SweepNet: A Lightweight CNN Architecture for the Classification of Adaptive Genomic Regions

Hanqing Zhao, P. Pavlidis, Nikolaos S. Alachiotis
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Abstract

The accurate identification of positive selection in genomes represents a challenge in the field of population genomics. Several recent approaches have cast this problem as an image classification task and employed Convolutional Neural Networks (CNNs). However, limited efforts have been placed on discovering a practical CNN architecture that can classify images visualizing raw genomic data in the presence of population bottlenecks, migration, and recombination hotspots, factors that typically confound the identification and localization of adaptive genomic regions. In this work, we present SweepNet, a new CNN architecture that resulted from a thorough hyper-parameter-based architecture exploration process. SweepNet has a higher training efficiency than existing CNNs and requires considerably less epochs to achieve high validation accuracy. Furthermore, it performs consistently better in the presence of confounding factors, generating models with higher validation accuracy and lower top-1 error rate for distinguishing between neutrality and a selective sweep. Unlike existing network architectures, the number of trainable parameters of SweepNet remains constant irrespective of the sample size and number of Single Nucleotide Polymorphisms, which reduces the risk of overfitting and leads to more efficient training for large datasets. Our SweepNet implementation is available for download at: https://github.com/Zhaohq96/SweepNet.
SweepNet:用于自适应基因组区域分类的轻量级CNN架构
基因组正选择的准确鉴定是种群基因组学领域的一个挑战。最近的几种方法将该问题作为图像分类任务,并使用卷积神经网络(cnn)。然而,在发现一种实用的CNN架构上,人们的努力有限,该架构可以对存在人口瓶颈、迁移和重组热点的原始基因组数据进行图像分类,这些因素通常会混淆适应性基因组区域的识别和定位。在这项工作中,我们提出了SweepNet,这是一种新的CNN架构,它是基于超参数的架构探索过程的结果。与现有的cnn相比,SweepNet具有更高的训练效率,并且需要更少的epoch来达到较高的验证精度。此外,它在存在混淆因素的情况下始终表现更好,生成的模型具有更高的验证精度和更低的top-1错误率,可以区分中性和选择性扫描。与现有的网络架构不同,SweepNet的可训练参数的数量保持不变,而不考虑样本大小和单核苷酸多态性的数量,这降低了过拟合的风险,并导致更有效的大型数据集训练。我们的SweepNet实现可以从https://github.com/Zhaohq96/SweepNet下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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