[R-sig-eco] 'FINAL CALL - Phylogenetic data analysis using R'

Oliver Hooker oliverhooker at prstatistics.com
Tue Oct 4 12:29:29 CEST 2016


"Phylogenetic data analysis using R" October 31st – November 4th

Delivered by Dr. Emmanuel Paradis

http://prstatistics.com/course/introduction-to-phylogenetic-analysis-with-r-phyg/

This course will run from 31st October – 4th November, Millport Field 
Station, Ilse of Cumbrae, Scotland
The main objectives of the course are to teach the theoretical bases of 
phylogenetic analysis, and to give the ability to initiate a 
phylogenetic analysis starting from the files of molecular sequences 
until the interpretation of the results and the graphics.

The introduction will cover a brief historical background and an 
overview of the different methods of phylogenetic inference. Different 
kinds of data will be considered, but with a special emphasis on DNA 
sequences. The software used will be based on R and several specialized 
packages (particularly ape and phangorn). Other software will be used 
(e.g., MUSCLE or Clustal) called from R.

Overall, the course will cover almost all aspects of phylogenetic 
inference from reading/downloading the data to plotting the results. 
This course is intended for PhD and postgraduate students, researchers 
and engineers in evolutionary biology, systematics, population genetics, 
ecology, conservation.

Course content is as follows
Day 1
•	Refresher on R: data structures, data manipulation with the indexing 
system, scripts, using the help system.
•	Introduction to phylogenetic inference.
•	Basics on phylogenetic data (sequences, alignments, trees, networks, 
“splits”) and other data in R.
•	Reading / writing data from files or from internet.
•	Matching data. Manipulating labels. Subsetting data.
•	Main package: ape.
Day 2
•	Plotting and annotating trees.
•	Theory of sequence alignment. Comparing alignments. Graphical 
analyses of alignments.
•	Main packages: ape (with MUSCLE and Clustal).
Day 3
•	Theory and methods of phylogeny reconstruction.
•	Parsimony methods.
•	Evolutionary distances.
•	Distance-based methods: General principles and the main methods (NJ, 
BIONJ, FastME, MVR).
•	Methods for incomplete distances matrices (NJ*, BIONJ*, MVR*). 
Methods for combining several matrices (SDM).
•	Main packages: ape, phangorn.

Day 4
•	Theory of maximum likelihood estimation.
•	Application to phylogeny reconstruction.
•	Substitution models.
•	Tree space and topology estimation.
•	Main packages: ape, phangorn.

Day 5
•	Tree comparison, consensus methods.
•	Topological space and distances.
•	Bootstrap.
•	Bayesian methods.

Please email any inquiries to oliverhooker at prstatistics.com or visit our 
website www.prstatistics.com

Please feel free to distribute this material anywhere you feel is 
suitable

Upcoming courses - email for details oliverhooker at prstatistics.com
1.	INTRODUCTION TO PYTHON FOR BIOLOGISTS (October)
2.	LANDSCAPE (POPULATION) GENETIC DATA ANALYSIS USING R (October)
3.	APPLIED BAYESIAN MODELLING FOR ECOLOGISTS AND EPIDEMIOLOGISTS 
(October)
4.	SPATIAL ANALYSIS OF ECOLOGIC AL DATA USING R (November)
5.	ADVANCING IN STATISTICAL MODELLING USING R (December)
6.	MODEL BASED MULTIVARIATE ANALYSIS OF ECOLOGICAL DATA USING R 
(January)
7.	ADVANCED PYTHON FOR BIOLOGISTS (February)
8.      STABLE ISOTOPE MIXING MODELSUSING R (February/Mrch)
9.	NETWORK ANALYSIS FOR ECOLOGISTS (March)
10.	INTRODUCTION TO GEOMETRIC MORPHOMETRICS USING R (June)

Dates still to be confirmed - email for details 
oliverhooker at prstatistics.com
•	INTRODUCTION TO R AND STATISTICS FOR BIOLOGISTS
•	BIOINFORMATICS FOR GENETICISTS AND BIOLOGISTS
•	ADVANCES IN SPATIAL ANALYSIS OF MULTIVARIATE ECOLOGICAL DATA
•	INTRODUCTION TO BIOINFORMATICS USING LINUX
•	GENETIC DATA ANALYSIS / EXPLORATION USING R
•	INTRODUCTION TO BAYESIAN HIERARCHICAL MODELLING

Oliver Hooker
PR Statistics

-- 
Oliver Hooker PhD.
PR statistics

3/1
128 Brunswick Street
Glasgow
G1 1TF

+44 (0) 7966500340

www.prstatistics.com
www.prstatistics.com/organiser/oliver-hooker/



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