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Performance Metrics Analysis of Adaptive threshold Empirical Mode Decomposition Denoising method for suppression of noise in Lung sounds

机译:自适应阈值实证分解去除方法抑制肺部噪声的性能度量分析

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Chest auscultation is a non-invasive and widely used tool for the detection of pulmonary disease. Though it is a powerful method of pulmonary function test, it relics challenges in different issues that bound its diagnostic ability. Mainly in motion artifacts, other environmental noise, and heart sound interference, hence contaminates the original content of the lung sound. This study proposes an adaptive threshold Empirical Mode Decomposition (aEMD) technique to denoise the lung sound signals thus improving the signal quality for the detection of respiratory pathologies. The proposed scheme is refined to offset maximum noise suppression against preserving the reliability of the lung sound signal. With this algorithm, the maximum Signal to Noise ratio (SNR) of 43.89 dB, Correlation Coefficient of 0.995, and minimum Root Mean Square Error (RMSE) of 0.00122 is achieved. Further, it can be implemented in real-time to assist medical experts doctors to make clear interpretations of the respiratory sound-related disorder.
机译:胸部听诊是一种非侵入性和广泛使用的工具,用于检测肺部疾病。虽然它是一种强大的肺功能测试方法,但它在涉及其诊断能力的不同问题中挑战挑战。主要在运动伪影,其他环境噪声和心脏声音干扰,因此污染了肺部原始内容。本研究提出了一种自适应阈值经验模式分解(AEMD)技术,用于去噪肺部声音信号,从而提高了检测呼吸道理的信号质量。所提出的方案精制以抵消最大噪声抑制,防止保留肺部声音信号的可靠性。利用该算法,实现了43.89dB的最大信噪比(SNR),达到0.995的相关系数和0.00122的最小根均线误差(RMSE)。此外,它可以实时实施,以帮助医疗专家医生对呼吸声有关疾病进行清晰的解释。

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