基因组学中的残差神经网络

S. Sabba, M. Smara, Mehdi Benhacine, Loubna Terra, Zine Eddine Terra
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引用次数: 0

摘要

残差神经网络(ResNet)是He等人在2015年提出的一种深度学习模型,对传统的卷积神经网络进行了增强,用于解决计算机视觉问题。该算法在一些层块上使用跳过连接来避免梯度消失问题。目前,许多研究都集中在测试和证明ResNet在基因组学等不同领域的效率。事实上,对人类基因组的研究为疾病的检测和最佳治疗提供了重要信息。因此,大多数科学家选择了生物信息学解决方案,以便在合理的时间内获得结果。在本文中,我们的兴趣是展示ResNet模型在基因组学上的有效性。为此,我们提出了两个新的ResNet模型来增强之前由CNN模型解决的两个基因组问题的结果。得到的结果非常有希望,并且与CNN模型相比,它们证明了我们的ResNet模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Residual Neural Network in Genomics
Residual neural network (ResNet) is a Deep Learning model introduced by He et al. in 2015 to enhance traditional convolutional neural networks proposed to solve computer vision problems. It uses skip connections over some layer blocks to avoid vanishing gradient problem. Currently, many researches are focused to test and prove the efficiency of the ResNet on different domains such as genomics. In fact, the study of human genomes provides important information on the detection of diseases and their best treatments. Therefore, most of the scientists opted for bioinformatics solutions to get results in a reasonable time. In this paper, our interest is to show the effectiveness of the ResNet model on genomics. For that, we propose two new ResNet models to enhance the results of two genomic problems previously resolved by CNN models. The obtained results are very promising and they proved the performance of our ResNet models compared to the CNN models.
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