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The fine-scale architecture of structural variants in 17 mouse genomes

机译:17种小鼠基因组中结构变异的精细结构

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Background: Accurate catalogs of structural variants (SVs) in mammalian genomes are necessary to elucidate the potential mechanisms that drive SV formation and to assess their functional impact. Next generation sequencing methods for SV detection are an advance on array-based methods, but are almost exclusively limited to four basic types: deletions, insertions, inversions and copy number gains. Results: By visual inspection of 100 Mbp of genome to which next generation sequence data from 17 inbred mouse strains had been aligned, we identify and interpret 21 paired-end mapping patterns, which we validate by PCR. These paired-end mapping patterns reveal a greater diversity and complexity in SVs than previously recognized. In addition, Sanger-based sequence analysis of 4,176 breakpoints at 261 SV sites reveal additional complexity at approximately a quarter of structural variants analyzed. We find micro-deletions and micro-insertions at SV breakpoints, ranging from 1 to 107 bp, and SNPs that extend breakpoint micro-homology and may catalyze SV formation. Conclusions: An integrative approach using experimental analyses to train computational SV calling is essential for the accurate resolution of the architecture of SVs. We find considerable complexity in SV formation; about a quarter of SVs in the mouse are composed of a complex mixture of deletion, insertion, inversion and copy number gain. Computational methods can be adapted to identify most paired-end mapping patterns.
机译:背景:哺乳动物基因组中结构变异(SV)的准确目录对于阐明驱动SV形成并评估其功能影响的潜在机制是必要的。下一代SV检测的测序方法是基于阵列的方法的进步,但几乎仅限于四种基本类型:删除,插入,倒位和拷贝数增加。结果:通过目视检查已匹配来自17个自交小鼠品系的下一代序列数据的100 Mbp基因组,我们鉴定并解释了21个配对末端的定位图谱,并通过PCR进行了验证。这些成对的末端映射模式揭示了SV中比以前认可的更大的多样性和复杂性。此外,对261个SV位点的4,176个断点进行基于Sanger的序列分析,发现在大约四分之一的结构变异中,其复杂性更高。我们发现在SV断点范围从1到107 bp的微缺失和微插入,以及扩展了断点微同源性并可能催化SV形成的SNP。结论:使用实验分析来训练计算SV调用的集成方法对于SV的体系结构的精确解析至关重要。我们发现SV的形成相当复杂。小鼠中大约四分之一的SV由删除,插入,倒位和拷贝数获得的复杂混合物组成。计算方法可以适用于识别大多数成对的末端映射模式。

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