Khosravan Naji, Bagci Ulas
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:710-713. doi: 10.1109/EMBC.2018.8512294.
Early detection of lung nodules is of great importance in lung cancer screening. Existing research recognizes the critical role played by CAD systems in early detection and diagnosis of lung nodules. However, many CAD systems, which are used as cancer detection tools, produce a lot of false positives (FP) and require a further FP reduction step. Furthermore, guidelines for early diagnosis and treatment of lung cancer are consist of different shape and volume measurements of abnormalities. Segmentation is at the heart of our understanding of nodules morphology making it a major area of interest within the field of computer aided diagnosis systems. This study set out to test the hypothesis that joint learning of false positive (FP) nodule reduction and nodule segmentation can improve the computer aided diagnosis (CAD) systems' performance on both tasks. To support this hypothesis we propose a 3D deep multi-task CNN to tackle these two problems jointly. We tested our system on LUNA16 dataset and achieved an average dice similarity coefficient (DSC) of 91% as segmentation accuracy and a score of nearly 92% for FP reduction. As a proof of our hypothesis, we showed improvements of segmentation and FP reduction tasks over two baselines. Our results support that joint training of these two tasks through a multi-task learning approach improves system performance on both. We also showed that a semi-supervised approach can be used to overcome the limitation of lack of labeled data for the 3D segmentation task.
早期发现肺结节在肺癌筛查中至关重要。现有研究认识到计算机辅助检测(CAD)系统在肺结节早期检测和诊断中所起的关键作用。然而,许多用作癌症检测工具的CAD系统会产生大量假阳性(FP),需要进一步进行假阳性降低步骤。此外,肺癌早期诊断和治疗指南包括对异常情况的不同形状和体积测量。分割是我们理解结节形态的核心,使其成为计算机辅助诊断系统领域的一个主要研究兴趣点。本研究旨在检验这样一个假设,即联合学习假阳性(FP)结节减少和结节分割可以提高计算机辅助诊断(CAD)系统在这两项任务上的性能。为支持这一假设,我们提出了一种3D深度多任务卷积神经网络(CNN)来联合解决这两个问题。我们在LUNA16数据集上测试了我们的系统,分割准确率平均骰子相似系数(DSC)达到91%,假阳性降低得分接近92%。作为我们假设的证明,我们展示了在两个基线之上分割和假阳性降低任务的改进。我们的结果支持通过多任务学习方法对这两项任务进行联合训练可提高系统在这两方面的性能。我们还表明,可以使用半监督方法来克服3D分割任务中缺乏标记数据的局限性。