一种新的肺结节CT图像多尺度扩张深度ResNet分类模型

Fenglian Li, Syed Nisar Yousaf Sherazi, Yan Zhang, Zelin Wu
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引用次数: 1

摘要

肺结节是肺癌的主要指征。放射科医生面临的主要挑战是在计算机断层扫描图像中诊断和识别恶性肿瘤。不同的肺癌治疗深度学习策略不断提高计算机辅助诊断系统的效率。传统的神经网络使用焦点层逐渐降低分辨率,但缺乏捕捉小但关键肺结节特征的能力。为了解决这一问题,我们提出了一种新的多尺度扩张深度ResNet (MsDdR)模型,该模型可以帮助区分肺结节的良恶性。在本模型中,我们对输入的CT图像应用不同的扩张率,即(3、5、7、9),以获得更多结节的相对信息。然后将图像传输到深度ResNet。此外,深度ResNet是通过融合残差学习和迁移学习来开发的,忽略了传统的图像处理,并携带了超过50层的ResNet结构。使用精度、特异性和AUC的几个评估矩阵分析了所提出模型的性能。使用公共可访问的肺图像数据库联盟数据集来评估实验中的性能。实验结果表明,该模型的准确率为91.26%,AUC为0.957。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new Multi-scale Dilated deep ResNet model for Classification of Lung Nodules in CT images
Lung nodules are the main indication of lung cancer. The main challenge for the radiologist is to diagnose and identify malignancies in computation tomography images. Different deep learning strategies for the treatment of lung cancer boost the efficiency of computer-aided diagnosis systems continually. Conventional neural networks use the focus layer to reduce resolution gradually but lack the ability to capture the features of small but critical pulmonary nodules. To handle this problem, we propose a new multi-scale dilated deep ResNet (MsDdR) model that helps classify lung nodules between benign and malignant. In this model, we apply different dilation rates, i.e. (3,5,7 and 9), on the input CT images to gain more relative information of the nodules. Then the images are transferred to the deep ResNet. Furthermore, deep ResNet is developed by merging residual learning with migrating learning by ignoring conventional image processing and by carrying over a 50 layers ResNet structure. The performance of the proposed model is analysed using several assessment matrices of accuracy, specificity, and AUC. The public accessible lung image database consortium dataset is used to evaluate the performance in the experiment. Experimental results prove the performance of the model with an accuracy of 91.26% and AUC 0.957.
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