Digital image processing to detect adaptive evolution.

IF 11 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Md Ruhul Amin, Mahmudul Hasan, Michael DeGiorgio
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引用次数: 0

Abstract

In recent years, advances in image processing and machine learning have fueled a paradigm shift in detecting genomic regions under natural selection. Early machine learning techniques employed population-genetic summary statistics as features, which focus on specific genomic patterns expected by adaptive and neutral processes. Though such engineered features are important when training data is limited, the ease at which simulated data can now be generated has led to the recent development of approaches that take in image representations of haplotype alignments and automatically extract important features using convolutional neural networks. Digital image processing methods termed α-molecules are a class of techniques for multi-scale representation of objects that can extract a diverse set of features from images. One such α-molecule method, termed wavelet decomposition, lends greater control over high-frequency components of images. Another α-molecule method, termed curvelet decomposition, is an extension of the wavelet concept that considers events occurring along curves within images. We show that application of these α-molecule techniques to extract features from image representations of haplotype alignments yield high true positive rate and accuracy to detect hard and soft selective sweep signatures from genomic data with both linear and nonlinear machine learning classifiers. Moreover, we find that such models are easy to visualize and interpret, with performance rivaling those of contemporary deep learning approaches for detecting sweeps.

检测适应性进化的数字图像处理
近年来,图像处理和机器学习的进步推动了检测自然选择下基因组区域的模式转变。早期的机器学习技术采用群体遗传汇总统计作为特征,重点关注适应性和中性过程所预期的特定基因组模式。虽然在训练数据有限的情况下,这种工程特征非常重要,但由于现在可以轻松生成模拟数据,因此最近开发出了一些方法,这些方法采用单倍型排列的图像表示,并利用卷积神经网络自动提取重要特征。被称为α分子的数字图像处理方法是一类用于多尺度表示物体的技术,可以从图像中提取各种特征。其中一种α分子方法被称为小波分解法,它能更好地控制图像的高频成分。另一种α-分子方法被称为小曲线分解法,它是小波概念的延伸,考虑了图像中沿曲线发生的事件。我们的研究表明,应用这些α-分子技术从单体型配对的图像表征中提取特征,可获得较高的真阳性率和准确率,从而利用线性和非线性机器学习分类器从基因组数据中检测出硬和软选择性扫描特征。此外,我们发现这种模型易于可视化和解释,其性能可与当代深度学习方法检测横扫的性能相媲美。
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来源期刊
Molecular biology and evolution
Molecular biology and evolution 生物-进化生物学
CiteScore
19.70
自引率
3.70%
发文量
257
审稿时长
1 months
期刊介绍: Molecular Biology and Evolution Journal Overview: Publishes research at the interface of molecular (including genomics) and evolutionary biology Considers manuscripts containing patterns, processes, and predictions at all levels of organization: population, taxonomic, functional, and phenotypic Interested in fundamental discoveries, new and improved methods, resources, technologies, and theories advancing evolutionary research Publishes balanced reviews of recent developments in genome evolution and forward-looking perspectives suggesting future directions in molecular evolution applications.
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