首页> 外文会议>Annual Conference of the International Speech Communication Association >Relation of Automatically Extracted Formant Trajectories with Intelligibility Loss and Speaking Rate Decline in Amyotrophic Lateral Sclerosis
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Relation of Automatically Extracted Formant Trajectories with Intelligibility Loss and Speaking Rate Decline in Amyotrophic Lateral Sclerosis

机译:自动提取的肌肤丧失损失术中的植物缺陷术治疗肌萎缩外侧硬化症的关系

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Effective monitoring of bulbar disease progression in persons with amyotrophic lateral sclerosis (ALS) requires rapid, objective, automatic assessment of speech loss. The purpose of this work was to identify acoustic features that aid in predicting intelligibility loss and speaking rate decline in individuals with ALS. Features were derived from statistics of the first (F_1) and second (F_2) formant frequency trajectories and their first and second derivatives. Motivated by a possible link between components of formant dynamics and specific articulator movements, these features were also computed for low-pass and high-pass filtered formant trajectories. When compared to clinician-rated intelligibility and speaking rate assessments, F_2 features, particularly mean F_2 speed and a novel feature, mean F_2 acceleration, were most strongly correlated with intelligibility and speaking rate, respectively (Spearman correlations > 0.70, p < 0.0001). These features also yielded the best predictions in regression experiments (r > 0.60, p < 0.0001). Comparable results were achieved using low-pass filtered F_2 trajectory features, with higher correlations and lower prediction errors achieved for speaking rate over intelligibility. These findings suggest information can be exploited in specific frequency components of formant trajectories, with implications for automatic monitoring of ALS.
机译:有效监测肌萎缩外硬化(ALS)的人类人员对肌肉疾病的进展需要快速,客观,自动评估语音损失。这项工作的目的是识别声学特征,有助于预测患有ALS个体的无能性损失和说话率下降。特征来自第一(F_1)和第二(F_2)中的频率轨迹及其第一和第二衍生物的统计数据。通过组件之间的组件之间的可能链接,这些特征也被计算用于低通和高通过滤的阿尔香轨迹。与临床医生的可懂度和讲速率评估相比,F_2特征,特别是指F_2速度和新颖的特征,平均值与可懂度和说话率最强烈相关(Spearman相关> 0.70,P <0.0001)。这些特征还产生了回归实验中的最佳预测(R> 0.60,P <0.0001)。使用低通滤波的F_2轨迹特征实现了可比较的结果,具有更高的相关性和较低的预测误差,以便在可懂度下进行讲话速率。这些发现建议信息可以利用格式轨迹的特定频率分量,具有对ALS自动监测的影响。

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