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Longitudinal Genotype-Phenotype Association Study via Temporal Structure Auto-learning Predictive Model

机译:基于时间结构自动学习预测模型的纵向基因型-表型关联研究

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With rapid progress in high-throughput genotyping and neuroimaging, imaging genetics has gained significant attention in the research of complex brain disorders, such as Alzheimer's Disease (AD). The genotype-phenotype association study using imaging genetic data has the potential to reveal genetic basis and biological mechanism of brain structure and function. AD is a progressive neurodegenerative disease, thus, it is crucial to look into the relations between SNPs and longitudinal variations of neuroimaging phenotypes. Although some machine learning models were newly presented to capture the longitudinal patterns in genotype-phenotype association study, most of them required fixed longitudinal structures of prediction tasks and could not automatically learn the interrelations among longitudinal prediction tasks. To address this challenge, we proposed a novel temporal structure auto-learning model to automatically uncover longitudinal genotype-phenotype interrelations and utilized such interrelated structures to enhance phenotype prediction in the meantime. We conducted longitudinal phenotype prediction experiments on the ADNI cohort including 3,123 SNPs and two types of imaging markers, VBM and PreeSurfer. Empirical results demonstrated advantages of our proposed model over the counterparts. Moreover, available literature was identified for our top selected SNPs, which demonstrated the rationality of our prediction results. An executable program is available online at https://github.com/ littleql991/sparseJowRank_regression.
机译:随着高通量基因分型和神经成像技术的快速发展,成像遗传学已成为复杂脑疾病(例如阿尔茨海默氏病(AD))研究的重要关注点。利用成像遗传数据进行的基因型-表型关联研究有可能揭示大脑结构和功能的遗传基础和生物学机制。 AD是一种进行性神经退行性疾病,因此,至关重要的是研究SNP与神经影像表型的纵向变异之间的关系。尽管新近提出了一些机器学习模型来捕获基因型-表型关联研究中的纵向模式,但其中大多数都需要固定的纵向预测任务结构,并且无法自动学习纵向预测任务之间的相互关系。为了解决这一挑战,我们提出了一种新颖的时间结构自动学习模型,以自动发现纵向基因型与表型的相互关系,并利用这种相互关联的结构同时增强表型的预测。我们在ADNI队列中进行了纵向表型预测实验,包括3,123个SNP和两种成像标记,即VBM和PreeSurfer。实证结果证明了我们提出的模型优于同类模型的优势。此外,已为我们选择的SNP确定了可用的文献,这证明了我们预测结果的合理性。可执行程序可从https://github.com/littleql991/sparseJowRank_regression在线获得。

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