基于多级实例感知优化的宫颈细胞学图像弱监督分类

Chenglu Zhu, Yuxuan Sun, Honglin Li, C. Cui, Shichuan Zhang, Jiatong Cai, Yang Ling
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引用次数: 0

摘要

液基细胞学病理图像在宫颈癌筛查中应用广泛,但其分辨率过大一直制约着诊断效率。弱监督学习是一种有效的计算机辅助诊断方法。但是,它的性能也可能受到粗略注释的限制。因此,我们提出了一种优化的多实例分类框架,以从多级实例感知中学习更可靠的表示。我们首先在实例级编码器的各个层之后引入深度自关注模块,这促进了模型学习实例之间的关系。然后对每个包中的实例特征进行聚类,增强可识别性。此外,我们还提出了一种自适应实例掩码策略,以促进从注意力较弱的可疑样本中学习相关特征。与竞争对手相比,我们的方法有了明显的改进,注意力可视化也显示了它的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly Supervised Classification using Multi-Level Instance-Aware Optimization on Cervical Cytologic Image
The pathological images of liquid-based cytology are widely used in cervical cancer screening, and its large resolution has always limited the efficiency of diagnosis. Weakly supervised learning is an efficient method for computer-aided diagnosis. However, its performance may also be limited by the rough annotation. Therefore, we propose an optimized multi-instance classification framework to learn more reliable representation from multi-level instance awareness. We first introduce deep self-attention modules following various layers of the instance-level encoder, which promotes the model to learn the relationship between instances. Then we cluster the instance features in each bag to strengthen distinguishability. In addition, we propose an adaptive instance mask strategy to facilitate the learning of relevant features from suspicious samples with weak attention. Our method performs a significant improvement by comparing with competitors, and attention visualization also reveals its effectiveness.
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