首页> 外文会议>Electrical and Computer Engineering, 2009. CCECE '09 >Principal component analysis based backpropagation algorithm for diagnosis of peripheral arterial occlusive diseases
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Principal component analysis based backpropagation algorithm for diagnosis of peripheral arterial occlusive diseases

机译:基于主成分分析的BP算法在外周动脉闭塞性疾病诊断中的应用

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Impedance cardio-vasography (ICVG) serves as a non-invasive screening procedure prior to invasive and expensive angiographic studies. Parameters like Blood Flow Index (BFI) and Differential Pulse Arrival Time (DPAT) at different locations in both lower limbs are computed from impedance measurements on the Impedance Cardiograph. A Backpropagation neural network is developed which uses these parameters for the diagnosis of peripheral vascular diseases such as Leriche's syndrome. The target outputs at the various locations are provided to the network with the help of a medical expert. The paper proposes the use of principal component analysis (PCA) based backpropagation network where the variance in the data is captured in the first seven principal components out of a set of fourteen features. Such a backpropagation algorithm with three hidden layers provides the least mean squared error for the network parameters. The results demonstrated that the elimination of correlated information in the training data by way of the PCA method improved the networks estimation performance. The cases of arterial Narrowing were predicted accurately with PCA based technique than with the traditional backpropagation Technique. The diagnostic performance of the neural network to discriminate the diseased cases from normal cases, evaluated using Receiver Operating Characteristic (ROC) analysis show a sensitivity of 95.5% and specificity of 97.36% an improvement over the performance of the conventional Backpropagation algorithm. The proposed approach is a potential tool for diagnosis and prediction for non-experts and clinicians.
机译:阻抗性心血管造影(ICVG)可作为有创和昂贵的血管造影研究之前的一种非侵入性筛查程序。根据阻抗心电图仪上的阻抗测量值,可以计算出下肢不同位置的血流指数(BFI)和微分脉冲到达时间(DPAT)等参数。开发了一种反向传播神经网络,该网络使用这些参数来诊断周围血管疾病(如莱切氏综合症)。在医疗专家的帮助下,将各个位置的目标输出提供给网络。本文提出使用基于主成分分析(PCA)的反向传播网络,在该网络中,从一组14个特征中的前七个主成分中捕获数据的差异。具有三个隐藏层的这种反向传播算法为网络参数提供了最小的均方误差。结果表明,通过PCA方法消除训练数据中的相关信息可以提高网络估计性能。与传统的反向传播技术相比,基于PCA的技术可准确预测动脉狭窄的情况。使用接收器工作特征(ROC)分析评估的神经网络将疾病病例与正常病例区分开来的诊断性能显示,其灵敏度为95.5%,特异性为97.36%,比常规反向传播算法的性能有所提高。所提出的方法是用于非专家和临床医生的诊断和预测的潜在工具。

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