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Download Chapter 13 – Genetic Mapping of Mendelian Characters
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Complex Disease and Susceptibility Gene Gene Gene Gene Environment Disease A Disease B Disease C Multifactorial disorders Complex Disease and Susceptibility • Single gene disorders – – – – – – Huntington’s Fragile X SCA1 DMD Werner’s syndrome Cystic fibrosis • Multifactorial – – – – – – – Heart disease Cancer Stroke Asthma Diabetes Alzheimer’s Parkinson’s Cancer Statistics 68% of new cases involve individuals 60 years and older Why does cancer incidence increase with age? Cancer is the natural endpoint of a multicellular animal Balance between mutation rate and losing control Genetic Mutations Leading to Cancer “6-hit model” 10-7 mutations per gene per cell generation 1013 cells in a human For one cell to collect 6 mutations: 10-42 x 1013 = 10-29 Thus, 1 in 1029 chance Then why do we get cancer? Genetic Mutations Leading to Cancer Multistage evolution model Successive mutations provide a growth advantage, expanding that population of mutants Genomic instability occurs when DNA repair mechanisms are mutated Genes altered in Cancer Oncogenes EGFR PDGFR ABL SRC PI3K Akt Bcl2 b-catenin Genomic Stability ATM BRCA1 BRCA2 BARD XPA Tumor Suppressors APC Axin p53 PTEN Rb TSC1,2 p16 INK4A p53 – Guardian of the Genome G1 Rb M G1/S G2/M p53 S G2 Apoptosis Genes altered in Cancer Oncogenes EGFR PDGFR ABL SRC PI3K Akt Bcl2 b-catenin Genomic Stability ATM BRCA1 BRCA2 BARD XPA Tumor Suppressors APC Axin p53 PTEN Rb TSC1,2 p16 INK4A By Clark et al; Part B Cropped from original Fig 1 by SLE346_B3 [CC BY-SA 3.0 (http://creativecommons.org/licenses/by-sa/3.0)] Ceshi Chen, Arun K. Seth and Andrew E. Aplin Complex Disease and Susceptibility • Single gene disorders – – – – – – Huntington’s Fragile X SCA1 DMD Werner’s syndrome Cystic fibrosis • Multifactorial – – – – – – – Heart disease Cancer Stroke Asthma Diabetes Alzheimer’s Parkinson’s Genetic Component in Complex Disorders • Relative risk lr= frequency in relative of affected person Population frequency Genetic Component in Complex Disorders • Family Studies Class of relative Proportion of genes shared Examples First degree 50% Parent/child, siblings Second degree 25% Grandparent/grandchild, aunt/niece Third degree 12.5% Cousins Genetic Component in Complex Disorders Congenital Malformations Cleft lip Pyloric stenosis General population 0.001 0.001 First degree relatives X40 (0.04) X10 (0.01) Second degree relatives X7 X5 Third degree relatives X3 X1.5 • Problem of environmental impact Genetic Component in Complex Disorders Disorder Breast cancer Type I diabetes Type II diabetes Multiple sclerosis Peptic ulcer Rheumatoid arthritis Tuberculosis Monozygotic 6.5 30 50 20 64 50 51 Dizygotic 5.5 5 30 6 44 8 22 Genetic Component in Complex Disorders Disorder Alcoholism Autism Schizophrenia Alzheimer’s Dyslexia Monozygotic 40 60 44 58 64 Dizygotic 20 7 16 26 40 Genetic Component in Complex Disorders • In polygenic diseases, risk (susceptibility) alleles increase the phenotypic value • Traits may appear continuously variable • Traits may appear discontinuous Genetic Component in Complex Disorders • How to find susceptibility gene? – Four main approaches 1. 2. 3. 4. Candidate gene Parametric linkage analysis Non-parametric linkage analysis Population association studies Candidate gene • Before searching the whole genome, think about what genes may be involved – Eg., Type I diabetes – Some genes involved in cell-mediated immunity are located on chromosome 6 (Human leukocyte antigen region) – Linkage between Type I diabetes and HLA was closely examined • After a small genomic region is isolated, determine best candidate gene Parametric Linkage Analysis • Standard LOD score analysis, as used for single-gene disorders Parametric Linkage Analysis • Eg., breast cancer susceptibility genes • Collect family history of >1500 breast cancer patients – Some family histories showed multiple cases occurring at early ages – could be a Mendelian allele segregating – Best model suggested a dominant single-gene allele with a population frequency of 0.0006 – this suggested about 5% of total breast cancers Parametric Linkage Analysis • Eg., breast cancer susceptibility genes • Collect family history of >1500 breast cancer patients – Now, look for families with multiple breast cancer cases with early onset – Genotype family members and look for linkage – Linkage (significant LOD score) to breast cancer was found to a marker on 17q21 Parametric Linkage Analysis • Eg., breast cancer susceptibility genes • Collect family history of >1500 breast cancer patients – The gene involved was cloned, like other single-gene disorders – Breast cancer (BRCA) 1 gene– tumor suppressor gene involved in genomic stability – LOH leads to high penetrance of breast cancer, as well as ovarian cancer Parametric Linkage Analysis • Eg., breast cancer susceptibility genes • Collect family history of >1500 breast cancer patients – However, examination of BRCA1 mutations outside of affected families suggests lower penetrance Parametric Linkage Analysis • Other successes in finding Mendelian risk factors in polygenic diseases – HNPCC – non-polyposis colon cancer • MSH1, MLH1, PMS1, PMS2 – FAP – familial polyposis colon cancer • APC – Premature heart disease - hypercholesterolemia • Mutation of the LDL receptor Parametric Linkage Analysis • Familial hypercholesterolemia – Autosomal dominant Parametric Linkage Analysis • Familial hypercholesterolemia • 200 mg/dl - 350 mg/dl - dietary, common • 400 mg/dl - 600 mg/dl - heterozygous, uncommon • >600 mg/dl - homozygous, rare Parametric Linkage Analysis • Familial hypercholesterolemia • Autosomal dominant; allele frequency about 1:150 Parametric Linkage Analysis • Spectacular misfires as well: – Bi-polar disease (manic depression) – Initial linkage to HRAS and INS on chromosome 11 – LOD scores of 4.08 and 2.63 – Two individuals in extended family misdiagnosed – Lowered LOD score to 1.03 and 1.75 Non-parametric Linkage Analysis • Genomic regions surrounding risk alleles will be inherited from a common ancestor in affected individuals to a greater frequency than by chance – also called autozygosity mapping • Search for commonly inherited regions by polymorphic microsatellites, SNP’s, etc. • High throughput analysis critical Non-parametric Linkage Analysis • Common to use Affected Sib-Pairs (ASP) • Collect genotypic data for 100’s of ASP • 300+ microsatellite markers genotyped for 10cM coverage • Look for significant IBD (>chance occurrence) Non-parametric Linkage Analysis • IBD: if parental alleles differ at locus, then sibs that have both alleles in common are identical by decent • IBS: if parental alleles are not know, then we can only say sibs are identical by state Population association studies • Association studies are carried out on populations • Look for alleles that segregate with the disease in a whole population – Direct causation – Natural selection – Linkage disequilibrium Population association studies • Linkage disequilibrium • Combination of alleles at two closely linked loci occur more often than expected by chance from population frequencies • Recombination reduces linkage disequilibrium Population association studies • Linkage disequilibrium vs. Linkage Mapping – Mapping is performed on families with few informative meiosis; LD is determined on populations after many generations – Mapping will show linkage over large distances; LD is visible only over short distances Genetic Component in Complex Disorders • How to find susceptibility genes? – Four main approaches 1. 2. 3. 4. Candidate gene Parametric linkage analysis Non-parametric linkage analysis Population association studies Alzheimer’s Disease (AD) • North America – 0.1% at 60, 10% at 80, 30% at 90 • Early onset: <60 • Neurofibrillary tangles in the cerebral cortex and amyloid plaques in the brain • Neuronal apoptosis occurs in the hippocampus and cerebral cortex – memory and learning Alzheimer’s Disease (AD) • Neurofibrillary tangles – polymerized tau protein • Amyloid plaques – deposition of the b-amyloid protein Alzheimer’s Disease (AD) • Apoptosis of neuronal cells – Sometimes called “Programmed cell death” – Energy-utilizing program of orderly selfdestruction – Organized dismantling of the cell to avoid autoimmune reaction Apoptosis Apoptosis • Activation of proteases (cysteine-aspartic acid specific; called Caspases) • Cascade of “irreversable” proteolysis • Activation of endonuclease – chops up the cells DNA – no going back now! Apoptosis • Apoptosis occurs: – During development – Removal of immunological cells – In cells with DNA damage – Defeated in cancer cells • Neuronal cells maintain survival by exposure to “neurotrophins” Search for Susceptibility Alleles for Alzheimer’s Disease • Some clues as to causative agents of AD – Down syndrome individuals develop clinical features of AD when they live >30 years – Suggested that chromosome 21 may be involved in AD – Parametric linkage analysis located a locus on chromosome 21q in early-onset familial AD Causative genes in AD • Amyloid precursor protein (APP) overabundant in Alzheimer’s and Down syndrome individuals • Amyloid precursor protein gene mapped to chromosome 21 • Trisomy 21 causes a over-expression of genes from chromsome 21, including APP Causative genes in AD • APP – a causative agent of AD and involved in pathology of Downs syndrome • Large transmembrane protein processed by a, b or g-secretase • a-secretase generates Aa40 protein – non-toxic and the main protein in normal brain Causative genes in AD • b and g-secretase generates Ab42 protein – toxic and insoluble – which forms plaques • After APP was found by parametric linkage, mutations were found • In familial AD, mutations in APP increased the amount of Ab42 cleavage Causative genes in AD • More parametric linkage analysis within families of early-onset AD – Presenilin I and II were discovered on chromosome 14 and 2 – Presenilin I is a g-secretase – leading to increased Ab42 secretion Causative genes in AD • 1% of AD is familial, and shows strong Mendelian inheritance of altered Ab42 generation • What about risk alleles in sporadic AD? – 99% of cases Causative genes in AD • Non-parametric linkage analysis was performed on Affected Pedigree Member (APM) • 32 families in which 87 of 293 members showed AD • Linkage with locus on chromosome 19 Causative genes in AD • In this region was the gene for Apolipoprotein E. • ApoE was found in plaques and tangles – Good candidate • A population association study was performed • Three alleles of ApoE were identified: – ApoE2 (6%), ApoE3 (78%) and ApoE4 (16%) • Strong LD was found for allele ApoE4 and several nearby SNP’s Causative genes in AD • ApoE4 is a risk factor Alzheimer’s disease ApoE4 dose 0 1 2 % affected 20 46.6 91.3 Relative Risk 1 2.84 8.07 Age of onset 84.3 75.5 68.4 Summary • Family, adoption and twin studies provide evidence of genetic component to complex disease • Risk of disease is the combined effect of polygenes influenced by environment, thus termed multifactorial • Combined affect of many common alleles each providing a small effect, or of a few uncommon alleles with large effect • Candidate gene, parametric and non-parametric linkage analysis, and population association analysis are used to find risk factors for multifactorial disease