BMB5022175 ECTSQ2EnglishMaster
Capita Selecta in Medical Image Analysis TU/Eindhoven
FaculteitFaculty of Medical Sciences
NiveauMaster
Studiejaar2026-2027
Beschrijving
Course goals
- Comprehension of the complexity and data structure of diffusion MRI. Knowledge and application of simple algorithms to extract information from the data.
- Knowledge of medical visualization methods and their main components.
- Application of medical visualization methods to practical problems.
- Knowledge of methods to validate medical image analysis algorithms.
- Knowledge of the concepts of advanced image registration methods and comprehension of their application to clinical problems
Content
Period (from – till): 1 February 2027 - 16 April 2027
Course coordinator: Renée Allebrandi, MA (course contact person)
Course aims and content:
PLEASE NOTE THAT THIS COURSE IS TAUGHT IN EINDHOVEN
This course covers a number of state-of-the-art techniques and topics in medical image analysis. It is a specialisation course for those with a general understanding of medical image analysis looking to deepen their knowledge. The topics of this year are
PLEASE NOTE THAT THIS COURSE IS TAUGHT IN EINDHOVEN
This course covers a number of state-of-the-art techniques and topics in medical image analysis. It is a specialisation course for those with a general understanding of medical image analysis looking to deepen their knowledge. The topics of this year are
- Deep Learning
- Image Registration and Validation
Literature/study material used
Slide hand-outs, Deep Learning by Goodfellow, Bengio and Courville; other material will be made available
Slide hand-outs, Deep Learning by Goodfellow, Bengio and Courville; other material will be made available
Registration
Please register at TU/e, course code 8DM20, at least 4 weeks before start of the course. Osiris registration will be done retroactively when results from the TU/e are received.
Please register at TU/e, course code 8DM20, at least 4 weeks before start of the course. Osiris registration will be done retroactively when results from the TU/e are received.
Mandatory
No.
Optional for students in other GSLS Master’s programme:
No.
No.
Optional for students in other GSLS Master’s programme:
No.
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