Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, 21073, Hamburg, Germany.
Jung Diagnostics GmbH, 22335, Hamburg, Germany.
Sci Rep. 2023 Jun 21;13(1):10120. doi: 10.1038/s41598-023-37270-2.
Lung cancer is a serious disease responsible for millions of deaths every year. Early stages of lung cancer can be manifested in pulmonary lung nodules. To assist radiologists in reducing the number of overseen nodules and to increase the detection accuracy in general, automatic detection algorithms have been proposed. Particularly, deep learning methods are promising. However, obtaining clinically relevant results remains challenging. While a variety of approaches have been proposed for general purpose object detection, these are typically evaluated on benchmark data sets. Achieving competitive performance for specific real-world problems like lung nodule detection typically requires careful analysis of the problem at hand and the selection and tuning of suitable deep learning models. We present a systematic comparison of state-of-the-art object detection algorithms for the task of lung nodule detection. In this regard, we address the critical aspect of class imbalance and and demonstrate a data augmentation approach as well as transfer learning to boost performance. We illustrate how this analysis and a combination of multiple architectures results in state-of-the-art performance for lung nodule detection, which is demonstrated by the proposed model winning the detection track of the Node21 competition. The code for our approach is available at https://github.com/FinnBehrendt/node21-submit.
肺癌是一种严重的疾病,每年导致数百万人死亡。肺癌的早期阶段可能表现为肺部肺结节。为了帮助放射科医生减少监督结节的数量,并提高整体检测准确性,已经提出了自动检测算法。特别是,深度学习方法很有前途。然而,获得临床相关的结果仍然具有挑战性。虽然已经提出了各种用于通用目标检测的方法,但这些方法通常在基准数据集上进行评估。要在像肺结节检测这样的特定实际问题上实现有竞争力的性能,通常需要仔细分析手头的问题,并选择和调整合适的深度学习模型。我们对用于肺结节检测任务的最先进的目标检测算法进行了系统比较。在这方面,我们解决了类不平衡的关键方面,并展示了一种数据增强方法以及迁移学习来提高性能。我们说明了如何通过分析和组合多种架构来实现肺结节检测的最新性能,这一点通过所提出的模型在 Node21 竞赛的检测赛道上获胜得到了证明。我们方法的代码可在 https://github.com/FinnBehrendt/node21-submit 获得。