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Course module: BMB502817
BMB502817
Image Processing
Course info
Course codeBMB502817
EC5
Course goals
After completing the course the student:
  1. is able to choose the most appropriate technique for medical imaging processing and image analysis.
  2. knows the underlying theory to understand the strengths and weaknesses of common techniques for image segmentation, image registration, image feature extraction and image feature classification
  3. is able to evaluate image processing and analysis techniques using standardized methodology
  4. is able to implement solutions for new medical imaging problems
  5. knows the benefits and pitfalls of computer-aided diagnosis
Content
Period (from – till): 10 September 2018 - 9 November 2018

Course coordinator: Dr. Kenneth Gilhuijs

Faculty
Dr. Alexander Leemans, UMC Utrecht/Imaging Division, lecturer
Dr. Kenneth Gilhuijs, UMC Utrecht/Imaging Division, lecturer
Renée Allebrandi, MA (course registration)

Course content
This course covers the full roadmap from basic to more advanced techniques that are commonly used in medical image processing. You will learn how to analyse concrete medical questions that arise from medical images, and that can be solved by mathematical analysis of CT, MRI and X-ray. We will take you from theory to design of computer-aided diagnosis systems and Radiomics systems. Examples of such systems are those that automatically detect tumors in CT and MRI scans, that automatically detect micro-aneurysms in retinal images, or that estimate the prognosis of breast-cancer patients based on imaging features that cannot be picked up by the human eye. Topics include segmentation (dynamic programming, active contours, level sets), image registration, mathematical morphology, texture analysis, pattern recognition (feature spaces, classifiers; support-vector machines and random forests). During the lectures we will provide small practical assignments using a voting system.  A computer practicum will be provided to get hands-on experience with the different techniques. In addition, individual assignments are provided consisting of actual problems that were encountered in medical images.
 
Literature/study material used
Book: Image Processing, Analysis, and Machine vision (Sonka, Hlavac, Boyle), as well as handout materials.

Registration
At least 2 weeks before start of the course via the study guide.
Mandatory :
Yes, for MIMG students.

Optional for students in other GSLS Master’s programme:
Yes.

Prerequisite knowledge:
A BSc in
  • (applied) physics
  • (applied) mathematics
  • computer science
  • biomedical engineering
  • science major of University College Utrecht
  • electrical engineering
  • or similar degree
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Kies de Nederlandse taal