TransferGWAS of T1-weighted brain MRI data from UK Biobank.

IF 4 2区 生物学 Q1 GENETICS & HEREDITY PLoS Genetics Pub Date : 2024-12-13 eCollection Date: 2024-12-01 DOI:10.1371/journal.pgen.1011332
Alexander Rakowski, Remo Monti, Christoph Lippert
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Abstract

Genome-wide association studies (GWAS) traditionally analyze single traits, e.g., disease diagnoses or biomarkers. Nowadays, large-scale cohorts such as UK Biobank (UKB) collect imaging data with sample sizes large enough to perform genetic association testing. Typical approaches to GWAS on high-dimensional modalities extract predefined features from the data, e.g., volumes of regions of interest. This limits the scope of such studies to predefined traits and can ignore novel patterns present in the data. TransferGWAS employs deep neural networks (DNNs) to extract low-dimensional representations of imaging data for GWAS, eliminating the need for predefined biomarkers. Here, we apply transferGWAS on brain MRI data from UKB. We encoded 36, 311 T1-weighted brain magnetic resonance imaging (MRI) scans using DNN models trained on MRI scans from the Alzheimer's Disease Neuroimaging Initiative, and on natural images from the ImageNet dataset, and performed a multivariate GWAS on the resulting features. We identified 289 independent loci, associated among others with bone density, brain, or cardiovascular traits, and 11 regions having no previously reported associations. We fitted polygenic scores (PGS) of the deep features, which improved predictions of bone mineral density and several other traits in a multi-PGS setting, and computed genetic correlations with selected phenotypes, which pointed to novel links between diffusion MRI traits and type 2 diabetes. Overall, our findings provided evidence that features learned with DNN models can uncover additional heritable variability in the human brain beyond the predefined measures, and link them to a range of non-brain phenotypes.

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来自UK Biobank的t1加权脑MRI数据的TransferGWAS。
全基因组关联研究(GWAS)传统上分析单一性状,如疾病诊断或生物标记物。如今,英国生物库(UKB)等大规模队列收集的成像数据样本量大到足以进行遗传关联测试。对高维模式进行 GWAS 的典型方法是从数据中提取预定义的特征,如感兴趣区域的体积。这就将此类研究的范围限制在预定义的性状上,并可能忽略数据中存在的新模式。TransferGWAS利用深度神经网络(DNN)提取成像数据的低维表示,用于GWAS,从而消除了对预定义生物标志物的需求。在此,我们将 transferGWAS 应用于 UKB 的脑 MRI 数据。我们使用在阿尔茨海默病神经成像倡议的核磁共振扫描数据和 ImageNet 数据集的自然图像上训练的 DNN 模型对 36,311 个 T1 加权脑磁共振成像(MRI)扫描数据进行了编码,并对得到的特征进行了多变量 GWAS 分析。我们发现了 289 个与骨密度、大脑或心血管特征等相关的独立基因位点,以及 11 个以前未报道过相关性的区域。我们拟合了深度特征的多基因评分(PGS),在多基因评分设置中提高了对骨矿密度和其他几种特征的预测,并计算了与选定表型的遗传相关性,发现了弥散核磁共振成像特征与 2 型糖尿病之间的新联系。总之,我们的研究结果提供了证据,证明利用 DNN 模型学习到的特征可以发现人脑中除预定义测量之外的其他遗传变异,并将它们与一系列非脑表型联系起来。
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来源期刊
PLoS Genetics
PLoS Genetics GENETICS & HEREDITY-
自引率
2.20%
发文量
438
期刊介绍: PLOS Genetics is run by an international Editorial Board, headed by the Editors-in-Chief, Greg Barsh (HudsonAlpha Institute of Biotechnology, and Stanford University School of Medicine) and Greg Copenhaver (The University of North Carolina at Chapel Hill). Articles published in PLOS Genetics are archived in PubMed Central and cited in PubMed.
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