Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Danny Challis is active.

Publication


Featured researches published by Danny Challis.


Genome Biology | 2011

The functional spectrum of low-frequency coding variation.

Gabor T. Marth; Fuli Yu; Amit Indap; Kiran Garimella; Simon Gravel; Wen Fung Leong; Chris Tyler-Smith; Matthew N. Bainbridge; Thomas W. Blackwell; Xiangqun Zheng-Bradley; Yuan Chen; Danny Challis; Laura Clarke; Edward V. Ball; Kristian Cibulskis; David Neil Cooper; Bob Fulton; Chris Hartl; Dan Koboldt; Donna M. Muzny; Richard Smith; Carrie Sougnez; Chip Stewart; Alistair Ward; Jin Yu; Yali Xue; David Altshuler; Carlos Bustamante; Andrew G. Clark; Mark J. Daly

BackgroundRare coding variants constitute an important class of human genetic variation, but are underrepresented in current databases that are based on small population samples. Recent studies show that variants altering amino acid sequence and protein function are enriched at low variant allele frequency, 2 to 5%, but because of insufficient sample size it is not clear if the same trend holds for rare variants below 1% allele frequency.ResultsThe 1000 Genomes Exon Pilot Project has collected deep-coverage exon-capture data in roughly 1,000 human genes, for nearly 700 samples. Although medical whole-exome projects are currently afoot, this is still the deepest reported sampling of a large number of human genes with next-generation technologies. According to the goals of the 1000 Genomes Project, we created effective informatics pipelines to process and analyze the data, and discovered 12,758 exonic SNPs, 70% of them novel, and 74% below 1% allele frequency in the seven population samples we examined. Our analysis confirms that coding variants below 1% allele frequency show increased population-specificity and are enriched for functional variants.ConclusionsThis study represents a large step toward detecting and interpreting low frequency coding variation, clearly lays out technical steps for effective analysis of DNA capture data, and articulates functional and population properties of this important class of genetic variation.


BMC Genomics | 2012

Atlas2 Cloud: a framework for personal genome analysis in the cloud

Uday S. Evani; Danny Challis; Jin Yu; Andrew R. Jackson; Sameer Paithankar; Matthew N. Bainbridge; Adinarayana Jakkamsetti; Peter Pham; Cristian Coarfa; Aleksandar Milosavljevic; Fuli Yu

BackgroundUntil recently, sequencing has primarily been carried out in large genome centers which have invested heavily in developing the computational infrastructure that enables genomic sequence analysis. The recent advancements in next generation sequencing (NGS) have led to a wide dissemination of sequencing technologies and data, to highly diverse research groups. It is expected that clinical sequencing will become part of diagnostic routines shortly. However, limited accessibility to computational infrastructure and high quality bioinformatic tools, and the demand for personnel skilled in data analysis and interpretation remains a serious bottleneck. To this end, the cloud computing and Software-as-a-Service (SaaS) technologies can help address these issues.ResultsWe successfully enabled the Atlas2 Cloud pipeline for personal genome analysis on two different cloud service platforms: a community cloud via the Genboree Workbench, and a commercial cloud via the Amazon Web Services using Software-as-a-Service model. We report a case study of personal genome analysis using our Atlas2 Genboree pipeline. We also outline a detailed cost structure for running Atlas2 Amazon on whole exome capture data, providing cost projections in terms of storage, compute and I/O when running Atlas2 Amazon on a large data set.ConclusionsWe find that providing a web interface and an optimized pipeline clearly facilitates usage of cloud computing for personal genome analysis, but for it to be routinely used for large scale projects there needs to be a paradigm shift in the way we develop tools, in standard operating procedures, and in funding mechanisms.


BMC Genomics | 2015

The distribution and mutagenesis of short coding INDELs from 1,128 whole exomes

Danny Challis; Lilian Antunes; Erik Garrison; Eric Banks; Uday S. Evani; Donna M. Muzny; Ryan Poplin; Richard A. Gibbs; Gabor T. Marth; Fuli Yu

BackgroundIdentifying insertion/deletion polymorphisms (INDELs) with high confidence has been intrinsically challenging in short-read sequencing data. Here we report our approach for improving INDEL calling accuracy by using a machine learning algorithm to combine call sets generated with three independent methods, and by leveraging the strengths of each individual pipeline. Utilizing this approach, we generated a consensus exome INDEL call set from a large dataset generated by the 1000 Genomes Project (1000G), maximizing both the sensitivity and the specificity of the calls.ResultsThis consensus exome INDEL call set features 7,210 INDELs, from 1,128 individuals across 13 populations included in the 1000 Genomes Phase 1 dataset, with a false discovery rate (FDR) of about 7.0%.ConclusionsIn our study we further characterize the patterns and distributions of these exonic INDELs with respect to density, allele length, and site frequency spectrum, as well as the potential mutagenic mechanisms of coding INDELs in humans.


international conference on bioinformatics | 2011

Enabling Atlas2 personal genome analysis on the cloud

Uday S. Evani; Danny Challis; Jin Yu; Andrew R. Jackson; Sameer Paithankar; Matthew N. Bainbridge; Cris tian Coarfa; Aleksandar Milosavljevic; Fuli Yu

Until recently, sequencing has primarily been carried out in large genome centers who also invested heavily in developing the computational infrastructure to enable post sequencing analysis. The recent advancements in sequencing technologies have lead to a wide dissemination of sequencing and we are now seeing many sequencing projects being undertaken in small laboratories. However, the limited accessibility to the computational infrastructure and high quality bioinformatic tools needed to enable analysis remains a serious road-block. The cloud computing and Software-as-a-Service (SaaS) technologies can help address this barrier. We deploy the Atlas2 Cloud Pipeline for personal genome analysis via the Genboree Workbench using software-as-a-service model. We report on a successful case study of personal genome analysis using this pipeline.


F1000Research | 2012

Mercury: next generation sequencing data analysis and annotation pipeline

David P Sexton; Mike Dahdouli; Matthew N. Bainbridge; Danny Challis; Fuli Yu; Eric Boerwinkle; Jeffrey G. Reid; Richard A. Gibbs

Collaboration


Dive into the Danny Challis's collaboration.

Top Co-Authors

Avatar

Fuli Yu

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Jin Yu

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar

Uday S. Evani

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Andrew R. Jackson

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Richard A. Gibbs

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar

Sameer Paithankar

Baylor College of Medicine

View shared research outputs
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge