| Literature DB >> 31221402 |
Hong Liu1, Haichao Cao1, Enmin Song2, Guangzhi Ma1, Xiangyang Xu1, Renchao Jin1, Yong Jin1, Chih-Cheng Hung1.
Abstract
It is difficult to obtain an accurate segmentation due to the variety of lung nodules in computed tomography (CT) images. In this study, we propose a data-driven model, called the Cascaded Dual-Pathway Residual Network (CDP-ResNet) to improve the segmentation of lung nodules in the CT images. Our approach incorporates the multi-view and multi-scale features of different nodules from CT images. The proposed residual block based dual-path network extracts local features and rich contextual information of lung nodules. In addition, we designed an improved weighted sampling strategy to select training samples based on the edge. The proposed method was extensively evaluated on an LIDC dataset, which contains 986 nodules. Experimental results show that the CDP-ResNet achieves superior segmentation performance with an average DICE score (standard deviation) of 81.58% (11.05) on the LIDC dataset. Moreover, we compared our results with those of four radiologists on the same dataset. The comparison shows that the CDP-ResNet is slightly better than human experts in terms of segmentation accuracy. Meanwhile, the proposed segmentation method outperforms existing methods.Entities:
Keywords: Cascaded dual-pathway architecture; Deep learning; Lung nodule segmentation; Residual neural networks
Year: 2019 PMID: 31221402 DOI: 10.1016/j.ejmp.2019.06.003
Source DB: PubMed Journal: Phys Med ISSN: 1120-1797 Impact factor: 2.685