Genetic wrapper approach for automatic diagnosis of speech disorders related to Autism

E. M. Albornoz, L. D. Vignolo, Cesar E. Martínez, Diego H. Milone
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引用次数: 5

Abstract

The pervasive development disorders in autism condition lead to impairments in language and social communication. They are evidenced as atypical prosody production, emotion recognition and apraxia, among others communication deficits. This work tackle with the problem of the recognition of pathologies derived from these disorders in children, based on the acoustic analysis of speech. Specifically, the task consists of the diagnosis of normality (typically developing children) or three different pathologies. We propose an evolutionary approach to the feature selection stage. It relies on the use of genetic algorithm to find the set of features that optimally represent the speech data for this classification task. The genetic algorithm uses a support vector machine in order to evaluate the solutions (each individual) during the search. The results showed that our methodology improves the baseline provided for the task. The obtained unweighted classification accuracy was 54.80% on the development set, which represents a relative improvement of 6%, and 55.41% on test set. On the related task of binary classification between typical versus atypical developing condition, our approach achieved an unweighted classification accuracy of 92.66% on the test set.
自闭症相关语言障碍自动诊断的遗传包装方法
自闭症患者的广泛性发育障碍导致语言和社交障碍。它们表现为非典型韵律产生、情绪识别和失用症,以及其他沟通缺陷。这项工作与识别的问题,从这些疾病派生的病理儿童,基于语音的声学分析。具体来说,这项任务包括诊断正常(通常是发育中的儿童)或三种不同的病理。我们提出了一种特征选择阶段的进化方法。它依赖于使用遗传算法来找到最优地表示该分类任务的语音数据的特征集。遗传算法在搜索过程中使用支持向量机来评估解决方案(每个个体)。结果表明,我们的方法改进了为任务提供的基线。得到的未加权分类准确率在开发集上为54.80%,相对提高了6%,在测试集上为55.41%。在典型与非典型发育状况二分类的相关任务上,我们的方法在测试集上实现了92.66%的未加权分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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