A Review on Parkinson’s Disease Prediction and Tele-Consulting using Machine Learning

Shree Kumar, Akarsh N L, Manoj Kumar N D, Chethan Umadi
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Abstract

Large medical datasets are available in various data repositories and are used to identify diseases. Parkinson's disease is regarded as one of the most lethal and progressive nervous system diseases affecting movement. It is the second most common cause of disability in the brain and it Reduces life expectancy and has no cure. Nearly 90% of affected people with this disease have speech disorders. In real-world applications, data is generated using a variety of Machine Learning techniques. Machine learning algorithms assist in the generation of useful content from it. Machine learning algorithms are used to detect diseases in their early stages in order to extend the lives of the elderly. When considering the term 'Parkinson's,' the main concept is speech features. In this paper, we are reviewing various Machine Learning techniques such as KNN, SVM, Naïve Bayes, Deep learning techniques and Logistic Regression to predict Parkinson's disease based on user input, and the input for algorithms is the dataset. Based on these characteristics, we anticipate that the algorithms will be more accurate. The model is used in conjunction with the frontend to predict whether or not the patient has Parkinson's disease. Prediction is critical in the early stages of patient recovery. This can be accomplished with the assistance of Machine Learning Keyword : Convolutional Neural Network (CNN), Deep Belief Networks (DBN), Deep Neural Networks (DNN), K-nearest Neighbors Algorithm (KNN), Machine Learning, Parkinson’s, Speech disorders, Support Vector Machine Classifier (SVM).
基于机器学习的帕金森病预测与远程咨询研究综述
大型医疗数据集在各种数据存储库中可用,并用于识别疾病。帕金森病被认为是影响运动的最致命和进行性神经系统疾病之一。它是导致大脑残疾的第二大常见原因,它会降低预期寿命,而且无法治愈。近90%患有这种疾病的人有语言障碍。在实际应用中,数据是使用各种机器学习技术生成的。机器学习算法帮助从中生成有用的内容。机器学习算法被用于检测早期疾病,以延长老年人的生命。当考虑到“帕金森症”这个词时,主要的概念是语言特征。在本文中,我们回顾了各种机器学习技术,如KNN, SVM, Naïve贝叶斯,深度学习技术和逻辑回归,以用户输入为基础预测帕金森病,算法的输入是数据集。基于这些特征,我们预计算法将更加准确。该模型与前端相结合,用于预测患者是否患有帕金森病。预测在病人康复的早期阶段是至关重要的。这可以在机器学习的帮助下完成关键字:卷积神经网络(CNN),深度信念网络(DBN),深度神经网络(DNN), k近邻算法(KNN),机器学习,帕金森病,言语障碍,支持向量机分类器(SVM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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