183.269 Medical Image Processing
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2022S, VO, 2.0h, 3.0EC, to be held in blocked form
TUWELLectureTube

Properties

  • Semester hours: 2.0
  • Credits: 3.0
  • Type: VO Lecture
  • LectureTube course
  • Format: Online

Learning outcomes

After successful completion of the course, students are able to to process data generated by medical imaging modalities and to develop algorithms for processing the data, analyzing the observed structures and quantifying disease- and treatment-relevant markers. They are able to identify and implement modern methods of machine learning that are optimal for problems concerning computer-aided diagnosis, prognosis, and the prediction of disease progression or treatment effects. After positive completion of the course, students are able to implement algorithms for segmentation, model-based detection, texture analysis, interactive segmentation, rigid and non-rigid registration, and functional imaging analysis.


Subject of course

We will discuss the following topics in the course of the lecture:

  • Medical imaging modalities
  • Segmentation (active contours, level-set)
  • Model based detection and segmentation of anatomical structures (active shape models, active appearance models)
  • Texture analysis
  • Interactive segmentation (graph cuts)
  • Rigid and non-rigid registration
  • Neuroimaging and machine learning, analysis of neuroimaging data
  • Applications in interoperative / interventional visualization
  • Atlas building

Methods and modalities will be explained based on real world cases. For each we will discuss the mathematical bassics, and ways of solving it. For each unit we will distribute reading material, so that we can have an interesting discussion during the lecture.

In the course of the lab exercise 183.630 we will implement and test selected methods on medical imaging data.

 

Teaching methods

This semester the course will be held online via TUWEL and Zoom. All relevant information including slides and links to the online lectures will be provided via TUWEL.

The course consists on the one hand of a detailed discussion of methodical approaches for image acquisition and analysis, and on the other hand, of algorithmic solutions developed in interactive discussions based on case studies. On the one hand, the basics are taught, on the other hand, the ability to combine these methods to an effective solution approach is acquired, which starts from a problem description (e.g. detection of a tumor, quantitative tracking of disease and treatment progression, examination of large groups of patients, use of algorithms in clinical practice).


Mode of examination

Written

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Mon16:30 - 19:0002.05.2022 Lecture via Zoom incl. Recording (LIVE)Lecture - Start
Tue14:00 - 16:3017.05.2022 Lecture via Zoom / Link in TUWEL (LIVE)Lecture MedBV
Thu16:00 - 19:0019.05.2022HS 13 Ernst Melan - RPL Lecture MedBV
Mon16:00 - 19:0023.05.2022EI 10 Fritz Paschke HS - UIW Lecture MedBV
Tue16:00 - 19:0024.05.2022EI 8 Pötzl HS - QUER Lecture MedBV
Mon17:00 - 18:3030.05.2022 Lecture via Zoom - Link in TUWEL (LIVE)Vorlesung MedBV
Tue16:00 - 19:0031.05.2022EI 8 Pötzl HS - QUER Lecture MedBV
Tue17:00 - 19:0021.06.2022EI 8 Pötzl HS - QUER Lecture MedBV
Tue16:00 - 18:0028.06.2022EI 8 Pötzl HS - QUER Exam MedBV
Course is held blocked

Examination modalities

Written Exam

Exams

DayTimeDateRoomMode of examinationApplication timeApplication modeExam
Wed15:00 - 17:0015.05.2024EI 9 Hlawka HS - ETIT written29.04.2024 09:00 - 13.05.2024 09:00TISSMedBV Exam

Course registration

Begin End Deregistration end
07.03.2022 08:00 25.03.2022 23:59 25.03.2022 23:59

Curricula

Study CodeObligationSemesterPrecon.Info
066 453 Biomedical Engineering Not specified
066 645 Data Science Mandatory elective
066 932 Visual Computing Mandatory elective
066 936 Medical Informatics Mandatory1. Semester

Literature

No lecture notes are available.

Accompanying courses

Language

German