CIVILICA We Respect the Science
(ناشر تخصصی کنفرانسهای کشور / شماره مجوز انتشارات از وزارت فرهنگ و ارشاد اسلامی: ۸۹۷۱)

A Hybrid Method for the Diagnosis and Classifying Parkinson’s Patients based on Time–frequency Domain Properties and K‑nearest Neighbor

عنوان مقاله: A Hybrid Method for the Diagnosis and Classifying Parkinson’s Patients based on Time–frequency Domain Properties and K‑nearest Neighbor
شناسه ملی مقاله: JR_JMSI-10-1_008
منتشر شده در در سال 1399
مشخصات نویسندگان مقاله:

Zayrit Soumaya - Laboratory Industrial Engineering, Information Processing and Logistics (GITIL), Faculty of Science Ain Chok. University Hassan II - Casablanca
Belhoussin Drissi Taoufiq - Laboratory Industrial Engineering, Information Processing and Logistics (GITIL), Faculty of Science Ain Chok. University Hassan II - Casablanca
Nasir Benayad - Laboratory Research Center STIS, M۲CS, Higher School of Technical Education of Rabat (ENSET)
Benba Achraf - Electronic Systems Sensors and Nanobiotechnologies (E۲SN), ENSET, Mohammed V University in Rabat, Morocco

خلاصه مقاله:
The vibrations of hands and arms are the main symptoms of Parkinson’s ailment. Nevertheless, the affection of the vocal cords leads to troubles and defects in the speech, which is another accurate symptom of the disease. This article presents a diagnostic model of Parkinson’s disease (PD) and proposes the time–frequency transform (wavelet WT) and Mel‑frequency cepstral coefficients (MFCC) treatment for this disease. The proposed treatment is centered on the vocal signal transformation by a method based on the WT and to extract the coefficients of the MFCC and eventually the categorization of the sick and healthy patients by the use of the classifier K‑nearest neighbor (KNN). The analysis used in this article uses a database that contains ۱۸ healthy patients and twenty patients. The Daubechies mother WT is used in treatments to compress the vocal signal and extract the MFCC cepstral coefficients. As far as, the diagnosis of Parkinson’s ailment is concerned the KNN classifying performance gives ۸۹% accuracy when applied to ۵۲% of the database as training data, whereas when we increase this percentage from ۵۲% to ۷۳%, we reach ۹۸.۶۸% accuracy which is higher than using the support‑vector machine classifier. The KNN is conclusive in the determination of the PD. Moreover, the higher the training data is, the more precise the results are.

کلمات کلیدی:
K‑nearest neighbor, Mel‑frequency cepstral coefficient, Parkinson’s disease, wavelet

صفحه اختصاصی مقاله و دریافت فایل کامل: https://civilica.com/doc/1700089/