Advanced Topics in Biostatistics
1
2024-2025
02043570
Cross-curricular
English
Portuguese
Face-to-face
SEMESTRIAL
6.0
Elective
2nd Cycle Studies - Mestrado
Recommended Prerequisites
Biostatistics (mainly ANOVAs and single linear regression analysis).
Teaching Methods
The course has a practical focus. After the theoretical explanation of each method, students solve exercises using the different analysis tools acquired. In the final assessment students will have to solve a problem with different questions, where the application of the different tools and the decisions taken in each analysis project are duly justified, allowing to evaluate if the students understood the functioning and the purpose of these tools. Software based on R is used, allowing students to adapt to the R typology of numerical and graphic outputs.
Learning Outcomes
This course aims to provide students with advanced knowledge indispensable to the level of treatment of biological and environmental data in ecology, through the understanding and application of different methods of univariate and multivariate tools, promoting and encouraging their scientific skills and their critical abilities so they can understand, work and find appropriate solutions to the issues related to the integrated analysis of ecological and environmental data.
Work Placement(s)
NoSyllabus
1. Data exploration in uni- and multivariate analysis: graphical data exploration, normality, outliers, transformations, collinearity.
2. Regression techniques. Single linear regression: relationship significance, ANOVA, assumptions, residuals analysis, leverage, influential points. Multiple linear regression: interactions, coplots, nominal variables.
3. Generalized linear models (Poisson and binomial): deviance, overdispersion, quasi- distributions.
4. Introduction to non-linear model fitting.
5. Introduction to techniques or multivariate analysis: Terminology used; Brief description of existing techniques
6. Ordination techniques: Principal Component and Correspondence Analysis; Non-Metric Multidimentional Scalling; Principal Coordinate Analysis; Canonical Discriminant Analysis; Similarity Analysis; ANOSIM; PERMANOVA; Redundancy Analysis; Canonical Correspondence Analysis; Selection of explanatory variables; Variance decomposition techniques; Principal response curves (PRC).
Head Lecturer(s)
Rui Godinho Lobo Girão Ribeiro
Assessment Methods
Assessment
Resolution Problems: 100.0%
Bibliography
1. Jongman, R.H.G.; Ter Braak, C..J.F. e Van Tongeren, O.F.R. (Eds.) (1995) Data analysis in community and landscape ecology. Cambridge University Press, Cambridge. 299 pp.
2. Smilauer P & Leps, J. (2014) Multivariate analysis of ecological data using Canoco5. Cambridge University Press, Cambridge. 269 pp.
3. Maroco, J. (2003) Análise estatística com utilização do SPSS (2ª ed.). Edições Sílabo, Lisboa. 508 pp.
4. Quinn, G.P. e Keough, M.J. (2002) Experimental design and data analysis for biologists. Cambridge University Press, Cambridge. 537 pp.
5. Zuur, A.F.; Ieno, E.N. & Smith, G.M. (2007) Analysing Ecological Data. Springer, NewYork, U.S.A. 685 pp
6. Zuur, A.F.; Ieno, E.N.; •Walker, N.J.; Saveliev, A.A. & Smith, G.M. (2009) Mixed Effects Models and Extensions in Ecology with R. Springer. 549 pp.