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An Efficient Deep Learning Based Method for Speech Assessment of Mandarin-Speaking Aphasic Patients

机译:一种高效的基于深度学习的讲话评估方法,讲话者的失性患者

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Speech assessment is an important part of the rehabilitation process for patients with aphasia (PWA). Mandarin speech lucidity features such as articulation, fluency, and tone influence the meaning of the spoken utterance and overall speech clarity. Automatic assessment of these features is important for an efficient assessment of the aphasic speech. Hence, in this paper, a standardized automatic speech lucidity assessment method for Mandarin-speaking aphasic patients using a machine learning based technique is presented. The proposed assessment method adopts the Chinese Rehabilitation Research Center Aphasia Examination (CRRCAE) standard as a guideline. Quadrature based high-resolution timefrequency images with a convolutional neural network (CNN) are utilized to develop a method that can map the relationship between the severity level of aphasic patients' speech and the three speech lucidity features. The results show a linear relationship with statistically significant correlations between the normalized true-class output activations (TCOA) of the CNN model and patients' articulation, fluency, and tone scores, i.e., 0.71 (p < 0.001), 0.60 (p < 0.001) and 0.58 (p < 0.001), respectively. The linearity of the proposed Mandarin aphasic speech assessment method and its significant correlation with the speech severity levels show the efficacy of the method in predicting the severity of impaired Mandarin speech. The outcome of this research envisages assisting speech-language pathologists in Mandarin-speech impairment assessment and promoting early support discharge; hence could alleviate the stress that the healthcare system is currently experiencing in China nationwide. The framework of the proposed Mandarin aphasic speech assessment method can be readily extended to other languages.
机译:言语评估是具有失语症(PWA)患者康复过程的重要组成部分。普通话言语乐观特征,如关节,流畅性和音调会影响口语话语和整体言语清晰度的含义。对这些特征的自动评估对于有效评估失调演讲是重要的。因此,介绍了使用基于机器学习技术的讲官方化的失性患者的标准化自动言语发光评估方法。该拟议的评估方法采用中国康复研究中心阿牙科检查(CRRCAE)标准作为指导。基于正交的具有卷积神经网络(CNN)的高分辨率计时图像来开发一种方法,可以映射失调患者语音的严重程度与三种语音速度特征之间的关系。结果表明,CNN模型的标准化真正输出激活(TCOA)与患者的铰接,流畅性和音调评分之间的统计学性的真正输出激活(TCOA)之间的线性关系,即0.71(P <0.001),0.60(P <0.001分别为0.58(p <0.001)。拟议的普通话失语性语音评估方法的线性及其与语音严重性水平的显着相关性显示了方法预测普通话言论严重程度的方法。本研究的结果设想协助汉语 - 语音减值评估和促进早期支助出院的语言病理学家;因此,可以减轻医疗保健系统目前在全国范围内体验的压力。拟议的普通话讲话评估方法的框架可以很容易地扩展到其他语言。

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