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Energy distribution analysis and nonlinear dynamical analysis of phonation in patients with Parkinson's disease

机译:帕金森氏病患者发声的能量分布分析和非线性动力学分析

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Patients with Parkinson's disease (PD) have been reported to exhibit vocal impairment during the course of PD. Recently, development of automatic PD severity assessment based on acoustical characteristics from voice recordings has been attempted. However, objective extraction of appropriate features that can characterize PD symptoms faces many problems, due to the prevalence of aperiodicity in PD voices, rendering traditional perturbation analysis unreliable. The present study attempted to examine the validity of more advanced acoustic analysis techniques based on energy distribution measures and nonlinear dynamical measures. All of the features were extracted from sustained phonations of the vowel /a/ produced by 16 PD patients and 20 age-matched non- pathologic subjects. Results revealed that the energy distribution measures, such as glottal-to-noise excitation (GNE), and empirical mode decomposition excitation ratio (EMD-ER), as well as nonlinear dynamical measures including correlation dimension (D2), permutation entropy (PE), and detrended fluctuation analysis (DFA) were effective in discerning between PD and normal voices. This finding suggests that both energy distribution and nonlinear dynamical analyses could be appropriate measures in determining the status of PD voice.
机译:据报道,帕金森病(PD)患者在PD过程中展示了声乐障碍。最近,已经尝试了基于来自录音的声学特征的自动PD严重性评估的开发。然而,由于PD声音中的非周期性的患病率,对PD症状表征PD症状的适当特征的客观提取症状面临着许多问题,使传统的扰动分析不可靠。本研究试图根据能量分配措施和非线性动力测量来研究更先进的声学分析技术的有效性。所有特征取自16个PD患者的元音/ A /产生的持续打听次数和20次匹配的非病理学受试者。结果表明,能量分布措施,如引光激发(GNE)和经验模式分解激励比(EMD-ER),以及包括相关尺寸(D2),置换熵(PE)的非线性动力测量,并且减少波动分析(DFA)在PD和正常声音之间有效地辨别出来。该发现表明,能量分布和非线性动力学分析可能是确定PD语音状态的适当措施。

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