News:Course in Berlin- Genomics with R and Bioconductor - September 16-20
0
0
Entering edit mode
info ▴ 10
@info-21567
Last seen 5 weeks ago
Germany

Dear all,

we still have a few places on our course " Genomics with R and Bioconductor"


Where: Free University (FU) Berlin (Germany)


When: 16-20 September 2019


Instructor: Dr. Ludwig Geistlinger - CUNY Graduate School of Public Health and Health Policy, New York (USA)


Registration Deadline: 20th August 2019


Course:

This course will provide biologists and bioinformaticians with practical statistical analysis skills to perform rigorous analysis of high-throughput genomic data. The course assumes basic familiarity with genomics and with R programming, but does not assume prior statistical training. It covers the statistical concepts necessary to design experiments and analyze high-throughput data generated by next-generation sequencing, including: exploratory data analysis, principal components analysis, clustering, differential expression, and gene set analysis.


Programme:

Session 1 – Introduction

Monday - 09:30 to 17:30

Lecture 1: Data distributions

random variables distributions population and samples

Hands-On 1: Introduction to R

Lecture 2: Creating high-quality graphics in R

Visualizing data in 1D, 2D & more than two dimensions Heatmaps Data transformations

Hands-On 2: Graphics with base R and ggplot2

Session 2 – Hypothesis testing


Tuesday - 09:30 to 17:30

Lecture 1: Hypothesis testing theory

type I and II error and power multiple hypothesis testing: false discovery rate, familywise error rate exploratory data analysis (EDA)

Hands-On 1: Standard tests & EDA

Lecture 2: Hypothesis testing in practice

hypothesis tests for categorical variables (chi-square, Fisher's exact) Monte Carlo simulation Permutation tests

Hands-On 2: Permutation tests

Session 3 - Bioconductor


Wednesday – Classes from 09:30 to 17:30

Lecture 1: Introduction to Bioconductor

Incorporating Bioconductor in your data analysis ExpressionSet / SummarizedExperiment Annotation resources

Hands-On 1: Leveraging Bioconductor annotation resources

Lecture 2: Genomic intervals

Introduction to genomic region algebra Basic operations: construction, intra- and inter-region operations Finding overlaps

Hands-On 2: Solving common bioinformatic challenges with GenomicRanges

Session 4 - Next-generation sequencing data


Thursday - 09:30 to 17:30

Lecture 1: High-throughput count data

Characteristics of count data Exploring count data Modeling count data

Hands-On 1: Analyzing next-generation sequencing data

Lecture 2: Clustering and Principal Components Analysis

Measures of similarity Hierarchical clustering Dimension reduction Principal components analysis (PCA)

Hands-On 2: Clustering & PCA

Session 5 - Differential expression and gene set analysis


Friday - 09:30 to 17:30

Lecture 1 - Differential expression analysis

Normalization Experimental designs Generalized linear models

Lab 1: Performing differential expression analysis with DESeq2

Lecture 2 - Gene set analysis

A primer on terminology, existing methods & statistical theory GO/KEGG overrepresentation analysis Functional class scoring & permutation testing Network-based enrichment analysis

Lab 2: Performing gene set enrichment analysis with the EnrichmentBrowser


For the full list of our courses and Workshops, please see: https://www.physalia-courses.org/courses-workshops


Should you have any questions, please feel free to contact us


Thanks and best regards,

Carlo Pecoraro, Ph.D

Physalia-courses DIRECTOR

info@physalia-courses.org

http://www.physalia-courses.org/

Twitter: @physacourses

mobile: +49 17645230846

https://groups.google.com/forum/#!forum/physalia-courses

deseq2 edger limma News • 801 views
ADD COMMENT

Login before adding your answer.

Traffic: 837 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6