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Automated noninvasive detection of coronary artery disease using wavelet-based neural networks

机译:基于小波神经网络的无创自动检测冠状动脉疾病

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This study examines the utility of neural networks for detecting coronary artery disease noninvasively by using clinical examination variables and extracting useful information from the diastolic heart sounds associated with coronary occlusions. It has been widely reported that coronary stenoses produce sounds due to the turbulent blood flow in these vessels. These complex and highly attenuated signals taken from recordings made in of soundproof room were detected and analysed to provide the feature set based on extrema representation of the fast wavelet transform coefficients. In addition, some physical examination variables such as sex, age, body weight, smoking condition, plus diastolic and systolic blood pressures were included in the feature vector. This feature vector was used as the input pattern to the neural network.
机译:这项研究通过使用临床检查变量并从与冠状动脉闭塞相关的舒张性心音中提取有用信息,来检验神经网络在无创检测冠状动脉疾病中的实用性。据广泛报道,由于这些血管中的血流紊乱,冠状动脉狭窄会发出声音。检测并分析这些从隔音室的录音中获取的复杂且高度衰减的信号,以基于快速小波变换系数的极值表示提供特征集。此外,特征向量中还包括一些身体检查变量,例如性别,年龄,体重,吸烟状况以及舒张压和收缩压。该特征向量被用作神经网络的输入模式。

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