Jacques van Helden Statistics for Bioinformatics Jacques van Helden TGCATGACTGATTGGTC CGGCCGATAACAGGTGT GCTTGCACCCAGTGCCC.

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Presentation transcript:

Jacques van Helden Statistics for Bioinformatics Jacques van Helden TGCATGACTGATTGGTC CGGCCGATAACAGGTGT GCTTGCACCCAGTGCCC AACGTCAACAAGCAGGA ACAACGGGCTGATAAGG GAGAAGATAAGATAAGA TAAGATAACAAATCATT GCGTCCGACCACAGGCC GACACATAGCAGAACGA TGTGAAGCA

Univariate statistics 1. Introduction 1. Introduction 2. Study cases  2.1 Gene expression data 2.1 Gene expression data  2.2 Sequence lengths  2.3 Word counts in DNA sequences 3. Descriptive statistics 3. Descriptive statistics 4. Elements of probabilities 4. Elements of probabilities 5. Theoretical distributions 5. Theoretical distributions 6. Statistical inference  6.1 Sampling and estimation 6.1 Sampling and estimation  6.2 Fitting 6.2 Fitting  6.3 Hypothesis testing 6.3 Hypothesis testing Conformity Significance Homogeneity Goodness of fit

Multivariate statistics 1.IntroductionIntroduction 2.Study casesStudy cases 3.Correlation analysis 4.Regression analysis 5.ClusteringClustering 6.Principal component analysisPrincipal component analysis 7.Multidimensional scaling 8.Discriminant analysisDiscriminant analysis 9.SummarySummary

Books Statistics applied to bioinformatics  van Helden, J. Statisitics pr bioinformatics. Oxford University Press. To appear in  Ewens, W. J. & Grant, G. R. (2001). Statistical Methods in bioinformatics: an introduction. Statistics for Biology and Health (Dietz, K., Krickeberg, K., Samet, J. & Tsiatis, A., Eds.), Springer, New York. Univariate analysis  Dagnelie, P. (1973). Theorie et methodes statistiques - applications agronomiques. 2d edit, Les presses agronomiques de Gembloux, Gembloux - Belgium.  Zar, J. H. (1999). Biostatistical analysis. 4th edit (Ryu, T., Ed.), Prentice Hall, Upper Saddle River. Multivariate analysis  Kachigan, S. K. (1991). Multivariate statistical analysis: a conceptual introduction. 2d edit, Radius Press, New York.  Hastie, T., Tibshirani, R. & Friedman, J. (2001). The elements of statistical learning - data mining, inference and prediction. Springer series in statistics. 1 vols, Springer-Verlag, New-York.  Flury, B. (1997). A first course in multivariate statistics, Springer-Verlag, New York.  Huberty, C. J. (1994). Applied Discriminant analysis. Wiley series in probability and mathematical statistics (al., B. e., Ed.), John Wiley & sons, New York.