info:eu-repo/semantics/article
TarSeqQC: Quality control on targeted sequencing experiments in R
Fecha
2017-05Registro en:
Merino, Gabriela Alejandra; Murua, Yanina Alejandra; Fresno Rodríguez, Cristóbal; Sendoya, Juan Martín; Golubicki, Mariano; et al.; TarSeqQC: Quality control on targeted sequencing experiments in R; Wiley-liss, Div John Wiley & Sons Inc; Human Mutation; 38; 5; 5-2017; 494-502
1059-7794
CONICET Digital
CONICET
Autor
Merino, Gabriela Alejandra
Murua, Yanina Alejandra
Fresno Rodríguez, Cristóbal
Sendoya, Juan Martín
Golubicki, Mariano
Iseas, Soledad
Coraglio, Mariana
Podhajcer, Osvaldo Luis
Llera, Andrea Sabina
Fernandez, Elmer Andres
Resumen
Targeted sequencing (TS) is growing as a screening methodology used in research and medical genetics to identify genomic alterations causing human diseases. In general, a list of possible genomic variants is derived from mapped reads through a variant calling step. This processing step is usually based on variant coverage, although it may be affected by several factors. Therefore, undercovered relevant clinical variants may not be reported, affecting pathology diagnosis or treatment. Thus, a prior quality control of the experiment is critical to determine variant detection accuracy and to avoid erroneous medical conclusions. There are several quality control tools, but they are focused on issues related to whole-genome sequencing. However, in TS, quality control should assess experiment, gene, and genomic region performances based on achieved coverages. Here, we propose TarSeqQC R package for quality control in TS experiments. The tool is freely available at Bioconductor repository. TarSeqQC was used to analyze two datasets; low-performance primer pools and features were detected, enhancing the quality of experiment results. Read count profiles were also explored, showing TarSeqQC's effectiveness as an exploration tool. Our proposal may be a valuable bioinformatic tool for routinely TS experiments in both research and medical genetics.