Rajaby Ramesh, Sung Wing-Kin
Department of Chemical Pathology, The Chinese University of Hong Kong, Hong Kong, China.
Hong Kong Genome Institute, Hong Kong Science Park, Shatin, Hong Kong, China.
Nat Commun. 2024 Dec 2;15(1):10473. doi: 10.1038/s41467-024-53087-7.
Deletions and tandem duplications (commonly called CNVs) represent the majority of structural variations in a human genome. They can be identified using short reads, but because they frequently occur in repetitive regions, existing methods fail to detect most of them. This is because CNVs in repetitive regions often do not produce the evidence needed by existing short reads-based callers (split reads, discordant pairs or read depth change). Here, we introduce a new CNV short reads-based caller named SurVIndel2. SurVindel2 builds on statistical techniques we previously developed, but also employs a novel type of evidence, hidden split reads, that can uncover many CNVs missed by existing algorithms. We use public benchmarks to show that SurVIndel2 outperforms other popular callers, both on human and non-human datasets. Then, we demonstrate the practical utility of the method by generating a catalogue of CNVs for the 1000 Genomes Project that contains hundreds of thousands of CNVs missing from the most recent public catalogue. We also show that SurVIndel2 is able to complement small indels predicted by Google DeepVariant, and the two software used in tandem produce a remarkably complete catalogue of variants in an individual. Finally, we characterise how the limitations of current sequencing technologies contribute significantly to the missing CNVs.
缺失和串联重复(通常称为拷贝数变异,CNVs)占人类基因组结构变异的大部分。它们可以通过短读长进行识别,但由于它们经常出现在重复区域,现有方法无法检测到其中的大多数。这是因为重复区域中的CNVs通常不会产生基于短读长的现有调用程序所需的证据(分裂读段、不一致读对或读深度变化)。在这里,我们介绍一种名为SurVIndel2的基于CNV短读长的新调用程序。SurVindel2基于我们之前开发的统计技术构建,但也采用了一种新型证据——隐藏分裂读段,它可以发现现有算法遗漏的许多CNVs。我们使用公共基准来表明,SurVIndel2在人类和非人类数据集上均优于其他流行的调用程序。然后,我们通过为千人基因组计划生成一个包含数十万个最新公共目录中缺失的CNVs的目录,展示了该方法的实际效用。我们还表明,SurVIndel2能够补充谷歌深度变异预测的小插入缺失,并且这两种软件串联使用可生成个体中非常完整的变异目录。最后,我们描述了当前测序技术的局限性如何显著导致缺失的CNVs。