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Genetic Analysis in Human Disease Kim R. Simpfendorfer, PhD Robert S.Boas Center for Genomics & Human Genetics The Feinstein Institute for Medical Research.

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Presentation on theme: "Genetic Analysis in Human Disease Kim R. Simpfendorfer, PhD Robert S.Boas Center for Genomics & Human Genetics The Feinstein Institute for Medical Research."— Presentation transcript:

1 Genetic Analysis in Human Disease Kim R. Simpfendorfer, PhD Robert S.Boas Center for Genomics & Human Genetics The Feinstein Institute for Medical Research

2 Learning Objectives Describe the differences between a linkage analysis and an association analysis Identify potentially confounding factors in a genetic study Describe why a disease associated single- nucleotide polymorphism is not necessarily the causal disease variant

3 Question: 1) You have a grant to do a genetics study of the disease of your choice. What are 3 aspects you need to consider when recruiting subjects?  A) Phenotype, gender and age  B) Phenotype, gender and income  C) Gender, age and income  D) Age, income and education

4 Question: 2) You’ve analyzed 1,000 cases and 1,000 controls for an association study but found nothing significant. What went wrong?  A) Recruited too many subjects  B) Population was too homogeneous  C) Not enough subjects  D) Genotyped using only one platform

5 Question: 3) You’ve made it to the big time. From your GWAS analysis you have significant hits in known genes. What’s the next step?  A) End of story, move on to the next study  B) Develop new drugs  C) Replication/validation  D) Patent the SNPs

6 Aims of Genetic Analysis in Human Disease McCarthy Nature Genetics Reviews

7 The contributions of genetic and environmental factors to human diseases Rare Genetics simple Unifactorial High recurrence rate Common Genetics complex Multifactorial Low recurrence rate

8 Twin concordance to estimate heritability

9 Heritable and non-heritable factors Castillo-Fernandez, Genome Medicine2014 6:60 Heritable factors Shared environmental factors Nonshared environmental factors

10 The spectrum of genetic effects in complex diseases Bush WS and Moore JH - Bush WS, Moore JH (2012) Chapter 11: Genome-Wide Association Studies. PLoS Comput Biol 8(12)

11 Getting Started Question to be answered Which gene(s) are responsible for genetic susceptibility for Disease A? What is the measurable difference  Clinical phenotype biomarkers, drug response, outcome Who is affected  Demographics male/female, ethnic/racial background, age

12 Genome Wide Study Design Linkage (single gene diseases: cystic fibrosis, Huntington’s disease, Duchene's Muscular Dystrophy)  Families Association (complex diseases: RA, SLE, breast cancer, autism, allopecia, AMD, Alzheimer’s)  Families  Case - control

13 Linkage vs. Association Analysis Ott Nat Rev Gen 2011

14 Linkage Studies- all in the family Family based method to map location of disease causing loci Trios Sib pairs Multiplex families Abo BMC Bioinformatics 2010

15 Genome-wide linkage analysis of an autosomal recessive hypotrichosis identifies a novel P2RY5 mutation Petukhova Genomics 92 2008

16 Genome-wide linkage analysis of an autosomal recessive hypotrichosis identifies a novel P2RY5 mutation Petukhova Genomics 92 2008

17 Genome-wide linkage analysis of an autosomal recessive hypotrichosis identifies a novel P2RY5 mutation Petukhova Genomics 92 2008

18 Genome-wide linkage analysis of an autosomal recessive hypotrichosis identifies a novel P2RY5 mutation Petukhova Genomics 92 2008

19 GWAS Lasse Folkersen

20 Genome wide association study & meta-analysis Case-control SLE Meta-analysis RA

21 GWAS So you have a hit: p< 5 x10 -7 Validation/ replication Dense mapping/Sequencing Functional Analysis

22 Validation Independent replication set  Same inclusion/exclusion subject criteria  Sample size Genotyping platform  Same polymorphism Analysis Different ethnic group (added bonus)

23 Dense Mapping/Sequencing Identifies the boundaries of your signal  close in on the target gene/ causal variant  find other (common or rare) variants

24 Imputation and haplotype analysis Identifies the boundaries of your signal  close in on the target gene/ causal variant  find other (common or rare) variants

25 MTMR9 SLC35G5 TDH C8orf12  FAM167A BLK  LINC00208 P values from Stage 1 meta GWAS Genetics of rheumatoid arthritis contributes to biology and drug discovery. Okada et al. 2013. RA association in Europeans in BLK regulatory region

26 Systemic Lupus Erythematosus Rheumatoid Arthritis Dermatomyositis Sjögren’s Syndrome Systemic Sclerosis Kawasaki Disease Anti-phospholipid Syndrome European / Caucasian Chinese-Han Japanese African American Hispanic Korean Asian Simpfendorfer et al. Arthritis & Rheumatology 2015. Controls n=2,134 RA cases n=2,526 Association of the BLK risk haplotype with autoimmune disease across ancestral groups

27 Simpfendorfer et al. Arthritis & Rheumatology 2015. Candidate causal alleles in the BLK autoimmune disease-risk haplotype 1bp insertion1bp deletion Histone mark peaks from B lymphocytes

28 Functional Analysis Does your gene make sense?  pathway  function  cell type  expression  animal models PTPN22: first non-MHC gene associated with RA (TCR signaling)

29 Sharing of risk genes between autoimmune diseases indicates involvement in a shared autoimmune disease development mechanism NHGRI GWAS catalog Autoimmunity risk genes/loci from GWAS

30 Perfect vs Imperfect Worlds Perfect world Linkage and/or GWAS – identify causative gene polymorphism for your disease Publish Imperfect world  nothing significant  identify genes that have no apparent influence in your disease of interest Now what?

31 What Happened? Disease has no genetic component.  Viral, bacterial, environmental Genetic effect is small and your sample size wasn’t big enough to detect it.  CDCV vs CDRV Phenotype /or demographics too heterogeneous  Too many outliers Wrong controls.  Population stratification; admixture Genotyping platform does not detect CNVs Not asking the right question.  wrong statistics, wrong model

32 Influence of Admixture Not all Subjects are the same

33 Meta-Analysis – Bigger is better Meta-analysis - combines genetic data from multiple studies; allows identification of new loci  Rheumatoid Arthritis  Lupus  Crohn’s disease  Alzheimer’s  Schizophrenia  Autism

34 Candidate gene association success story: PCSK9 Cohen NEJM 2006

35 Genome-Wide Association Studies The promise  Better understanding of biological processes leading to disease pathogenesis  Development of new treatments  Identify non-genetic influences of disease  Better predictive models of risk

36 Genome-Wide Association Studies The reality  Few causal variants have been identified Clinical heterogeneity and complexity of disease  Genetic results don’t account for all of disease risk

37 Question: 1) You have a grant to do a genetics study of the disease of your choice. What are 3 aspects you need to consider when recruiting subjects?  A) Phenotype, gender and age  B) Phenotype, gender and income  C) Gender, age and income  D) Age, income and education

38 Answer: 1) You have a grant to do a genetics study of the disease of your choice. What are 3 aspects you need to consider when recruiting subjects?  A) Phenotype, gender and age

39 Question: 2) You’ve analyzed 1,000 cases and 1,000 controls for an association study but found nothing significant. What went wrong?  A) Recruited too many subjects  B) Population was too homogeneous  C) Not enough subjects  D) Genotyped using only one platform

40 Answer: 2) You’ve analyzed 1,000 cases and 1,000 controls for an association study but found nothing significant. What went wrong?  C) Not enough subjects

41 Question: 3) You’ve made it to the big time. From your GWAS analysis you have significant hits in known genes. What’s the next step?  A) End of story, move on to the next study  B) Develop new drugs  C) Replication/validation  D) Patent the SNPs

42 Answer: 3) You’ve made it to the big time. From your GWAS analysis you have significant hits in known genes. What’s the next step?  C) Replication/validation


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