Statistical Methods In Molecular Biology


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Statistical Methods in Molecular Biology


Statistical Methods in Molecular Biology

Author: Heejung Bang

language: en

Publisher: Humana

Release Date: 2016-08-23


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This progressive book presents the basic principles of proper statistical analyses. It progresses to more advanced statistical methods in response to rapidly developing technologies and methodologies in the field of molecular biology.

Statistical Methods in Molecular Biology


Statistical Methods in Molecular Biology

Author: Heejung Bang

language: en

Publisher: Humana Press

Release Date: 2011-03-04


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This progressive book presents the basic principles of proper statistical analyses. It progresses to more advanced statistical methods in response to rapidly developing technologies and methodologies in the field of molecular biology.

Statistics in Human Genetics and Molecular Biology


Statistics in Human Genetics and Molecular Biology

Author: Cavan Reilly

language: en

Publisher: Chapman and Hall/CRC

Release Date: 2009-06-19


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Focusing on the roles of different segments of DNA, Statistics in Human Genetics and Molecular Biology provides a basic understanding of problems arising in the analysis of genetics and genomics. It presents statistical applications in genetic mapping, DNA/protein sequence alignment, and analyses of gene expression data from microarray experiments. The text introduces a diverse set of problems and a number of approaches that have been used to address these problems. It discusses basic molecular biology and likelihood-based statistics, along with physical mapping, markers, linkage analysis, parametric and nonparametric linkage, sequence alignment, and feature recognition. The text illustrates the use of methods that are widespread among researchers who analyze genomic data, such as hidden Markov models and the extreme value distribution. It also covers differential gene expression detection as well as classification and cluster analysis using gene expression data sets. Ideal for graduate students in statistics, biostatistics, computer science, and related fields in applied mathematics, this text presents various approaches to help students solve problems at the interface of these areas.