Mahalanobis Metric-based Oversampling Technique for Parkinson’s Disease Severity Assessment using Spatiotemporal Gait Parameters

Parkinson’s Disease (PD) severity level detection is crucial for timely and effective medical intervention. Due to the scarcity of PD gait data especially subject samples of higher severity levels, data generation techniques are adopted. This paper proposes the Mahalanobis-Metric-based Oversampling...

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Bibliographic Details
Published inBiomedical signal processing and control Vol. 86; p. 105057
Main Authors Balakrishnan, Aishwarya, Medikonda, Jeevan, Namboothiri, Pramod K., Natarajan, Manikandan
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.09.2023
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ISSN1746-8094
1746-8108
DOI10.1016/j.bspc.2023.105057

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Summary:Parkinson’s Disease (PD) severity level detection is crucial for timely and effective medical intervention. Due to the scarcity of PD gait data especially subject samples of higher severity levels, data generation techniques are adopted. This paper proposes the Mahalanobis-Metric-based Oversampling Technique (MMOTE), an algorithm that generates data within the boundaries of the existing data samples while also being diverse to address the problem of class imbalance within a dataset. The proposed technique is evaluated on PD gait data and the results show that MMOTE outperformed alternative oversampling techniques. A hybrid approach of combining ensemble learning with oversampling the minority class for PD severity level assessment is adopted. The minority class recognition is enhanced with an accuracy of 99%, thereby improving the generalizability of the classifier. Statistical analyses such as Levene’s test and Wilcoxon signed-rank test are conducted to validate the significance of the findings. Moreover, the importance of optimal sample size determination for obtaining reliable prediction results is also discussed. Overall classification accuracy of ≈98% is reported using sample size estimated by plotting the learning curve for Random Forest. •Mahalanobis Distance is a good alternative while dealing with a correlated dataset.•Mahalanobis Metric-based oversampling technique is proposed to improve Parkinson’s Disease diagnosis.•Proposed methodology adopts hybrid approach of oversampling with ensemble learning to improve model performance.•Improves minority class recognition using Random Forest with an accuracy of 99%.•Model training with optimal sample size yields classification accuracy of ≈98% in PD severity assessment.
ISSN:1746-8094
1746-8108
DOI:10.1016/j.bspc.2023.105057