Tsanas Athanasios, Little Max A, Fox Cynthia, Ramig Lorraine O
IEEE Trans Neural Syst Rehabil Eng. 2014 Jan;22(1):181-90. doi: 10.1109/TNSRE.2013.2293575.
Vocal performance degradation is a common symptom for the vast majority of Parkinson's disease (PD) subjects, who typically follow personalized one-to-one periodic rehabilitation meetings with speech experts over a long-term period. Recently, a novel computer program called Lee Silverman voice treatment (LSVT) Companion was developed to allow PD subjects to independently progress through a rehabilitative treatment session. This study is part of the assessment of the LSVT Companion, aiming to investigate the potential of using sustained vowel phonations towards objectively and automatically replicating the speech experts' assessments of PD subjects' voices as "acceptable" (a clinician would allow persisting during in-person rehabilitation treatment) or "unacceptable" (a clinician would not allow persisting during in-person rehabilitation treatment). We characterize each of the 156 sustained vowel /a/ phonations with 309 dysphonia measures, select a parsimonious subset using a robust feature selection algorithm, and automatically distinguish the two cohorts (acceptable versus unacceptable) with about 90% overall accuracy. Moreover, we illustrate the potential of the proposed methodology as a probabilistic decision support tool to speech experts to assess a phonation as "acceptable" or "unacceptable." We envisage the findings of this study being a first step towards improving the effectiveness of an automated rehabilitative speech assessment tool.
嗓音表现退化是绝大多数帕金森病(PD)患者的常见症状,这些患者通常会长期与语音专家进行一对一的个性化定期康复会诊。最近,一种名为李·西尔弗曼嗓音治疗(LSVT)助手的新型计算机程序被开发出来,以使PD患者能够在康复治疗过程中独立取得进展。本研究是对LSVT助手评估的一部分,旨在研究利用持续元音发声在客观、自动地复制语音专家对PD患者嗓音的评估方面的潜力,即评估为“可接受”(临床医生会允许在面对面康复治疗中持续)或“不可接受”(临床医生不会允许在面对面康复治疗中持续)。我们用309项发声障碍指标对156个持续元音/a/发声进行了特征描述,使用一种稳健的特征选择算法选择了一个简约子集,并以约90%的总体准确率自动区分了两组(可接受与不可接受)。此外,我们展示了所提出方法作为一种概率性决策支持工具对语音专家评估发声为“可接受”或“不可接受”的潜力。我们设想本研究的结果是朝着提高自动化康复语音评估工具的有效性迈出的第一步。