Presentation is loading. Please wait.

Presentation is loading. Please wait.

13 October 2004Statistics: Yandell © 20041 Inferring Genetic Architecture of Complex Biological Processes Brian S. Yandell 12, Christina Kendziorski 13,

Similar presentations


Presentation on theme: "13 October 2004Statistics: Yandell © 20041 Inferring Genetic Architecture of Complex Biological Processes Brian S. Yandell 12, Christina Kendziorski 13,"— Presentation transcript:

1 13 October 2004Statistics: Yandell © 20041 Inferring Genetic Architecture of Complex Biological Processes Brian S. Yandell 12, Christina Kendziorski 13, Hong Lan 4, Jessica Byers 45, Elias Chaibub 1, Alan D. Attie 4 CIBM Training Program Retreat 2004 1 Department of Statistics 2 Department of Horticulture 3 Department of Biostatistics & Medical Informatics 4 Department of Biochemistry 5 Department of Nutritrional Sciences University of Wisconsin-Madison http://www.stat.wisc.edu/~yandell/statgen

2 13 October 2004Statistics: Yandell © 20042 Gene mapping infers the relationship between genotype and phenotype in a segregating population. We map thousands of mRNA expression phenotypes, or expression QTL, using dimension reduction methods to uncover correlated genetic architecture, including number and location of genomic regions as well as gene action and epistasis. We show a novel blending of principal components and discriminant analysis with functional information to detect multiple expression QTL that together may affect the expression of many correlated mRNA. These common patterns of gene action are largely overlooked by simple interval mapping when conducted separately for each mRNA. In our current study with 60 F2 mice from a B6-BTBR ob/ob model of diabetes and over 40,000 mRNA measured with Affymetrix chips, we find three pairs of genomic regions of particular interest associated with signal transduction, apoptosis, and lipid metabolism. We propose to join genetic architecture with graphical models of biochemical activity. Our approach is directly applicable to gene mapping for other “omic” measurements on the horizon.

3 13 October 2004Statistics: Yandell © 20043 glucoseinsulin (courtesy AD Attie)

4 13 October 2004Statistics: Yandell © 20044 studying diabetes in an F2 mouse model: segregating panel from inbred lines –B6.ob x BTBR.ob  F1  F2 –selected mice with ob/ob alleles at leptin gene (Chr 6) –sacrificed at 14 weeks, tissues preserved physiological study (Stoehr et al. 2000 Diabetes) –mapped body weight, insulin, glucose at various ages gene expression studies –RT-PCR for a few mRNA on 108 F2 mice liver tissues (Lan et al. 2003 Diabetes; Lan et al. 2003 Genetics) –Affymetrix microarrays on 60 F2 mice liver tissues U47 A & B chips, RMA normalization design: selective phenotyping (Jin et al. 2004 Genetics)

5 13 October 2004Statistics: Yandell © 20045 The intercross (from K Broman)

6 13 October 2004Statistics: Yandell © 20046 interval mapping basics observed measurements –Y = phenotypic trait –X = markers & linkage map i = individual index 1,…,n missing data –missing marker data –Q = QT genotypes alleles QQ, Qq, or qq at locus unknown quantities –M = genetic architecture – = QT locus (or loci) –  = phenotype model parameters pr(Q=q|X, ) genotype model –grounded by linkage map, experimental cross –recombination yields multinomial for Q given X f(Y|  q ) phenotype model –distribution shape (assumed normal here) –unknown parameters  (could be non-parametric) after Sen & Churchill (2001 Genetics)  M

7 13 October 2004Statistics: Yandell © 20047 heterogeneity: many genes can affect phenotype –different allelic combinations can yield similar phenotypes –multiple genes can affecting phenotype in subtle ways –multiple genes can interact (epistasis) genetic architecture: model for explained genetic variation –loci (genomic regions) that affect trait –genotypic effects of loci, including possible epistasis M = { 1, 2, 3, ( 1, 2 )} = 3 loci with epistasis between two  q =  0 +  1q +  2q +  3q +  (1,2)q = linear model for genotypic mean = ( 1, 2, 3 ) = loci in model M q = (q 1, q 2, q 3 )= possible genotype at loci Q = (Q 1, Q 2, Q 3 )= genotype for each individual at loci genetic architecture: heterogeneity

8 13 October 2004Statistics: Yandell © 20048 hetereogeneity: many genes affect each trait 5 4 3 2 1 major QTL on linkage map major QTL minor QTL polygenes (modifiers)

9 13 October 2004Statistics: Yandell © 20049 SCD mRNA expression phenotype 2-D scan for QTL (R/qtl) epistasis LOD peaks joint LOD peaks

10 13 October 2004Statistics: Yandell © 200410 2M observations 30,000 traits 60 mice

11 13 October 2004Statistics: Yandell © 200411 modern high throughput biology measuring the molecular dogma of biology –DNA  RNA  protein  metabolites –measured one at a time only a few years ago massive array of measurements on whole systems (“omics”) –thousands measured per individual (experimental unit) –all (or most) components of system measured simultaneously whole genome of DNA: genes, promoters, etc. all expressed RNA in a tissue or cell all proteins all metabolites systems biology: focus on network interconnections –chains of behavior in ecological community –underlying biochemical pathways genetics as one experimental tool –perturb system by creating new experimental cross –each individual is a unique mosaic

12 13 October 2004Statistics: Yandell © 200412 reduce 30,000 traits to 300-3,000 heritable traits probability a trait is heritable pr(H|Y,Q) = pr(Y|Q,H) pr(H|Q) / pr(Y|Q)Bayes rule pr(Y|Q) = pr(Y|Q,H) pr(H|Q) + pr(Y|Q, not H) pr(not H|Q) phenotype given genotype pr(Y|Q, not H) = f 0 (Y) = sum  f(Y|  ) pr(  )if not H pr(Y|Q, H) = f 1 (Y|Q) = product q f 0 (Y q ) if heritable Y q = {Y i | Q i =q} = trait values with genotype Q=q finding heritable traits (from Christina Kendziorski)

13 13 October 2004Statistics: Yandell © 200413 hierarchical model for expression phenotypes (EB arrays: Christina Kendziorski) mRNA phenotype models given genotypic mean  q common prior on  q across all mRNA (use empirical Bayes to estimate prior)

14 13 October 2004Statistics: Yandell © 200414 expression meta-traits: pleiotropy reduce 3,000 heritable traits to 3 meta-traits(!) what are expression meta-traits? –pleiotropy: a few genes can affect many traits transcription factors, regulators –weighted averages: Z = YW principle components, discriminant analysis infer genetic architecture of meta-traits –model selection issues are subtle missing data, non-linear search what is the best criterion for model selection? –time consuming process heavy computation load for many traits subjective judgement on what is best

15 13 October 2004Statistics: Yandell © 200415 PC for two correlated mRNA

16 13 October 2004Statistics: Yandell © 200416 PC across microarray functional groups Affy chips on 60 mice ~40,000 mRNA 2500+ mRNA show DE (via EB arrays with marker regression) 1500+ organized in 85 functional groups 2-35 mRNA / group which are interesting? examine PC1, PC2 circle size = # unique mRNA

17 13 October 2004Statistics: Yandell © 200417 84 PC meta-traits by functional group focus on 2 interesting groups

18 13 October 2004Statistics: Yandell © 200418 red lines: peak for PC meta-trait black/blue: peaks for mRNA traits arrows: cis-action?

19 13 October 2004Statistics: Yandell © 200419 DA meta-traits: separate pleiotropy from environmental correlation pleiotropy only both environmental correlation only Korol et al. (2001)

20 13 October 2004Statistics: Yandell © 200420 interaction plots for DA meta-traits DA for all pairs of markers: separate 9 genotypes based on markers (a) same locus pair found with PC meta-traits (b) Chr 2 region interesting from biochemistry (Jessica Byers) (c) Chr 5 & Chr 9 identified as important for insulin, SCD

21 13 October 2004Statistics: Yandell © 200421 genotypes from Chr 4/Chr 15 locus pair (circle=centroid) PC captures spread without genotype DA creates best separation by genotype comparison of PC and DA meta-traits on 1500+ mRNA traits correlation of PC and DA meta-traits note better spread of circles PC ignores genotypeDA uses genotype

22 13 October 2004Statistics: Yandell © 200422 relating meta-traits to mRNA traits SCD trait log2 expression DA meta-trait standard units

23 13 October 2004Statistics: Yandell © 200423 graphical models (with Elias Chaibub) R2 D2 P2 QTL R1 D1 P1 observable trans-action unobservable meta-trait QTL RNA DNA observable cis-action? protein

24 13 October 2004Statistics: Yandell © 200424 building graphical models infer genetic architecture of meta-trait find mRNA traits correlated with meta-trait apply meta-trait genetic architecture to mRNA –expect subset of QTL to affect each mRNA build graphical models QTL  RNA1  RNA2 –class of possible models –find best model as putative biochemical pathway parallel biochemical investigation –candidate genes in QTL regions –laboratory experiments on pathway components


Download ppt "13 October 2004Statistics: Yandell © 20041 Inferring Genetic Architecture of Complex Biological Processes Brian S. Yandell 12, Christina Kendziorski 13,"

Similar presentations


Ads by Google