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Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015
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Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Dec 17, 2015

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Page 1: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Genetics Journal Club

Cara Skraban, MDClinical Genetics Fellow

February 12, 2015

Page 2: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

JAMA Neurology Feb 2015

Page 3: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Myasthenia Gravis

• Autoimmune disorder of neuromuscular transmission• Characterized by muscle fatigability• Typically mediated by antibodies against nicotinic

acetylcholine receptors (AChRs) or against related proteins at NM junction– Muscle-specific tyrosine kinase (MuSK)– Lipoprotein receptor-related protein 4– Agrin

• Bimodal affected populations– Young women– Older men

Page 4: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Myasthenia Gravis

Page 5: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Genetics Factors of MG

• HLA locus is the most strongly associated risk factor for disease

• Previous GWAS studies– Major histocompatibility complex class II– Protein tyrosine phosphatase nonreceptor type 22 (PTPN22)– TNFAIP3 interacting protein 1 (TNIP1)

• Gene studies have suggested association of cytotoxic T-lymphocyte-associated protein 4 gene (CTLA4)

• Patients often have a family history of autoimmune disease

• 5% of patients have a positive family history of MG following an AD inheritance

Page 6: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Patients

• Patients attending MG clinics at 14 centers throughout North America (972 patients)– Diagnosed by a neurologist specializing in MG– Onset of symptoms after 18 yo– Non-Hispanic white race– Diagnosed clinically and confirmed with anti-AChR antibodies– Samples collected using Oragene DNA Saliva Collection kits

• Control Cohort (1977 patients)– Downloaded genotype data from dbGAP– Neurologically normal individuals– Matched for race and ethnic group, not age and sex

Page 7: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Replication Cohort

• 423 Italian patients with AChR-positive MG• 467 Italian neurologically normal controls• Matched to the case cohort for race/ethnic

group but not for age or sex• Blood samples collected

Page 8: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Patients

Page 9: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Genome-wide Genotyping

• Genotyped in the Laboratory of Neurogenetics, National Institute of Aging, using HumanOmniExpress BeadChips (Illumina)– Assay 730,525 SNPs across the genome

• Control cohort previously genotyped at the Center for Inherited Disease Research at Hopkins on HumanOmni1-Quad BeadChips (Illumina)

• Analyses were confined to the 677,673 autosomal SNPs that were common to both chips

Page 10: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Genotyping Bias• To exclude possibility of genotyping bias arising from different

sources of DNA, they compared from two patients: – whole genome genotyped data (Illumina) generated using paired DNA

samples extracted from blood– DNA extracted from saliva using Oragene DNA Saliva Collection system– Concordance rate >99.99%– None of discordant SNPs were located within significantly associated

loci• Exclude genotyping bias from using amplified DNA, they

compared from 94 samples:– Sanger sequencing data generated using DNA samples that were

amplified– Data generated using genomic, unamplified DNA– Concordance rate 100% for both rs601006 and rs9271850

Page 11: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Genotyping in the Replication Cohort

• RS231770, rs4263037, rs9270986– Taqman genotyping assays – Scanned on an ABI 7900HT Real-Time PCR

• Rs601006 and rs9271850– Sequencing using Big-Dye Terminator version 3.1

sequencing kit– Run on an ABI 3730xl DNA analyzer– Analyzed with Sequencher software and Mutation

Surveyor

Page 12: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Statistical Analysis: Genome-wide Association

• Statistical analyses were performed using R statistical software

• Standard quality-control procedures; Exclusion of the following:– SNP call rates of less than 95%– Non-European ancestry– Cryptic relatedness- identity-by-descent > 0.1– Minor allele frequency <0.01 in the control cohort– Hardy-Weinberg equilibrium P < 0.001 in the

control cohort

Page 13: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Imputation

• Markov chain-based Haplotyper to impute genotypes– Imputed by a two-stage design– Confirmed accuracy of imputation for most associated

SNPs for the 972 MG patients• Taqman genotyping for rs231770• Sanger sequencing for rs601006 and rs9271850• High concordance for all: 99.8%, 98%, 100%

• 8,114,394 SNPs available for analysis• 513,081 genotyped SNPs• 7,601,313 imputed SNPs

Page 14: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Statistical Analysis Continued

• P values calculated using logistic regression modeling– First two principle components used as covariates

to compensate for any residual population stratification.

– Principle components were generated using Genome-wide Complex trait analysis software package implementation of eigenstrat

– Threshold of 5.0 x 10-8 for genome wide significance after Bonferroni correction

Page 15: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Probability Analysis and Heritability Estimates

• Density estimation was used to generate posterior probabilities of developing MG based on sex and age

• Genome-wide Complex Trait Analysis– Used to compare each case series to control individuals

(all cases, early-onset, late-onset)– Compared two separate sets of SNPs

• All genotyped SNPs• Only those within 1 MB from the loci identified as genome-

wide significant in the discovery phase• Only SNPs passing quality control were used to evaluate the

heritability

Page 16: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Loci Showing Genome-Wide Association with Myasthenia Gravis

Page 17: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Quartile-Quartile Plot

Page 18: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

All cases

Page 19: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Bimodal Sex Distribution

Page 20: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Early and Late Onset Cases

Page 21: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Replication Cohort

• 3 SNPs from the risk loci identified in the overall cohort for genotyping in the replication cohort of 423 Italian AChR antibody-positive MG cases and 467 controls.

• Strongest signals– rs9270986 in the intergenic region between HLA-

DRB1 and HLA-DQA1– rs231770 located 3.3 kb upstream of CTLA4

Page 22: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Combined Analysis

Page 23: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Early-onset Replication Cohort

Page 24: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Late-onset Replication Cohort

Page 25: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.
Page 26: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Summary of Results

• Overall case-control cohort– CTLA4 (rs231770) – HLA-DQA1 (rs9271871)– TNFRSF11A (rs4263037)

• Replicated for CTLA4 and HLA-DQA1 in the Italian cohort

Page 27: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Summary of Results

• Early and late-onset disease have distinct, but overlapping, genetic architecture – Genetic variation within TNFSRF11A locus drives

susceptibility to disease among older cases– Different haplotypes across the same HLA region on

chromosome 6 were identified in early and late-onset cases

– CTLA4 exerts significant effect regardless of age at symptom onset, suggesting it plays a central role in generating the aberrant autoimmune response that leads to neuromuscular junction dysfunction

Page 28: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

HLA-DQA1

Page 29: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

CTLA4

Page 30: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

TNFSF11A

• 4.5-kDa receptor activator of nuclear factor-K B expressed on the surface of antigen-presenting dendritic cells.

• Important regulator of the interaction between T cells and dendritic cells that is essential for immune surveillance and regulation of specific immunity

Page 31: Genetics Journal Club Cara Skraban, MD Clinical Genetics Fellow February 12, 2015.

Study Limitations

• Sample size• Possible population stratification• Lack of age and sex match controls• AChR antibody positive only patients (85%

MG)• Different results from previous studies– Different signal in MHC region– No association of PTPN22 and TNIP1