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Multi-task weakly-supervised learning model for pulmonary nodules segmentation and detection

机译:肺结结分割和检测多任务弱监督学习模型

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For two-dimensional (2D) continuity characteristics of pulmonary nodules CT images, a sequence segmentation model based on U-shaped structure network and Convolutional Long Short-Term Memory (ConvLSTM) network is proposed to fully obtain the context space characteristics of image slices. In order to solve the problem of limited number of annotated samples in pulmonary nodules segmentation task, a segmentation method based on multi-task learning framework is proposed, which uses the annotated data of different types of tasks to mine the potential common characteristics among tasks; aiming at the problem of unbalanced category distribution in pulmonary nodules segmentation task, the design method of unified loss function under the multi-task learning framework is studied, and an optimization strategy integrating image prior knowledge and dynamic adjustment of multi-task weight is proposed to ensure that each task can complete training and learning efficiently. The experiments based on the LIDC-IDRI dataset demonstrate that the multi-task learning method proposed in this paper for the segmentation of pulmonary nodules under weak supervision is optimized from the three aspects of model design, network structure and constraints, and the MIoU and DSC are improved to 79.23% and 82.26% respectively.
机译:对于肺结核CT图像的二维(2D)连续性特性,提出了一种基于U形结构网络和卷积长短期存储器(CONNLSTM)网络的序列分割模型,以完全获得图像切片的上下文空间特征。为了解决肺结结分割任务中有限数量的注释样本的问题,提出了一种基于多任务学习框架的分割方法,它使用不同类型任务的注释数据来挖掘任务之间的潜在共同特征;针对肺结结分割任务中不平衡类别分布的问题,研究了多任务学习框架下的统一损失功能的设计方法,并提出了集成图像的优化策略和多任务权重的动态调整确保每个任务都可以高效地完成培训和学习。基于LIDC-IDRI数据集的实验表明,本文提出的多任务学习方法在弱势监督下进行肺结核的分割,从模型设计,网络结构和约束以及Miou和DSC的三个方面进行了优化分别提高到79.23%和82.26%。

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