberrant brain functional connectivity. This study aims to demonstrate the relation of heterogeneous symptomatology in this disorder to distinct brain connectivity patterns within the triple-network model. The study sample comprised 300 first-episode antipsychotic-naive patients with schizophrenia (FES) and 301 healthy controls (HCs). At baseline, resting-state functional magnetic resonance imaging data were captured for each participant, and concomitant neurocognitive functions were evaluated outside the scanner. Clinical information of 49 FES in the discovery dataset were reevaluated at a 6-week follow-up. Differential features between FES and HCs were selected from triple-network connectivity profiles. Cutting-edge unsupervised machine learning algorithms were used to define patient subtypes. Clinical and cognitive variables were compared between patient subgroups. Two FES subgroups with differing triple-network connectivity profiles were identified in the discovery dataset and confirmed in an independent hold-out cohort. One patient subgroup appearing to have more severe clinical symptoms was distinguished by salience network (SN)-centered hypoconnectivity, which was associated with greater impairments in sustained attention. The other subgroup exhibited hyperconnectivity and manifested greater deficits in cognitive flexibility. The SN-centered hypoconnectivity subgroup had more persistent negative symptoms at the 6-week follow-up than the hyperconnectivity subgroup. The present study illustrates that clinically relevant cognitive subtypes of schizophrenia may be associated with distinct differences in connectivity in the triple-network model. This categorization may foster further analysis of the effects of therapy on these network connectivity patterns, which may help to guide therapeutic choices to effectively reach personalized treatment goals.
精神分裂症是一种与大脑功能连接异常相关的复杂障碍。本研究旨在展示该障碍的异质症状与三重网络模型内的不同大脑连接模式之间的关系。研究样本包括 300 名首发抗精神病药物治疗的精神分裂症患者(FES)和 301 名健康对照者(HCs)。在基线时,为每位参与者采集静息态功能磁共振成像数据,并且在扫描仪外评估伴随的神经认知功能。在发现数据集的 49 名 FES 中进行了 49 名 FES 的临床信息在 6 周的随访中重新评估。从三重网络连接谱中选择 FES 和 HCs 之间的差异特征。使用最先进的无监督机器学习算法来定义患者亚型。比较患者亚组之间的临床和认知变量。在发现数据集中确定了具有不同三重网络连接谱的两个 FES 亚组,并在独立的保留队列中得到了证实。一个似乎具有更严重临床症状的 FES 亚组通过突显网络(SN)为中心的连接不足来区分,这与持续注意力的更大损伤有关。另一个亚组表现出超连接性,并且表现出认知灵活性的更大缺陷。在发现数据集中,SN 为中心的连接不足亚组在 6 周随访时的负面症状比超连接亚组更持久。本研究表明,临床上相关的精神分裂症认知亚型可能与三重网络模型中的连接存在明显差异有关。这种分类可能会促进对这些网络连接模式的治疗效果的进一步分析,这可能有助于指导治疗选择,以有效实现个性化的治疗目标。