Bag-of-steps: Predicting lower-limb fracture rehabilitation length
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Publication date
2016
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Abstract
This paper presents bag-of-steps, a new methodology to predict the rehabilitation length of a patient by monitoring the weight he is bearing in his injured leg and using a predictive model based on the bag-of-words technique. A force sensor is used to monitor and characterize the patient's gait, obtaining a set of step descriptors. These are later used to define a vocabulary of steps that can be used to describe rehabilitation sessions. Sessions are finally fed to a support vector machine classifier that performs the final rehabilitation estimation.
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Artificial Intelligence, Information Systems
Citation
Pla, A, López, B, Nogueira, C, Mordvaniuk, N, Blokhuis, T J & Holtslag, H R 2016, Bag-of-steps : Predicting lower-limb fracture rehabilitation length. in ESANN 2016 - 24th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning : Bruges, Belgium, April 27-28-29., ES2016-39, i6doc.com publication, pp. 259-264, 24th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, ESANN 2016, Bruges, Belgium, 27/04/16. < https://www.elen.ucl.ac.be/esann/proceedings/papers.php?ann=2016 >, conference