SOW-DGCN37
Neuroimaging II: Haemodynamic Methods
Course infoSchedule
Course moduleSOW-DGCN37
Credits (ECTS)6
Category-
Language of instructionEnglish
Offered byRadboud University; Faculty of Social Sciences; Cognitive Neuroscience;
Lecturer(s)
PreviousNext 5
Lecturer
prof. dr. C.F. Beckmann
Other course modules lecturer
Lecturer
dr. A. Llera Arenas
Other course modules lecturer
Lecturer
M.J.J. Mennes
Other course modules lecturer
Examiner
prof. dr. D.G. Norris
Other course modules lecturer
Contactperson for the course
prof. dr. D.G. Norris
Other course modules lecturer
Academic year2020
Period
SEM2  (25/01/2021 to 16/07/2021)
Starting block
SEM2
Course mode
full-time
Remarks-
Registration using OSIRISYes
Course open to students from other facultiesNo
Pre-registrationNo
Waiting listNo
Placement procedure-
Aims
This course builds on the course Neuroimaging I (DGCN02). It aims to give students a deeper understanding of the imaging methods and analytical tools that are available to cognitive neuroscientists. At the conclusion of the course the student should be able to understand the underlying principles of data acquisition and analysis in fMRI. The course offers a systematic explanation of the acquisition experiment and hands on experience with the most commonly used data analysis techniques. It is mandatory for students wishing to perform an fMRI experiment in their master's project.
Content
Data acquisition. The student will be taught how data are acquired and what the fundamental limitations of the techniques are. The basic principles of MRI will be taught. MRI using the echo planar imaging technique will be explained and modern developments in accelerating data acquisition introduced. Generalised image reconstruction in terms of k-space will be introduced and image acquisition and reconstruction in MRI explained in these terms. The complex nature of the BOLD response used for f(MRI) will be examined. The measurement of connectivity using diffusion tensor measures will be introduced.

Data analysis. The main areas covered in this part of the course are: analysing structural MRI data including segmentation and assessment of grey matter volume; analysis of fMRI data both at the single subject and the group level using the general linear model; exploratory data analysis including the use of independent components, and their application to measuring functional connectivity; the assessment of structural connectivity using diffusion-weighted imaging.

Design aspects. Practical analysis of fMRI data will be taught for the two main software packages: SPM and FSL.
 

 
Level

Presumed foreknowledge

Test information

Specifics

Assumed previous knowledge
Taking the exam for this course is only allowed after the course DGCN09 (Advanced math) has been passed successfully. If you have sufficient knowledge of mathematics you may request an exemption from this rule from the Examination Board.

Recommended materials
Syllabus
Syllabus
Course material
Lecture notes
Book
Functional Magnetic Resonance Imaging, Scott A. Huettel, Allen W. Song, and Gregory McCarthy, (2nd edition 2009) ISBN:978-0-87893-286-3

Instructional modes
Assignment, hands-on practical exercises
Attendance MandatoryYes

Lecture
Attendance MandatoryYes

General
Presentation, lectures, student assignments, hands-on practical exercises in recording and analysing fMRI, and MRI data.

Presentation
Attendance MandatoryYes

Remark
Presentation
Lectures, student assignments, hands-on practical exercises in recording and analysing fMRI, and MRI dat

Resit
Attendance MandatoryYes

Tests
Closed book exam
Test weight1
Test typeExam
OpportunitiesBlock HER, Block SEM2

Remark
NOTE: enrollment for a course automatically registers you for its exam. For participating in the resit, register again.