Author
Listed:
- Qiumei Pu
- Jinglong Tian
- Donghao Wei
- Qingming Shu
- Minghui Sun
- Lina Zhao
Abstract
Automated diagnostic systems can enhance the accuracy and efficiency of pathological diagnoses, nuclear segmentation plays a crucial role in computer-aided diagnosis systems for histopathology. However, achieving accurate nuclear segmentation is challenging due to the complex background tissue structures and significant variations in cell morphology and size in pathological images. In this study, we have proposed a U-Net based deep learning model, called MA-Net(Multifunctional Aggregation Network), to accurately segmenting nuclei from H&E stained images. In contrast to previous studies that focused on improving a single module of the network, we applied feature fusion modules, attention gate units, and atrous spatial pyramid pooling to the encoder and decoder, skip connections, and bottleneck of U-Net, respectively, to enhance the network’s performance in nuclear segmentation. The dice coefficient loss was used during model training to enhance the network’s ability to segment small objects. We applied the proposed MA-Net to multiple public datasets, and comprehensive results showed that this method outperforms the original U-Net method and other state-of-the-art methods in nuclei segmentation tasks. The source code of our work can be found in https://github.com/LinaZhaoAIGroup/MA-Net.
Suggested Citation
Qiumei Pu & Jinglong Tian & Donghao Wei & Qingming Shu & Minghui Sun & Lina Zhao, 2024.
"Multifunctional aggregation network of cell nuclei segmentation aiming histopathological diagnosis assistance: A new MA-Net construction,"
PLOS ONE, Public Library of Science, vol. 19(9), pages 1-15, September.
Handle:
RePEc:plo:pone00:0308326
DOI: 10.1371/journal.pone.0308326
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