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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Computer-Aided Diagnosis (CAD) of Pulmonary Nodule of Thoracic CT Image Using Transfer Learning
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Computer-Aided Diagnosis (CAD) of Pulmonary Nodule of Thoracic CT Image Using Transfer Learning

机译:转移学习的胸腔CT图像肺结核的计算机辅助诊断(CAD)

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摘要

Computer-aided diagnosis (CAD) has already been widely used in medical image processing. We recently make another trial to implement convolutional neural network (CNN) on the classification of pulmonary nodules of thoracic CT images. The biggest challenge in medical image classification with the help of CNN is the difficulty of acquiring enough samples, and overfitting is a common problem when there are not enough images for training. Transfer learning has been verified as reasonable in dealing with such problems with an acceptable loss value. We use the classic LeNet-5 model to classify pulmonary nodules of thoracic CT images, including benign and malignant pulmonary nodules, and different malignancies of the malignant nodules. The CT images are obtained from Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI) where both pulmonary nodule scanning and nodule annotations are available. These images are labeled and stored in a medical images knowledge base (KB), which is designed and implemented in our previous work. We implement the 10-folder cross validation (CV) to testify the robustness of the classification model we trained. The result demonstrates that the transfer learning of the LeNet-5 is good for classifying pulmonary nodules of thoracic CT images, and the average values of Top-1 accuracy are 97.041% and 96.685% respectively. We believe that our work is beneficial and has potential for practical diagnosis of lung nodules.
机译:计算机辅助诊断(CAD)已经广泛用于医学图像处理。我们最近进行了另一项试验,以实施卷积神经网络(CNN)对胸部CT图像的肺结核的分类。在CNN的帮助下,医学图像分类中的最大挑战是难以获取足够的样品,并且当没有足够的图像进行训练时,过度装备是一个常见问题。转移学习已被验证合理,以便处理可接受的损失价值。我们使用经典的Lenet-5模型来分类胸部CT图像的肺结节,包括良性和恶性肺结核,以及恶性结节的不同恶性肿瘤。 CT图像是从肺图像数据库联盟和图像数据库资源计划(LIDC-IDRI)获得的,其中可以获得肺结核扫描和结节注释。这些图像被标记并存储在医学图像知识库(KB)中,该基础(KB)是在我们以前的工作中设计和实现的。我们实现了10折文件串验证(CV),以证明我们培训的分类模型的稳健性。结果表明,LENET-5的转移学习对于分类胸部CT图像的肺结节有益,并且前1个精度的平均值分别为97.041%和96.685%。我们相信,我们的作品是有益的,并且具有肺结核的实际诊断潜力。

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