401-6282-00L Statistical Analysis of High-Throughput Genomic and Transcriptomic Data (University of Zurich)
Semester | Autumn Semester 2023 |
Lecturers | H. Rehrauer, M. Robinson |
Periodicity | yearly recurring course |
Language of instruction | English |
Comment | No enrolment to this course at ETH Zurich. Book the corresponding module directly at UZH as an incoming student. UZH Module Code: STA426 Mind the enrolment deadlines at UZH: https://www.uzh.ch/cmsssl/en/studies/application/deadlines.html |
Courses
Number | Title | Hours | Lecturers | ||||
---|---|---|---|---|---|---|---|
401-6282-00 G | Statistical Analysis of High-Throughput Genomic and Transcriptomic Data (University of Zurich) **Course at University of Zurich** | 3 hrs |
| H. Rehrauer, M. Robinson |
Catalogue data
Abstract | A range of topics will be covered, including basic molecular biology, genomics technologies and in particular, a wide range of statistical and computational methods that have been used in the analysis of DNA microarray and high throughput sequencing experiments. |
Learning objective | -Understand the fundamental "scientific process" in the field of Statistical Bioinformatics -Be equipped with the skills/tools to preprocess genomic data (Unix, Bioconductor, mapping, etc.) and ensure reproducible research (Sweave) -Have a general knowledge of the types of data and biological applications encountered with microarray and sequencing data -Have the general knowledge of the range of statistical methods that get used with microarray and sequencing data -Gain the ability to apply statistical methods/knowledge/software to a collaborative biological project -Gain the ability to critical assess the statistical bioinformatics literature -Write a coherent summary of a bioinformatics problem and its solution in statistical terms |
Content | Lectures will include: microarray preprocessing; normalization; exploratory data analysis techniques such as clustering, PCA and multidimensional scaling; Controlling error rates of statistical tests (FPR versus FDR versus FWER); limma (linear models for microarray analysis); mapping algorithms (for RNA/ChIP-seq); RNA-seq quantification; statistical analyses for differential count data; isoform switching; epigenomics data including DNA methylation; gene set analyses; classification |
Lecture notes | Lecture notes, published manuscripts |
Prerequisites / Notice | Prerequisites: Basic knowlegde of the programming language R, sufficient knowledge in statistics Former course title: Statistical Methods for the Analysis of Microarray and Short-Read Sequencing Data |
Performance assessment
Performance assessment information (valid until the course unit is held again) | |
Performance assessment as a semester course | |
ECTS credits | 5 credits |
Examiners | H. Rehrauer, M. Robinson |
Type | graded semester performance |
Language of examination | English |
Repetition | Repetition only possible after re-enrolling for the course unit. |
Additional information on mode of examination | Registration modalities, date and venue of this performance assessment are specified solely by the UZH. |
Learning materials
No public learning materials available. | |
Only public learning materials are listed. |
Groups
No information on groups available. |
Restrictions
There are no additional restrictions for the registration. |
Offered in
Programme | Section | Type | |
---|---|---|---|
Computational Biology and Bioinformatics Master | Bioinformatics | W | |
Statistics Master | Subject Specific Electives | W |