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            課程目錄:Introductory R for Biologists培訓
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                     Introductory R for Biologists培訓

             

             

             

            I. Introduction and preliminaries
            1. Overview
            Making R more friendly, R and available GUIs
            Rstudio
            Related software and documentation
            R and statistics
            Using R interactively
            An introductory session
            Getting help with functions and features
            R commands, case sensitivity, etc.
            Recall and correction of previous commands
            Executing commands from or diverting output to a file
            Data permanency and removing objects
            Good programming practice: Self-contained scripts, good readability e.g. structured scripts, documentation, markdown
            installing packages; CRAN and Bioconductor
            2. Reading data
            Txt files (read.delim)
            CSV files
            3. Simple manipulations; numbers and vectors + arrays
            Vectors and assignment
            Vector arithmetic
            Generating regular sequences
            Logical vectors
            Missing values
            Character vectors
            Index vectors; selecting and modifying subsets of a data set
            Arrays
            Array indexing. Subsections of an array
            Index matrices
            The array() function + simple operations on arrays e.g. multiplication, transposition
            Other types of objects
            4. Lists and data frames
            Lists
            Constructing and modifying lists
            Concatenating lists
            Data frames
            Making data frames
            Working with data frames
            Attaching arbitrary lists
            Managing the search path
            5. Data manipulation
            Selecting, subsetting observations and variables
            Filtering, grouping
            Recoding, transformations
            Aggregation, combining data sets
            Forming partitioned matrices, cbind() and rbind()
            The concatenation function, (), with arrays
            Character manipulation, stringr package
            short intro into grep and regexpr
            6. More on Reading data
            XLS, XLSX files
            readr and readxl packages
            SPSS, SAS, Stata,… and other formats data
            Exporting data to txt, csv and other formats
            6. Grouping, loops and conditional execution
            Grouped expressions
            Control statements
            Conditional execution: if statements
            Repetitive execution: for loops, repeat and while
            intro into apply, lapply, sapply, tapply
            7. Functions
            Creating functions
            Optional arguments and default values
            Variable number of arguments
            Scope and its consequences
            8. Simple graphics in R
            Creating a Graph
            Density Plots
            Dot Plots
            Bar Plots
            Line Charts
            Pie Charts
            Boxplots
            Scatter Plots
            Combining Plots
            II. Statistical analysis in R
            1. Probability distributions
            R as a set of statistical tables
            Examining the distribution of a set of data
            2. Testing of Hypotheses
            Tests about a Population Mean
            Likelihood Ratio Test
            One- and two-sample tests
            Chi-Square Goodness-of-Fit Test
            Kolmogorov-Smirnov One-Sample Statistic
            Wilcoxon Signed-Rank Test
            Two-Sample Test
            Wilcoxon Rank Sum Test
            Mann-Whitney Test
            Kolmogorov-Smirnov Test
            3. Multiple Testing of Hypotheses
            Type I Error and FDR
            ROC curves and AUC
            Multiple Testing Procedures (BH, Bonferroni etc.)
            4. Linear regression models
            Generic functions for extracting model information
            Updating fitted models
            Generalized linear models
            Families
            The glm() function
            Classification
            Logistic Regression
            Linear Discriminant Analysis
            Unsupervised learning
            Principal Components Analysis
            Clustering Methods(k-means, hierarchical clustering, k-medoids)
            5. Survival analysis (survival package)
            Survival objects in r
            Kaplan-Meier estimate, log-rank test, parametric regression
            Confidence bands
            Censored (interval censored) data analysis
            Cox PH models, constant covariates
            Cox PH models, time-dependent covariates
            Simulation: Model comparison (Comparing regression models)
            6. Analysis of Variance
            One-Way ANOVA
            Two-Way Classification of ANOVA
            MANOVA
            III. Worked problems in bioinformatics
            Short introduction to limma package
            Microarray data analysis workflow
            Data download from GEO: http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE1397
            Data processing (QC, normalisation, differential expression)
            Volcano plot
            Custering examples + heatmaps

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