The Information Materials and Intelligent Sensing Laboratory of Anhui Province, School of Computer Science and Technology, Anhui University, Hefei 230601, China.
Institutes of Physical Science and Information Technology, Anhui University, Hefei 230601, China.
Sensors (Basel). 2024 Nov 11;24(22):7208. doi: 10.3390/s24227208.
The acurate segmentation and classification of nuclei in histological images are crucial for the diagnosis and treatment of colorectal cancer. However, the aggregation of nuclei and intra-class variability in histology images present significant challenges for nuclei segmentation and classification. In addition, the imbalance of various nuclei classes exacerbates the difficulty of nuclei classification and segmentation using deep learning models. To address these challenges, we present a novel attention-enhanced residual refinement network (AER-Net), which consists of one encoder and three decoder branches that have same network structure. In addition to the nuclei instance segmentation branch and nuclei classification branch, one branch is used to predict the vertical and horizontal distance from each pixel to its nuclear center, which is combined with output by the segmentation branch to improve the final segmentation results. The AER-Net utilizes an attention-enhanced encoder module to focus on more valuable features. To further refine predictions and achieve more accurate results, an attention-enhancing residual refinement module is employed at the end of each encoder branch. Moreover, the coarse predictions and refined predictions are combined by using a loss function that employs cross-entropy loss and generalized dice loss to efficiently tackle the challenge of class imbalance among nuclei in histology images. Compared with other state-of-the-art methods on two colorectal cancer datasets and a pan-cancer dataset, AER-Net demonstrates outstanding performance, validating its effectiveness in nuclear segmentation and classification.
在组织学图像中,准确的细胞核分割和分类对于结直肠癌的诊断和治疗至关重要。然而,细胞核在组织学图像中的聚集和类内可变性给细胞核分割和分类带来了重大挑战。此外,各种细胞核类别的不平衡加剧了使用深度学习模型进行细胞核分类和分割的难度。为了解决这些挑战,我们提出了一种新颖的注意力增强残差细化网络(AER-Net),它由一个编码器和三个解码器分支组成,具有相同的网络结构。除了细胞核实例分割分支和细胞核分类分支外,还有一个分支用于预测每个像素到其核中心的垂直和水平距离,这与分割分支的输出相结合,以提高最终分割结果。AER-Net 利用注意力增强的编码器模块来关注更有价值的特征。为了进一步细化预测并获得更准确的结果,在每个编码器分支的末尾使用注意力增强的残差细化模块。此外,通过使用交叉熵损失和广义 Dice 损失的损失函数,将粗预测和细化预测相结合,有效地解决了组织学图像中细胞核类不平衡的挑战。在两个结直肠癌数据集和一个泛癌数据集上与其他最先进的方法进行比较,AER-Net 表现出卓越的性能,验证了其在核分割和分类方面的有效性。