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Distinct multivariate brain morphological patterns and their added predictive value with cognitive and polygenic risk scores in mental disorders

机译:精神疾病的独特多元脑形态学模式及其对认知和多基因风险评分的预测价值

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The brain underpinnings of schizophrenia and bipolar disorders are multidimensional, reflecting complex pathological processes and causal pathways, requiring multivariate techniques to disentangle. Furthermore, little is known about the complementary clinical value of brain structural phenotypes when combined with data on cognitive performance and genetic risk. Using data-driven fusion of cortical thickness, surface area, and gray matter density maps (GMD), we found six biologically meaningful patterns showing strong group effects, including four statistically independent multimodal patterns reflecting co-occurring alterations in thickness and GMD in patients, over and above two other independent patterns of widespread thickness and area reduction. Case-control classification using cognitive scores alone revealed high accuracy, and adding imaging features or polygenic risk scores increased performance, suggesting their complementary predictive value with cognitive scores being the most sensitive features. Multivariate pattern analyses reveal distinct patterns of brain morphology in mental disorders, provide insights on the relative importance between brain structure, cognitive and polygenetic risk score in classification of patients, and demonstrate the importance of multivariate approaches in studying the pathophysiological substrate of these complex disorders. Highlights ? Linked ICA showed six independent multivariate morphology patterns sensitive to SZ. ? Machine learning used to compare brain structure, cognitive and genetic scores. ? Cognition showed highest prediction of SZ, boosted by brain structure or genetics.
机译:精神分裂症和双相情感障碍的大脑基础是多维的,反映了复杂的病理过程和因果关系,需要多种技术来解开。此外,当与认知表现和遗传风险的数据相结合时,关于脑结构表型的互补临床价值知之甚少。使用数据驱动的皮质厚度,表面积和灰质密度图(GMD)融合,我们发现了6种在生物学上有意义的模式,显示出强大的群体效应,包括4种统计学上独立的多峰模式,反映了患者厚度和GMD的共同变化,超越了另外两个独立的,广泛的厚度减小和面积减小的模式。仅使用认知评分的病例对照分类显示出较高的准确性,增加影像学特征或多基因风险评分可提高表现,表明其互补的预测价值与认知评分是最敏感的特征。多元模式分析揭示了精神障碍的大脑形态的独特模式,提供了脑结构,认知和多基因风险评分在患者分类中的相对重要性的见解,并证明了多元方法在研究这些复杂疾病的病理生理基础方面的重要性。强调 ?链接的ICA显示出对SZ敏感的六个独立的多元形态学模式。 ?机器学习用于比较大脑结构,认知和遗传得分。 ?认知表现出最高的SZ预测,这是由于大脑结构或遗传学的推动。

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