LoFreq: a sequence-quality aware, ultra-sensitive variant caller for uncovering cell-population heterogeneity from high-throughput sequencing datasets

Andreas Wilm(Genome Institute of Singapore), Pauline Aw(Genome Institute of Singapore), Denis Bertrand(Genome Institute of Singapore), Grace Hui Ting Yeo(Genome Institute of Singapore), Swee Hoe Ong(Genome Institute of Singapore), Chang Hua Wong(Genome Institute of Singapore), Chiea Chuen Khor(Genome Institute of Singapore), Rosemary Petric(Genome Institute of Singapore), Martin L. Hibberd(Genome Institute of Singapore), Niranjan Nagarajan(Genome Institute of Singapore)
Nucleic Acids Research
October 12, 2012
Cited by 1,531Open Access
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Abstract

The study of cell-population heterogeneity in a range of biological systems, from viruses to bacterial isolates to tumor samples, has been transformed by recent advances in sequencing throughput. While the high-coverage afforded can be used, in principle, to identify very rare variants in a population, existing ad hoc approaches frequently fail to distinguish true variants from sequencing errors. We report a method (LoFreq) that models sequencing run-specific error rates to accurately call variants occurring in <0.05% of a population. Using simulated and real datasets (viral, bacterial and human), we show that LoFreq has near-perfect specificity, with significantly improved sensitivity compared with existing methods and can efficiently analyze deep Illumina sequencing datasets without resorting to approximations or heuristics. We also present experimental validation for LoFreq on two different platforms (Fluidigm and Sequenom) and its application to call rare somatic variants from exome sequencing datasets for gastric cancer. Source code and executables for LoFreq are freely available at http://sourceforge.net/projects/lofreq/.


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