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Optimum Features Computation Using Genetic Algorithm for Wet and Dry Cough Classification

机译:基于遗传算法的干咳分类最优特征计算

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The nature of cough sound has been considered as one of the important diagnostic tools. For example, wet cough in children may represent lower respiratory tract infections. However, cough classification is not an easy task. It cannot be done easily by community health workers. Therefore, an automated method is needed to help them in classifying the types of cough. Several features extraction methods have been proposed for classifying wet/dry cough with different performances. Using all those features have consequences increasing the computational cost. In this work, we develop a method to select the optimum feature set for classifying wet and dry cough in children. We recorded cough sound from thirty children younger than four years diagnosed with respiratory tract infections. Then, sound features such as Mel-frequency cepstral coefficients, energy, non-Gausianity index, zero crossing, linear predictive coding and pitch were extracted. We implemented genetic algorithm to select the optimum features and artificial neural networks to classify wet/dry cough. The results show that our proposed method could reduce around twenty-five percent of the features used in the computation while keeping the accuracy, sensitivity and specificity higher than 96%. The results are much higher compared to the previous studies which involving pediatric subjects. This significant achievement supports the development of in situ respiratory disease screening in distant areas.
机译:咳嗽声的性质已被认为是重要的诊断工具之一。例如,儿童湿咳可能代表下呼吸道感染。但是,咳嗽分类并非易事。社区卫生工作者不能轻易做到这一点。因此,需要一种自动化的方法来帮助他们对咳嗽的类型进行分类。已经提出了几种特征提取方法来对具有不同性能的干咳/干咳进行分类。使用所有这些功能会增加计算成本。在这项工作中,我们开发了一种方法来选择最佳功能集,以对儿童的干咳和干咳进行分类。我们记录了三十名四岁以下被诊断患有呼吸道感染的儿童的咳嗽声。然后,提取诸如梅尔频率倒谱系数,能量,非高斯指数,零交叉,线性预测编码和音调之类的声音特征。我们实施遗传算法以选择最佳特征,并采用人工神经网络对干咳和干咳进行分类。结果表明,我们提出的方法可以将计算中使用的特征减少约25%,同时将准确性,灵敏度和特异性保持在96%以上。与先前涉及儿科受试者的研究相比,该结果要高得多。这一重大成就支持了在偏远地区进行原位呼吸系统疾病筛查的发展。

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