wgatools: an ultrafast toolkit for manipulating whole-genome alignments.

Wenjie Wei, Songtao Gui, Jian Yang, Erik Garrison, Jianbing Yan, Hai-Jun Liu
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Abstract

Summary: With the rapid development of long-read sequencing technologies, the era of individual complete genomes is approaching. We have developed wgatools, a cross-platform, ultrafast toolkit that supports a range of whole-genome alignment formats, offering practical tools for conversion, processing, evaluation, and visualization of alignments, thereby facilitating population-level genome analysis and advancing functional and evolutionary genomics.

Availability and implementation: wgatools supports diverse formats and can process, filter, and statistically evaluate alignments, perform alignment-based variant calling, and visualize alignments both locally and genome-wide. Built with Rust for efficiency and safe memory usage, it ensures fast performance and can handle large datasets consisting of hundreds of genomes. wgatools is published as free software under the MIT open-source license, and its source code is freely available at https://github.com/wjwei-handsome/wgatools and https://zenodo.org/records/14882797.

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wgattools:一个用于操纵全基因组排列的超快工具包。
摘要:随着长读测序技术的快速发展,个体全基因组时代正在来临。我们开发了跨平台、超快的工具包wgattools,支持一系列全基因组比对(WGA)格式,为转换、处理、评估和可视化比对提供实用工具,从而促进群体水平的基因组分析,推进功能和进化基因组学。可用性和实现:wgattools支持多种格式,可以处理、过滤和统计评估比对,执行基于比对的变体调用,并在本地和全基因组范围内可视化比对。它使用Rust构建,以提高效率和安全的内存使用,确保了快速的性能,并可以处理由数百个基因组组成的大型数据集。wgattools在MIT开源许可下作为自由软件发布,其源代码可在https://github.com/wjwei-handsome/wgatools和https://zenodo.org/records/14882797免费获得。
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