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Course unit, curriculum year 2023–2024
BBT.HTI.501

Processing of Biosignals, 5 cr

Tampere University
Teaching periods
Active in period 1 (1.8.2023–22.10.2023)
Active in period 2 (23.10.2023–31.12.2023)
Active in period 4 (4.3.2024–31.5.2024)
Active in period 5 (1.6.2024–31.7.2024)
Course code
BBT.HTI.501
Language of instruction
English
Academic years
2021–2022, 2022–2023, 2023–2024
Level of study
Advanced studies
Grading scale
General scale, 0-5
Persons responsible
Responsible teacher:
Milla Juutinen
Responsible teacher:
Saana Seppälä starting from 1.8.2023
Responsible organisation
Faculty of Medicine and Health Technology 100 %
Coordinating organisation
MET Studies 100 %
Common learning outcomes
International outlook and global responsibility

Core content

  • Types and origins of physiological and biological signals, and their basic properties. Basics of data acquisition, sampling, and filtering related to biosignals.
  • Filtering of biosignals. Linear filtering, filter design for biosignals.
  • Spectral analysis and its applications in biosignals.
  • Statistical modelling of biological data. Classification problem.
  • Performance estimation, hypothesis testing.
  • Computer exercises with Matlab: applying signal processing and analysis methods in real biosignals (incl. EEG, ECG).

Complementary knowledge

  • Artefacts and missing data in biosignals.
  • Non-linear filtering, median filtering, adaptive filtering.
  • Autoregressive spectral estimation.
  • Clustering, regression analysis.
  • Statistical methods in hypothesis testing and performance estimation.
  • Designing and implementing own algorithms for biosignal processing in Matlab.

Specialist knowledge

  • Insights in physiological and biological signal generators.
  • Time-frequency analysis.
Learning outcomes
Prerequisites
Compulsory prerequisites
Learning material
Equivalences
Studies that include this course
Completion option 1
The final grade of the course is determined based on the assessment of all parts of the course. The weighting factor of each part is given at the beginning of the course.
Completion of all options is required.

Participation in teaching

04.03.2024 28.04.2024
Active in period 4 (4.3.2024–31.5.2024)

Exam

29.08.2023 11.09.2023
Active in period 1 (1.8.2023–22.10.2023)
17.10.2023 30.10.2023
Active in period 1 (1.8.2023–22.10.2023)
Active in period 2 (23.10.2023–31.12.2023)
11.09.2023 08.10.2023
Active in period 1 (1.8.2023–22.10.2023)
27.05.2024 09.06.2024
Active in period 4 (4.3.2024–31.5.2024)
Active in period 5 (1.6.2024–31.7.2024)
29.04.2024 12.05.2024
Active in period 4 (4.3.2024–31.5.2024)