Niyogisubizo Jovial, Zhao Keliang, Meng Jintao, Pan Yi, Didi Rosiyadi, Wei Yanjie
Shenzhen Key Laboratory of Intelligent Bioinformatics and Center for High Performance Computing, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
University of Chinese Academy of Sciences, Beijing, China.
J Comput Biol. 2025 Feb;32(2):225-237. doi: 10.1089/cmb.2023.0446. Epub 2024 Oct 18.
Time-lapse microscopy imaging is a crucial technique in biomedical studies for observing cellular behavior over time, providing essential data on cell numbers, sizes, shapes, and interactions. Manual analysis of hundreds or thousands of cells is impractical, necessitating the development of automated cell segmentation approaches. Traditional image processing methods have made significant progress in this area, but the advent of deep learning methods, particularly those using U-Net-based networks, has further enhanced performance in medical and microscopy image segmentation. However, challenges remain, particularly in accurately segmenting touching cells in images with low signal-to-noise ratios. Existing methods often struggle with effectively integrating features across different levels of abstraction. This can lead to model confusion, particularly when important contextual information is lost or the features are not adequately distinguished. The challenge lies in appropriately combining these features to preserve critical details while ensuring robust and accurate segmentation. To address these issues, we propose a novel framework called RA-SE-ASPP-Net, which incorporates Residual Blocks, Attention Mechanism, Squeeze-and-Excitation connection, and Atrous Spatial Pyramid Pooling to achieve precise and robust cell segmentation. We evaluate our proposed architecture using an induced pluripotent stem cell reprogramming dataset, a challenging dataset that has received limited attention in this field. Additionally, we compare our model with different ablation experiments to demonstrate its robustness. The proposed architecture outperforms the baseline models in all evaluated metrics, providing the most accurate semantic segmentation results. Finally, we applied the watershed method to the semantic segmentation results to obtain precise segmentations with specific information for each cell.
延时显微镜成像技术是生物医学研究中的一项关键技术,用于长时间观察细胞行为,提供有关细胞数量、大小、形状和相互作用的重要数据。手动分析成百上千个细胞是不切实际的,因此需要开发自动细胞分割方法。传统图像处理方法在这一领域取得了显著进展,但深度学习方法的出现,特别是那些基于U-Net网络的方法,进一步提高了医学和显微镜图像分割的性能。然而,挑战依然存在,尤其是在低信噪比图像中准确分割相互接触的细胞。现有方法往往难以有效地整合不同抽象层次的特征。这可能导致模型混淆,特别是当重要的上下文信息丢失或特征没有得到充分区分时。挑战在于适当地组合这些特征,以保留关键细节,同时确保稳健和准确的分割。为了解决这些问题,我们提出了一种名为RA-SE-ASPP-Net的新颖框架,该框架结合了残差块、注意力机制、挤压激励连接和空洞空间金字塔池化,以实现精确和稳健的细胞分割。我们使用诱导多能干细胞重编程数据集评估我们提出的架构,该数据集在该领域受到的关注有限,具有挑战性。此外,我们将我们的模型与不同的消融实验进行比较,以证明其稳健性。所提出的架构在所有评估指标上均优于基线模型,提供了最准确的语义分割结果。最后,我们将分水岭方法应用于语义分割结果,以获得每个细胞具有特定信息的精确分割。