Inferring Historical Introgression with Deep Learning.

IF 6.1 1区 生物学 Q1 EVOLUTIONARY BIOLOGY Systematic Biology Pub Date : 2023-11-01 DOI:10.1093/sysbio/syad033
Yubo Zhang, Qingjie Zhu, Yi Shao, Yanchen Jiang, Yidan Ouyang, Li Zhang, Wei Zhang
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引用次数: 0

Abstract

Resolving phylogenetic relationships among taxa remains a challenge in the era of big data due to the presence of genetic admixture in a wide range of organisms. Rapidly developing sequencing technologies and statistical tests enable evolutionary relationships to be disentangled at a genome-wide level, yet many of these tests are computationally intensive and rely on phased genotypes, large sample sizes, restricted phylogenetic topologies, or hypothesis testing. To overcome these difficulties, we developed a deep learning-based approach, named ERICA, for inferring genome-wide evolutionary relationships and local introgressed regions from sequence data. ERICA accepts sequence alignments of both population genomic data and multiple genome assemblies, and efficiently identifies discordant genealogy patterns and exchanged regions across genomes when compared with other methods. We further tested ERICA using real population genomic data from Heliconius butterflies that have undergone adaptive radiation and frequent hybridization. Finally, we applied ERICA to characterize hybridization and introgression in wild and cultivated rice, revealing the important role of introgression in rice domestication and adaptation. Taken together, our findings demonstrate that ERICA provides an effective method for teasing apart evolutionary relationships using whole genome data, which can ultimately facilitate evolutionary studies on hybridization and introgression.

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用深度学习推断历史渗透。
在大数据时代,由于各种生物体中存在遗传混合,解决分类群之间的系统发育关系仍然是一个挑战。快速发展的测序技术和统计测试使进化关系能够在全基因组水平上解开,但这些测试中的许多都是计算密集型的,依赖于分阶段的基因型、大样本量、受限的系统发育拓扑结构或假设测试。为了克服这些困难,我们开发了一种基于深度学习的方法,名为ERICA,用于从序列数据推断全基因组进化关系和局部渗入区域。ERICA接受群体基因组数据和多个基因组组装的序列比对,与其他方法相比,可以有效地识别基因组中不一致的谱系模式和交换区域。我们使用经过适应性辐射和频繁杂交的Heliconius蝴蝶的真实种群基因组数据进一步测试了ERICA。最后,我们应用ERICA对野生和栽培水稻的杂交和渐渗进行了表征,揭示了渐渗在水稻驯化和适应中的重要作用。总之,我们的发现表明,ERICA提供了一种使用全基因组数据来区分进化关系的有效方法,最终可以促进杂交和渗入的进化研究。
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来源期刊
Systematic Biology
Systematic Biology 生物-进化生物学
CiteScore
13.00
自引率
7.70%
发文量
70
审稿时长
6-12 weeks
期刊介绍: Systematic Biology is the bimonthly journal of the Society of Systematic Biologists. Papers for the journal are original contributions to the theory, principles, and methods of systematics as well as phylogeny, evolution, morphology, biogeography, paleontology, genetics, and the classification of all living things. A Points of View section offers a forum for discussion, while book reviews and announcements of general interest are also featured.
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