
Statistical Methods for Microarray Data Analysis
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"This book covers a broad range of topics, from the normalization of expression levels to the evaluation of experimental noise or the identification of putative networks through either multivariate analysis approach or clustering. . It is therefore appropriate for research students and post-docs as well as lecturers looking for handson examples." (Irina Ioana Mohorianu, zbMATH 1312.92006, 2015)
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Content
What Statisticians Should Know About Microarray Gene Expression Technology.- Where Statistics and Molecular Microarray Experiments Biology Meet.- Multiple Hypothesis Testing: A Methodological Overview.- Gene Selection with the d-sequence Method.- Using of Normalizations for Gene Expression Analysis .- Constructing Multivariate Prognostic Gene Signatures with Censored Survival Data.- Clustering of Gene-Expression Data via Normal Mixture Models.- Network-based Analysis of Multivariate Gene Expression Data.- Genomic Outlier Detection in High-throughput Data Analysis.- Impact of Experimental Noise and Annotation Imprecision on Data Quality in Microarray Experiment.- Aggregation Effect in Microarray Data Analysis.- Test for Normality of the Gene Expression Data.