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引用次数: 26
摘要
胸部x线图像分析是评估不同病理所需的常见医学影像学检查。为分析提供自动化解决方案有助于减少工作量、提高效率并减少潜在的读取错误。为了解决胸部x线图像的分类和检测问题,已经提出了许多方法。然而,基于区域的卷积神经网络(CNN)的应用目前是有限的。因此,我们提出了一种基于Faster region - cnn模型将胸部x线图像分为病理或正常两类的方法。该模型利用区域建议网络(RPN)生成区域建议并进行图像分类。通过应用该模型,我们可以潜在地实现两个关键目标:分类的高置信度和减少计算时间。结果表明,与随机胸片图像上的医学代表相比,所应用的模型取得了更高的精度。该分类模型在通过实时网络摄像头捕获的发现胸部x线图像和正常胸部x线图像之间的分类也相当有效。
CHEST X-RAY IMAGE CLASSIFICATION USING FASTER R-CNN
Chest x-ray image analysis is the common medical imaging exam needed to assess different pathologies. Having an automated solution for the analysis can contribute to minimizing the workloads, improve efficiency and reduce the potential of reading errors. Many methods have been proposed to address chest x-ray image classification and detection. However, the application of regional-based convolutional neural networks (CNN) is currently limited. Thus, we propose an approach to classify chest x-ray images into either one of two categories, pathological or normal based on Faster Regional-CNN model. This model utilizes Region Proposal Network (RPN) to generate region proposals and perform image classification. By applying this model, we can potentially achieve two key goals, high confidence in the classification and reducing the computation time. The results show the applied model achieved higher accuracy as compared to the medical representatives on the random chest x-ray images. The classification model is also reasonably effective in classifying between finding and normal chest x-ray image captured through a live webcam.