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Respiratory Diseases discrimination based on acoustic lung signals and neural networks

机译:基于声学肺信号和神经网络的呼吸系统歧视

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Some studies show that Chronic Respiratory Diseases (CRD) are a critical problem of health public in developing countries. Especially, diagnosis can be a challenge for the medical staff when the resources are limited. In this way, new tools can contribute to clinicians and physicians in diagnostic tasks, supporting with additional information. In this case, lung acoustic signal was acquired and processed by Mel Frequency Cepstral Coefficients (MFCC) to obtain representative parameters for Artificial Neural Network (ANN) training. Experiments are presented, using different effects of distortion coding and transmission errors for five channels. Results show that the use of ANN maintains the results for classification despite the differences between channels. At same time, classification rate drop 10% as maximum, when these channel effects were analysed, compared with no channel distortion.
机译:一些研究表明,慢性呼吸系统疾病(CRD)是发展中国家卫生公众的关键问题。特别是,当资源有限时,诊断可能是医务人员的挑战。通过这种方式,新工具可以为诊断任务中的临床医生和医生提供贡献,并提供附加信息。在这种情况下,通过MEL频率谱系数(MFCC)获取和处理肺部声信号,以获得人工神经网络(ANN)训练的代表参数。提出了实验,使用了五个通道的不同效果和传输误差的不同效果。结果表明,尽管渠道之间存在差异,但ANN的使用保持了分类结果。同时,当分析这些信道效应时,分类率降低10%,而这些频道效应与无通道失真相比。

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