Bioinformatics: sequence alignment and Markov models
β Scribed by Sharma, Kal Renganathan
- Publisher
- McGraw-Hill Education
- Year
- 2009
- Tongue
- English
- Series
- McGraw Hill professional
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Preliminaries -- Alignment of a pair of sequences -- Sequence representation and string algorithms -- Multiple-sequence alignment -- Hidden Markov models and applications -- Gene finding, protein secondary structure -- Biochips -- Electrophoretic techniques and finite speed of diffusion.
β¦ Table of Contents
Preliminaries --
Alignment of a pair of sequences --
Sequence representation and string algorithms --
Multiple-sequence alignment --
Hidden Markov models and applications --
Gene finding, protein secondary structure --
Biochips --
Electrophoretic techniques and finite speed of diffusion.
β¦ Subjects
Bio-informatique;Bioinformatik;Computational Biology--methods;GΓ©nΓ©tique--Technique;Markov Chains;Markov-Kette;Markov-Prozess;Models, Theoretical;Processus de Markov;Sequence alignment;Sequence Alignment;Markov processes;Sequence alignment (Bioinformatics);Bioinformatics;Computational Biology -- methods;GeΜneΜtique -- Technique
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