Lin Xiao, Li WeiKai, Dong Guangheng, Wang Qiandong, Sun Hongqiang, Shi Jie, Fan Yong, Li Peng, Lu Lin
Peking University Sixth Hospital, Peking University Institute of Mental Health, Key Laboratory of Mental Health, Ministry of Health, National Clinical Research Center for Mental Disorders, Peking University, Beijing, China.
College of Computer Science and Technology, Nanjing University of Aeronautics and Astronautics, Nanjing, China.
Front Cell Dev Biol. 2021 Feb 25;9:631864. doi: 10.3389/fcell.2021.631864. eCollection 2021.
Increasing pieces of evidence suggest that abnormal brain connectivity plays an important role in the pathophysiology of schizophrenia. As an essential strategy in psychiatric neuroscience, the research of brain connectivity-based neuroimaging biomarkers has gained increasing attention. Most of previous studies focused on a single modality of the brain connectomics. Multimodal evidence will not only depict the full profile of the brain abnormalities of patients but also contribute to our understanding of the neurobiological mechanisms of this disease.
In the current study, 99 schizophrenia patients, 69 sex- and education-matched healthy controls, and 42 unaffected first-degree relatives of patients were recruited and scanned. The brain was parcellated into 246 regions and multimodal network analyses were used to construct brain connectivity networks for each participant.
Using the brain connectomics from three modalities as the features, the multi-kernel support vector machine method yielded high discrimination accuracies for schizophrenia patients (94.86%) and for the first-degree relatives (95.33%) from healthy controls. Using an independent sample (49 patients and 122 healthy controls), we tested the model and achieved a classification accuracy of 64.57%. The convergent pattern within the basal ganglia and thalamus-cortex circuit exhibited high discriminative power during classification. Furthermore, substantial overlaps of the brain connectivity abnormality between patients and the unaffected first-degree relatives were observed compared to healthy controls.
The current findings demonstrate that decreased functional communications between the basal ganglia, thalamus, and the prefrontal cortex could serve as biomarkers and endophenotypes for schizophrenia.
越来越多的证据表明,大脑连接异常在精神分裂症的病理生理学中起重要作用。作为精神神经科学的一项重要策略,基于大脑连接的神经影像学生物标志物研究受到越来越多的关注。以往的大多数研究都集中在大脑连接组学的单一模式上。多模态证据不仅将描绘出患者大脑异常的全貌,还将有助于我们理解这种疾病的神经生物学机制。
在本研究中,招募并扫描了99名精神分裂症患者、69名性别和教育程度匹配的健康对照者以及42名未患病的患者一级亲属。将大脑划分为246个区域,并使用多模态网络分析为每个参与者构建大脑连接网络。
以三种模式的大脑连接组学为特征,多核支持向量机方法对精神分裂症患者(94.86%)和来自健康对照者的一级亲属(95.33%)具有较高的判别准确率。使用独立样本(49名患者和122名健康对照者),我们对模型进行了测试,分类准确率达到64.57%。在分类过程中,基底神经节和丘脑 - 皮质回路内的收敛模式表现出较高的判别能力。此外,与健康对照者相比,观察到患者和未患病的一级亲属之间大脑连接异常存在大量重叠。
目前的研究结果表明,基底神经节、丘脑和前额叶皮质之间功能通信的减少可作为精神分裂症的生物标志物和内表型。