Genomics Data Analysis: False Discovery Rates and Empirical Bayes Methods
Autor David R. Bickelen Limba Engleză Paperback – 21 ian 2023
Key Features:
* dice games and exercises, including one using interactive software, for teaching the concepts in the classroom
* examples focusing on gene expression and on genetic association data and briefly covering metabolomics data and proteomics data
* gradual introduction to the mathematical equations needed
* how to choose between different methods of multiple hypothesis testing
* how to convert the output of genomics hypothesis testing software to estimates of local false discovery rates
* guidance through the minefield of current criticisms of p values
* material on non-Bayesian prior p values and posterior p values not previously published
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Specificații
ISBN-13: 9781032475288
ISBN-10: 1032475285
Pagini: 140
Ilustrații: 10
Dimensiuni: 138 x 216 mm
Greutate: 0.45 kg
Ediția:1
Editura: CRC Press
Colecția Chapman and Hall/CRC
ISBN-10: 1032475285
Pagini: 140
Ilustrații: 10
Dimensiuni: 138 x 216 mm
Greutate: 0.45 kg
Ediția:1
Editura: CRC Press
Colecția Chapman and Hall/CRC
Cuprins
1.Basic probability and statistics, 2. Introduction to likelihood, 3. False discovery rates, 4. Simulating and analyzing gene expression data, 5. Variations in dimension and data, 6. Correcting bias in estimates of the false discovery rate, 7. The L value: An estimated local false discovery rate to replace a p value, 8. Maximum likelihood and applications, Appendix A. Generalized Bonferroni correction derived from conditional compatibility, Appendix B. How to choose a method of hypothesis testing.
Notă biografică
David R. Bickel is an Associate Professor in the Department of Biochemistry, Microbiology and Immunology of the University of Ottawa and a Core Member of the Ottawa Institute of Systems Biology. Since 2011, he has been teaching classes focused on the statistical analysis of genomics data. While working as a biostatistician in academia and industry, he has published new statistical methods for analyzing genomics data in leading statistics and bioinformatics journals. He is also investigating the foundations of statistical inference. For recent activity, see davidbickel.com or follow him at @DavidRBickel (Twitter).
Descriere
The objective is to prepare students and scientists to analyze genomics data using empirical Bayes methods and to critically evaluate the statistical methods appearing in genomics articles. That is accomplished by providing the information needed for them to interpret p values for their current or future research.