MOTIVATION: Expression quantitative trait loci (eQTL) studies have discovered thousands of genetic variants that regulate gene expression, enabling a better understanding of the functional role of non-coding sequences. However, eQTL studies are costly, requiring large sample sizes and genome-wide genotyping of each sample. In contrast, analysis of allele-specific expression (ASE) is becoming a popular approach to detect the effect of genetic variation on gene expression, even within a single individual. This is typically achieved by counting the number of RNA-seq reads matching each allele at heterozygous sites and testing the null hypothesis of a 1:1 allelic ratio. In principle, when genotype information is not readily available, it could be inferred from the RNA-seq reads directly. However, there are currently no existing methods that jointly infer genotypes and conduct ASE inference, while considering uncertainty in the genotype calls. RESULTS: We present QuASAR, quantitative allele-specific analysis of reads, a novel statistical learning method for jointly detecting heterozygous genotypes and inferring ASE. The proposed ASE inference step takes into consideration the uncertainty in the genotype calls, while including parameters that model base-call errors in sequencing and allelic over-dispersion. We validated our method with experimental data for which high-quality genotypes are available. Results for an additional dataset with multiple replicates at different sequencing depths demonstrate that QuASAR is a powerful tool for ASE analysis when genotypes are not available. AVAILABILITY AND IMPLEMENTATION: http://github.com/piquelab/QuASAR. CONTACT: fluca@wayne.edu or rpique@wayne.edu SUPPLEMENTARY INFORMATION: Supplementary Material is available at Bioinformatics online.
MOTIVATION: Expression quantitative trait loci (eQTL) studies have discovered thousands of genetic variants that regulate gene expression, enabling a better understanding of the functional role of non-coding sequences. However, eQTL studies are costly, requiring large sample sizes and genome-wide genotyping of each sample. In contrast, analysis of allele-specific expression (ASE) is becoming a popular approach to detect the effect of genetic variation on gene expression, even within a single individual. This is typically achieved by counting the number of RNA-seq reads matching each allele at heterozygous sites and testing the null hypothesis of a 1:1 allelic ratio. In principle, when genotype information is not readily available, it could be inferred from the RNA-seq reads directly. However, there are currently no existing methods that jointly infer genotypes and conduct ASE inference, while considering uncertainty in the genotype calls. RESULTS: We present QuASAR, quantitative allele-specific analysis of reads, a novel statistical learning method for jointly detecting heterozygous genotypes and inferring ASE. The proposed ASE inference step takes into consideration the uncertainty in the genotype calls, while including parameters that model base-call errors in sequencing and allelic over-dispersion. We validated our method with experimental data for which high-quality genotypes are available. Results for an additional dataset with multiple replicates at different sequencing depths demonstrate that QuASAR is a powerful tool for ASE analysis when genotypes are not available. AVAILABILITY AND IMPLEMENTATION: http://github.com/piquelab/QuASAR. CONTACT: fluca@wayne.edu or rpique@wayne.edu SUPPLEMENTARY INFORMATION: Supplementary Material is available at Bioinformatics online.
Authors: Luis B Barreiro; Ludovic Tailleux; Athma A Pai; Brigitte Gicquel; John C Marioni; Yoav Gilad Journal: Proc Natl Acad Sci U S A Date: 2012-01-10 Impact factor: 11.205
Authors: Barbara E Stranger; Alexandra C Nica; Matthew S Forrest; Antigone Dimas; Christine P Bird; Claude Beazley; Catherine E Ingle; Mark Dunning; Paul Flicek; Daphne Koller; Stephen Montgomery; Simon Tavaré; Panos Deloukas; Emmanouil T Dermitzakis Journal: Nat Genet Date: 2007-09-16 Impact factor: 38.330
Authors: Jacob F Degner; Athma A Pai; Roger Pique-Regi; Jean-Baptiste Veyrieras; Daniel J Gaffney; Joseph K Pickrell; Sherryl De Leon; Katelyn Michelini; Noah Lewellen; Gregory E Crawford; Matthew Stephens; Yoav Gilad; Jonathan K Pritchard Journal: Nature Date: 2012-02-05 Impact factor: 49.962
Authors: Mark A DePristo; Eric Banks; Ryan Poplin; Kiran V Garimella; Jared R Maguire; Christopher Hartl; Anthony A Philippakis; Guillermo del Angel; Manuel A Rivas; Matt Hanna; Aaron McKenna; Tim J Fennell; Andrew M Kernytsky; Andrey Y Sivachenko; Kristian Cibulskis; Stacey B Gabriel; David Altshuler; Mark J Daly Journal: Nat Genet Date: 2011-04-10 Impact factor: 38.330
Authors: Timothy E Reddy; Jason Gertz; Florencia Pauli; Katerina S Kucera; Katherine E Varley; Kimberly M Newberry; Georgi K Marinov; Ali Mortazavi; Brian A Williams; Lingyun Song; Gregory E Crawford; Barbara Wold; Huntington F Willard; Richard M Myers Journal: Genome Res Date: 2012-02-02 Impact factor: 9.043
Authors: Silvia Domcke; Andrew J Hill; Riza M Daza; Junyue Cao; Diana R O'Day; Hannah A Pliner; Kimberly A Aldinger; Dmitry Pokholok; Fan Zhang; Jennifer H Milbank; Michael A Zager; Ian A Glass; Frank J Steemers; Dan Doherty; Cole Trapnell; Darren A Cusanovich; Jay Shendure Journal: Science Date: 2020-11-13 Impact factor: 47.728
Authors: Evanthia E Pashos; YoSon Park; Xiao Wang; Avanthi Raghavan; Wenli Yang; Deepti Abbey; Derek T Peters; Juan Arbelaez; Mayda Hernandez; Nicolas Kuperwasser; Wenjun Li; Zhaorui Lian; Ying Liu; Wenjian Lv; Stacey L Lytle-Gabbin; Dawn H Marchadier; Peter Rogov; Jianting Shi; Katherine J Slovik; Ioannis M Stylianou; Li Wang; Ruilan Yan; Xiaolan Zhang; Sekar Kathiresan; Stephen A Duncan; Tarjei S Mikkelsen; Edward E Morrisey; Daniel J Rader; Christopher D Brown; Kiran Musunuru Journal: Cell Stem Cell Date: 2017-04-06 Impact factor: 24.633
Authors: Daniel S Kim; Viviana I Risca; David L Reynolds; James Chappell; Adam J Rubin; Namyoung Jung; Laura K H Donohue; Vanessa Lopez-Pajares; Arwa Kathiria; Minyi Shi; Zhixin Zhao; Harsh Deep; Mahfuza Sharmin; Deepti Rao; Shin Lin; Howard Y Chang; Michael P Snyder; William J Greenleaf; Anshul Kundaje; Paul A Khavari Journal: Nat Genet Date: 2021-10-14 Impact factor: 38.330
Authors: Lukas M Simon; Edward S Chen; Leonard C Edelstein; Xianguo Kong; Seema Bhatlekar; Isidore Rigoutsos; Paul F Bray; Chad A Shaw Journal: Am J Hum Genet Date: 2016-04-28 Impact factor: 11.025
Authors: Asia Mendelevich; Svetlana Vinogradova; Saumya Gupta; Andrey A Mironov; Shamil R Sunyaev; Alexander A Gimelbrant Journal: Nat Commun Date: 2021-06-07 Impact factor: 14.919
Authors: Anthony S Findley; Alan Monziani; Allison L Richards; Katherine Rhodes; Michelle C Ward; Cynthia A Kalita; Adnan Alazizi; Ali Pazokitoroudi; Sriram Sankararaman; Xiaoquan Wen; David E Lanfear; Roger Pique-Regi; Yoav Gilad; Francesca Luca Journal: Elife Date: 2021-05-14 Impact factor: 8.140