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Risk Stratification of Lung Nodules Using 3D CNN-Based Multi-task Learning

机译:基于3D CNN的多任务学习法对肺结节进行风险分层

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Risk stratification of lung nodules is a task of primary importance in lung cancer diagnosis. Any improvement in robust and accurate nodule characterization can assist in identifying cancer stage, prognosis, and improving treatment planning. In this study, we propose a 3D Convo-lutional Neural Network (CNN) based nodule characterization strategy. With a completely 3D approach, we utilize the volumetric information from a CT scan which would be otherwise lost in the conventional 2D CNN based approaches. In order to address the need for a large amount of training data for CNN, we resort to transfer learning to obtain highly discriminative features. Moreover, we also acquire the task dependent feature representation for six high-level nodule attributes and fuse this complementary information via a Multi-task learning (MTL) framework. Finally, we propose to incorporate potential disagreement among radiologists while scoring different nodule attributes in a graph regularized sparse multi-task learning. We evaluated our proposed approach on one of the largest publicly available lung nodule datasets comprising 1018 scans and obtained state-of-the-art results in regressing the malignancy scores.
机译:肺结节的风险分层是肺癌诊断中最重要的任务。鲁棒和准确的结节表征方面的任何改善都可以帮助确定癌症的分期,预后并改善治疗计划。在这项研究中,我们提出了一种基于3D卷积神经网络(CNN)的结节表征策略。借助完全3D方法,我们利用了来自CT扫描的体积信息,而这些信息在传统的基于2D CNN的方法中会丢失。为了满足CNN大量训练数据的需求,我们求助于转移学习以获得高度区分性的功能。此外,我们还获取了六个高级结节属性的任务相关特征表示,并通过多任务学习(MTL)框架融合了这些补充信息。最后,我们建议在图规则化的稀疏多任务学习中对不同的结节属性进行评分的同时,纳入放射科医生之间的潜在分歧。我们在包含1018次扫描的最大的公共肺结节数据集之一上评估了我们提出的方法,并获得了恶性评分回归的最新结果。

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