Title
FamSeq: a variant calling program for family-based sequencing data using graphics processing units.
Abstract
Various algorithms have been developed for variant calling using next-generation sequencing data, and various methods have been applied to reduce the associated false positive and false negative rates. Few variant calling programs, however, utilize the pedigree information when the family-based sequencing data are available. Here, we present a program, FamSeq, which reduces both false positive and false negative rates by incorporating the pedigree information from the Mendelian genetic model into variant calling. To accommodate variations in data complexity, FamSeq consists of four distinct implementations of the Mendelian genetic model: the Bayesian network algorithm, a graphics processing unit version of the Bayesian network algorithm, the Elston-Stewart algorithm and the Markov chain Monte Carlo algorithm. To make the software efficient and applicable to large families, we parallelized the Bayesian network algorithm that copes with pedigrees with inbreeding loops without losing calculation precision on an NVIDIA graphics processing unit. In order to compare the difference in the four methods, we applied FamSeq to pedigree sequencing data with family sizes that varied from 7 to 12. When there is no inbreeding loop in the pedigree, the Elston-Stewart algorithm gives analytical results in a short time. If there are inbreeding loops in the pedigree, we recommend the Bayesian network method, which provides exact answers. To improve the computing speed of the Bayesian network method, we parallelized the computation on a graphics processing unit. This allowed the Bayesian network method to process the whole genome sequencing data of a family of 12 individuals within two days, which was a 10-fold time reduction compared to the time required for this computation on a central processing unit.
Year
DOI
Venue
2014
10.1371/journal.pcbi.1003880
PLOS COMPUTATIONAL BIOLOGY
Keywords
Field
DocType
biomedical research,bioinformatics
Graphics,Data mining,Central processing unit,Computer science,Pedigree chart,Software,Bayesian network,Bioinformatics,Graphics processing unit,Genetics,Computer graphics,Computation
Journal
Volume
Issue
ISSN
10
10
1553-7358
Citations 
PageRank 
References 
1
0.43
7
Authors
3
Name
Order
Citations
PageRank
Gang Peng110.43
Yu Fan210.43
Wenyi Wang3253.59