Abstract

Parkinson’s disease (PD) is a neurological progressive disorder and is most common among people who are above 60 years old. It affects the brain nerve cells due to the deficiency of dopamine secretion. Dopamine acts as a neurotransmitter and helps in the movement of the body parts. Once brain cells/neurons start dying due to aging, then it will lead to a decrease in dopamine levels. The symptoms of Parkinson’s are difficultly in doing regular/habitual movements, uncontrollable shaking of hands and limbs may encounter memory loss, stiff muscles, sudden temporary loss of control, etc. The severity of the disease will be worse if not diagnosed and treated at the early stages. This paper concentrates on developing Parkinson’s disease diagnosing system using machine learning techniques and algorithms. Machine Learning is an integral part of artificial intelligence it takes huge data as input and train by making use of existing algorithms to understand the pattern of the data. Based on the recognized pattern, the machine will act accordingly without any human intervention. In this work, two major approaches have been employed to diagnose PD. Initially, 26 vocal data of PD affected and healthy individual datasets are obtained from the UCI Machine Learning data repository, are taken as initial raw data/features. In pre-processing, the mRMR feature selection algorithm is employed to minimize the feature count and increase the accuracy rate. The selected features will further be extracted using the Stacked Autoencoder technique to improve and increase the accuracy rate and quality of classification with reduced run time. K-fold cross-validation is used to evaluate the predictive capability of the model and the effectiveness of the extracted features. Artificial Immune Recognition System – Parallel (AIRS-P), an immune inspired algorithm is employed to classify the data from the extracted features. The proposed system attained 97% accuracy, outperforms the benchmarked algorithms and proved its significance on PD classification.

Highlights

  • Parkinson's disease is a complex neuro-related disorder, having more prevalence among elderly people around the world

  • The test dataset consists of 6 voice samples that have been recorded from 28 Parkinson’s disease (PD) affected patients

  • The voice and speech recordings of PD affected and healthy individuals are analyzed with different statistical feature selection methods and neural network models

Read more

Summary

Introduction

Parkinson's disease is a complex neuro-related disorder, having more prevalence among elderly people around the world. It is essential to diagnose it early to treat it . It has several treatments, medications, and surgery, it is always better to recognize the symptoms at the early stages. It helps in better recovery of the PD affected patients. The most prescribed medicine is L-dopa (Levodopa) combined with Carbidopa. The medicine will be converted into dopamine by the brain cells and it balances the level of dopamine needed for the motor actions of the nervous system. Recognizing the symptoms of PD and early diagnosis helps to control the severity before it gets worse

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call