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Dive into the research topics where Eric Banks is active.

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Featured researches published by Eric Banks.


Genome Research | 2010

The Genome Analysis Toolkit: A MapReduce framework for analyzing next-generation DNA sequencing data

Aaron McKenna; Matthew Hanna; Eric Banks; Andrey Sivachenko; Kristian Cibulskis; Andrew Kernytsky; Kiran Garimella; David Altshuler; Stacey B. Gabriel; Mark J. Daly; Mark A. DePristo

Next-generation DNA sequencing (NGS) projects, such as the 1000 Genomes Project, are already revolutionizing our understanding of genetic variation among individuals. However, the massive data sets generated by NGS--the 1000 Genome pilot alone includes nearly five terabases--make writing feature-rich, efficient, and robust analysis tools difficult for even computationally sophisticated individuals. Indeed, many professionals are limited in the scope and the ease with which they can answer scientific questions by the complexity of accessing and manipulating the data produced by these machines. Here, we discuss our Genome Analysis Toolkit (GATK), a structured programming framework designed to ease the development of efficient and robust analysis tools for next-generation DNA sequencers using the functional programming philosophy of MapReduce. The GATK provides a small but rich set of data access patterns that encompass the majority of analysis tool needs. Separating specific analysis calculations from common data management infrastructure enables us to optimize the GATK framework for correctness, stability, and CPU and memory efficiency and to enable distributed and shared memory parallelization. We highlight the capabilities of the GATK by describing the implementation and application of robust, scale-tolerant tools like coverage calculators and single nucleotide polymorphism (SNP) calling. We conclude that the GATK programming framework enables developers and analysts to quickly and easily write efficient and robust NGS tools, many of which have already been incorporated into large-scale sequencing projects like the 1000 Genomes Project and The Cancer Genome Atlas.


Nature Genetics | 2011

A framework for variation discovery and genotyping using next-generation DNA sequencing data

Mark A. DePristo; Eric Banks; Ryan Poplin; Kiran Garimella; Jared Maguire; Christopher Hartl; Anthony A. Philippakis; Guillermo Del Angel; Manuel A. Rivas; Matt Hanna; Aaron McKenna; Timothy Fennell; Andrew Kernytsky; Andrey Sivachenko; Kristian Cibulskis; Stacey B. Gabriel; David Altshuler; Mark J. Daly

Recent advances in sequencing technology make it possible to comprehensively catalog genetic variation in population samples, creating a foundation for understanding human disease, ancestry and evolution. The amounts of raw data produced are prodigious, and many computational steps are required to translate this output into high-quality variant calls. We present a unified analytic framework to discover and genotype variation among multiple samples simultaneously that achieves sensitive and specific results across five sequencing technologies and three distinct, canonical experimental designs. Our process includes (i) initial read mapping; (ii) local realignment around indels; (iii) base quality score recalibration; (iv) SNP discovery and genotyping to find all potential variants; and (v) machine learning to separate true segregating variation from machine artifacts common to next-generation sequencing technologies. We here discuss the application of these tools, instantiated in the Genome Analysis Toolkit, to deep whole-genome, whole-exome capture and multi-sample low-pass (∼4×) 1000 Genomes Project datasets.


Nature | 2016

Analysis of protein-coding genetic variation in 60,706 humans

Monkol Lek; Konrad J. Karczewski; Eric Vallabh Minikel; Kaitlin E. Samocha; Eric Banks; Timothy Fennell; Anne H. O’Donnell-Luria; James S. Ware; Andrew Hill; Beryl B. Cummings; Taru Tukiainen; Daniel P. Birnbaum; Jack A. Kosmicki; Laramie Duncan; Karol Estrada; Fengmei Zhao; James Zou; Emma Pierce-Hoffman; Joanne Berghout; David Neil Cooper; Nicole Deflaux; Mark A. DePristo; Ron Do; Jason Flannick; Menachem Fromer; Laura Gauthier; Jackie Goldstein; Namrata Gupta; Daniel P. Howrigan; Adam Kiezun

Large-scale reference data sets of human genetic variation are critical for the medical and functional interpretation of DNA sequence changes. Here we describe the aggregation and analysis of high-quality exome (protein-coding region) DNA sequence data for 60,706 individuals of diverse ancestries generated as part of the Exome Aggregation Consortium (ExAC). This catalogue of human genetic diversity contains an average of one variant every eight bases of the exome, and provides direct evidence for the presence of widespread mutational recurrence. We have used this catalogue to calculate objective metrics of pathogenicity for sequence variants, and to identify genes subject to strong selection against various classes of mutation; identifying 3,230 genes with near-complete depletion of predicted protein-truncating variants, with 72% of these genes having no currently established human disease phenotype. Finally, we demonstrate that these data can be used for the efficient filtering of candidate disease-causing variants, and for the discovery of human ‘knockout’ variants in protein-coding genes.


Bioinformatics | 2011

The variant call format and VCFtools

Petr Danecek; Adam Auton; Gonçalo R. Abecasis; Cornelis A. Albers; Eric Banks; Mark A DePristo; Robert E. Handsaker; Gerton Lunter; Gabor T. Marth; Stephen T. Sherry; Gilean McVean; Richard Durbin

Summary: The variant call format (VCF) is a generic format for storing DNA polymorphism data such as SNPs, insertions, deletions and structural variants, together with rich annotations. VCF is usually stored in a compressed manner and can be indexed for fast data retrieval of variants from a range of positions on the reference genome. The format was developed for the 1000 Genomes Project, and has also been adopted by other projects such as UK10K, dbSNP and the NHLBI Exome Project. VCFtools is a software suite that implements various utilities for processing VCF files, including validation, merging, comparing and also provides a general Perl API. Availability: http://vcftools.sourceforge.net Contact: [email protected]


Nature | 2012

Patterns and rates of exonic de novo mutations in autism spectrum disorders

Benjamin M. Neale; Yan Kou; Li Liu; Avi Ma'ayan; Kaitlin E. Samocha; Aniko Sabo; Chiao-Feng Lin; Christine Stevens; Li-San Wang; Vladimir Makarov; Pazi Penchas Polak; Seungtai Yoon; Jared Maguire; Emily L. Crawford; Nicholas G. Campbell; Evan T. Geller; Otto Valladares; Chad Shafer; Han Liu; Tuo Zhao; Guiqing Cai; Jayon Lihm; Ruth Dannenfelser; Omar Jabado; Zuleyma Peralta; Uma Nagaswamy; Donna M. Muzny; Jeffrey G. Reid; Irene Newsham; Yuanqing Wu

Autism spectrum disorders (ASD) are believed to have genetic and environmental origins, yet in only a modest fraction of individuals can specific causes be identified. To identify further genetic risk factors, here we assess the role of de novo mutations in ASD by sequencing the exomes of ASD cases and their parents (n = 175 trios). Fewer than half of the cases (46.3%) carry a missense or nonsense de novo variant, and the overall rate of mutation is only modestly higher than the expected rate. In contrast, the proteins encoded by genes that harboured de novo missense or nonsense mutations showed a higher degree of connectivity among themselves and to previous ASD genes as indexed by protein-protein interaction screens. The small increase in the rate of de novo events, when taken together with the protein interaction results, are consistent with an important but limited role for de novo point mutations in ASD, similar to that documented for de novo copy number variants. Genetic models incorporating these data indicate that most of the observed de novo events are unconnected to ASD; those that do confer risk are distributed across many genes and are incompletely penetrant (that is, not necessarily sufficient for disease). Our results support polygenic models in which spontaneous coding mutations in any of a large number of genes increases risk by 5- to 20-fold. Despite the challenge posed by such models, results from de novo events and a large parallel case–control study provide strong evidence in favour of CHD8 and KATNAL2 as genuine autism risk factors.


Current protocols in human genetics | 2013

From FastQ data to high confidence variant calls: the Genome Analysis Toolkit best practices pipeline.

Geraldine A. Van der Auwera; Mauricio O. Carneiro; Christopher Hartl; Ryan Poplin; Guillermo Del Angel; Ami Levy-Moonshine; Tadeusz Jordan; Khalid Shakir; David Roazen; Joel Thibault; Eric Banks; Kiran Garimella; David Altshuler; Stacey Gabriel; Mark A. DePristo

This unit describes how to use BWA and the Genome Analysis Toolkit (GATK) to map genome sequencing data to a reference and produce high‐quality variant calls that can be used in downstream analyses. The complete workflow includes the core NGS data‐processing steps that are necessary to make the raw data suitable for analysis by the GATK, as well as the key methods involved in variant discovery using the GATK. Curr. Protoc. Bioinform. 43:11.10.1‐11.10.33.


Nature | 2014

De novo mutations in schizophrenia implicate synaptic networks

Menachem Fromer; Andrew Pocklington; David H. Kavanagh; Hywel Williams; Sarah Dwyer; Padhraig Gormley; Lyudmila Georgieva; Elliott Rees; Priit Palta; Douglas M. Ruderfer; Noa Carrera; Isla Humphreys; Jessica S. Johnson; Panos Roussos; Douglas D. Barker; Eric Banks; Vihra Milanova; Seth G. N. Grant; Eilis Hannon; Samuel A. Rose; K D Chambert; Milind Mahajan; Edward M. Scolnick; Jennifer L. Moran; George Kirov; Aarno Palotie; Steven A. McCarroll; Peter Holmans; Pamela Sklar; Michael John Owen

Inherited alleles account for most of the genetic risk for schizophrenia. However, new (de novo) mutations, in the form of large chromosomal copy number changes, occur in a small fraction of cases and disproportionally disrupt genes encoding postsynaptic proteins. Here we show that small de novo mutations, affecting one or a few nucleotides, are overrepresented among glutamatergic postsynaptic proteins comprising activity-regulated cytoskeleton-associated protein (ARC) and N-methyl-d-aspartate receptor (NMDAR) complexes. Mutations are additionally enriched in proteins that interact with these complexes to modulate synaptic strength, namely proteins regulating actin filament dynamics and those whose messenger RNAs are targets of fragile X mental retardation protein (FMRP). Genes affected by mutations in schizophrenia overlap those mutated in autism and intellectual disability, as do mutation-enriched synaptic pathways. Aligning our findings with a parallel case–control study, we demonstrate reproducible insights into aetiological mechanisms for schizophrenia and reveal pathophysiology shared with other neurodevelopmental disorders.


Science | 2012

A Systematic Survey of Loss-of-Function Variants in Human Protein-Coding Genes

Daniel G. MacArthur; Suganthi Balasubramanian; Adam Frankish; Ni Huang; James A. Morris; Klaudia Walter; Luke Jostins; Lukas Habegger; Joseph K. Pickrell; Stephen B. Montgomery; Cornelis A. Albers; Zhengdong D. Zhang; Donald F. Conrad; Gerton Lunter; Hancheng Zheng; Qasim Ayub; Mark A. DePristo; Eric Banks; Min Hu; Robert E. Handsaker; Jeffrey A. Rosenfeld; Menachem Fromer; Mike Jin; Xinmeng Jasmine Mu; Ekta Khurana; Kai Ye; Mike Kay; Gary Saunders; Marie-Marthe Suner; Toby Hunt

Defective Gene Detective Identifying genes that give rise to diseases is one of the major goals of sequencing human genomes. However, putative loss-of-function genes, which are often some of the first identified targets of genome and exome sequencing, have often turned out to be sequencing errors rather than true genetic variants. In order to identify the true scope of loss-of-function genes within the human genome, MacArthur et al. (p. 823; see the Perspective by Quintana-Murci) extensively validated the genomes from the 1000 Genomes Project, as well as an additional European individual, and found that the average person has about 100 true loss-of-function alleles of which approximately 20 have two copies within an individual. Because many known disease-causing genes were identified in “normal” individuals, the process of clinical sequencing needs to reassess how to identify likely causative alleles. Validation of predicted nonfunctional alleles in the human genome affects the medical interpretation of genomic analyses. Genome-sequencing studies indicate that all humans carry many genetic variants predicted to cause loss of function (LoF) of protein-coding genes, suggesting unexpected redundancy in the human genome. Here we apply stringent filters to 2951 putative LoF variants obtained from 185 human genomes to determine their true prevalence and properties. We estimate that human genomes typically contain ~100 genuine LoF variants with ~20 genes completely inactivated. We identify rare and likely deleterious LoF alleles, including 26 known and 21 predicted severe disease–causing variants, as well as common LoF variants in nonessential genes. We describe functional and evolutionary differences between LoF-tolerant and recessive disease genes and a method for using these differences to prioritize candidate genes found in clinical sequencing studies.


Nature | 2014

A polygenic burden of rare disruptive mutations in schizophrenia

Shaun Purcell; Jennifer L. Moran; Menachem Fromer; Douglas M. Ruderfer; Nadia Solovieff; Panos Roussos; Colm O'Dushlaine; K D Chambert; Sarah E. Bergen; Anna K. Kähler; Laramie Duncan; Eli A. Stahl; Giulio Genovese; Esperanza Fernández; Mark O. Collins; Noboru H. Komiyama; Jyoti S. Choudhary; Patrik K. E. Magnusson; Eric Banks; Khalid Shakir; Kiran Garimella; Timothy Fennell; Mark DePristo; Seth G. N. Grant; Stephen J. Haggarty; Stacey Gabriel; Edward M. Scolnick; Eric S. Lander; Christina M. Hultman; Patrick F. Sullivan

Schizophrenia is a common disease with a complex aetiology, probably involving multiple and heterogeneous genetic factors. Here, by analysing the exome sequences of 2,536 schizophrenia cases and 2,543 controls, we demonstrate a polygenic burden primarily arising from rare (less than 1 in 10,000), disruptive mutations distributed across many genes. Particularly enriched gene sets include the voltage-gated calcium ion channel and the signalling complex formed by the activity-regulated cytoskeleton-associated scaffold protein (ARC) of the postsynaptic density, sets previously implicated by genome-wide association and copy-number variation studies. Similar to reports in autism, targets of the fragile X mental retardation protein (FMRP, product of FMR1) are enriched for case mutations. No individual gene-based test achieves significance after correction for multiple testing and we do not detect any alleles of moderately low frequency (approximately 0.5 to 1 per cent) and moderately large effect. Taken together, these data suggest that population-based exome sequencing can discover risk alleles and complements established gene-mapping paradigms in neuropsychiatric disease.


Bioinformatics | 2011

ContEst: estimating cross-contamination of human samples in next-generation sequencing data

Kristian Cibulskis; Aaron McKenna; Timothy Fennell; Eric Banks; Mark A. DePristo; Gad Getz

SUMMARY Here, we present ContEst, a tool for estimating the level of cross-individual contamination in next-generation sequencing data. We demonstrate the accuracy of ContEst across a range of contamination levels, sources and read depths using sequencing data mixed in silico at known concentrations. We applied our tool to published cancer sequencing datasets and report their estimated contamination levels. AVAILABILITY AND IMPLEMENTATION ContEst is a GATK module, and distributed under a BSD style license at http://www.broadinstitute.org/cancer/cga/contest CONTACT [email protected]; [email protected] SUPPLEMENTARY INFORMATION Supplementary data is available at Bioinformatics online.

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Menachem Fromer

Icahn School of Medicine at Mount Sinai

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Douglas M. Ruderfer

Icahn School of Medicine at Mount Sinai

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