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Objective Assessment of Vocal Tremor

机译:声震的客观评估

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摘要

Detecting early signs of neurodegeneration is vital for planning treatments for neurological diseases. Speech plays an important role in this context because it has been shown to be a promising early indicator of neurological decline, and because it can be acquired remotely without the need for specialized hardware. Typically, symptoms are characterized by clinicians using subjective and discrete scales. The poor resolution and subjectivity of these scales can make the earliest speech changes hard to detect. In this paper, we propose an algorithm for the objective assessment of vocal tremor, a phenomenon associated with many neurological disorders. The algorithm extracts and aggregates a feature set from the average spectra of the energy and fundamental frequency profiles of a sustained phonation. We show that the resultant low-dimensional feature set reliably classifies healthy controls and patients with amyotrophic lateral sclerosis perceptually rated for tremor by speech language pathologists.
机译:检测神经退行性变的早期迹象对于规划神经系统疾病的治疗至关重要。在这种情况下,语音起着重要的作用,因为它已被证明是神经功能下降的有希望的早期指标,并且由于不需要特殊的硬件就可以远程获取。通常,临床医生使用主观和离散量表来表征症状。这些音阶的较差的分辨率和主观性会使最早的语音变化难以检测。在本文中,我们提出了一种客观评估声音震颤的算法,该震颤是一种与许多神经系统疾病有关的现象。该算法从能量的平均频谱和持续发声的基频曲线中提取并聚集特征集。我们表明,由此产生的低维特征集可靠地将健康对照和肌萎缩性侧索硬化症患者的言语病理学家感知为震颤的患者分类。

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