Automatic apraxia detection using deep convolutional neural networks and similarity methods
-
Published:2023-06-24
Issue:4
Volume:34
Page:
-
ISSN:0932-8092
-
Container-title:Machine Vision and Applications
-
language:en
-
Short-container-title:Machine Vision and Applications
Author:
Vicedo Cristina, Nieto-Reyes AliciaORCID, Bringas Santos, Duque RafaelORCID, Lage Carmen, Montaña José Luis
Abstract
AbstractDementia represents one of the great problems to be solved in medicine for a society that is becoming increasingly long-lived. One of the main causes of dementia is Alzheimer’s disease, which accounts for 80% of cases. There is currently no cure for this disease, although there are treatments to try to alleviate its effects, which is why detecting Alzheimer’s disease in its early stages is crucial to slow down its evolution and thus help sufferers. One of the symptoms of the disease that manifests in its early stages is apraxia, difficulties in carrying out voluntary movements. In the clinical setting, apraxia is typically assessed by asking the patient to imitate hand gestures that are performed by the examiner. To automate this test, this paper proposes a system that, based on a video of the patient making the gesture, evaluates its execution. This evaluation is done in two steps, first extracting the skeleton of the hands and then using a similarity function to obtain an objective score of the execution of the gesture. The results obtained in an experiment with several patients performing different gestures are shown, showing the effectiveness of the proposed method. The system is intended to serve as a diagnostic tool, enabling medical experts to detect possible mobility impairments in patients that may have signs of Alzheimer’s disease.
Funder
Universidad de Cantabria, Banco Santander y Gobierno de Cantabria Consejería de Universidades, Igualdad, Cultura y Deporte del Gobierno de Cantabria
Publisher
Springer Science and Business Media LLC
Subject
Computer Science Applications,Computer Vision and Pattern Recognition,Hardware and Architecture,Software
Reference34 articles.
1. De Renzi, E., Faglioni, P.: Apraxia. In: Handbook of Clinical and Experimental Neuropsychology, pp. 421–440. Psychology press, London (2020) 2. Lesourd, M., Le Gall, D., Baumard, J., Croisile, B., Jarry, C., Osiurak, F.: Apraxia and Alzheimer’s disease: review and perspectives. Neuropsychol. Rev. 23(3), 234–256 (2013) 3. Duque, R., Nieto-Reyes, A., Martínez, C., Montaña, J.L.: Detecting human movement patterns through data provided by accelerometers:. a case study regarding Alzheimer’s disease. In: International Conference on Ubiquitous Computing And Ambient Intelligence, pp. 56–66. Springer (2016) 4. Nieto-Reyes, A., Duque, R., Montaña, J.L., Lage, C.: Classification of Alzheimer’s patients through ubiquitous computing. Sensors 17(7), 1679 (2017) 5. Bringas, S., Salomón, S., Duque, R., Lage, C., Montaña, J.L.: Alzheimer’s disease stage identification using deep learning models. J. Biomed. Inform. 109, 103514 (2020)
|
|