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Detection of Obstructive Respiratory Abnormality Using Flow–Volume Spirometry and Radial Basis Function Neural Networks

机译:流量肺量测定和径向基函数神经网络检测阻塞性呼吸道异常

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摘要

In this work detection of pulmonary abnormalities carried out using flow-volume spirometer and Radial Basis Function Neural Network (RBFNN) is presented. The spirometric data were obtained from adult volunteers (N = 100) with standard recording protocol. The pressure and resistance parameters were derived using the theoretical approximation of the activation function representing pressure–volume relationship of the lung. The pressure–time and resistance–expiration volume curves were obtained during maximum expiration. The derived values together with spirometric data were used for classification of normal and obstructive abnormality using RBFNN. The results revealed that the proposed method is useful for detecting the pulmonary functions into normal and obstructive conditions. RBFNN was found to be effective in differentiating the pulmonary data and it was confirmed by measuring accuracy, sensitivity, specificity and adjusted accuracy. As spirometry still remains central in the observations of pulmonary function abnormalities these studies seems to be clinically relevant.
机译:在这项工作中,介绍了使用流量肺活量计和径向基函数神经网络(RBFNN)进行的肺部异常检测。肺活量测定数据是使用标准记录方案从成年志愿者(N = 100)获得的。压力和阻力参数是使用代表肺的压力-体积关系的激活函数的理论近似值得出的。在最大呼气期间获得了压力-时间和阻力-呼气体积曲线。得出的值与肺活量测定数据一起使用RBFNN对正常和阻塞性异常进行分类。结果表明,该方法可用于检测正常和阻塞状态下的肺功能。发现RBFNN在区分肺部数据方面是有效的,并且通过测量准确性,敏感性,特异性和调整的准确性得到了证实。由于肺活量测定法仍然是肺功能异常观察的中心,这些研究似乎与临床相关。

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