Fr. 196.00

Ancestral Sequence Reconstruction

English · Hardback

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Description

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Zusatztext This combination of theory and application is unusual and broadens the appeal of the book for researchers or for teachers of advanced seminars...This gives the book a light and readable quality Informationen zum Autor David A. Liberles is Assistant Professor at the Department of Molecular Biology, University of Wyoming, USA Klappentext Ancestral sequence reconstruction is an interdisciplinary field of growing importance for understanding the evolution of molecular function. The technique is poised to become a mainstream component of molecular biology and functional genomics. This book represents the first synthesis of theories, methodologies and applications. Zusammenfassung Ancestral sequence reconstruction is an interdisciplinary field of growing importance for understanding the evolution of molecular function. The technique is poised to become a mainstream component of molecular biology and functional genomics. This book represents the first synthesis of theories, methodologies and applications.

Product details

Authors David A. Liberies, David A. Liberles
Assisted by David A Liberles (Editor), David A. Liberles (Editor)
Publisher Oxford University Press
 
Languages English
Product format Hardback
Released 01.06.2007
 
EAN 9780199299188
ISBN 978-0-19-929918-8
No. of pages 266
Dimensions 194 mm x 252 mm x 17 mm
Series Oxford Biosciences
Oxford Biosciences
Subjects Natural sciences, medicine, IT, technology

Evolution, SCIENCE / Life Sciences / Evolution, SCIENCE / Life Sciences / Genetics & Genomics, SCIENCE / Life Sciences / Taxonomy, Taxonomy & systematics, Genetics (non-medical), Taxonomy and systematics

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