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An improved sex-specific and age-dependent classification model for Parkinson's diagnosis using handwriting measurement. | LitMetric

An improved sex-specific and age-dependent classification model for Parkinson's diagnosis using handwriting measurement.

Comput Methods Programs Biomed

Centre for Biomedical Engineering, Indian Institute of Technology Delhi, Hauzkhas 110016, New Delhi, India; Department of Biomedical Engineering, All India Institute of Medical Sciences, Delhi, India. Electronic address:

Published: June 2020

Background And Objectives: Diagnosis of Parkinson's with higher accuracy is always desirable to slow down the progression of the disease and improved quality of life. There are evidences of inherent neurological differences between male and females as well as between elderly and adults. However, the potential of such gender and age infomration have not been exploited yet for Parkinson's identification.

Methods: In this paper, we develop a sex-specific and age-dependent classification method to diagnose the Parkinson's disease using the online handwriting recorded from individuals with Parkinson's (n = 37; m/f-19/18;age-69.3 ± 10.9yrs) and healthy controls (n = 38; m/f-20/18;age-62.4 ± 11.3yrs). A support vector machine ranking method is used to present the features specific to their dominance in sex and age group for Parkinson's diagnosis.

Results: The sex-specific and age-dependent classifier was observed significantly outperforming the generalized classifier. An improved accuracy of 83.75% (SD = 1.63) with the female-specific classifier, and 79.55% (SD = 1.58) with the old-age dependent classifier was observed in comparison to 75.76% (SD = 1.17) accuracy with the generalized classifier.

Conclusions: Combining the age and sex information proved to be encouraging in classification. A distinct set of features were observed to be dominating for higher classification accuracy in a different category of classification.

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Source
http://dx.doi.org/10.1016/j.cmpb.2019.105305DOI Listing

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