基于深度残差cnn的肺病变自动检测与分割

João B. S. Carvalho, José-Maria Moreira, Mário A. T. Figueiredo, Nickolas Papanikolaou
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引用次数: 6

摘要

肺癌的早期发现已被证明可以显著提高患者的生存率。除了病变检测外,肿瘤分割对放射组学特征的发展至关重要。在这项工作中,我们提出了一种新的CT扫描肺部病变检测和分割的混合方法,其中分割任务是通过预先检测包含病变的区域来辅助的。对于检测任务,我们引入了一个以滑动窗口方式工作的2.5D残差深度CNN,而分割则由带有加权骰子和交叉熵损失的改进残差U-Net来处理。在医学分割十项运动中的LIDC-IDRI数据集和肺肿瘤任务数据集上的实验结果表明,该方法具有较好的检测性能(召回率0.902)和较好的分割能力(骰子得分0.709)。这些结果证实了更简单的模型的巨大潜力,它们对硬件的要求更低,因此具有更广泛的适用性。
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Automatic Detection and Segmentation of Lung Lesions using Deep Residual CNNs
Early detection of lung cancer has shown to significantly improve patient survival. Apart from lesion detection, tumour segmentation is critical for developing radiomics signatures. In this work, we propose a novel hybrid approach for lung lesion detection and segmentation on CT scans, where the segmentation task is assisted by prior detection of regions containing lesions. For the detection task, we introduce a 2.5D residual deep CNN working in a sliding-window fashion, whereas segmentation is tackled by a modified residual U-Net with a weighted-dice plus cross-entropy loss. Experimental results on the LIDC-IDRI dataset and on the lung tumour task dataset within the Medical Segmentation Decathlon show competitive detection performance of the proposed approach (0.902 recall) and superior segmentation capabilities (0.709 dice score). These results confirm the high potential of simpler models, with lower hardware requirements, thus of more general applicability.
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