一种用于胸部x线异常检测的先进卷积神经网络

Fady Tawfik, Yi Gu
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引用次数: 0

摘要

在医学影像诊断领域,医生在胸部x光片诊断胸部疾病时需要宝贵的第二意见。现有的解释胸部x线图像的方法将它们分类到一个发现列表中,而不指定它们在图像上的位置,导致无法解释的结果。卷积神经网络(CNN)是一种深度学习技术,在图像分类和特征检测方面显示出较高的准确性,是目前胸部疾病诊断的热门模型。在这项工作中,提出了一种先进的CNN模型来识别胸部x光片中的14个发现。对于每个测试图像,预期的CNN模型应该为所有发现预测一个边界框和类别。分类范围从0到13,每个数字对应数据集中的一种特定疾病。结果表明,该模型在x射线图像分类和标记方面的准确率达到94%,优于CapsNet模型。
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An Advanced Convolutional Neural Network for Detecting Chest X-ray Abnormalities
In the field of medical images diagnoses, doctors need a valuable second opinion when diagnosing thoracic diseases in chest X-rays. Existing methods of interpreting chest X-ray images classify them into a list of findings without specifying their locations on the images, resulting in uninterpretable results. Convolutional Neural Network (CNN) is a popular model for thoracic diseases diagnoses, which is a deep learning technique that has shown high accuracy in image classification and feature detection. In this work, an advanced CNN model is proposed to identify 14 findings in chest X-rays. For each test image, the intended CNN model should predict a bounding box and class for all findings. The classes range from 0 to 13, with each number corresponding to a specific disease in the dataset. The results have demonstrated that the proposed model outperforms the CapsNet model with an accuracy of 94% in X-ray images classification and labeling.
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