| Literature DB >> 24112718 |
Qingguo Wang1, Peilin Jia2, Fei Li3, Haiquan Chen4, Hongbin Ji3, Donald Hucks5, Kimberly Brown Dahlman6, William Pao7, Zhongming Zhao8.
Abstract
BACKGROUND: Driven by high throughput next generation sequencing technologies and the pressing need to decipher cancer genomes, computational approaches for detecting somatic single nucleotide variants (sSNVs) have undergone dramatic improvements during the past 2 years. The recently developed tools typically compare a tumor sample directly with a matched normal sample at each variant locus in order to increase the accuracy of sSNV calling. These programs also address the detection of sSNVs at low allele frequencies, allowing for the study of tumor heterogeneity, cancer subclones, and mutation evolution in cancer development.Entities:
Year: 2013 PMID: 24112718 PMCID: PMC3971343 DOI: 10.1186/gm495
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Tools for detecting somatic single nucleotide variants (sSNVs) from next generation sequencing (NGS) data
| EBCall | 2 | Uses an empirical Bayesian model to call sSNVs | Mar. 2013 | [ | |
| JointSNVMix | 0.8(b2) | Joint analysis of tumor/normal pairs | Jan. 2012 | [ | |
| MuTect | 1.1.4 | Sensitive detection of low allelic-fraction sSNVs | Feb. 2013 | [ | |
| SomaticSniper | 1.0.2 | High computational efficiency | Dec. 2011 | [ | |
| Strelka | 0.4.10.2 | Clean outputs through stringent filtering | May 2012 | [ | |
| VarScan 2 | 2.3.5 | Sensitive detection of high-quality sSNVs | Feb. 2012 | [ |
aDate: online/electronic publication date.
Number of validated true/false sSNVs detected using the five tools in a melanoma sample
| JointSNVMix | 119 | 2 | 108 | 0 |
| MuTect | 119 | 9 | 115 | 0 |
| SomaticSniper | 116 | 4 | 104 | 0 |
| Strelka | 117 | 0 | 113 | 0 |
| Varscan 2 | 119 | 6 | 118 | 2 |
FP: false-positive sSNVs; TP: true-positive sSNVs.
Number of validated true/false sSNVs detected using the five tools in the lung cancer samples
| | | | | ||||||
|---|---|---|---|---|---|---|---|---|---|
| JointSNVMix | 30 | 17 | 6 | 49 | 0 | 11 | 79 | 17 | 17 |
| MuTect | 30 | 19 | 11 | 47 | 0 | 7 | 77 | 19 | 18 |
| SomaticSniper | 33 | 17 | 10 | 47 | 0 | 9 | 80 | 17 | 19 |
| Strelka | 27 | 17 | 8 | 51 | 0 | 10 | 78 | 17 | 18 |
| Varscan 2 | 35 | 8 | 5 | 51 | 0 | 13 | 86 | 8 | 18 |
aTotal is the sum of #sSNVs found in lung tumors and lung cancer cell lines.
FP: false-positive sSNVs; TP: true-positive sSNVs.
Figure 1Sensitivity as a function of mutation allele frequency for five sSNV-detecting tools. Given an allele frequency value f, the sensitivity of a tool T (either JointSNVMix, MuTect, SomaticSniper, Strelka, or VarScan 2) is calculated as: S = N/N where N is the total number of sSNVs with sequencing depth ≥8, the number of alternate allele-supporting reads ≥2 in the disease sample, and an allele frequency less than f, and N is the number of sSNVs that the tool T identified out of these N point mutations.