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   a classification system for assessment and home monitoring of tremor in patients with parkinson’s disease  
   
نویسنده bazgir omid ,habibi amir hassan ,palma lorenzo ,pierleoni paola ,nafees saba
منبع journal of medical signals and sensors - 2018 - دوره : 8 - شماره : 2 - صفحه:65 -72
چکیده    Background: tremor is one of the most common symptoms of parkinson’s disease (pd), which is widely being used in the diagnosis procedure. accurate estimation of pd tremor based on unified pd rating scale (updrs) provides aid for physicians in prescription and home monitoring. this article presents a robust design of a classification system to estimate pd patient’s hand tremors and the results of the proposed system as compared to the updrs. methods: a smartphone accelerometer sensor is used for accurate and noninvasive data acquisition. we applied short‑time fourier transform to time series data of 52 pd patients. features were extracted based on the severity of pd patients’ hand tremor. the wrapper method was employed to determine the most discriminative subset of the extracted features. four different classifiers were implemented for achieving best possible accuracy in the estimation of pd hand tremor based on updrs. of the four tested classifiers, the naive bayesian approach proved to be the most accurate one. results: the classification result for the assessment of pd tremor achieved close to 100% accuracy by selecting an optimum combination of extracted features of the acceleration signal acquired. for home health‑care monitoring, the proposed algorithm was also implemented on a cost‑effective embedded system equipped with a microcontroller, and the implemented classification algorithm achieved 93.8% average accuracy. conclusions: the accuracy result of both implemented systems on matlab and microcontroller is acceptable in comparison with the previous works.
کلیدواژه classification ,home monitoring ,parkinson’s tremor ,smartphone ,supervised learning ,unified parkinson’s disease rating scale
آدرس texas tech university, department of electrical and computer engineering, usa. university of tabriz, department of electrical and computer engineering, iran, iran university of medical sciences, rasool akram hospital, department of neurology, iran, marche polytechnic university, department of information engineering, italy, marche polytechnic university, department of information engineering, italy, texas tech university, department of biological sciences, usa
پست الکترونیکی saba.nafees@ttu.edu
 
     
   
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