Credits
3
Types
Elective
Requirements
This subject has not requirements
, but it has got previous capacities
Department
UB
Mail
simone.balocco@ub.edu
Teachers
Person in charge
- Simone Balocco ( simone.balocco@ub.edu )
Others
- Oliver Díaz Montesdeoca ( oliver.diaz@ub.edu )
Weekly hours
Theory
1
Problems
0
Laboratory
1
Guided learning
0
Autonomous learning
3.76
Competences
Generic
Academic
Professional
Appropiate attitude towards work
Basic
Objectives
Contents
-
Introduction to the clinical image modalities
Introduction to the clinical image modalities -
Techniques for data analysis
Techniques for data analysis -
Neural network for medical imaging
Neural network for medical imaging -
Data bases and challenges
Data bases and challenges
Activities
Activity Evaluation act
Theory
12h
Problems
0h
Laboratory
0h
Guided learning
0h
Autonomous learning
13h
Theory
0h
Problems
0h
Laboratory
12h
Guided learning
0h
Autonomous learning
33h
Theory
1h
Problems
0h
Laboratory
1h
Guided learning
0h
Autonomous learning
3h
Teaching methodology
T Each week it will be a 1h theoretical topic exposition class.P Each week it will be a 1h practical session.
The rest of the course are devoted to autonomous lectures, programming, and studying.
Evaluation methodology
The course will follow a continuous evaluation consisting in practical reports (PR) and in-class presentations (PS). A test (or multiple mini-tests) about the theory will be performed (TS). The final score (FS) will be computed as follows:FS = 0.4 * PR + 0.3 * PS + 0.3 * TS
A minimum score of 3 over 10 points is required for each part PR, PS, and TS in order to compute the final score FS.
Bibliography
Basic
-
A survey on deep learning in medical image analysis
- Litjens, G.; Kooi, T.; Bejnordi, B.E,
Medical image analysis,
42, 60-88. (2017).
HTTPS://DOI.ORG/10.1016/J.MEDIA.2017.07.005 -
Guest editorial deep learning in medical imaging: Overview and future promise of an exciting new technique
- Greenspan, H., Van Ginneken, B., & Summers, R. M,
IEEE Transactions on Medical Imaging,
(2016) 35(5), 1153-1159.
https://ieeexplore.ieee.org/document/7463094
Web links
- for more information, please visit: https://www.ub.edu/pladocent/?cod_giga=575047&curs=2024&idioma=ENG http://Pla docent UB
Previous capacities
The previous knowledge required for this curse are:- Good understanding of basic concepts and methods of Deep Learning.
The previous knowledge recommended for this curse are:
- Familiarity with basic concepts and methods of Computer Vision.
- good programming skills