Ni Yangfan, Xie Zhe, Zheng Dezhong, Yang Yuanyuan, Wang Weidong
Laboratory for Medical Imaging Informatics, Shanghai Institute of Technical Physics, Chinese Academy of Science, Shanghai, China.
Laboratory for Medical Imaging Informatics, University of Chinese Academy of Sciences, Beijing, China.
Quant Imaging Med Surg. 2022 Jan;12(1):292-309. doi: 10.21037/qims-21-19.
Accurate segmentation of pulmonary nodules is important for image-driven nodule analysis and nodule malignancy risk prediction. However, due to interobserver variability caused by manual segmentation, an accurate and robust automatic segmentation method has become an essential task. Therefore, the aim of the present study was to construct an accurate segmentation and malignant risk prediction algorithm for pulmonary nodules.
In the present study, we proposed a coarse-to-fine 2-stage framework consisting of the following 2 convolutional neural networks: a 3D multiscale U-Net used for localization and a 2.5D multiscale separable U-Net (MSU-Net) used for segmentation refinement. A multitask framework was proposed for nodules' malignancy risk prediction. Features from encoding and decoding paths of MSU-Net were integrated for pathology or morphology characteristic classification.
Experimental results showed that our method achieved state-of-art results on the Lung Image Database Consortium and Image Database Resource Initiative dataset. The proposed method achieved a Dice similarity coefficient (DSC) of 83.04% and an overlapping error of 27.47% on the dataset. Our method achieved accuracy of 77.8% and area under the receiver-operating characteristic curve of 84.3% for malignancy risk prediction. Moreover, we compared our method with the inter-radiologist agreement, and the average DSC difference was only 0.39%.
The results showed the effectiveness of the multitask end-to-end framework. The coarse-to-fine 2.5D strategy increased the accuracy and efficiency of pulmonary nodule segmentation and malignancy risk prediction of the computer-aided diagnosis system. In clinical practice, doctors can obtain accurate morphological characteristics and quantitative information of nodules by using the proposed method, so as to make future treatment plan.
肺结节的准确分割对于基于图像的结节分析和结节恶性风险预测至关重要。然而,由于手动分割导致的观察者间差异,一种准确且稳健的自动分割方法已成为一项重要任务。因此,本研究的目的是构建一种用于肺结节的准确分割和恶性风险预测算法。
在本研究中,我们提出了一个由粗到精的两阶段框架,该框架由以下两个卷积神经网络组成:一个用于定位的3D多尺度U-Net和一个用于分割细化的2.5D多尺度可分离U-Net(MSU-Net)。提出了一个多任务框架用于结节的恶性风险预测。将MSU-Net编码和解码路径中的特征进行整合,用于病理或形态特征分类。
实验结果表明,我们的方法在肺影像数据库联盟和影像数据库资源倡议数据集上取得了领先的结果。所提出的方法在该数据集上的骰子相似系数(DSC)为83.04%,重叠误差为27.47%。我们的方法在恶性风险预测方面的准确率为77.8%,受试者工作特征曲线下面积为84.3%。此外,我们将我们的方法与放射科医生之间的一致性进行了比较,平均DSC差异仅为0.39%。
结果表明了多任务端到端框架的有效性。由粗到精的2.5D策略提高了计算机辅助诊断系统中肺结节分割和恶性风险预测的准确性和效率。在临床实践中,医生可以使用所提出的方法获得结节准确的形态特征和定量信息,从而制定未来的治疗方案。