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Deep convolutional neural networks for variant classification

机译:用于变量分类的深度卷积神经网络

摘要

The technology disclosed relates to constructing a convolutional neural network-based classifier for variant classification. In particular, it relates to training a convolutional neural network-based classifier on training data using a backpropagation-based gradient update technique that progressively match outputs of the convolutional neural network-based classifier with corresponding ground truth labels. The convolutional neural network-based classifier comprises groups of residual blocks, each group of residual blocks is parameterized by a number of convolution filters in the residual blocks, a convolution window size of the residual blocks, and an atrous convolution rate of the residual blocks, the size of convolution window varies between groups of residual blocks, the atrous convolution rate varies between groups of residual blocks. The training data includes benign training examples and pathogenic training examples of translated sequence pairs generated from benign variants and pathogenic variants.
机译:所公开的技术涉及构建用于变体分类的基于卷积神经网络的分类器。具体而言,它涉及使用基于反向传播的梯度更新技术基于训练数据训练基于卷积神经网络的分类器,该梯度更新技术将基于卷积神经网络的分类器的输出与相应的地面真值标签逐步匹配。基于卷积神经网络的分类器包括多组残余块,每组残余块由残余块中的多个卷积滤波器、残余块的卷积窗口大小和残余块的萎缩卷积率参数化,卷积窗口的大小在残余块组之间变化,萎缩性卷积率在各组残余块之间变化。训练数据包括良性变体和致病性变体产生的翻译序列对的良性训练示例和致病性训练示例。

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