Record:   Prev Next
作者 Yang, Ziheng, author
書名 Molecular evolution : a statistical approach / Ziheng Yang
出版項 Oxford : Oxford University Press, 2014
國際標準書號 9780199602612 (pbk.)
0199602611 (pbk.)
9780199602605 (hbk.)
0199602603 (hbk.)
book jacket
館藏地 索書號 處理狀態 OPAC 訊息 條碼
 生命科學圖書館  QU475 U221m 2014    到期 11-13-19    30150100402608
版本 First edition
說明 xv, 492 pages illustrations ; 26 cm
text txt rdacontent
unmediated n rdamedia
volume nc rdacarrier
附註 Includes bibliographical references (pages 450-487) and index
Models of nucleotide substitution -- Models of amino acid and codon substitution -- Phylogeny reconstruction: overview -- Maximum likelihood methods -- Comparison of phylogenetic methods and tests on trees -- Bayesian theory -- Bayesian computation (MCMC) -- Bayesian phylogenetics -- Coalescent theory and species trees -- Molecular clock and estimation of species divergence times -- Neutral and adaptive protein evolution -- Simulating molecular evolution
"Studies of evolution at the molecular level have experienced phenomenal growth in the last few decades, due to rapid accumulation of genetic sequence data, improved computer hardware and software, and the development of sophisticated analytical methods. The flood of genomic data has generated an acute need for powerful statistical methods and efficient computational algorithms to enable their effective analysis and interpretation. This advanced textbook is aimed at graduate level students and professional researchers (both empiricists and theoreticians) in the fields of bioinformatics and computational biology, statistical genomics, evolutionary biology, molecular systematics, and population genetics. It will also be of relevance and use to a wider audience of applied statisticians, mathematicians, and computer scientists working in computational biology."--back cover
主題 Evolution, Molecular
Models, Statistical
Statistics as Topic
Molecular evolution -- Mathematical models
Molecular evolution -- Statistical methods
Phylogeny -- Molecular aspects
Record:   Prev Next