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Classification of First-Episode Psychosis Using Cortical Thickness: A Large Multicenter MRI Study

Schizophrenia Bulletin(2020)SCI 1区

University of Milan | Ludwig Maximilians Univ Munchen | University of Verona | Univ Basel | Univ Cantabria IDIVAL | Kings Coll London | Jena Univ Hosp | Natl Inst Mental Hlth | IRCCS Santa Lucia Fdn | Univ Bari Aldo Moro | Univ Hosp Halle Saale | Univ Milan | Univ Verona | Marques de Valdecilla Univ Hosp | Fondazione IRCCS Ca' Granda Ospedale Maggiore Policlinico

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Abstract
Machine learning classifications of first-episode psychosis (FEP) using neuroimaging have predominantly analyzed brain volumes. Some studies examined cortical thickness, but most of them have used parcellation approaches with data from single sites, which limits claims of generalizability. To address these limitations, we conducted a large-scale, multi-site analysis of cortical thickness comparing parcellations and vertex-wise approaches. By leveraging the multi-site nature of the study, we further investigated how different demographical and site-dependent variables affected predictions. Finally, we assessed relationships between predictions and clinical variables. 428 subjects (147 females, mean age 27.14) with FEP and 448 (230 females, mean age 27.06) healthy controls were enrolled in 8 centers by the ClassiFEP group. All subjects underwent a structural MRI and were clinically assessed. Cortical thickness parcellation (68 areas) and full cortical maps (20,484 vertices) were extracted. Linear Support Vector Machine was used for classification within a repeated nested cross-validation framework. Vertex-wise thickness maps outperformed parcellation-based methods with a balanced accuracy of 66.2% and an Area Under the Curve of 72%. By stratifying our sample for MRI scanner, we increased generalizability across sites. Temporal brain areas resulted as the most influential in the classification. The predictive decision scores significantly correlated with age at onset, duration of treatment, and positive symptoms. In conclusion, although far from the threshold of clinical relevance, temporal cortical thickness proved to classify between FEP subjects and healthy individuals. The assessment of site-dependent variables permitted an increase in the across-site generalizability, thus attempting to address an important machine learning limitation.
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First episode psychosis,Thickness,Machine learning,Support vector machine,Multivariate pattern analysis,Psychosis
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要点】:本研究利用多中心的大规模MRI数据,通过比较脑区划分和逐点分析的方法,探讨了皮质厚度在首次发作精神病患者分类中的应用,并分析了人口统计和站点特异性变量对预测的影响。

方法】:研究采用了线性支持向量机算法,在重复嵌套交叉验证框架下进行分类。

实验】:共招募了428名首次发作精神病患者和448名健康对照者,所有受试者接受了结构性MRI扫描和临床评估。使用皮质厚度脑区划分(68个区域)和全皮质图(20,484个顶点)进行特征提取。逐点分析的方法在平衡准确度(66.2%)和曲线下面积(72%)上优于脑区划分方法,且通过针对MRI扫描器对样本进行分层,提高了跨站点的泛化性。研究表明,颞叶脑区在分类中最为关键,预测决策分数与发病年龄、治疗持续时间和阳性症状显著相关。