多模态成像基因组学变压器:将成像与基因组生物标记物紧密结合,用于精神分裂症分类

Nagur Shareef Shaik, Teja Krishna Cherukuri, Vince D. Calhoun, Dong Hye Ye
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引用次数: 0

摘要

精神分裂症(SZ)是一种严重的脑部疾病,其特征是多种认知障碍、大脑结构和功能异常以及遗传因素。它的症状复杂,并与其他精神疾病重叠,这对传统的诊断方法提出了挑战,需要先进的系统来提高诊断的准确性。现有的研究主要集中于用于 SZ 诊断的成像数据,如结构性和功能性 MRI。尽管基因组特征在识别可遗传的 SZ 特征方面具有潜力,但对其整合的关注却较少。在这项研究中,我们介绍了一种多模态成像基因组学转换器(MIGTrans),它将基因组学与结构和功能成像数据进行了细致的整合,以捕捉与 SZ 相关的神经解剖和连接组异常。MIGTrans 的 SZ 分类准确率高达 86.05% (+/- 0.02),提供了清晰的解释,并确定了与 SZ 相关的重要基因组位置和脑形态学/连接模式。
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Multi-modal Imaging Genomics Transformer: Attentive Integration of Imaging with Genomic Biomarkers for Schizophrenia Classification
Schizophrenia (SZ) is a severe brain disorder marked by diverse cognitive impairments, abnormalities in brain structure, function, and genetic factors. Its complex symptoms and overlap with other psychiatric conditions challenge traditional diagnostic methods, necessitating advanced systems to improve precision. Existing research studies have mostly focused on imaging data, such as structural and functional MRI, for SZ diagnosis. There has been less focus on the integration of genomic features despite their potential in identifying heritable SZ traits. In this study, we introduce a Multi-modal Imaging Genomics Transformer (MIGTrans), that attentively integrates genomics with structural and functional imaging data to capture SZ-related neuroanatomical and connectome abnormalities. MIGTrans demonstrated improved SZ classification performance with an accuracy of 86.05% (+/- 0.02), offering clear interpretations and identifying significant genomic locations and brain morphological/connectivity patterns associated with SZ.
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