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Dive into the research topics where Philip L. De Jager is active.

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Featured researches published by Philip L. De Jager.


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.


Nature | 2013

Charting a dynamic DNA methylation landscape of the human genome

Michael J. Ziller; Hongcang Gu; Fabian Müller; Julie Donaghey; Linus T.-Y. Tsai; Oliver Kohlbacher; Philip L. De Jager; Evan D. Rosen; David A. Bennett; Bradley E. Bernstein; Andreas Gnirke; Alexander Meissner

DNA methylation is a defining feature of mammalian cellular identity and is essential for normal development. Most cell types, except germ cells and pre-implantation embryos, display relatively stable DNA methylation patterns, with 70–80% of all CpGs being methylated. Despite recent advances, we still have a limited understanding of when, where and how many CpGs participate in genomic regulation. Here we report the in-depth analysis of 42 whole-genome bisulphite sequencing data sets across 30 diverse human cell and tissue types. We observe dynamic regulation for only 21.8% of autosomal CpGs within a normal developmental context, most of which are distal to transcription start sites. These dynamic CpGs co-localize with gene regulatory elements, particularly enhancers and transcription-factor-binding sites, which allow identification of key lineage-specific regulators. In addition, differentially methylated regions (DMRs) often contain single nucleotide polymorphisms associated with cell-type-related diseases as determined by genome-wide association studies. The results also highlight the general inefficiency of whole-genome bisulphite sequencing, as 70–80% of the sequencing reads across these data sets provided little or no relevant information about CpG methylation. To demonstrate further the utility of our DMR set, we use it to classify unknown samples and identify representative signature regions that recapitulate major DNA methylation dynamics. In summary, although in theory every CpG can change its methylation state, our results suggest that only a fraction does so as part of coordinated regulatory programs. Therefore, our selected DMRs can serve as a starting point to guide new, more effective reduced representation approaches to capture the most informative fraction of CpGs, as well as further pinpoint putative regulatory elements.


Nature | 2015

Genetic and Epigenetic Fine-Mapping of Causal Autoimmune Disease Variants

Kyle Kai-How Farh; Alexander Marson; Jiang Zhu; Markus Kleinewietfeld; William J. Housley; Samantha Beik; Noam Shoresh; Holly Whitton; Russell J.H. Ryan; Alexander A. Shishkin; Meital Hatan; Marlene J. Carrasco-Alfonso; Dita Mayer; C. John Luckey; Nikolaos A. Patsopoulos; Philip L. De Jager; Vijay K. Kuchroo; Charles B. Epstein; Mark J. Daly; David A. Hafler; Bradley E. Bernstein

Genome-wide association studies have identified loci underlying human diseases, but the causal nucleotide changes and mechanisms remain largely unknown. Here we developed a fine-mapping algorithm to identify candidate causal variants for 21 autoimmune diseases from genotyping data. We integrated these predictions with transcription and cis-regulatory element annotations, derived by mapping RNA and chromatin in primary immune cells, including resting and stimulated CD4+ T-cell subsets, regulatory T cells, CD8+ T cells, B cells, and monocytes. We find that ∼90% of causal variants are non-coding, with ∼60% mapping to immune-cell enhancers, many of which gain histone acetylation and transcribe enhancer-associated RNA upon immune stimulation. Causal variants tend to occur near binding sites for master regulators of immune differentiation and stimulus-dependent gene activation, but only 10–20% directly alter recognizable transcription factor binding motifs. Rather, most non-coding risk variants, including those that alter gene expression, affect non-canonical sequence determinants not well-explained by current gene regulatory models.


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.


PLOS Genetics | 2008

Defining the Role of the MHC in Autoimmunity: A Review and Pooled Analysis

Michelle M. A. Fernando; Christine Stevens; Emily Walsh; Philip L. De Jager; Philippe Goyette; Robert M. Plenge; Timothy J. Vyse; John D. Rioux

The major histocompatibility complex (MHC) is one of the most extensively studied regions in the human genome because of the association of variants at this locus with autoimmune, infectious, and inflammatory diseases. However, identification of causal variants within the MHC for the majority of these diseases has remained difficult due to the great variability and extensive linkage disequilibrium (LD) that exists among alleles throughout this locus, coupled with inadequate study design whereby only a limited subset of about 20 from a total of approximately 250 genes have been studied in small cohorts of predominantly European origin. We have performed a review and pooled analysis of the past 30 years of research on the role of the MHC in six genetically complex disease traits – multiple sclerosis (MS), type 1 diabetes (T1D), systemic lupus erythematosus (SLE), ulcerative colitis (UC), Crohns disease (CD), and rheumatoid arthritis (RA) – in order to consolidate and evaluate the current literature regarding MHC genetics in these common autoimmune and inflammatory diseases. We corroborate established MHC disease associations and identify predisposing variants that previously have not been appreciated. Furthermore, we find a number of interesting commonalities and differences across diseases that implicate both general and disease-specific pathogenetic mechanisms in autoimmunity.


Annual Review of Pathology-mechanisms of Disease | 2011

Parkinson's Disease: Genetics and Pathogenesis

Joshua M. Shulman; Philip L. De Jager; Mel B. Feany

Recent investigation into the mechanisms of Parkinsons disease (PD) has generated remarkable insight while simultaneously challenging traditional conceptual frameworks. Although the disease remains defined clinically by its cardinal motor manifestations and pathologically by midbrain dopaminergic cell loss in association with Lewy bodies, it is now recognized that PD has substantially more widespread impact, causing a host of nonmotor symptoms and associated pathology in multiple regions throughout the nervous system. Further, the discovery and validation of PD-susceptibility genes contradict the historical view that environmental factors predominate, and blur distinctions between familial and sporadic disease. Genetic advances have also promoted the development of improved animal models, highlighted responsible molecular pathways, and revealed mechanistic overlap with other neurodegenerative disorders. In this review, we synthesize emerging lessons on PD pathogenesis from clinical, pathological, and genetic studies toward a unified concept of the disorder that may accelerate the design and testing of the next generation of PD therapies.


PLOS Genetics | 2011

Pervasive sharing of genetic effects in autoimmune disease.

Chris Cotsapas; Benjamin F. Voight; Elizabeth Rossin; Kasper Lage; Benjamin M. Neale; Chris Wallace; Gonçalo R. Abecasis; Jeffrey C. Barrett; Timothy W. Behrens; Judy H. Cho; Philip L. De Jager; James T. Elder; Robert R. Graham; Peter K. Gregersen; Lars Klareskog; Katherine A. Siminovitch; David A. van Heel; Cisca Wijmenga; Jane Worthington; John A. Todd; David A. Hafler; Stephen S. Rich; Mark J. Daly

Genome-wide association (GWA) studies have identified numerous, replicable, genetic associations between common single nucleotide polymorphisms (SNPs) and risk of common autoimmune and inflammatory (immune-mediated) diseases, some of which are shared between two diseases. Along with epidemiological and clinical evidence, this suggests that some genetic risk factors may be shared across diseases—as is the case with alleles in the Major Histocompatibility Locus. In this work we evaluate the extent of this sharing for 107 immune disease-risk SNPs in seven diseases: celiac disease, Crohns disease, multiple sclerosis, psoriasis, rheumatoid arthritis, systemic lupus erythematosus, and type 1 diabetes. We have developed a novel statistic for Cross Phenotype Meta-Analysis (CPMA) which detects association of a SNP to multiple, but not necessarily all, phenotypes. With it, we find evidence that 47/107 (44%) immune-mediated disease risk SNPs are associated to multiple—but not all—immune-mediated diseases (SNP-wise P CPMA<0.01). We also show that distinct groups of interacting proteins are encoded near SNPs which predispose to the same subsets of diseases; we propose these as the mechanistic basis of shared disease risk. We are thus able to leverage genetic data across diseases to construct biological hypotheses about the underlying mechanism of pathogenesis.


Nature Genetics | 2009

De novo copy number variants identify new genes and loci in isolated sporadic tetralogy of Fallot

Steven C Greenway; Alexandre C. Pereira; Jennifer C Lin; Steven R. DePalma; Samuel J Israel; Sonia M. F. Mesquita; Emel A. Ergul; Jessie H. Conta; Joshua M. Korn; Steven A. McCarroll; Joshua M. Gorham; Stacey B. Gabriel; David Altshuler; Maria de Lourdes Quintanilla-Dieck; Maria A. Artunduaga; Roland D. Eavey; Robert M. Plenge; Nancy A. Shadick; Michael E. Weinblatt; Philip L. De Jager; David A. Hafler; Roger E. Breitbart; Jonathan G. Seidman; Christine E. Seidman

Tetralogy of Fallot (TOF), the most common severe congenital heart malformation, occurs sporadically, without other anomaly, and from unknown cause in 70% of cases. Through a genome-wide survey of 114 subjects with TOF and their unaffected parents, we identified 11 de novo copy number variants (CNVs) that were absent or extremely rare (<0.1%) in 2,265 controls. We then examined a second, independent TOF cohort (n = 398) for additional CNVs at these loci. We identified CNVs at chromosome 1q21.1 in 1% (5/512, P = 0.0002, OR = 22.3) of nonsyndromic sporadic TOF cases. We also identified recurrent CNVs at 3p25.1, 7p21.3 and 22q11.2. CNVs in a single subject with TOF occurred at six loci, two that encode known (NOTCH1, JAG1) disease-associated genes. Our findings predict that at least 10% (4.5–15.5%, 95% confidence interval) of sporadic nonsyndromic TOF cases result from de novo CNVs and suggest that mutations within these loci might be etiologic in other cases of TOF.


Nature Neuroscience | 2014

Alzheimer's disease: early alterations in brain DNA methylation at ANK1 , BIN1 , RHBDF2 and other loci

Philip L. De Jager; Gyan Srivastava; Katie Lunnon; Jeremy D. Burgess; Leonard C. Schalkwyk; Lei Yu; Matthew L. Eaton; Brendan T. Keenan; Jason Ernst; Cristin McCabe; Anna Tang; Towfique Raj; Joseph M. Replogle; Wendy Brodeur; Stacey Gabriel; High Seng Chai; Curtis S. Younkin; Steven G. Younkin; Fanggeng Zou; Moshe Szyf; Charles B. Epstein; Julie A. Schneider; Bradley E. Bernstein; Alexander Meissner; Nilufer Ertekin-Taner; Lori B. Chibnik; Manolis Kellis; Jonathan Mill; David A. Bennett

We used a collection of 708 prospectively collected autopsied brains to assess the methylation state of the brains DNA in relation to Alzheimers disease (AD). We found that the level of methylation at 71 of the 415,848 interrogated CpGs was significantly associated with the burden of AD pathology, including CpGs in the ABCA7 and BIN1 regions, which harbor known AD susceptibility variants. We validated 11 of the differentially methylated regions in an independent set of 117 subjects. Furthermore, we functionally validated these CpG associations and identified the nearby genes whose RNA expression was altered in AD: ANK1, CDH23, DIP2A, RHBDF2, RPL13, SERPINF1 and SERPINF2. Our analyses suggest that these DNA methylation changes may have a role in the onset of AD given that we observed them in presymptomatic subjects and that six of the validated genes connect to a known AD susceptibility gene network.

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David A. Bennett

Rush University Medical Center

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Julie A. Schneider

Rush University Medical Center

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Lei Yu

Rush University Medical Center

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Denis A. Evans

Rush University Medical Center

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Towfique Raj

Brigham and Women's Hospital

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Joshua M. Shulman

Baylor College of Medicine

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