Center of Data and Knowledge Integration for Health (CIDACS). R. Mundo, 121, Salvador BA, Brazil; University of Melbourne, Department of Psychiatry, Austin Health. Studley Road, Heidelberg, Victoria, Australia.
Center of Data and Knowledge Integration for Health (CIDACS). R. Mundo, 121, Salvador BA, Brazil; Centre for Global Mental health (CGMH), London School of Hygiene and Tropical Medicine. King's College London. David Goldberg Centre, De Crespigny Park, London United Kingdom.
Psychiatry Res Neuroimaging. 2020 Oct 30;304:111136. doi: 10.1016/j.pscychresns.2020.111136. Epub 2020 Jul 15.
Schizophrenia is a highly heterogeneous disorder, not only in its phenomenology but in its clinical course. This limits the usefulness of the diagnosis as a basis for both research and clinical management. Methods of reducing this heterogeneity may inform the diagnostic classification. With this in mind, we performed k-means clustering with symptom and cognitive measures to generate groups in a machine-driven way. We found that our data was best organised in three clusters: high cognitive performance, high positive symptomatology, low positive symptomatology. We hypothesized that these clusters represented biological categories, which we tested by comparing these groups in terms of brain volumetric information. We included all the groups in an ANCOVA analysis with post hoc tests, where brain volume areas were modelled as dependent variables, controlling for age and estimated intracranial volume. We found six brain volumes significantly differed between the clusters: left caudate, left cuneus, left lateral occipital, left inferior temporal, right lateral, and right pars opercularis. The k-means clustering provides a way of subtyping schizophrenia which appears to have a biological basis, though one that requires both replication and confirmation of its clinical significance.
精神分裂症是一种高度异质的障碍,不仅表现在其现象学上,而且表现在其临床过程中。这限制了诊断作为研究和临床管理基础的有用性。减少这种异质性的方法可能会为诊断分类提供信息。考虑到这一点,我们使用症状和认知测量进行了 k-均值聚类,以机器驱动的方式生成组。我们发现我们的数据最好分为三组:高认知表现、高阳性症状、低阳性症状。我们假设这些聚类代表生物学类别,我们通过比较这些组的脑体积信息来测试这些类别。我们在协方差分析中包括了所有组,并进行了事后检验,其中脑体积区域被建模为因变量,控制年龄和估计的颅内体积。我们发现六个脑体积在聚类之间有显著差异:左尾状核、左楔前叶、左外侧枕叶、左颞下回、右外侧和右额下回。k-均值聚类提供了一种精神分裂症的亚型化方法,这种方法似乎具有生物学基础,但需要对其临床意义进行复制和确认。