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Using the structure of genome data in the design of deep neural networks for predicting amyotrophic lateral sclerosis from genotype

机译:在深度神经网络的设计中使用基因组数据的结构从基因型预测肌萎缩性侧索硬化

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摘要

MotivationAmyotrophic lateral sclerosis (ALS) is a neurodegenerative disease caused by aberrations in the genome. While several disease-causing variants have been identified, a major part of heritability remains unexplained. ALS is believed to have a complex genetic basis where non-additive combinations of variants constitute disease, which cannot be picked up using the linear models employed in classical genotype–phenotype association studies. Deep learning on the other hand is highly promising for identifying such complex relations. We therefore developed a deep-learning based approach for the classification of ALS patients versus healthy individuals from the Dutch cohort of the Project MinE dataset. Based on recent insight that regulatory regions harbor the majority of disease-associated variants, we employ a two-step approach: first promoter regions that are likely associated to ALS are identified, and second individuals are classified based on their genotype in the selected genomic regions. Both steps employ a deep convolutional neural network. The network architecture accounts for the structure of genome data by applying convolution only to parts of the data where this makes sense from a genomics perspective.
机译:肌萎缩性侧索硬化症(ALS)是一种由基因组畸变引起的神经退行性疾病。虽然已经确定了几种致病变体,但遗传力的主要部分仍无法解释。人们认为ALS具有复杂的遗传基础,其中变体的非加性组合构成疾病,而经典基因型-表型关联研究中使用的线性模型无法识别出ALS。另一方面,深度学习对于识别这种复杂的关系非常有前途。因此,我们从Project MinE数据集的荷兰队列中开发了一种基于深度学习的方法,对ALS患者与健康个体进行分类。基于最近的见解,即调节区域包含大多数与疾病相关的变异,我们采用了两步方法:识别出可能与ALS相关的第一个启动子区域,然后根据所选基因组区域中的基因型对第二个个体进行分类。这两个步骤都使用深度卷积神经网络。网络体系结构通过仅对部分数据进行卷积来说明基因组数据的结构,这从基因组学的角度来说是有意义的。

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