Zhang Qing, Zhou Xiaohui, Wu Chunyan, Gao Xiwen, Wang Yan, Li Qingli
Shanghai Key Laboratory of Multidimensional Information Processing, East China Normal University, Shanghai, China.
Department of Respiratory Medicine, Shanghai Jiao Tong University Affiliated Sixth People's Hospital, Shanghai, China.
Biomed Opt Express. 2024 Jul 9;15(8):4584-4604. doi: 10.1364/BOE.525944. eCollection 2024 Aug 1.
Pulmonary adenocarcinoma is the primary cause of cancer-related death worldwide and pathological diagnosis is the "golden standard" based on the regional distribution of cells. Thus, regional cell segmentation is a key step while it is challenging due to the following reasons: 1) It is hard for pure semantic and instance segmentation methods to obtain a high-quality regional cell segmentation result; 2) Since the appearances of pulmonary cells are very similar which even confuse pathologists, annotation errors are usually inevitable. Considering these challenges, we propose a two-stage 3D adaptive joint training framework (TAJ-Net) to segment-then-classify cells with extra information as the supplementary information of information. Firstly, we propose to leverage a few-shot method with limited data for cell mask acquisition to avoid the disturbance of cluttered backgrounds. Secondly, we introduce an adaptive joint training strategy to remove noisy samples through two 3D networks and one 1D network for cell type classification rather than segmentation. Subsequently, we propose a patch mapping method to map classification results to the original images to obtain regional segmentation results. In order to verify the effectiveness of TAJ-Net, we build two 3D hyperspectral datasets, i.e., pulmonary adenocarcinoma (3,660 images) and thyroid carcinoma (4623 images) with 40 bands. The first dataset will be released for further research. Experiments show that TAJ-Net achieves much better performance in clustered cell segmentation, and it can regionally segment different kinds of cells with high overlap and blurred edges, which is a difficult task for the state-of-the-art methods. Compared to 2D models, the hyperspectral image-based 3D model reports a significant improvement of up to 11.5% in terms of the Dice similarity coefficient in the pulmonary adenocarcinoma dataset.
肺腺癌是全球癌症相关死亡的主要原因,基于细胞的区域分布,病理诊断是“金标准”。因此,区域细胞分割是关键步骤,但由于以下原因具有挑战性:1)对于纯语义和实例分割方法而言,很难获得高质量的区域细胞分割结果;2)由于肺细胞外观非常相似,甚至会使病理学家感到困惑,注释错误通常不可避免。考虑到这些挑战,我们提出了一种两阶段的3D自适应联合训练框架(TAJ-Net),以先分割再分类的方式处理细胞,并将额外信息作为信息的补充。首先,我们提出利用有限数据的少样本方法来获取细胞掩码,以避免杂乱背景的干扰。其次,我们引入一种自适应联合训练策略,通过两个3D网络和一个1D网络进行细胞类型分类而非分割,以去除噪声样本。随后,我们提出一种补丁映射方法,将分类结果映射到原始图像以获得区域分割结果。为了验证TAJ-Net的有效性,我们构建了两个3D高光谱数据集,即具有40个波段的肺腺癌(3660张图像)和甲状腺癌(4623张图像)。第一个数据集将发布以供进一步研究。实验表明,TAJ-Net在聚类细胞分割方面取得了更好的性能,并且能够对具有高重叠和模糊边缘的不同类型细胞进行区域分割,这对于现有方法来说是一项艰巨的任务。与2D模型相比,基于高光谱图像的3D模型在肺腺癌数据集中的Dice相似系数方面显著提高了11.5%。