
doi: 10.1515/bmt.2006.059
pmid: 17155862
This article proposes a modular, computer-based methodology to describe and compare medical problems using data mining methods. The methodology focuses on a mathematical formulation of typical classification problems, systematic extraction of interpretable features from time series, and an evaluation adapted to problem-specific preferences and limitations (computational power, interpretability, etc.). The approach is applied to instrumented gait analysis and to the individual design of myoelectric controllers for hand prostheses.
ddc:004, Time Factors, DATA processing & computer science, Computational Biology, Information Storage and Retrieval, Signal Processing, Computer-Assisted, Models, Biological, 004, Pattern Recognition, Automated, Humans, Computer Simulation, Diagnosis, Computer-Assisted, Gait, info:eu-repo/classification/ddc/004, Algorithms
ddc:004, Time Factors, DATA processing & computer science, Computational Biology, Information Storage and Retrieval, Signal Processing, Computer-Assisted, Models, Biological, 004, Pattern Recognition, Automated, Humans, Computer Simulation, Diagnosis, Computer-Assisted, Gait, info:eu-repo/classification/ddc/004, Algorithms
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