Meng Jing, Yu Jialing, Wu Zhifeng, Ma Fei, Zhang Yuanke, Liu Chengbo
School of Computer, Qufu Normal University, Rizhao 276826, China.
Research Center for Biomedical Optics and Molecular Imaging, Key Laboratory of Biomedical Imaging Science and System, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, 518055, China.
Photoacoustics. 2024 Mar 11;37:100600. doi: 10.1016/j.pacs.2024.100600. eCollection 2024 Jun.
The unique advantage of optical-resolution photoacoustic microscopy (OR-PAM) is its ability to achieve high-resolution microvascular imaging without exogenous agents. This ability has excellent potential in the study of tissue microcirculation. However, tracing and monitoring microvascular morphology and hemodynamics in tissues is challenging because the segmentation of microvascular in OR-PAM images is complex due to the high density, structure complexity, and low contrast of vascular structures. Various microvasculature extraction techniques have been developed over the years but have many limitations: they cannot consider both thick and thin blood vessel segmentation simultaneously, they cannot address incompleteness and discontinuity in microvasculature, there is a lack of open-access datasets for DL-based algorithms. We have developed a novel segmentation approach to extract vascularity in OR-PAM images using a deep learning network incorporating a weak signal attention mechanism and multi-scale perception (WSA-MP-Net) model. The proposed WSA network focuses on weak and tiny vessels, while the MP module extracts features from different vessel sizes. In addition, Hessian-matrix enhancement is incorporated into the pre-and post-processing of the input and output data of the network to enhance vessel continuity. We constructed normal vessel (NV-ORPAM, 660 data pairs) and tumor vessel (TV-ORPAM, 1168 data pairs) datasets to verify the performance of the proposed method. We developed a semi-automatic annotation algorithm to obtain the ground truth for our network optimization. We applied our optimized model successfully to monitor glioma angiogenesis in mouse brains, thus demonstrating the feasibility and excellent generalization ability of our model. Compared to previous works, our proposed WSA-MP-Net extracts a significant number of microvascular while maintaining vessel continuity and signal fidelity. In quantitative analysis, the indicator values of our method improved by about 1.3% to 25.9%. We believe our proposed approach provides a promising way to extract a complete and continuous microvascular network of OR-PAM and enables its use in many microvascular-related biological studies and medical diagnoses.
光学分辨率光声显微镜(OR-PAM)的独特优势在于其无需外源性试剂即可实现高分辨率微血管成像的能力。这种能力在组织微循环研究中具有巨大潜力。然而,追踪和监测组织中的微血管形态和血流动力学具有挑战性,因为OR-PAM图像中的微血管分割复杂,这是由于血管结构密度高、结构复杂且对比度低。多年来已开发出各种微血管提取技术,但存在许多局限性:它们不能同时考虑粗细血管的分割,无法解决微血管中的不完整性和不连续性问题,缺乏用于基于深度学习算法的开放获取数据集。我们开发了一种新颖的分割方法,使用结合了弱信号注意力机制和多尺度感知(WSA-MP-Net)模型的深度学习网络来提取OR-PAM图像中的血管。所提出的WSA网络专注于弱小血管,而MP模块从不同血管大小提取特征。此外,将Hessian矩阵增强纳入网络输入和输出数据的预处理和后处理中,以增强血管的连续性。我们构建了正常血管(NV-ORPAM,660个数据对)和肿瘤血管(TV-ORPAM,1168个数据对)数据集来验证所提出方法的性能。我们开发了一种半自动注释算法以获得用于网络优化的真实数据。我们成功地将优化后的模型应用于监测小鼠脑内胶质瘤血管生成,从而证明了我们模型具有可行性和出色的泛化能力。与先前的工作相比,我们提出的WSA-MP-Net在保持血管连续性和信号保真度的同时提取了大量微血管。在定量分析中,我们方法的指标值提高了约1.3%至25.9%。我们相信我们提出的方法为提取完整且连续的OR-PAM微血管网络提供了一种有前景的方式,并使其能够用于许多与微血管相关的生物学研究和医学诊断中。