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Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease

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Authors
Đurić-Jovičić, Milica
Belić, Minja
Stanković, Iva
Radovanović, Saša M.
Kostić, Vladimir S.
Article (Published version)
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Abstract
Background: Gait disturbances are an integral part of clinical manifestations of Parkinson's disease (PD), even in the initial stages of the disease. Our goal was to identify the set of spatio-temporal gait parameters that bear the highest relevance for characterizing de novo PD patients. Methods: Forty patients with de novo PD and forty healthy controls were recorded while walking over an electronic walkway in three different conditions: (1) base walking, (2) walking with an additional motor task, (3) walking with an additional mental task. Both groups were well balanced concerning age and gender. To select a smaller number of relevant parameters, affinity propagation clustering was applied on parameter pairwise correlation. The exemplars were then sorted by importance using the random forest algorithm. Classification accuracy of a support vector machine was tested using the selected parameters and compared to the accuracy of the model using a set of parameters derived from literature.... Results: Final selection of parameters included: stride length and stride length coefficient of variation (CV), stride time and stride time CV, swing time and swing time CV, step time asymmetry, and heel-to-heel base support CV. Classification performed using these parameters showed higher overall accuracy (85%) than classification using the common parameter set containing: stride time, stride length, swing time and double support time, along with their CVs (78%). Conclusion: In early stages of PD, double support time and its CV appear to be weak indicators of the disease. We instead found step time asymmetry and support base CV to significantly contribute to classification accuracy.

Keywords:
Gait parameters / Parkinson's disease / de novo PD / feature selection / classification
Source:
Neurological Research, 2017, 39, 10, 853-861
Publisher:
  • Taylor & Francis Ltd, Abingdon
Funding / projects:
  • Motor and non-motor symptoms and signs in parkinsonism: clinical, morphological and molecular-genetic correlates (RS-175090)

DOI: 10.1080/01616412.2017.1348690

ISSN: 0161-6412

PubMed: 28715936

WoS: 000410835000001

Scopus: 2-s2.0-85024504778
[ Google Scholar ]
21
15
URI
http://rimi.imi.bg.ac.rs/handle/123456789/758
Collections
  • Radovi istraživača / Researchers' publications
Institution/Community
Institut za medicinska istraživanja
TY  - JOUR
AU  - Đurić-Jovičić, Milica
AU  - Belić, Minja
AU  - Stanković, Iva
AU  - Radovanović, Saša M.
AU  - Kostić, Vladimir S.
PY  - 2017
UR  - http://rimi.imi.bg.ac.rs/handle/123456789/758
AB  - Background: Gait disturbances are an integral part of clinical manifestations of Parkinson's disease (PD), even in the initial stages of the disease. Our goal was to identify the set of spatio-temporal gait parameters that bear the highest relevance for characterizing de novo PD patients. Methods: Forty patients with de novo PD and forty healthy controls were recorded while walking over an electronic walkway in three different conditions: (1) base walking, (2) walking with an additional motor task, (3) walking with an additional mental task. Both groups were well balanced concerning age and gender. To select a smaller number of relevant parameters, affinity propagation clustering was applied on parameter pairwise correlation. The exemplars were then sorted by importance using the random forest algorithm. Classification accuracy of a support vector machine was tested using the selected parameters and compared to the accuracy of the model using a set of parameters derived from literature. Results: Final selection of parameters included: stride length and stride length coefficient of variation (CV), stride time and stride time CV, swing time and swing time CV, step time asymmetry, and heel-to-heel base support CV. Classification performed using these parameters showed higher overall accuracy (85%) than classification using the common parameter set containing: stride time, stride length, swing time and double support time, along with their CVs (78%). Conclusion: In early stages of PD, double support time and its CV appear to be weak indicators of the disease. We instead found step time asymmetry and support base CV to significantly contribute to classification accuracy.
PB  - Taylor & Francis Ltd, Abingdon
T2  - Neurological Research
T1  - Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease
EP  - 861
IS  - 10
SP  - 853
VL  - 39
DO  - 10.1080/01616412.2017.1348690
UR  - conv_4124
ER  - 
@article{
author = "Đurić-Jovičić, Milica and Belić, Minja and Stanković, Iva and Radovanović, Saša M. and Kostić, Vladimir S.",
year = "2017",
abstract = "Background: Gait disturbances are an integral part of clinical manifestations of Parkinson's disease (PD), even in the initial stages of the disease. Our goal was to identify the set of spatio-temporal gait parameters that bear the highest relevance for characterizing de novo PD patients. Methods: Forty patients with de novo PD and forty healthy controls were recorded while walking over an electronic walkway in three different conditions: (1) base walking, (2) walking with an additional motor task, (3) walking with an additional mental task. Both groups were well balanced concerning age and gender. To select a smaller number of relevant parameters, affinity propagation clustering was applied on parameter pairwise correlation. The exemplars were then sorted by importance using the random forest algorithm. Classification accuracy of a support vector machine was tested using the selected parameters and compared to the accuracy of the model using a set of parameters derived from literature. Results: Final selection of parameters included: stride length and stride length coefficient of variation (CV), stride time and stride time CV, swing time and swing time CV, step time asymmetry, and heel-to-heel base support CV. Classification performed using these parameters showed higher overall accuracy (85%) than classification using the common parameter set containing: stride time, stride length, swing time and double support time, along with their CVs (78%). Conclusion: In early stages of PD, double support time and its CV appear to be weak indicators of the disease. We instead found step time asymmetry and support base CV to significantly contribute to classification accuracy.",
publisher = "Taylor & Francis Ltd, Abingdon",
journal = "Neurological Research",
title = "Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease",
pages = "861-853",
number = "10",
volume = "39",
doi = "10.1080/01616412.2017.1348690",
url = "conv_4124"
}
Đurić-Jovičić, M., Belić, M., Stanković, I., Radovanović, S. M.,& Kostić, V. S.. (2017). Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease. in Neurological Research
Taylor & Francis Ltd, Abingdon., 39(10), 853-861.
https://doi.org/10.1080/01616412.2017.1348690
conv_4124
Đurić-Jovičić M, Belić M, Stanković I, Radovanović SM, Kostić VS. Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease. in Neurological Research. 2017;39(10):853-861.
doi:10.1080/01616412.2017.1348690
conv_4124 .
Đurić-Jovičić, Milica, Belić, Minja, Stanković, Iva, Radovanović, Saša M., Kostić, Vladimir S., "Selection of gait parameters for differential diagnostics of patients with de novo Parkinson's disease" in Neurological Research, 39, no. 10 (2017):853-861,
https://doi.org/10.1080/01616412.2017.1348690 .,
conv_4124 .

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