Concordia Institute for Information Systems Engineering, Montreal, QC, Canada.
Department of Medical Imaging, Sunnybrook Health Sciences Centre, University of Toronto, Toronto, ON, Canada.
Sci Rep. 2020 May 14;10(1):7948. doi: 10.1038/s41598-020-64824-5.
Despite the advances in automatic lung cancer malignancy prediction, achieving high accuracy remains challenging. Existing solutions are mostly based on Convolutional Neural Networks (CNNs), which require a large amount of training data. Most of the developed CNN models are based only on the main nodule region, without considering the surrounding tissues. Obtaining high sensitivity is challenging with lung nodule malignancy prediction. Moreover, the interpretability of the proposed techniques should be a consideration when the end goal is to utilize the model in a clinical setting. Capsule networks (CapsNets) are new and revolutionary machine learning architectures proposed to overcome shortcomings of CNNs. Capitalizing on the success of CapsNet in biomedical domains, we propose a novel model for lung tumor malignancy prediction. The proposed framework, referred to as the 3D Multi-scale Capsule Network (3D-MCN), is uniquely designed to benefit from: (i) 3D inputs, providing information about the nodule in 3D; (ii) Multi-scale input, capturing the nodule's local features, as well as the characteristics of the surrounding tissues, and; (iii) CapsNet-based design, being capable of dealing with a small number of training samples. The proposed 3D-MCN architecture predicted lung nodule malignancy with a high accuracy of 93.12%, sensitivity of 94.94%, area under the curve (AUC) of 0.9641, and specificity of 90% when tested on the LIDC-IDRI dataset. When classifying patients as having a malignant condition (i.e., at least one malignant nodule is detected) or not, the proposed model achieved an accuracy of 83%, and a sensitivity and specificity of 84% and 81% respectively.
尽管在自动肺癌恶性预测方面取得了进展,但要实现高精度仍然具有挑战性。现有的解决方案大多基于卷积神经网络(CNN),而这些方法需要大量的训练数据。大多数开发的 CNN 模型仅基于主结节区域,而不考虑周围组织。在进行肺结节恶性预测时,提高敏感性具有挑战性。此外,在最终目标是在临床环境中使用模型时,应该考虑所提出技术的可解释性。胶囊网络(CapsNets)是一种新的、革命性的机器学习架构,旨在克服 CNN 的缺点。利用 CapsNet 在生物医学领域的成功,我们提出了一种用于肺肿瘤恶性预测的新模型。所提出的框架称为 3D 多尺度胶囊网络(3D-MCN),其独特设计旨在受益于:(i)3D 输入,提供有关结节的 3D 信息;(ii)多尺度输入,捕获结节的局部特征以及周围组织的特征;(iii)基于 CapsNet 的设计,能够处理少量训练样本。在所提出的 3D-MCN 架构中,当在 LIDC-IDRI 数据集上进行测试时,预测肺结节恶性的准确率为 93.12%,灵敏度为 94.94%,曲线下面积(AUC)为 0.9641,特异性为 90%。当将患者分类为恶性(即至少检测到一个恶性结节)或非恶性时,所提出的模型的准确率为 83%,灵敏度和特异性分别为 84%和 81%。