A short course on Computational and Statistical Aspects of
Microarray Analysis
Bressanone, Italy
June 7th-11th, 2004
Lecturers:
Robert Gentleman
and
 Wolfgang Huber
Schedule of Topics
  
    |  | Monday, June 7 | Tuesday, June 8 | Wednesday, June 9 | Thursday, June 10 | Friday, June 11 | 
  
    | Lecture 1 | Programming in R,
	S Programming Techniques,
	Recent Developments in R and
	S Graphics | Quality Control and Further Topics
	on Preprocessing and
	Solving the Riddle of Bright
	Mismatches | Differential Expression,
	Univariable Screening by ROC Curve
	Analysis,
	Differential Gene
	Expression,
	Testing for Differential Expression
	and Differential Expression with the
	Bioconductor Project | Unsupervised Learning Methods For
	Analysis of Microarray Data and
	Exploratory Data Analysis for Microarray
	Data | Networks in Molecular Biology and
	Graph, RBGL and Rgraphviz | 
  
    | Lecture 2 | Error Models and Normalization | Annotation in Bioconductor and
	Using GO | Combining Experiments | Machine Learning and
	Classification in DNA Microarray 
	Experiments | Graphs, EDA, and Computational
	Biology and High Throughput
    Protein-Protein Interaction Data | 
  
    | Lab | Using R and Bioconductor | Preprocessing
    and Quality Control | Annotation
    and meta-data | Machine Learning | Introductory Graph Lab | 
  
    | Packages Used |  | arrayMagic, estrogen and lymphoma | ALL, GOstats, graph, RBGL and Rgraphviz |  |  | 
Lab materials
  
    | Lab1 | Using R and Bioconductor |  |  |  | 
  
    | Lab2 | Preprocessing and Quality Control |  |  | 
         
       | 
  
    | Lab3 | Annotation and meta-data |  |  |  | 
  
    | Lab4 | Machine Learning |  |  |  | 
  
    | Lab5 | Introductor Graph Lab |  |  |  |