Note: Supplemental materials are not guaranteed with Rental or Used book purchases.
Purchase Benefits
Looking to rent a book? Rent DNA Methylation Microarrays: Experimental Design and Statistical Analysis [ISBN: 9781420067279] for the semester, quarter, and short term or search our site for other textbooks by Wang; Sun-Chong. Renting a textbook can save you up to 90% from the cost of buying.
Applied Statistics | p. 1 |
Descriptive statistics | p. 1 |
Frequency distribution | p. 2 |
Central tendency and variability | p. 2 |
Correlation | p. 4 |
Inferential statistics | p. 6 |
Probability distribution | p. 6 |
Central limit theorem and normal distribution | p. 7 |
Statistical hypothesis testing | p. 7 |
Two-sample t-test | p. 9 |
Nonparametric test | p. 9 |
One-factor ANOVA and F-test | p. 10 |
Simple linear regression | p. 11 |
Chi-square test of contingency | p. 13 |
Statistical power analysis | p. 14 |
DNA Methylation Microarrays and Quality Control | p. 17 |
DNA methylation microarrays | p. 18 |
Workflow of methylome experiment | p. 21 |
Restriction enzyme-based enrichment | p. 21 |
Immunoprecipitation-based enrichment | p. 21 |
Image analysis | p. 23 |
Visualization of raw data | p. 26 |
Reproducibility | p. 26 |
Positive and negative controls by exogenous sequences | p. 32 |
Intensity fold-change and p-value | p. 32 |
DNA unmethylation profiling | p. 33 |
Correlation of intensities between tiling arrays | p. 33 |
Experimental Design | p. 35 |
Goals of experiment | p. 36 |
Class comparison and class prediction | p. 36 |
Class discovery | p. 36 |
Reference design | p. 37 |
Dye swaps | p. 39 |
Balanced block design | p. 39 |
Loop design | p. 41 |
Factorial design | p. 42 |
Time course experimental design | p. 47 |
How many samples/arrays are needed? | p. 49 |
Biological versus technical replicates | p. 49 |
Statistical power analysis | p. 49 |
Pooling biological samples | p. 55 |
Appendix | p. 56 |
Data Normalization | p. 59 |
Measure of methylation | p. 59 |
The need for normalization | p. 61 |
Strategy for normalization | p. 62 |
Two-color CpG island microarray normalization | p. 63 |
Global dependence of log methylation ratios | p. 64 |
Dependence of log ratios on intensity | p. 65 |
Dependence of log ratios on print-tips | p. 67 |
Normalized Cy3- and Cy5-intensities | p. 70 |
Between-array normalization | p. 71 |
Oligonucleotide arrays normalization | p. 72 |
Background correction: PM - MM? | p. 72 |
Quantile normalization | p. 73 |
Probeset summarization | p. 75 |
Normalization using control sequences | p. 76 |
Appendix | p. 79 |
Significant Differential Methylation | p. 81 |
Fold change | p. 81 |
Linear model for log-ratios or log-intensities | p. 84 |
Microarrays reference design or oligonucleotide chips | p. 84 |
Sequence-specific dye effect in two-color microarrays | p. 87 |
t-test for contrasts | p. 88 |
F-test for joint contrasts | p. 89 |
P-value adjustment for multiple testing | p. 92 |
Bonferroni correction | p. 92 |
False discovery rate | p. 92 |
Modified t- and F-test | p. 94 |
Significant variation within and between groups | p. 95 |
Within-group variation | p. 95 |
Between-group variation | p. 96 |
Significant correlation with a co-variate | p. 97 |
Permutation test for bisulfite sequence data | p. 100 |
Euclidean distance | p. 101 |
Entropy | p. 102 |
Missing data values | p. 103 |
Appendix | p. 104 |
Factorial design | p. 104 |
Time-course experiments | p. 105 |
Balanced block design | p. 106 |
Loop design | p. 107 |
High-Density Genomic Tiling Arrays | p. 109 |
Normalization | p. 110 |
Intra- and interarray normalization | p. 110 |
Sequence-based probe effects | p. 110 |
Wilcoxon test in a sliding window | p. 112 |
Probe score or scan statistic | p. 116 |
False positive rate | p. 116 |
Boundaries of methylation regions | p. 118 |
Multiscale analysis by wavelets | p. 119 |
Unsupervised segmentation by hidden Markov model | p. 121 |
Principal component analysis and biplot | p. 125 |
Cluster Analysis | p. 129 |
Measure of dissimilarity | p. 129 |
Dimensionality reduction | p. 130 |
Hierarchical clustering | p. 133 |
Bottom-up approach | p. 133 |
Top-down approach | p. 136 |
K-means clustering | p. 139 |
Model-based clustering | p. 141 |
Quality of clustering | p. 142 |
Statistically significance of clusters | p. 144 |
Reproducibility of clusters | p. 146 |
Repeated measurements | p. 146 |
Statistical Classification | p. 149 |
Feature selection | p. 149 |
Discriminant function | p. 152 |
Linear discriminant analysis | p. 153 |
Diagonal linear discriminant analysis | p. 154 |
K-nearest neighbor | p. 154 |
Performance assessment | p. 155 |
Leave-one-out cross validation | p. 156 |
Receiver operating characteristic analysis | p. 159 |
Interdependency Network of DNA Methylation | p. 163 |
Graphs and networks | p. 164 |
Partial correlation | p. 164 |
Dependence networks from DNA methylation microarrays | p. 165 |
Network analysis | p. 168 |
Distribution of connectivities | p. 169 |
Active epigenetically regulated loci | p. 169 |
Correlation of connectivities | p. 170 |
Modularity | p. 171 |
Time Series Experiment | p. 179 |
Regulatory networks from microarray data | p. 181 |
Dynamic model of regulation | p. 182 |
A penalized likelihood score for parsimonious model | p. 182 |
Optimization by genetic algorithms | p. 184 |
Online Annotations | p. 187 |
Gene centric resources | p. 187 |
GenBank: A nucleotide sequence database | p. 187 |
UniGene: An organized view of transcriptomes | p. 188 |
RefSeq: Reviews of sequences and annotations | p. 188 |
PubMed: A bibliographic database of biomedical journals | p. 189 |
dbSNP: Database for nucleotide sequence variation | p. 190 |
OMIM: A directory of human genes and genetic disorders | p. 190 |
Entrez Gene: A Web portal of genes | p. 190 |
PubMeth: A cancer methylation database | p. 192 |
Gene Ontology | p. 192 |
Kyoto Encyclopedia of Genes and Genomes | p. 195 |
UniProt/Swiss-Prot protein knowledgebase | p. 196 |
The International HapMap Project | p. 198 |
UCSC human genome browser | p. 198 |
Public Microarray Data Repositories | p. 205 |
Epigenetics Society | p. 205 |
Microarray Gene Expression Data Society | p. 206 |
Minimum Information about a Microarray Experiment | p. 206 |
Public repositories for high-throughput arrays | p. 208 |
Gene Expression Omnibus at NCBI | p. 208 |
ArrayExpress at EBI | p. 208 |
Center for Information Biology Gene Expression data-base at DDBJ | p. 210 |
Open Source Software for Microarray Data Analysis | p. 211 |
R: A language and environment for statistical computing and graphics | p. 212 |
Bioconductor | p. 212 |
Marray package | p. 215 |
Affy package | p. 215 |
Limma package | p. 215 |
Stats package | p. 215 |
TilingArray package | p. 217 |
Ringo package | p. 217 |
Cluster package | p. 217 |
Class package | p. 217 |
GeneNet package | p. 217 |
Inetwork package | p. 217 |
GOstats package | p. 218 |
Annotate package | p. 218 |
References | p. 219 |
Index | p. 225 |
Table of Contents provided by Ingram. All Rights Reserved. |
The New copy of this book will include any supplemental materials advertised. Please check the title of the book to determine if it should include any access cards, study guides, lab manuals, CDs, etc.
The Used, Rental and eBook copies of this book are not guaranteed to include any supplemental materials. Typically, only the book itself is included. This is true even if the title states it includes any access cards, study guides, lab manuals, CDs, etc.