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改进U-Net网络的肺结节分割方法 被引量:42

Improved U-Net Network for Lung Nodule Segmentation
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摘要 为了对CT图像中的肺结节进行准确地分割,提出了一种基于改进的U-Net网络的肺结节分割方法。该方法通过引入密集连接,加强网络对特征的传递与利用,并且可以避免梯度消失的问题,同时采用改进的混合损失函数以缓解类不平衡问题。在LIDC-IDRI肺结节公开数据库上的实验结果表明,该方法达到的Dice相似系数值、准确率和召回率分别为84.48%、85.35%和83.81%。与其他分割网络相比,该方法能够准确地分割出肺结节区域,具有良好的分割性能。 In order to accurately segment lung nodules from CT images,an improved U-Net based method is proposed for lung nodule segmentation.The dense connection introduced into the network can not only strengthen the transmission and utilization of features,but also avoid the vanishing gradient problem.Meanwhile,an improved hybrid loss function is adopted to address class imbalance problem.The experimental results on the public LIDC-IDRI database show that the proposed method can achieve Dice similarity coefficient,precision and recall of 84.48%,85.35%and 83.81%,respectively.Compared with some segmentation methods,the proposed method can accurately segment lung nodules with good performance.
作者 钟思华 郭兴明 郑伊能 ZHONG Sihua;GUO Xingming;ZHENG Yineng(Chongqing Engineering Research Center for Medical Electronic Technology,College of Bioengineering,Chongqing University,Chongqing 400044,China;Department of Radiology,the First Affiliated Hospital of Chongqing Medical University,Chongqing 400016,China)
出处 《计算机工程与应用》 CSCD 北大核心 2020年第17期203-209,共7页 Computer Engineering and Applications
关键词 肺结节 U-Net 密集连接 语义分割 lung nodules U-Net dense connection semantic segmentation
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  • 1王化,唐光健.多层螺旋CT在肺结节诊断中的应用及展望[J].国外医学(临床放射学分册),2005,28(6):402-405. 被引量:8
  • 2王晓华,马大庆.计算机辅助诊断在肺结节中的应用进展[J].中华放射学杂志,2006,40(4):443-445. 被引量:14
  • 3Diederich S, Lenzen H, Windmann R, et al. Pulmonary nodules: experimental and clinical studies at low-dose CT [J].Radiology, 1999, 213(1) :289-98.
  • 4Costello P. Pulmonary nodule: evaluation with spiral volumetric CT[J]. Radiology, 1991, 179(3): 875-6.
  • 5Marten K, Seyfarth T, Auer F, et al. Computer-assisted detection of pulmonary nodules: performance evaluation of an expert knowledge-based detection system in consensus reading with experienced and inexperienced chest radiologists[J]. Eur Radiol, 2004, 14: 1930-38.
  • 6Xu N, Ahuja N, Bansal R. Automated lung nodule segmentation using dynamic programming and EM based classification [J]. Proc SPIE, 2002, 4684: 666-76.
  • 7Okada K, Comaniciu D, Krishnan A. Robust anisotropic Gaussian fitting for eolumetric characterization of pulmonary nodules in multislice ct [ J ]. IEEE Trans Med Imaging, 2005, 24(3): 409-23.
  • 8Kuhnigk JM, Dicken V, Bornemann L, et al. Morphological segmentation and partial volume analysis for volumetry of solid pulmonary lesions in thoracic CT scans [J]. IEEE Trans Med Imaging, 2006, 25(4): 417-34.
  • 9Fan L, Qian J. Automatic segmentation of pulmonary nodules by using dynamic 3-D cross-correlation for interactive CAD systems [J]. Proc SPIE Med Imaging, 2002, 4684: 1362-9.
  • 10Dehmeshki J, Amin H. Segmentation of pulmonary nodules in thoracic CT scans: a region growing approach[J]. IEEE Trans Med Imaging, 2008, 27(4): 467-80.

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