利用混合主成分分析和反向传播提高CADx系统精度

H. S. Harba, E. Harba, S. Hussein, M. Farttoos
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引用次数: 0

摘要

近年来,医学图像在各种疾病的诊断和检测中发挥了重要作用。医学成像可以提供一种直接可视化的手段,通过观察人体,注意到不同生物和物理参数相关的微小解剖变化和生物学过程。为了实现更准确、更可靠的诊断,目前已经建立了各种计算机辅助检测(CAD)和计算机辅助诊断(CADx)方法来帮助医学图像的解释。计算机辅助设计已成为诊断放射学和医学影像学的许多主要研究课题之一。本文研究了主成分分析与前馈-反向传播神经网络相结合对CAD系统检测精度的提高。这项工作研究了改进CAD系统的能力,以便使用低成本的诊断方法(如乳房x线照片或x射线)来检测异常。结果表明,利用主成分分析方法对训练数据中的相关细节进行约简,可以提高识别性能。通过识别分析,评价了神经网络对正常病例和癌变病例的诊断性能,显示出较高的检测准确率。所提出的方法可以被认为是一个潜在的工具,从x线和乳房x光图像诊断乳腺癌和预测非专家和临床医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving accuracy of CADx system by hybrid PCA and backpropagation
Medical images have recently played a significant role in the diagnosis and detection of various diseases. Medical imaging can provide a means of direct visualization to observe through the human body and notice the small anatomical change and biological processes associated by different biological and physical parameters. To achieve a more accurate and reliable diagnosis, nowadays, varieties of computer aided detection (CAD) and computer-aided diagnosis (CADx) approaches have been established to help interpretation of the medical images. The CAD has become among the many major research subjects in diagnostic radiology and medical imaging. In this work we study the improvement in accuracy of detection of CAD system when combined principal component analysis and feed forward back propagation neural network. This work has investigated the ability to improve the CAD system in order to use in detection abnormality even with low cost diagnosis methods (such as mammogram images or X-ray). The results show that the reduction of correlated details within the training data by using the PCA method can enhance the recognition performance. The performance of the neural network diagnostic to discriminate the normal cases from cancerous cases, evaluated by using recognition analysis show a high accuracy in detection. The proposed approach can be considered as a potential tool for diagnosis breast cancer from x-ray and mammography images and prediction for non-experts and clinicians.
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