Gait disorder classification based on effective feature selection and unsupervised methodology
The result's identifiers
Result code in IS VaVaI
<a href="https://www.isvavai.cz/riv?ss=detail&h=RIV%2F00064173%3A_____%2F24%3A43926615" target="_blank" >RIV/00064173:_____/24:43926615 - isvavai.cz</a>
Alternative codes found
RIV/00216208:11120/24:43926615 RIV/00216275:25530/24:39922650 RIV/60461373:22340/24:43930907
Result on the web
<a href="https://doi.org/10.1016/j.compbiomed.2024.108077" target="_blank" >https://doi.org/10.1016/j.compbiomed.2024.108077</a>
DOI - Digital Object Identifier
<a href="http://dx.doi.org/10.1016/j.compbiomed.2024.108077" target="_blank" >10.1016/j.compbiomed.2024.108077</a>
Alternative languages
Result language
angličtina
Original language name
Gait disorder classification based on effective feature selection and unsupervised methodology
Original language description
In gait stability analysis, patients suffering from dysfunction problems are impacted by shifts in their dynamic balance. Monitoring the patients' progress is important for allowing physicians and patients to observe the rehabilitation process accurately. In this study, we designed a new methodology for classifying gait disorders to quantify patients' progress. The dataset in this study includes 84 measurements of 37 patients based on a physician's opinion. In this study, the system, which includes a Kinect camera to observe and store the frames of patients walking down a hallway, a key-point detector to detect the skeletal key points, and an encoder transformer classifier network integrated with generator-discriminator networks (ET-GD), is designed to evaluate the classification of gait dysfunction. The detector extracts the skeletal key points of patients. After feature engineering, the selected high-level features are fed into the proposed neural network to analyse patient movement and perform the final evaluation of gait dysfunction. The proposed network is inspired by the 1D encoder transformer, which is integrated with two main networks: a network for classification and a network to generate fake output data similar to the input data. Furthermore, we used a discriminator structure to distinguish between the actual data (input) and fake data (generated data). Due to the multi-structural networks in the proposed method, multi-loss functions need to be optimised; this increases the accuracy of the encoder transformer classifier.
Czech name
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Czech description
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Classification
Type
J<sub>imp</sub> - Article in a specialist periodical, which is included in the Web of Science database
CEP classification
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OECD FORD branch
30206 - Otorhinolaryngology
Result continuities
Project
<a href="/en/project/LTAIN19007" target="_blank" >LTAIN19007: Development of Advanced Computational Algorithms for evaluating post-surgery rehabilitation</a><br>
Continuities
I - Institucionalni podpora na dlouhodoby koncepcni rozvoj vyzkumne organizace
Others
Publication year
2024
Confidentiality
S - Úplné a pravdivé údaje o projektu nepodléhají ochraně podle zvláštních právních předpisů
Data specific for result type
Name of the periodical
Computers in Biology and Medicine
ISSN
0010-4825
e-ISSN
1879-0534
Volume of the periodical
170
Issue of the periodical within the volume
February
Country of publishing house
US - UNITED STATES
Number of pages
12
Pages from-to
108077
UT code for WoS article
001175043500001
EID of the result in the Scopus database
2-s2.0-85184064424