TY - JOUR
T1 - MSNSegNet
T2 - attention-based multi-shape nuclei instance segmentation in histopathology images
AU - Qian, Ziniu
AU - Wang, Zihua
AU - Zhang, Xin
AU - Wei, Bingzheng
AU - Lai, Maode
AU - Shou, Jianzhong
AU - Fan, Yubo
AU - Xu, Yan
N1 - Publisher Copyright:
© International Federation for Medical and Biological Engineering 2024.
PY - 2024/6
Y1 - 2024/6
N2 - Abstract: In clinical research, the segmentation of irregularly shaped nuclei, particularly in mesenchymal areas like fibroblasts, is crucial yet often neglected. These irregular nuclei are significant for assessing tissue repair in immunotherapy, a process involving neovascularization and fibroblast proliferation. Proper segmentation of these nuclei is vital for evaluating immunotherapy’s efficacy, as it provides insights into pathological features. However, the challenge lies in the pronounced curvature variations of these non-convex nuclei, making their segmentation more difficult than that of regular nuclei. In this work, we introduce an undefined task to segment nuclei with both regular and irregular morphology, namely multi-shape nuclei segmentation. We propose a proposal-based method to perform multi-shape nuclei segmentation. By leveraging the two-stage structure of the proposal-based method, a powerful refinement module with high computational costs can be selectively deployed only in local regions, improving segmentation accuracy without compromising computational efficiency. We introduce a novel self-attention module to refine features in proposals for the sake of effectiveness and efficiency in the second stage. The self-attention module improves segmentation performance by capturing long-range dependencies to assist in distinguishing the foreground from the background. In this process, similar features get high attention weights while dissimilar ones get low attention weights. In the first stage, we introduce a residual attention module and a semantic-aware module to accurately predict candidate proposals. The two modules capture more interpretable features and introduce additional supervision through semantic-aware loss. In addition, we construct a dataset with a proportion of non-convex nuclei compared with existing nuclei datasets, namely the multi-shape nuclei (MsN) dataset. Our MSNSegNet method demonstrates notable improvements across various metrics compared to the second-highest-scoring methods. For all nuclei, the Dice score improved by approximately 1.66%, AJI by about 2.15%, and Diceobj by roughly 0.65%. For non-convex nuclei, which are crucial in clinical applications, our method’s AJI improved significantly by approximately 3.86% and Diceobj by around 2.54%. These enhancements underscore the effectiveness of our approach on multi-shape nuclei segmentation, particularly in challenging scenarios involving irregularly shaped nuclei. Graphical abstract: The framework of the MSNSegNet (Figure presented.).
AB - Abstract: In clinical research, the segmentation of irregularly shaped nuclei, particularly in mesenchymal areas like fibroblasts, is crucial yet often neglected. These irregular nuclei are significant for assessing tissue repair in immunotherapy, a process involving neovascularization and fibroblast proliferation. Proper segmentation of these nuclei is vital for evaluating immunotherapy’s efficacy, as it provides insights into pathological features. However, the challenge lies in the pronounced curvature variations of these non-convex nuclei, making their segmentation more difficult than that of regular nuclei. In this work, we introduce an undefined task to segment nuclei with both regular and irregular morphology, namely multi-shape nuclei segmentation. We propose a proposal-based method to perform multi-shape nuclei segmentation. By leveraging the two-stage structure of the proposal-based method, a powerful refinement module with high computational costs can be selectively deployed only in local regions, improving segmentation accuracy without compromising computational efficiency. We introduce a novel self-attention module to refine features in proposals for the sake of effectiveness and efficiency in the second stage. The self-attention module improves segmentation performance by capturing long-range dependencies to assist in distinguishing the foreground from the background. In this process, similar features get high attention weights while dissimilar ones get low attention weights. In the first stage, we introduce a residual attention module and a semantic-aware module to accurately predict candidate proposals. The two modules capture more interpretable features and introduce additional supervision through semantic-aware loss. In addition, we construct a dataset with a proportion of non-convex nuclei compared with existing nuclei datasets, namely the multi-shape nuclei (MsN) dataset. Our MSNSegNet method demonstrates notable improvements across various metrics compared to the second-highest-scoring methods. For all nuclei, the Dice score improved by approximately 1.66%, AJI by about 2.15%, and Diceobj by roughly 0.65%. For non-convex nuclei, which are crucial in clinical applications, our method’s AJI improved significantly by approximately 3.86% and Diceobj by around 2.54%. These enhancements underscore the effectiveness of our approach on multi-shape nuclei segmentation, particularly in challenging scenarios involving irregularly shaped nuclei. Graphical abstract: The framework of the MSNSegNet (Figure presented.).
KW - Nuclei instance segmentation
KW - Proposal-based method
KW - Self-attention
KW - Semantic-aware
UR - https://www.scopus.com/pages/publications/85185939992
U2 - 10.1007/s11517-024-03050-x
DO - 10.1007/s11517-024-03050-x
M3 - 文章
AN - SCOPUS:85185939992
SN - 0140-0118
VL - 62
SP - 1821
EP - 1836
JO - Medical and Biological Engineering and Computing
JF - Medical and Biological Engineering and Computing
IS - 6
ER -