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Høst 2025

FYS-8032 Health data analytics - 10 stp


The course is administrated by

Institutt for fysikk og teknologi

Type of course

The course is available as a singular course. The course is also available to exchange students and Fulbright students.

The course will only be taught if there are sufficiently many students. Please contact the student adviser as soon as possible if you are interested in following the course.

Programstudents may register for the course through Studentweb. The registration deadline is September 1st/February 1st.

Other PhD students at UiT and external applicants may apply for admission through Søknadsweb, application code 9301. The application deadline is June 1st for the autumn semester and December 1st for the spring semester


Course overlap

FYS-3032 Health data analytics 8 ects

Course contents

The course will study machine learning methods and algorithms used for analysing and interpreting the vast amounts of data acquired within the healthcare system. Focus will be on information extraction by pattern analysis and statistical inference from health data in order to derive clinically relevant decision support systems. The course will in addition to machine learning algorithms contain elements of image processing, pattern recognition and statistics. It has a significant practical component, in which various applications will be discussed.

Admission requirements

PhD students or holders of a Norwegian master´s degree of five years or 3+ 2 years (or equivalent) may be admitted. PhD students must upload a document from their university stating that there are registered PhD students. This group of applicants does not have to prove English proficiency and are exempt from semester fee. Holders of a Master´s degree must upload a Master´s Diploma with Diploma Supplement / English PhD students at UiT The Arctic University of Norway register for the course through StudentWeb . External applicants apply for admission through SøknadsWeb. Application code 9303.

All external applicants have to attach a confirmation of their status as a PhD student from their home institution. Students who hold a Master of Science degree, but are not yet enrolled as a PhD-student have to attach a copy of their master's degree diploma. These students are also required to pay the semester fee.


Objective of the course

Knowledge - The student can:

Skills - The student can:

General expertise - The student can:


Language of instruction

The language of instruction is English and all of the syllabus material is in English.

Examination questions will be given in English but may be answered either in English or a Scandinavian language.


Teaching methods

Lectures: 30 hours

Exercises: 30 hours