Kingshuk Mukherjee, Massimiliano Rossi, Leena Salmela, Christina Boucher
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引用次数: 3
摘要
基因组宽光学图是高分辨率的限制图,它给基因组一个独特的数字表示。它们是由成千上万的单分子光学图(rmap)组装而成的。不幸的是,汇编Rmap数据的选择非常少。只存在一种公开可用的非专有汇编方法和一种通过可执行文件可用的专有软件。此外,Valouev等人(Proc Natl Acad Sci USA 103(43):15770-15775, 2006)的公开可用方法遵循重叠布局共识(OLC)范式,因此无法对相对较大的基因组进行扩展。Bionano Genomics的Solve专利方法背后的算法在很大程度上是未知的。本文将配对de Bruijn图中双标记的定义推广到光学映射数据中,提出了基于de Bruijn图的Rmap装配方法。我们实施了我们的方法,我们称之为RMAPPER,并将其与Valouev等人的汇编程序(Proc Natl Acad Sci USA 103(43):15770-15775, 2006)和Bionano Genomics的Solve在大肠杆菌、人类和攀鲈(Anabas Testudineus)三个基因组数据上的性能进行了比较。我们的方法能够成功地在所有三个基因组上运行。Valouev et al. (Proc Natl Acad Sci USA 103(43):15770-15775, 2006)的方法只在大肠杆菌上有效。此外,在人类基因组上,RMAPPER比Bionano Solve至少快130倍,使用的内存少5倍,产生的基因组分数最高,零错误组装。我们的软件RMAPPER是用c++编写的,在GNU通用公共许可证下可以在https://github.com/kingufl/Rmapper上公开获得。
Fast and efficient Rmap assembly using the Bi-labelled de Bruijn graph.
Genome wide optical maps are high resolution restriction maps that give a unique numeric representation to a genome. They are produced by assembling hundreds of thousands of single molecule optical maps, which are called Rmaps. Unfortunately, there are very few choices for assembling Rmap data. There exists only one publicly-available non-proprietary method for assembly and one proprietary software that is available via an executable. Furthermore, the publicly-available method, by Valouev et al. (Proc Natl Acad Sci USA 103(43):15770-15775, 2006), follows the overlap-layout-consensus (OLC) paradigm, and therefore, is unable to scale for relatively large genomes. The algorithm behind the proprietary method, Bionano Genomics' Solve, is largely unknown. In this paper, we extend the definition of bi-labels in the paired de Bruijn graph to the context of optical mapping data, and present the first de Bruijn graph based method for Rmap assembly. We implement our approach, which we refer to as RMAPPER, and compare its performance against the assembler of Valouev et al. (Proc Natl Acad Sci USA 103(43):15770-15775, 2006) and Solve by Bionano Genomics on data from three genomes: E. coli, human, and climbing perch fish (Anabas Testudineus). Our method was able to successfully run on all three genomes. The method of Valouev et al. (Proc Natl Acad Sci USA 103(43):15770-15775, 2006) only successfully ran on E. coli. Moreover, on the human genome RMAPPER was at least 130 times faster than Bionano Solve, used five times less memory and produced the highest genome fraction with zero mis-assemblies. Our software, RMAPPER is written in C++ and is publicly available under GNU General Public License at https://github.com/kingufl/Rmapper .
期刊介绍:
Algorithms for Molecular Biology publishes articles on novel algorithms for biological sequence and structure analysis, phylogeny reconstruction, and combinatorial algorithms and machine learning.
Areas of interest include but are not limited to: algorithms for RNA and protein structure analysis, gene prediction and genome analysis, comparative sequence analysis and alignment, phylogeny, gene expression, machine learning, and combinatorial algorithms.
Where appropriate, manuscripts should describe applications to real-world data. However, pure algorithm papers are also welcome if future applications to biological data are to be expected, or if they address complexity or approximation issues of novel computational problems in molecular biology. Articles about novel software tools will be considered for publication if they contain some algorithmically interesting aspects.