Evaluation of tools for identifying large copy number variations from ultra-low-coverage whole-genome sequencing data

作者信息Johannes Smolander, Sofia Khan, Kalaimathy Singaravelu, Leni Kauko, Riikka J Lund, Asta Laiho, Laura L Elo
PMID34000988
期刊BMC Genomics
发布时间2021-05-17
DOI10.1186/s12864-021-07686-z

摘要

Background: Detection of copy number variations (CNVs) from high-throughput next-generation whole-genome sequencing (WGS) data has become a widely used research method during the recent years. However, only a little is known about the applicability of the developed algorithms to ultra-low-coverage (0.0005-0.8×) data that is used in various research and clinical applications, such as digital karyotyping and single-cell CNV detection. Result: Here, the performance of six popular read-depth based CNV detection algorithms (BIC-seq2, Canvas, CNVnator, FREEC, HMMcopy, and QDNAseq) was studied using ultra-low-coverage WGS data. Real-world array- and karyotyping kit-based validation were used as a benchmark in the evaluation. Additionally, ultra-low-coverage WGS data was simulated to investigate the ability of the algorithms to identify CNVs in the sex chromosomes and the theoretical minimum coverage at which these tools can accurately function. Our results suggest that while all the methods were able to detect large CNVs, many methods were susceptible to producing false positives when smaller CNVs (< 2 Mbp) were detected. There was also significant variability in their ability to identify CNVs in the sex chromosomes. Overall, BIC-seq2 was found to be the best method in terms of statistical performance. However, its significant drawback was by far the slowest runtime among the methods (> 3 h) compared with FREEC (~ 3 min), which we considered the second-best method. Conclusions: Our comparative analysis demonstrates that CNV detection from ultra-low-coverage WGS data can be a highly accurate method for the detection of large copy number variations when their length is in millions of base pairs. These findings facilitate applications that utilize ultra-low-coverage CNV detection.

实验方法

产品清单

名称品牌货号
Illumina Nextera XT DNA试剂盒IlluminaNextera XT
Agilent 2100生物分析仪Agilent2100
Illumina MiSeq新一代测序仪IlluminaMiSeq
Illumina Infinium CoreExome-24 v1.1 BeadChip芯片IlluminaInfinium CoreExome-24 v1.1
Qiagen Allprep miRNA/RNA/DNA通用试剂盒QiagenAllprep miRNA/RNA/DNA Universal kit
Nanodrop分光光度计Thermo Fisher Scientific--
Qubit 2.0荧光计Thermo Fisher Scientific2.0
2% SYBR Safe E-凝胶Thermo Fisher ScientificSYBR Safe E-gel