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Automatic Algorithm for identifying Abnormal Lung Sounds through the Recognizing of Sound Patterns

机译:通过声音模式识别识别异常肺声音的自动算法

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Acute Respiratory Infections are caused by viruses, bacteria and fungi. The most serious is pneumonia, which is the leading cause of death in children and older adults around the world. Approximately 60.2% of cases of pneumonia in Peru from 2008–2016 are in children under 5 years old. For this reason, the prevention of pulmonary diseases is fundamental in the goal of reducing infant mortality in Peru. One of the main associated problems is the lack of medical personnel and equipment in remote areas of poor resources that is exposed to low temperatures, such as in Puno, Arequipa or Huancavelica. This study develops an algorithm to differentiate between normal and abnormal lung sounds, for this purpose a sample of 11 sounds was used. From each signal, 14 characteristics of the spectral signal that is determined by the lung sound were extracted. The developed model obtained an F value of 0.038, which shows that it is statistically significant. The R-square is 0.9744 which indicates that the model explains 97.44% of the variance of the dependent variable which is the abnormality in lung sounds based on the independent variables ASC, ZCR, normalized Slope, Kurtosis, centroid and spectral energy of the analyzed audio signal. This study is a proof of concept that provides interesting findings about the correct classification of lung sounds, in order to develop a platform to assess the risk of pneumonia at first for the start of a treatment at the correct time with the aim to reduce the mortality of pneumonia especially in children. Our group continues working for preventive health, reducing the gaps in health for favors to the most vulnerable population.
机译:急性呼吸道感染是由病毒,细菌和真菌引起的。最严重的是肺炎,这是世界各地儿童和老年人死亡的主要原因。从2008年至2016年,秘鲁约有60.2%的肺炎病例是5岁以下的儿童。因此,在降低秘鲁婴儿死亡率的目标中,预防肺部疾病至关重要。与之相关的主要问题之一是在普诺,阿雷基帕或万卡韦利察等暴露于低温的资源贫乏的偏远地区缺乏医务人员和设备。这项研究开发了一种区分正常和异常肺音的算法,为此,使用了11种声音的样本。从每个信号中,提取出由肺声确定的频谱信号的14个特征。所开发的模型的F值为0.038,这表明它具有统计学意义。 R平方为0.9744,表示该模型基于独立变量ASC,ZCR,归一化的斜率,峰度,质心和频谱能量的自变量,解释了因变量的97.44%的变化(即肺音异常)信号。这项研究是一种概念验证,可提供有关肺音正确分类的有趣发现,以建立一个平台,在正确的时间开始治疗时首先评估肺炎的风险,从而降低死亡率肺炎,尤其是儿童。我们的小组继续致力于预防性健康,减少了健康方面的差距,以帮助最脆弱的人群。

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