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Dive into the research topics where Soumya Raychaudhuri is active.

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Featured researches published by Soumya Raychaudhuri.


Nature | 2010

The landscape of somatic copy-number alteration across human cancers

Rameen Beroukhim; Craig H. Mermel; Dale Porter; Guo Wei; Soumya Raychaudhuri; Jerry Donovan; Jordi Barretina; Jesse S. Boehm; Jennifer Dobson; Mitsuyoshi Urashima; Kevin T. Mc Henry; Reid M. Pinchback; Azra H. Ligon; Yoon-Jae Cho; Leila Haery; Heidi Greulich; Michael R. Reich; Wendy Winckler; Michael S. Lawrence; Barbara A. Weir; Kumiko Tanaka; Derek Y. Chiang; Adam J. Bass; Alice Loo; Carter Hoffman; John R. Prensner; Ted Liefeld; Qing Gao; Derek Yecies; Sabina Signoretti

A powerful way to discover key genes with causal roles in oncogenesis is to identify genomic regions that undergo frequent alteration in human cancers. Here we present high-resolution analyses of somatic copy-number alterations (SCNAs) from 3,131 cancer specimens, belonging largely to 26 histological types. We identify 158 regions of focal SCNA that are altered at significant frequency across several cancer types, of which 122 cannot be explained by the presence of a known cancer target gene located within these regions. Several gene families are enriched among these regions of focal SCNA, including the BCL2 family of apoptosis regulators and the NF-κΒ pathway. We show that cancer cells containing amplifications surrounding the MCL1 and BCL2L1 anti-apoptotic genes depend on the expression of these genes for survival. Finally, we demonstrate that a large majority of SCNAs identified in individual cancer types are present in several cancer types.


Nature Genetics | 2010

Genome-wide meta-analysis increases to 71 the number of confirmed Crohn's disease susceptibility loci

Andre Franke; Dermot McGovern; Jeffrey C. Barrett; Kai Wang; Graham L. Radford-Smith; Tariq Ahmad; Charlie W. Lees; Tobias Balschun; James C. Lee; Rebecca L. Roberts; Carl A. Anderson; Joshua C. Bis; Suzanne Bumpstead; David Ellinghaus; Eleonora M. Festen; Michel Georges; Todd Green; Talin Haritunians; Luke Jostins; Anna Latiano; Christopher G. Mathew; Grant W. Montgomery; Natalie J. Prescott; Soumya Raychaudhuri; Jerome I. Rotter; Philip Schumm; Yashoda Sharma; Lisa A. Simms; Kent D. Taylor; David C. Whiteman

We undertook a meta-analysis of six Crohns disease genome-wide association studies (GWAS) comprising 6,333 affected individuals (cases) and 15,056 controls and followed up the top association signals in 15,694 cases, 14,026 controls and 414 parent-offspring trios. We identified 30 new susceptibility loci meeting genome-wide significance (P < 5 × 10−8). A series of in silico analyses highlighted particular genes within these loci and, together with manual curation, implicated functionally interesting candidate genes including SMAD3, ERAP2, IL10, IL2RA, TYK2, FUT2, DNMT3A, DENND1B, BACH2 and TAGAP. Combined with previously confirmed loci, these results identify 71 distinct loci with genome-wide significant evidence for association with Crohns disease.


Nature Genetics | 2010

Genome-wide association study meta-analysis identifies seven new rheumatoid arthritis risk loci

Eli A. Stahl; Soumya Raychaudhuri; Elaine F. Remmers; Gang Xie; Stephen Eyre; Brian Thomson; Yonghong Li; Fina Kurreeman; Alexandra Zhernakova; Anne Hinks; Candace Guiducci; Robert Chen; Lars Alfredsson; Christopher I. Amos; Kristin Ardlie; Anne Barton; John Bowes; Elisabeth Brouwer; Noël P. Burtt; Joseph J. Catanese; Jonathan S. Coblyn; Marieke J. H. Coenen; Karen H. Costenbader; Lindsey A. Criswell; J. Bart A. Crusius; Jing Cui; Paul I. W. de Bakker; Philip L. De Jager; Bo Ding; Paul Emery

To identify new genetic risk factors for rheumatoid arthritis, we conducted a genome-wide association study meta-analysis of 5,539 autoantibody-positive individuals with rheumatoid arthritis (cases) and 20,169 controls of European descent, followed by replication in an independent set of 6,768 rheumatoid arthritis cases and 8,806 controls. Of 34 SNPs selected for replication, 7 new rheumatoid arthritis risk alleles were identified at genome-wide significance (P < 5 × 10−8) in an analysis of all 41,282 samples. The associated SNPs are near genes of known immune function, including IL6ST, SPRED2, RBPJ, CCR6, IRF5 and PXK. We also refined associations at two established rheumatoid arthritis risk loci (IL2RA and CCL21) and confirmed the association at AFF3. These new associations bring the total number of confirmed rheumatoid arthritis risk loci to 31 among individuals of European ancestry. An additional 11 SNPs replicated at P < 0.05, many of which are validated autoimmune risk alleles, suggesting that most represent genuine rheumatoid arthritis risk alleles.


Nature | 2014

Genetics of rheumatoid arthritis contributes to biology and drug discovery

Yukinori Okada; Di Wu; Gosia Trynka; Towfique Raj; Chikashi Terao; Katsunori Ikari; Yuta Kochi; Koichiro Ohmura; Akari Suzuki; Shinji Yoshida; Robert R. Graham; Arun Manoharan; Ward Ortmann; Tushar Bhangale; Joshua C. Denny; Robert J. Carroll; Anne E. Eyler; Jeffrey D. Greenberg; Joel M. Kremer; Dimitrios A. Pappas; Lei Jiang; Jian Yin; Lingying Ye; Ding Feng Su; Jian Yang; Gang Xie; E. Keystone; Harm-Jan Westra; Tonu Esko; Andres Metspalu

A major challenge in human genetics is to devise a systematic strategy to integrate disease-associated variants with diverse genomic and biological data sets to provide insight into disease pathogenesis and guide drug discovery for complex traits such as rheumatoid arthritis (RA). Here we performed a genome-wide association study meta-analysis in a total of >100,000 subjects of European and Asian ancestries (29,880 RA cases and 73,758 controls), by evaluating ∼10 million single-nucleotide polymorphisms. We discovered 42 novel RA risk loci at a genome-wide level of significance, bringing the total to 101 (refs 2, 3, 4). We devised an in silico pipeline using established bioinformatics methods based on functional annotation, cis-acting expression quantitative trait loci and pathway analyses—as well as novel methods based on genetic overlap with human primary immunodeficiency, haematological cancer somatic mutations and knockout mouse phenotypes—to identify 98 biological candidate genes at these 101 risk loci. We demonstrate that these genes are the targets of approved therapies for RA, and further suggest that drugs approved for other indications may be repurposed for the treatment of RA. Together, this comprehensive genetic study sheds light on fundamental genes, pathways and cell types that contribute to RA pathogenesis, and provides empirical evidence that the genetics of RA can provide important information for drug discovery.


pacific symposium on biocomputing | 1999

PRINCIPAL COMPONENTS ANALYSIS TO SUMMARIZE MICROARRAY EXPERIMENTS: APPLICATION TO SPORULATION TIME SERIES

Soumya Raychaudhuri; Joshua M. Stuart; Russ B. Altman

A series of microarray experiments produces observations of differential expression for thousands of genes across multiple conditions. It is often not clear whether a set of experiments are measuring fundamentally different gene expression states or are measuring similar states created through different mechanisms. It is useful, therefore, to define a core set of independent features for the expression states that allow them to be compared directly. Principal components analysis (PCA) is a statistical technique for determining the key variables in a multidimensional data set that explain the differences in the observations, and can be used to simplify the analysis and visualization of multidimensional data sets. We show that application of PCA to expression data (where the experimental conditions are the variables, and the gene expression measurements are the observations) allows us to summarize the ways in which gene responses vary under different conditions. Examination of the components also provides insight into the underlying factors that are measured in the experiments. We applied PCA to the publicly released yeast sporulation data set (Chu et al. 1998). In that work, 7 different measurements of gene expression were made over time. PCA on the time-points suggests that much of the observed variability in the experiment can be summarized in just 2 components--i.e. 2 variables capture most of the information. These components appear to represent (1) overall induction level and (2) change in induction level over time. We also examined the clusters proposed in the original paper, and show how they are manifested in principal component space. Our results are available on the internet at http:¿www.smi.stanford.edu/project/helix/PCArray .


Nature Genetics | 2009

Meta-analysis of genome scans and replication identify CD6, IRF8 and TNFRSF1A as new multiple sclerosis susceptibility loci

Philip L. De Jager; Xiaoming Jia; Joanne Wang; Paul I. W. de Bakker; Linda Ottoboni; Neelum T. Aggarwal; Laura Piccio; Soumya Raychaudhuri; Dong Tran; Cristin Aubin; Rebeccah Briskin; Susan Romano; Sergio E. Baranzini; Jacob L. McCauley; Margaret A. Pericak-Vance; Jonathan L. Haines; Rachel A. Gibson; Yvonne Naeglin; Bernard M. J. Uitdehaag; Paul M. Matthews; Ludwig Kappos; Chris H. Polman; Wendy L. McArdle; David P. Strachan; Denis A. Evans; Anne H. Cross; Mark J. Daly; Alastair Compston; Stephen Sawcer; Howard L. Weiner

We report the results of a meta-analysis of genome-wide association scans for multiple sclerosis (MS) susceptibility that includes 2,624 subjects with MS and 7,220 control subjects. Replication in an independent set of 2,215 subjects with MS and 2,116 control subjects validates new MS susceptibility loci at TNFRSF1A (combined P = 1.59 × 10−11), IRF8 (P = 3.73 × 10−9) and CD6 (P = 3.79 × 10−9). TNFRSF1A harbors two independent susceptibility alleles: rs1800693 is a common variant with modest effect (odds ratio = 1.2), whereas rs4149584 is a nonsynonymous coding polymorphism of low frequency but with stronger effect (allele frequency = 0.02; odds ratio = 1.6). We also report that the susceptibility allele near IRF8, which encodes a transcription factor known to function in type I interferon signaling, is associated with higher mRNA expression of interferon-response pathway genes in subjects with MS.


Nature Genetics | 2008

Common variants at CD40 and other loci confer risk of rheumatoid arthritis

Soumya Raychaudhuri; Elaine F. Remmers; Annette Lee; Rachel Hackett; Candace Guiducci; Noël P. Burtt; Lauren Gianniny; Benjamin D. Korman; Leonid Padyukov; Fina Kurreeman; Monica Chang; Joseph J. Catanese; Bo Ding; Sandra Wong; Annette H. M. van der Helm-van Mil; Benjamin M. Neale; Jonathan S. Coblyn; Jing Cui; Paul P. Tak; Gert Jan Wolbink; J. Bart A. Crusius; Irene E. van der Horst-Bruinsma; Lindsey A. Criswell; Christopher I. Amos; Michael F. Seldin; Daniel L. Kastner; Kristin Ardlie; Lars Alfredsson; Karen H. Costenbader; David Altshuler

To identify rheumatoid arthritis risk loci in European populations, we conducted a meta-analysis of two published genome-wide association (GWA) studies totaling 3,393 cases and 12,462 controls. We genotyped 31 top-ranked SNPs not previously associated with rheumatoid arthritis in an independent replication of 3,929 autoantibody-positive rheumatoid arthritis cases and 5,807 matched controls from eight separate collections. We identified a common variant at the CD40 gene locus (rs4810485, P = 0.0032 replication, P = 8.2 × 10−9 overall, OR = 0.87). Along with other associations near TRAF1 (refs. 2,3) and TNFAIP3 (refs. 4,5), this implies a central role for the CD40 signaling pathway in rheumatoid arthritis pathogenesis. We also identified association at the CCL21 gene locus (rs2812378, P = 0.00097 replication, P = 2.8 × 10−7 overall), a gene involved in lymphocyte trafficking. Finally, we identified evidence of association at four additional gene loci: MMEL1-TNFRSF14 (rs3890745, P = 0.0035 replication, P = 1.1 × 10−7 overall), CDK6 (rs42041, P = 0.010 replication, P = 4.0 × 10−6 overall), PRKCQ (rs4750316, P = 0.0078 replication, P = 4.4 × 10−6 overall), and KIF5A-PIP4K2C (rs1678542, P = 0.0026 replication, P = 8.8 × 10−8 overall).


Nature Genetics | 2012

Five amino acids in three HLA proteins explain most of the association between MHC and seropositive rheumatoid arthritis

Soumya Raychaudhuri; Cynthia Sandor; Eli A. Stahl; Jan Freudenberg; Hye Soon Lee; Xiaoming Jia; Lars Alfredsson; Leonid Padyukov; Lars Klareskog; Jane Worthington; Katherine A. Siminovitch; Sang-Cheol Bae; Robert M. Plenge; Peter K. Gregersen; Paul I. W. de Bakker

The genetic association of the major histocompatibility complex (MHC) to rheumatoid arthritis risk has commonly been attributed to alleles in HLA-DRB1. However, debate persists about the identity of the causal variants in HLA-DRB1 and the presence of independent effects elsewhere in the MHC. Using existing genome-wide SNP data in 5,018 individuals with seropositive rheumatoid arthritis (cases) and 14,974 unaffected controls, we imputed and tested classical alleles and amino acid polymorphisms in HLA-A, HLA-B, HLA-C, HLA-DPA1, HLA-DPB1, HLA-DQA1, HLA-DQB1 and HLA-DRB1, as well as 3,117 SNPs across the MHC. Conditional and haplotype analyses identified that three amino acid positions (11, 71 and 74) in HLA-DRβ1 and single–amino-acid polymorphisms in HLA-B (at position 9) and HLA-DPβ1 (at position 9), which are all located in peptide-binding grooves, almost completely explain the MHC association to rheumatoid arthritis risk. This study shows how imputation of functional variation from large reference panels can help fine map association signals in the MHC.


Human Molecular Genetics | 2008

Practical aspects of imputation-driven meta-analysis of genome-wide association studies

Paul I. W. de Bakker; Manuel A. Ferreira; Xiaoming Jia; Benjamin M. Neale; Soumya Raychaudhuri; Benjamin F. Voight

Motivated by the overwhelming success of genome-wide association studies, droves of researchers are working vigorously to exchange and to combine genetic data to expediently discover genetic risk factors for common human traits. The primary tools that fuel these new efforts are imputation, allowing researchers who have collected data on a diversity of genotype platforms to share data in a uniformly exchangeable format, and meta-analysis for pooling statistical support for a genotype-phenotype association. As many groups are forming collaborations to engage in these efforts, this review collects a series of guidelines, practical detail and learned experiences from a variety of individuals who have contributed to the subject.


PLOS Genetics | 2011

Proteins Encoded in Genomic Regions Associated with Immune-Mediated Disease Physically Interact and Suggest Underlying Biology

Elizabeth Rossin; Kasper Lage; Soumya Raychaudhuri; Ramnik J. Xavier; Diana Tatar; Yair Benita; Chris Cotsapas; Mark J. Daly

Genome-wide association studies (GWAS) have defined over 150 genomic regions unequivocally containing variation predisposing to immune-mediated disease. Inferring disease biology from these observations, however, hinges on our ability to discover the molecular processes being perturbed by these risk variants. It has previously been observed that different genes harboring causal mutations for the same Mendelian disease often physically interact. We sought to evaluate the degree to which this is true of genes within strongly associated loci in complex disease. Using sets of loci defined in rheumatoid arthritis (RA) and Crohns disease (CD) GWAS, we build protein–protein interaction (PPI) networks for genes within associated loci and find abundant physical interactions between protein products of associated genes. We apply multiple permutation approaches to show that these networks are more densely connected than chance expectation. To confirm biological relevance, we show that the components of the networks tend to be expressed in similar tissues relevant to the phenotypes in question, suggesting the network indicates common underlying processes perturbed by risk loci. Furthermore, we show that the RA and CD networks have predictive power by demonstrating that proteins in these networks, not encoded in the confirmed list of disease associated loci, are significantly enriched for association to the phenotypes in question in extended GWAS analysis. Finally, we test our method in 3 non-immune traits to assess its applicability to complex traits in general. We find that genes in loci associated to height and lipid levels assemble into significantly connected networks but did not detect excess connectivity among Type 2 Diabetes (T2D) loci beyond chance. Taken together, our results constitute evidence that, for many of the complex diseases studied here, common genetic associations implicate regions encoding proteins that physically interact in a preferential manner, in line with observations in Mendelian disease.

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Eli A. Stahl

Icahn School of Medicine at Mount Sinai

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Peter K. Gregersen

The Feinstein Institute for Medical Research

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Jane Worthington

Manchester Academic Health Science Centre

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Kamil Slowikowski

Brigham and Women's Hospital

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Lars Klareskog

Karolinska University Hospital

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