Department of Speech, Language, and Hearing Sciences, The University of Texas at Austin.
ALS Clinic, Texas Neurology, Dallas.
J Speech Lang Hear Res. 2021 Jun 18;64(6S):2276-2286. doi: 10.1044/2020_JSLHR-20-00288. Epub 2021 Mar 1.
Purpose Kinematic measurements of speech have demonstrated some success in automatic detection of early symptoms of amyotrophic lateral sclerosis (ALS). In this study, we examined how the region of symptom onset (bulbar vs. spinal) affects the ability of data-driven models to detect ALS. Method We used a correlation structure of articulatory movements combined with a machine learning model (i.e., artificial neural network) to detect differences between people with ALS and healthy controls. The performance of this system was evaluated separately for participants with bulbar onset and spinal onset to examine how region of onset affects classification performance. We then performed a regression analysis to examine how different severity measures and region of onset affects model performance. Results The proposed model was significantly more accurate in classifying the bulbar-onset participants, achieving an area under the curve of 0.809 relative to the 0.674 achieved for spinal-onset participants. The regression analysis, however, found that differences in classifier performance across participants were better explained by their speech performance (intelligible speaking rate), and no significant differences were observed based on region of onset when intelligible speaking rate was accounted for. Conclusions Although we found a significant difference in the model's ability to detect ALS depending on the region of onset, this disparity can be primarily explained by observable differences in speech motor symptoms. Thus, when the severity of speech symptoms (e.g., intelligible speaking rate) was accounted for, symptom onset location did not affect the proposed computational model's ability to detect ALS.
语音运动学测量在自动检测肌萎缩侧索硬化症(ALS)的早期症状方面取得了一定的成功。在这项研究中,我们研究了症状起始部位(延髓 vs. 脊髓)如何影响数据驱动模型检测 ALS 的能力。
我们使用了一种发音运动的相关结构,并结合机器学习模型(即人工神经网络)来检测 ALS 患者与健康对照组之间的差异。我们分别对延髓起病和脊髓起病的参与者评估该系统的性能,以检验起病部位如何影响分类性能。然后,我们进行了回归分析,以检验不同严重程度的衡量指标和起病部位如何影响模型性能。
所提出的模型在分类延髓起病的参与者方面明显更准确,其曲线下面积为 0.809,而脊髓起病的参与者为 0.674。然而,回归分析发现,参与者之间分类器性能的差异主要由其言语表现(可理解说话率)来解释,当考虑到可理解说话率时,基于起病部位并未观察到明显差异。
尽管我们发现模型检测 ALS 的能力取决于起病部位存在显著差异,但这种差异主要可以通过言语运动症状的可观察差异来解释。因此,当考虑到言语症状的严重程度(例如,可理解说话率)时,症状起始部位并不影响所提出的计算模型检测 ALS 的能力。