Tuned Homogenous Ensemble Regressor Model for Early Diagnosis of Parkinson Disorder Based on Voice Features Modality

C. Anisha, N. Arulanand
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引用次数: 2

Abstract

Parkinson Disorder (PD) is a neurological disorder which is progressive and degenerative in nature. There are no specific tests pertaining to the diagnosis of PD. The symptoms at an early stage are mild. The early diagnosis of PD is really essential to delay the progression of the disorder. Speech disorder namely dysphonia is experienced by approximately 90% of PD patients. The incorporation of Artificial Intelligence (AI) techniques integrated with non-invasive capture of speech data from patients in diagnosis system aids to provide a robust, reliable and accurate estimation of Unified Parkinson Disease Rating Scale (UPDRS) score which ease the decision-making process effective for healthcare professionals. The proposed system incorporates a novel tuned Homogenous Ensemble Regressor wherein the hyperparameters are chosen and tuned using various experiments. Tuned Extreme Gradient (XgBoost) Regressor and Tuned Random Forest (RF) Regressor are the two homogenous regressor model. The proposed system is compared with the Tuned Linear Regression (LR) model which is the single Regressor model. The proposed system is evaluated using the large database of voice features samples of 42 PD patients. The Mean Absolute Error (MAE) and Mean Squared Error (MAE) values are minimal for the proposed system and it shows that the errors of the proposed system are lower than the single classifier errors and existing similar system.
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基于语音特征模态的帕金森病早期诊断的调谐同质集合回归模型
帕金森病(PD)是一种进行性和退行性神经系统疾病。没有与帕金森病诊断相关的特殊检查。早期症状很轻微。PD的早期诊断对于延缓疾病的发展至关重要。大约90%的PD患者都有语言障碍,即语音障碍。人工智能(AI)技术与诊断系统中患者语音数据的非侵入性捕获相结合,有助于提供统一帕金森病评定量表(UPDRS)评分的稳健、可靠和准确估计,从而简化医疗保健专业人员有效的决策过程。所提出的系统采用了一种新的调谐同质集成回归器,其中超参数是通过各种实验选择和调谐的。调谐极端梯度(XgBoost)回归量和调谐随机森林(RF)回归量是两种同质回归模型。将该系统与调谐线性回归(LR)模型(单回归模型)进行了比较。利用42例PD患者的语音特征样本的大型数据库对所提出的系统进行了评估。所提系统的平均绝对误差(MAE)和均方误差(MAE)值最小,表明所提系统的误差低于单一分类器的误差和现有的类似系统。
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