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用于从组织病理学图像中进行宫颈肿瘤分割的具有边缘学习器和连通性增强器的语义一致性网络

Semantic Consistency Network with Edge Learner and Connectivity Enhancer for Cervical Tumor Segmentation from Histopathology Images.

作者信息

Pang Lisha, He Peng, Han Yue, Cui Hao, Feng Peng, Zhang Chi, Huang Pan, Tian Sukun

机构信息

Key Laboratory of Optoelectronic Technology and Systems (Ministry of Education), College of Optoelectronic Engineering, Chongqing University, Chongqing, 400044, China.

School of Physics and Optoelectronic Engineering, Hangzhou Institute for Advanced Study, University of Chinese Academy of Sciences, Hangzhou, 310024, China.

出版信息

Interdiscip Sci. 2025 Apr 23. doi: 10.1007/s12539-025-00691-w.

Abstract

Accurate tumor grading and regional identification of cervical tumors are important for diagnosis and prognosis. Traditional manual microscopy methods suffer from time-consuming, labor-intensive, and subjective bias problems, so tumor segmentation methods based on deep learning are gradually becoming a hotspot in current research. Cervical tumors have diverse morphologies, which leads to low similarity between the mask edge and ground-truth edge of existing semantic segmentation models. Moreover, the texture and geometric arrangement features of normal tissues and tumors are highly similar, which causes poor pixel connectivity in the mask of the segmentation model. To this end, we propose an end-to-end semantic consistency network with the edge learner and the connectivity enhancer, i.e., ERNet. First, the edge learner consists of a stacked shallow convolutional neural network, so it can effectively enhance the ability of ERNet to learn and represent polymorphic tumor edges. Second, the connectivity enhancer learns detailed information and contextual information of tumor images, so it can enhance the pixel connectivity of the masks. Finally, edge features and pixel-level features are adaptively coupled, and the segmentation results are additionally optimized by the tumor classification task as a whole. The results show that, compared with those of other state-of-the-art segmentation models, the structural similarity and the mean intersection over union of ERNet are improved to 88.17% and 83.22%, respectively, which reflects the excellent edge similarity and pixel connectivity of the proposed model. Finally, we conduct a generalization experiment on laryngeal tumor images. Therefore, the ERNet network has good clinical popularization and practical value.

摘要

准确的宫颈癌分级和区域识别对于诊断和预后至关重要。传统的手动显微镜方法存在耗时、费力和主观偏差等问题,因此基于深度学习的肿瘤分割方法逐渐成为当前研究的热点。宫颈肿瘤形态多样,这导致现有语义分割模型的掩码边缘与真实边缘之间的相似度较低。此外,正常组织和肿瘤的纹理及几何排列特征高度相似,这使得分割模型的掩码中像素连通性较差。为此,我们提出了一种带有边缘学习器和连通性增强器的端到端语义一致性网络,即ERNet。首先,边缘学习器由一个堆叠的浅层卷积神经网络组成,因此它可以有效增强ERNet学习和表示多形态肿瘤边缘的能力。其次,连通性增强器学习肿瘤图像的详细信息和上下文信息,因此它可以增强掩码的像素连通性。最后,边缘特征和像素级特征被自适应地耦合,并且分割结果通过肿瘤分类任务作为一个整体进行额外优化。结果表明,与其他现有最先进的分割模型相比,ERNet的结构相似性和平均交并比分别提高到了88.17%和83.22%,这反映了所提出模型出色的边缘相似性和像素连通性。最后,我们对喉肿瘤图像进行了泛化实验。因此,ERNet网络具有良好的临床推广和实用价值。

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