Multiple Biological Sequence Alignment

Multiple Biological Sequence Alignment

Scoring Functions, Algorithms and Evaluation

Guo, Xuan; Nguyen, Ken; Pan, Yi

John Wiley & Sons Inc

12/2016

248

Dura

Inglês

9781118229040

15 a 20 dias

Covers the fundamentals and techniques of multiple biological sequence alignment and analysis, and shows readers how to choose the appropriate sequence analysis tools for their tasks This book describes the traditional and modern approaches in biological sequence alignment and homology search.
Preface xi 1 Introduction 1 1.1 Motivation 2 1.2 The Organization of this Book 2 1.3 Sequence Fundamentals 3 1.3.1 Protein 5 1.3.2 DNA/RNA 6 1.3.3 Sequence Formats 6 1.3.4 Motifs 7 1.3.5 Sequence Databases 9 2 Protein/DNA/RNA Pairwise Sequence Alignment 11 2.1 Sequence Alignment Fundamentals 12 2.2 Dot-Plot Matrix 12 2.3 Dynamic Programming 14 2.3.1 Needleman Wunsch s Algorithm 15 2.3.2 Example 16 2.3.3 Smith Waterman s Algorithm 17 2.3.4 Affine Gap Penalty 19 2.4 Word Method 19 2.4.1 Example 20 2.5 Searching Sequence Databases 21 2.5.1 FASTA 21 2.5.2 BLAST 21 3 Quantifying Sequence Alignments 25 3.1 Evolution and Measuring Evolution 25 3.1.1 Jukes and Cantor s Model 26 3.1.2 Measuring Relatedness 28 3.2 Substitution Matrices and Scoring Matrices 28 3.2.1 Identity Scores 28 3.2.2 Substitution/Mutation Scores 29 3.3 GAPS 32 3.3.1 Sequence Distances 35 3.3.2 Example 35 3.4 Scoring Multiple Sequence Alignments 36 3.4.1 Sum-of-Pair Score 36 3.5 Circular Sum Score 38 3.6 Conservation Score Schemes 39 3.6.1 Wu and Kabat s Method 39 3.6.2 Jores s Method 39 3.6.3 Lockless and Ranganathan s Method 40 3.7 Diversity Scoring Schemes 40 3.7.1 Background 41 3.7.2 Methods 41 3.8 Stereochemical Property Methods 42 3.8.1 Valdar s Method 43 3.9 Hierarchical Expected Matching Probability Scoring Metric (HEP) 44 3.9.1 Building an AACCH Scoring Tree 44 3.9.2 The Scoring Metric 46 3.9.3 Proof of Scoring Metric Correctness 47 3.9.4 Examples 48 3.9.5 Scoring Metric and Sequence Weighting Factor 49 3.9.6 Evaluation Data Sets 50 3.9.7 Evaluation Results 52 4 Sequence Clustering 59 4.1 Unweighted Pair Group Method with Arithmetic Mean UPGMA 60 4.2 Neighborhood-Joining Method NJ 61 4.3 Overlapping Sequence Clustering 65 5 Multiple Sequences Alignment Algorithms 69 5.1 Dynamic Programming 70 5.1.1 DCA 70 5.2 Progressive Alignment 71 5.2.1 Clustal Family 73 5.2.2 PIMA: Pattern-Induced Multisequence Alignment 73 5.2.3 PRIME: Profile-Based Randomized Iteration Method 74 5.2.4 DIAlign 75 5.3 Consistency and Probabilistic MSA 76 5.3.1 POA: Partial Order Graph Alignment 76 5.3.2 PSAlign 77 5.3.3 ProbCons: Probabilistic Consistency-Based Multiple Sequence Alignment 78 5.3.4 T-Coffee: Tree-Based Consistency Objective Function for Alignment Evaluation 79 5.3.5 MAFFT: MSA Based on Fast Fourier Transform 80 5.3.6 AVID 81 5.3.7 Eulerian Path MSA 81 5.4 Genetic Algorithms 82 5.4.1 SAGA: Sequence Alignment by Genetic Algorithm 83 5.4.2 GA and Self-Organizing Neural Networks 84 5.4.3 FAlign 85 5.5 New Development in Multiple Sequence Alignment Algorithms 85 5.5.1 KB-MSA: Knowledge-Based Multiple Sequence Alignment 85 5.5.2 PADT: Progressive Multiple Sequence Alignment Based on Dynamic Weighted Tree 94 5.6 Test Data and Alignment Methods 97 5.7 Results 98 5.7.1 Measuring Alignment Quality 98 5.7.2 RT-OSM Results 98 6 Phylogeny in Multiple Sequence Alignments 103 6.1 The Tree of Life 103 6.2 Phylogeny Construction 105 6.2.1 Distance Methods 106 6.2.2 Character-Based Methods 107 6.2.3 Maximum Likelihood Methods 109 6.2.4 Bootstrapping 110 6.2.5 Subtree Pruning and Re-grafting 111 6.3 Inferring Phylogeny from Multiple Sequence Alignments 112 7 Multiple Sequence Alignment on High-Performance Computing Models 113 7.1 Parallel Systems 113 7.1.1 Multiprocessor 113 7.1.2 Vector 114 7.1.3 GPU 114 7.1.4 FPGA 114 7.1.5 Reconfigurable Mesh 114 7.2 Exiting Parallel Multiple Sequence Alignment 114 7.3 Reconfigurable-Mesh Computing Models (R-Mesh) 116 7.4 Pairwise Dynamic Programming Algorithms 118 7.4.1 R-Mesh Max Switches 118 7.4.2 R-Mesh Adder/Subtractor 118 7.4.3 Constant-Time Dynamic Programming on R-Mesh 120 7.4.4 Affine Gap Cost 123 7.4.5 R-Mesh On/Off Switches 124 7.4.6 Dynamic Programming Backtracking on R-Mesh 125 7.5 Progressive Multiple Sequence Alignment ON R-Mesh 126 7.5.1 Hierarchical Clustering on R-Mesh 127 7.5.2 Constant Run-Time Sum-of-Pair Scoring Method 128 7.5.3 Parallel Progressive MSA Algorithm and Its Complexity Analysis 129 8 Sequence Analysis Services 133 8.1 EMBL-EBI: European Bioinformatics Institute 133 8.2 NCBI: National Center for Biotechnology Information 135 8.3 GenomeNet and Data Bank of Japan 136 8.4 Other Sequence Analysis and Alignment Web Servers 137 8.5 SeqAna: Multiple Sequence Alignment with Quality Ranking 138 8.6 Pairwise Sequence Alignment and Other Analysis Tools 140 8.7 Tool Evaluation 142 9 Multiple Sequence for Next-Generation Sequences 145 9.1 Introduction 145 9.2 Overview of Next Generation Sequence Alignment Algorithms 147 9.2.1 Alignment Algorithms Based on Seeding and Hash Tables 147 9.2.2 Alignment Algorithms Based on Suffix Tries 151 9.3 Next-Generation Sequencing Tools 154 10 Multiple Sequence Alignment for Variations Detection 161 10.1 Introduction 161 10.2 Genetic Variants 163 10.3 Variation Detection Methods Based on MSA 165 10.4 Evaluation Methodology 172 10.4.1 Performance Metrics 172 10.4.2 Simulated Sequence Data 174 10.4.3 Real Sequence Data 175 10.5 Conclusion and Future Work 176 11 Multiple Sequence Alignment for Structure Detection 179 11.1 Introduction 179 11.2 RNA Secondary Structure Prediction Based on MSA 180 11.2.1 Common Information in Multiple Aligned RNA Sequences 182 11.2.2 Review of RNA SS Prediction Methods 183 11.2.3 Measures of Quality of RNA SS Prediction 187 11.3 Protein Secondary Structure Prediction Based on MSA 189 11.3.1 Review of Protein Secondary Structure Prediction Methods 190 11.3.2 Measures of Quality of Protein SS Prediction 195 11.4 Conclusion and Future Work 196 References 199 Index 219
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