Comparison of Supervised-Learning Models and Auditory Discrimination of Infant Cries for the Early Detection of Developmental Disorders / Vergleich von Supervised-Learning Klassifikationsmodellen und menschlicher auditiver Diskriminationsfähigkeit zur Unterscheidung von Säuglingsschreien mit kongeni

Tanja Fuhr, Henning Reetz, Carla Wegener
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Abstract

Abstract Infant cry classification can be performed in two ways: computational classification of cries or auditory discrimination by human listeners. This article compares both approaches. An auditory listening experiment was performed to examine if various listener groups (naive listeners, parents, nurses/midwives and therapists) were able to distinguish auditorily between healthy and pathological cries as well as to differentiate various pathologies from each other. Listeners were trained in hearing cries of healthy infants and cries of infants suffering from cleft-lip-and-palate, hearing impairment, laryngomalacia, asphyxia and brain damage. After training, a listening experiment was performed by allocating 18 infant cries to the cry groups. Multiple supervised-learning classifications models were calculated on the base of the cries’ acoustic properties. The accuracy of the models was compared to the accuracy of the human listeners. With a Kappa value of 0.491, listeners allocated the cries to the healthy and the five pathological groups with moderate performance. With a sensitivity of 0.64 and a specificity of 0.89, listeners were able to identify that a cry is a pathological one with higher confidence than separating between the single pathologies. Generalized linear mixed models found no significant differences between the classification accuracy of the listener groups. Significant differences between the pathological cry types were found. Supervised-learning classification models performed significantly better than the human listeners in classifying infant cries. The models reached an overall Kappa value of up to 0.837.
"超级威捷学习模式"和"我的孩子"组合那些发展中国家早探测器的孩子
婴儿哭声分类可以通过两种方式进行:哭声的计算分类或人类听者的听觉辨别。本文比较了这两种方法。我们进行了一项听觉聆听实验,以检验不同的倾听者群体(天真的倾听者、父母、护士/助产士和治疗师)是否能够在听觉上区分健康和病理的哭声,以及区分不同的病理哭声。听众接受了倾听健康婴儿和患有唇腭裂、听力障碍、喉软化、窒息和脑损伤婴儿哭声的训练。训练后,将18个婴儿哭声分配到哭泣组,进行听力实验。基于叫声的声学特性,计算了多个监督学习分类模型。模型的准确性与人类听众的准确性进行了比较。Kappa值为0.491,听众将哭声分配给健康组和表现中等的5个病理组。通过0.64的灵敏度和0.89的特异性,听众能够比区分单一病理更有信心地识别出哭泣是一种病理。广义线性混合模型发现不同听众群体的分类准确率无显著差异。病理性哭泣类型之间存在显著差异。监督学习分类模型在婴儿哭声分类上的表现明显优于人类听者。模型总体Kappa值达到0.837。
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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