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Combining Neural Network and Genetic Algorithm for Prediction of Lung Sounds

机译:结合神经网络和遗传算法预测肺音

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摘要

Recognition of lung sounds is an important goal in pulmonary medicine. In this work, we present a study for neural networks–genetic algorithm approach intended to aid in lung sound classification. Lung sound was captured from the chest wall of The subjects with different pulmonary diseases and also from the healthy subjects. Sound intervals with duration of 15–20 s were sampled from subjects. From each interval, full breath cycles were selected. Of each selected breath cycle, a 256-point Fourier Power Spectrum Density (PSD) was calculated. Total of 129 data values calculated by the spectral analysis are selected by genetic algorithm and applied to neural network. Multilayer perceptron (MLP) neural network employing backpropagation training algorithm was used to predict the presence or absence of adventitious sounds (wheeze and crackle). We used genetic algorithms to search for optimal structure and training parameters of neural network for a better predicting of lung sounds. This application resulted in designing of optimum network structure and, hence reducing the processing load and time.
机译:肺音识别是肺医学的重要目标。在这项工作中,我们对神经网络-遗传算法方法进行了研究,旨在帮助进行肺音分类。从患有不同肺部疾病的受试者的胸壁和健康受试者中捕获了肺音。从对象中采样了持续时间为15–20 s的声音间隔。从每个间隔中选择全呼吸周期。在每个选定的呼吸周期中,计算出256点傅立叶功率谱密度(PSD)。通过遗传算法选择光谱分析计算出的129个数据值,并将其应用于神经网络。采用反向传播训练算法的多层感知器(MLP)神经网络用于预测不定声音(喘鸣声和crack啪声)的存在与否。我们使用遗传算法搜索神经网络的最佳结构和训练参数,以更好地预测肺音。此应用程序导致了最佳网络结构的设计,从而减少了处理负荷和时间。

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