Cancer segmentation in whole-slide images is a fundamental step for viable tumour burden estimation, which is of great value for cancer assessment. However, factors like vague boundaries or small regions dissociated from viable tumour areas make it a challenging task. Considering the usefulness of multi-scale features in various vision-related tasks, we present a structure-aware scale-adaptive feature selection method for efficient and accurate cancer segmentation. Based on a segmentation network with a popular encoder-decoder architecture, a scale-adaptive module is proposed for selecting more robust features to represent the vague, non-rigid boundaries. Furthermore, a structural similarity metric is proposed for better tissue structure awareness to deal with small region segmentation. In addition, advanced designs including several attention mechanisms and the selective-kernel convolutions are applied to the baseline network for comparative study purposes. Extensive experimental results show that the proposed structure-aware scale-adaptive networks achieve outstanding performance on liver cancer segmentation when compared to top ten submitted results in the challenge of PAIP 2019. Further evaluation on colorectal cancer segmentation shows that the scale-adaptive module improves the baseline network or outperforms the other excellent designs of attention mechanisms when considering the tradeoff between efficiency and accuracy.
翻译:在全流图像中进行癌症分解是可行的肿瘤负担估计的基本步骤,对于癌症评估来说具有极大的价值。但是,模糊的边界或与可行的肿瘤地区无关的小区域等因素使这项工作具有挑战性。考虑到各种与愿景有关的任务中多尺度特征的效用,我们为高效和准确的癌症分解提出了一个结构-有意识的尺度-适应性特征选择方法。根据与流行的编码器分解结构分解网络的分解网络,提议了一个比例调整模块,用于选择更强有力的特征,以代表模糊的、非硬化的边界。此外,还提出了结构相似性指标,以提高组织结构结构意识,处理小区域分解问题。此外,包括若干关注机制和选择性内核突变在内的高级设计被应用于基线网络,以进行比较研究。广泛的实验结果显示,拟议的结构-意识比例分解网络在选择肝癌分解方面取得了杰出的性能,而与PAIP 2019 挑战中提交的前十大结果相比。进一步评估红外癌分解表明,在考虑精度基准网络或其他精度设计时,对精度进行精度分析时,比例调整模块的精度将提高其他基线或精度。