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首页> 外文期刊>Frontiers in Psychiatry >Biclustered Independent Component Analysis for Complex Biomarker and Subtype Identification from Structural Magnetic Resonance Images in Schizophrenia
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Biclustered Independent Component Analysis for Complex Biomarker and Subtype Identification from Structural Magnetic Resonance Images in Schizophrenia

机译:精神分裂症的结构磁共振图像的复杂生物标志物和亚型鉴定的二元独立成分分析

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Clinical and cognitive symptoms domain-based subtyping in schizophrenia (Sz) has been critiqued due to the lack of neurobiological correlates and heterogeneity in symptom scores. We, therefore, present a novel data-driven framework using biclustered independent component analysis to detect subtypes from the reliable and stable gray matter concentration (GMC) of patients with Sz. The developed methodology consists of the following steps: source-based morphometry (SBM) decomposition, selection and sorting of two component loadings, subtype component reconstruction using group information-guided ICA (GIG-ICA). This framework was applied to the top two group discriminative components namely the insula/superior temporal gyrus/inferior frontal gyrus (I-STG-IFG component) and the superior frontal gyrus/middle frontal gyrus/medial frontal gyrus (SFG-MiFG-MFG component) from our previous SBM study, which showed diagnostic group difference and had the highest effect sizes. The aggregated multisite dataset consisted of 382 patients with Sz regressed of age, gender, and site voxelwise. We observed two subtypes (i.e., two different subsets of subjects) each heavily weighted on these two components, respectively. These subsets of subjects were characterized by significant differences in positive and negative syndrome scale (PANSS) positive clinical symptoms (p = 0.005). We also observed an overlapping subtype weighing heavily on both of these components. The PANSS general clinical symptom of this subtype was trend level correlated with the loading coefficients of the SFG-MiFG-MFG component (r = 0.25; p = 0.07). The reconstructed subtype-specific component using GIG-ICA showed variations in voxel regions, when compared to the group component. We observed deviations from mean GMC along with conjunction of features from two components characterizing each deciphered subtype. These inherent variations in GMC among patients with Sz could possibly indicate the need for personalized treatment and targeted drug development.
机译:由于缺乏神经生物学相关性和症状评分的异质性,对精神分裂症(Sz)中基于临床和认知症状的亚型进行了批评。因此,我们提出了一种新颖的数据驱动框架,使用双簇独立分量分析来从Sz患者的可靠和稳定的灰质浓度(GMC)中检测亚型。所开发的方法包括以下步骤:基于源的形态计量(SBM)分解,两个组件加载的选择和排序,使用组信息引导ICA(GIG-ICA)进行子类型的组件重构。此框架应用于前两个组的判别组件,即岛上/颞上回/额下回(I-STG-IFG组件)和额额上/中额回/中额回(SFG-MiFG-MFG组件) )来自我们先前的SBM研究,该研究显示出诊断组的差异,并且具有最大的效应量。汇总的多站点数据集由382名年龄,性别和站点体素水平退化的Sz患者组成。我们观察到两种亚型(即受试者的两个不同子集),每种亚型分别占这两个成分的分量。这些受试者的子集的特征是阳性和阴性综合征量表(PANSS)的阳性临床症状存在显着差异(p = 0.005)。我们还观察到重叠的亚型在这两个组件上的分量都很大。该亚型的PANSS一般临床症状的趋势水平与SFG-MiFG-MFG组分的负荷系数相关(r = 0.25; p = 0.07)。与组成分相比,使用GIG-ICA重建的亚型特异性成分在体素区域显示出差异。我们观察到与平均GMC的偏差,以及表征每个已解密亚型的两个成分的特征的结合。 Sz患者中GMC的这些固有差异可能表明需要个性化治疗和靶向药物开发。

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