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BioinfoMla

[BioinfoMla/MachineLearningFoundation]

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BioinformaticsTheMachineLearningApproach Chap.1

Preface

Bioinformatics in the Post-genome Era

Audience and Prerequisites

Technical prerequisites for the book for the book are basic calculus, algebra, discrete probability theory, at the level of an undergraduate course. Any prior knowlege of DNA, RNA, and proteins is of course helpful, but not required

Content and General Outlines of the Book

Chapter 2 : most important theoretical chapter

Chapter 5-9, Chapter 12 : the core of the book

Appendix

What Is New and What Is Omitted

At the theoretical level, we would have liked to be able to go more into higher levels of BayesianInference and BayesianNetwork.

Vocabulary and Notation

Chapter 1. Introduction

1.1 Biological Data in Digital Symbol Sequences

1.1.1 Database Annotation Quality

1.1.2 Database Redundancy

1.2 Genomes - Diversity, Size, and Structure

1.2.1 Gene Content in the Human [Genome] and other Genomes

1.3 Proteins and Proteomes

1.3.1 From [Genome] to [Proteom]

1.3.2 Protein Length Distribution

1.3.3 Protein Function

1.3.4 Protein Function and GeneOntology

1.4 On the Information Content of Biological Sequences

1.4.1 Information and Information Reduction

1.4.2 Alignment Versus Prediction : When Are Alignments Reliable?

1.4.3 Prediction of Functional Features

1.4.4 GlobalAlignment and LocalAlignment and SubstitutionMatrix Entropies

1.4.5 Consensus Sequences and Sequence Logos

1.5 Prediction of Molecular Function and Structure

1.5.1 Sequence-based Analysis

BioinfoMla/Introduction (last edited 2011-08-03 11:01:01 by localhost)