A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb. 2006 Sensitivity A Simple Method.

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A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity A Simple Method for Computationally Inferring Microarray Sensitivity Reverter & Dalrymple BioInfoSummer 2003, AMSI, ANU, Canberra “Best Talk” A Rapid Method for Computationally Inferring Transcriptome Coverage and Microarray Sensitivity Reverter et al Bioinformatics 21:80-89

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Motivation MPSS Paper, Jongeneel et al. PNAS 03, 100:4702 tpmN Tags % > 1(0.0)27, (0.7)15, (1.0)10, (1.7) 3, (2.0) 1, (2.7) ,000(3.0) ,000(3.7) ,000(4.0) MPSS Test Data No Tags = 25,503 S 1 S cDNA Noise Paper PNAS 02, 99: Empirical Distribution of Tags

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Motivation 1.Universal distribution associated with stochastic processes of gene expression (Kuznetsov, 2002) 2.Framework for a mapping function: Concentration  Signal Empirical Distribution of Tags

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Mapping: Concentration  Signal Intensity% > , , , , , , Arrays97 Signals3,544,000 Mean1, x%x% Motivation

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Definition of Sensitivity Not from Confidence (1 –  ) Not from Formulae: More like Minimum Detectable Concentration/Activity “The smallest concentration of radioactivity in a sample that can be detected with a 5% Probability of erroneously detecting radioactivity, when in fact none was present (Type I Error) and also, a 5% Probability of not detecting radioactivity when in fact it is present (Type II Error).” If  = , then Sensitivity = Confidence References: Kane et al Lemon et al Zien et al Brown et al O’Malley & Deely, 2003

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Inspiration Quantity $ Price Supply Demand Market Equilibrium ! Economics 101

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Process 1.From all the genes, find the intensity thresholds that define 2.Apply these same threshold to the set of Differentially Expressed Genes. 3.The ratio of 2./1. Meets at the Equilibrium defining Sensitivity. …for a given microarray experiment: …example: 164,318 Records 6,051 Total Genes 183 Diff. Expressed Genes x ThresholdAll Genes DE % DE , , , , , ,

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Process 6051 x = x = 50 50/372 = 13.44% All Genes DE % DE Cat_1 (1) Cat_2 (5) Cat_3 (10) Cat_4 (50) Cat_5 (100) Cat_6 (500) Cat_7 (1000) Cat_8 (5000) Cat_9 (10000)

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Inferential Validity LetN T = N of “Total” Genes N D = N of “Differentially Expressed” Genes (N D  N T ) % x 1.The relevance of f(x i ) is limited to the Concentration  Signal mapping. 2.At equilibrium the probability of an error either way equals. Flat line (except Upper Bound)

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Mechanism i=1 cat_nde(i) = nde ! For each category compute cat_pde(i) = * nde/ntot ! N and Prop of DE Genes DO i = 2, 9 j = ntot - int(ntot*cat(i)/100.00) ! Pointer Location of threshold m = 0 ! Counter for DE genes found so far DO k = 1, ntot IF( gene(k)%deflag > 0 )THEN m = m + 1 IF( gene(k)%intens > int(gene(j)%intens) )THEN cat_nde(i) = nde-m+1 cat_pde(i) = 100.0*(cat_nde(i)/(ntot*(cat(i)/100.0))) EXIT ENDIF ENDDO WRITE(10,1000)i,cat(i),100.0*cat_nde(i)/nde,cat_pde(i) ENDDO INPUT: (1) Gene ID – (2) Avg Intensity – (3) DE Flag

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Application Examples (validation?) ARRAYS GENES Total DE 1.Wool Follicles10 6, Beef Cattle Diets14 6, Pigs Pneumonia16 6, M Avium ss avium Callow et al. (2000)16 6, Lin et al. (2002) 227,0071,350 7.Lynx MPSS test data 225,5038,284 …from CSIRO Livestock Industries: …from Non-CSIRO Livestock Industries:

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Application Examples (validation?)

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Application Examples (validation?) 5 tpm …..as Lynx claims 25 tpm …..possibly optimistic 40 tpm …..possibly real 80 tpm …..a ball-park figure 130 tpm …..I’ve seen them worse

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity  <  =  >  Not many DE genes High Confidence Few False +ve Lots of DE genes High Power Few False -ve Inferential Validity

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Sensitivity Conclusions 1.We are looking at the Sensitivity of the Experiment, not the Sensitivity of the Microarray Technology. 2.The proposed method is Very Simple and Very Fast. 3.Results acceptable but could be affected by: a.N Arrays in a given experiment b.Quality of the Arrays themselves c.Quality of the RNA extracted d.Statistical approach to identify DE e.Degree of Dissimilarity between samples 4.The impact of (3.a … 3.e) is not necessarily bad.