论文标题

忠实的学习和确定的肺结诊断数据

Faithful learning with sure data for lung nodule diagnosis

论文作者

Zhang, Hanxiao, Chen, Liang, Gu, Xiao, Zhang, Minghui, Qin, Yulei, Yao, Feng, Wang, Zhexin, Gu, Yun, Yang, Guang-Zhong

论文摘要

深度学习的最新演变证明了其对基于CT的肺结节分类的价值。当前的大多数技术是本质上是黑盒系统,在临床实践中遇到了两个概括性问题。首先,良性恶性歧视通常由人类观察者评估,而没有病理学水平的病理诊断。我们将这些数据称为“不确定数据”。其次,分类器不一定会在学习过程中获得可靠的结节功能,以稳定学习和通过补丁级标签进行稳定的预测。在这项研究中,我们构建了一个具有病理确认标签的确定数据集,并提出了一个协作学习框架,以通过结节细分和恶性分数回归进行整合,以促进结节分类。损失函数旨在通过引入用结节分段图引入可解释性约束来学习可靠的功能。此外,基于反映机器和专家的理解的模型推断结果,我们探索了一种新的结节分析方法,用于类似的历史结节检索和可解释的诊断。详细的实验结果表明,我们的方法有益于提高性能,再加上忠实的肺癌预测模型推理。广泛的交叉评估结果进一步说明了在肺结节分类中基于深度学习方法的不确定数据的效果。

Recent evolution in deep learning has proven its value for CT-based lung nodule classification. Most current techniques are intrinsically black-box systems, suffering from two generalizability issues in clinical practice. First, benign-malignant discrimination is often assessed by human observers without pathologic diagnoses at the nodule level. We termed these data as "unsure data". Second, a classifier does not necessarily acquire reliable nodule features for stable learning and robust prediction with patch-level labels during learning. In this study, we construct a sure dataset with pathologically-confirmed labels and propose a collaborative learning framework to facilitate sure nodule classification by integrating unsure data knowledge through nodule segmentation and malignancy score regression. A loss function is designed to learn reliable features by introducing interpretability constraints regulated with nodule segmentation maps. Furthermore, based on model inference results that reflect the understanding from both machine and experts, we explore a new nodule analysis method for similar historical nodule retrieval and interpretable diagnosis. Detailed experimental results demonstrate that our approach is beneficial for achieving improved performance coupled with faithful model reasoning for lung cancer prediction. Extensive cross-evaluation results further illustrate the effect of unsure data for deep-learning-based methods in lung nodule classification.

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