Sinha Rakesh Kumar, Aggarwal Yogender, Das Barda Nand
Department of Biomedical Instrumentation, Birla Institute of Technology, Mesra, Ranchi, Jharkhand 835215, India.
J Med Syst. 2007 Jun;31(3):205-9. doi: 10.1007/s10916-007-9056-1.
The phonocardiograph (PCG) can provide a noninvasive diagnostic ability to the clinicians and technicians to compare the heart acoustic signal obtained from normal and that of pathological heart (cardiac patient). This instrument was connected to the computer through the analog to digital (A/D) converter. The digital data stored for the normal and diseased (mitral valve regurgitation) heart in the computer were decomposed through the Coifman 4th order wavelet kernel. The decomposed phonocardiographic (PCG) data were tested by backpropagation artificial neural network (ANN). The network was containing 64 nodes in the input layer, weighted from the decomposed components of the PCG in the input layer, 16 nodes in the hidden layer and an output node. The ANN was found effective in differentiating the wavelet components of the PCG from mitral valve regurgitation confirmed person (93%) to normal subjects (98%) with an overall performance of 95.5%. This system can also be used to detect the defects in cardiac valves especially, and other several cardiac disorders in general.
心音图仪(PCG)能够为临床医生和技术人员提供一种非侵入性诊断能力,用于比较从正常心脏和病理心脏(心脏病患者)获取的心脏声学信号。该仪器通过模数(A/D)转换器连接到计算机。计算机中存储的正常心脏和患病(二尖瓣反流)心脏的数字数据通过Coifman 4阶小波核进行分解。分解后的心音图(PCG)数据由反向传播人工神经网络(ANN)进行测试。该网络在输入层包含64个节点,由输入层中PCG的分解成分加权,在隐藏层有16个节点和一个输出节点。结果发现,ANN能够有效地区分二尖瓣反流确诊患者(93%)和正常受试者(98%)的PCG小波成分,总体性能为95.5%。该系统尤其还可用于检测心脏瓣膜缺陷以及一般的其他几种心脏疾病。