Laiyi Fu, Yanxin Xie, Shunkang Ling, Ying Wang, Binzhong Wang, Hejun Du, Qinke Peng, Hequan Sun
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引用次数: 0
摘要
摘要:利用 k-mer 频率估算基因组大小在设计基因组测序和分析项目中起着基础性作用,但对于多倍体物种(即倍性 p > 2)来说仍具有挑战性。为此,我们引入了基于 k-mer 频率迭代曲线拟合设计的 findGSEP。确切地说,它首先通过分析目标物种全基因组测序中的 k-mer 频率,对多达 p 个正态分布进行分解。其次,它利用各自的曲线拟合计算出与 1∼p 条(同源)染色体相关的基因组区域的大小,并由此推断出全多倍体和平均单倍体基因组的大小。findGSEP可以处理任何水平的倍性p,并能比其他知名工具推断出更准确的基因组大小,这一点已通过使用包括八倍体在内的各种物种的模拟和真实基因组测序数据进行的测试得到证明。可用性和实现:findGSEP以网络服务器的形式实现,可在http://146.56.237.198:3838/findGSEP/ 免费获取。此外,findGSEP 还是一个 R 软件包,用于并行处理多个样本。源代码及其安装和使用教程可从 https://github.com/sperfu/findGSEP.Supplementary 信息中获取:补充数据可在 Bioinformatics online 上获取。
findGSEP: estimating genome size of polyploid species using k-mer frequencies.
Summary: Estimating genome size using k-mer frequencies, which plays a fundamental role in designing genome sequencing and analysis projects, has remained challenging for polyploid species, i.e., ploidy p > 2. To address this, we introduce "findGSEP," which is designed based on iterative curve fitting of k-mer frequencies. Precisely, it first disentangles up to p normal distributions by analyzing k-mer frequencies in whole genome sequencing of the focal species. Second, it computes the sizes of genomic regions related to 1∼p (homologous) chromosome(s) using each respective curve fitting, from which it infers the full polyploid and average haploid genome size. "findGSEP" can handle any level of ploidy p, and infer more accurate genome size than other well-known tools, as shown by tests using simulated and real genomic sequencing data of various species including octoploids.
Availability and implementation: "findGSEP" was implemented as a web server, which is freely available at http://146.56.237.198:3838/findGSEP/. Also, "findGSEP" was implemented as an R package for parallel processing of multiple samples. Source code and tutorial on its installation and usage is available at https://github.com/sperfu/findGSEP.