Phenotypic Modelling of Crop Adaptation

A.Y. 2022/2023
Course offered to students on the PhD programme in
Visit the PhD website for the course schedule and other information
4
ECTS
26
Overall hours
Lesson period
November 2022
Language
English
Lead instructor: Laura Rossini
Plant breeders base many of the selection decisions on phenotype predictions obtained from multi-environment models fitted to field trial data. The quality of these predictions is affected by the within trial variation and by the heterogeneity of genotypic rankings across environments (genotype by environment interaction, G×E). Using an experimental design that allows to account for spatial variation within the trial is an essential step to obtain reliable estimates for the within-environment performance. This course will discuss about the principles of experimental design and illustrate them by means of commonly used designs as RCBD, lattice designs, alpha designs and row-column designs. Students will also be asked to design their own field trials. Issues related to the estimation of heritability, BLUPs and adjusted means will also be addressed. Phenotypes across multiple environments will be modelled focusing on G×E, and strategies to characterize the target population of environments (TPE) will be discussed. Environment classes will be used in mixed model framework to model phenotypes across the whole TPE. The course will consist of lectures, followed by computer exercises for each of the topics. Students will be invited to apply the models discussed during the lectures to plant breeding data.
1) Students are expected to be familiar with basic statistics, plant breeding and agronomy concepts. Some experience with R is desirable, but it is not a must because the scripts will be provided.
2) Students need to have R and Rstudio installed. We will also use asreml, which also needs to be installed as a package in their RStudio sessions (see attached instructions).
Unfortunately, asreml has some incompatibilities with the latest version of Apple. Thus, the teacher will try to rely on this software as little as possible and use open-source R packages.
Maximum n. of students: 20
Assessment methods
Giudizio di approvazione
Assessment result
superato/non superato
How to enrol

Deadlines

The course enrolment deadline is usually the 27th day of the month prior to the start date.

How to enrol

  1. Access enrolment on PhD courses online service using your University login details
  2. Select the desired programme and click on Registration (Iscrizione) and then on Register (Iscriviti)

Ignore the option "Exam session date” that appears during the enrolment procedure.

Contacts

For help please contact [email protected]

Professor(s)
Reception:
By appointment to be arranged in advance by e.mail.
Office c/o DiSAA (Agronomy), Via Celoria 2, Milan, or via MS Teams.