Parkinson's disease (PD) is the most widespread movement condition and the second most common neurodegenerative disorder, following Alzheimer's. Movement symptoms and imaging techniques are the most popular ways to diagnose this disease. However, they are not accurate and fast and may only be accessible to a few people. This study provides an autonomous system, i.e., PD-ADSV, for diagnosing PD based on voice signals, which uses four machine learning classifiers and the hard voting ensemble method to achieve the highest accuracy. PD-ADSV is developed using Python and the Gradio web framework.
翻译:帕金森病是最常见的运动障碍和第二常见的神经退行性疾病,仅次于阿尔茨海默症。运动症状和影像学技术是常见的诊断该疾病的方法。然而,它们不准确且速度较慢,可能只适用于少数人。本研究提供了一个自动诊断系统,即PD-ADSV,用于基于声音信号诊断帕金森病,该系统使用四个机器学习分类器和硬投票集成方法来实现最高精度。PD-ADSV使用Python和Gradio Web框架开发。