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Computer-aided classification of lung nodules on computed tomography images via deep learning technique

机译:通过深度学习技术对计算机断层扫描图像上的肺结节进行计算机辅助分类

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摘要

Lung cancer has a poor prognosis when not diagnosed early and unresectable lesions are present. The management of small lung nodules noted on computed tomography scan is controversial due to uncertain tumor characteristics. A conventional computer-aided diagnosis (CAD) scheme requires several image processing and pattern recognition steps to accomplish a quantitative tumor differentiation result. In such an ad hoc image analysis pipeline, every step depends heavily on the performance of the previous step. Accordingly, tuning of classification performance in a conventional CAD scheme is very complicated and arduous. Deep learning techniques, on the other hand, have the intrinsic advantage of an automatic exploitation feature and tuning of performance in a seamless fashion. In this study, we attempted to simplify the image analysis pipeline of conventional CAD with deep learning techniques. Specifically, we introduced models of a deep belief network and a convolutional neural network in the context of nodule classification in computed tomography images. Two baseline methods with feature computing steps were implemented for comparison. The experimental results suggest that deep learning methods could achieve better discriminative results and hold promise in the CAD application domain.
机译:如果不及早诊断出无法切除的病变,则肺癌的预后较差。由于不确定的肿瘤特征,在计算机断层扫描上发现的小肺结节的处理存在争议。常规的计算机辅助诊断(CAD)方案需要几个图像处理和模式识别步骤才能完成定量的肿瘤分化结果。在这样的临时图像分析管道中,每个步骤都在很大程度上取决于上一步的性能。因此,在传统的CAD方案中对分类性能的调整非常复杂且艰巨。另一方面,深度学习技术具有自动利用功能和无缝调整性能的内在优势。在这项研究中,我们尝试通过深度学习技术简化常规CAD的图像分析流程。具体来说,我们在计算机断层扫描图像中的结节分类的背景下介绍了深度置信网络和卷积神经网络的模型。实施了两种具有特征计算步骤的基线方法进行比较。实验结果表明,深度学习方法可以实现更好的判别效果,并在CAD应用领域具有广阔的前景。

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