WSA-MP-Net:用于光学分辨光声显微镜中微血管提取的弱信号注意和多尺度感知网络

IF 7.1 1区 医学 Q1 ENGINEERING, BIOMEDICAL
Jing Meng , Jialing Yu , Zhifeng Wu , Fei Ma , Yuanke Zhang , Chengbo Liu
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引用次数: 0

摘要

光学分辨光声显微镜(OR-PAM)的独特优势在于它能够在不使用外源药剂的情况下实现高分辨率微血管成像。这种能力在研究组织微循环方面具有巨大潜力。然而,由于血管结构密度高、结构复杂且对比度低,在 OR-PAM 图像中分割微血管非常复杂,因此追踪和监测组织中的微血管形态和血液动力学具有挑战性。多年来,人们开发了多种微血管提取技术,但这些技术有很多局限性:不能同时考虑粗血管和细血管的分割,不能解决微血管的不完整性和不连续性,缺乏基于 DL 算法的开放数据集。我们开发了一种新颖的分割方法,利用包含弱信号关注机制和多尺度感知模型(WSA-MP-Net)的深度学习网络提取 OR-PAM 图像中的血管。所提出的 WSA 网络关注微弱和细小的血管,而 MP 模块则从不同尺寸的血管中提取特征。此外,在对网络的输入和输出数据进行预处理和后处理时,还加入了黑森矩阵增强技术,以增强血管的连续性。我们构建了正常血管(NV-ORPAM,660 对数据)和肿瘤血管(TV-ORPAM,1168 对数据)数据集,以验证所提方法的性能。我们开发了一种半自动标注算法,以获得网络优化的基本事实。我们将优化后的模型成功应用于小鼠脑胶质瘤血管生成的监测,从而证明了模型的可行性和出色的泛化能力。与之前的研究相比,我们提出的 WSA-MP 网络在保持血管连续性和信号保真度的同时,提取了大量的微血管。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、连续的 OR-PAM 微血管网络提供了一种可行的方法,并能将其用于许多微血管相关的生物学研究和医学诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

WSA-MP-Net: Weak-signal-attention and multi-scale perception network for microvascular extraction in optical-resolution photoacoustic microcopy

WSA-MP-Net: Weak-signal-attention and multi-scale perception network for microvascular extraction in optical-resolution photoacoustic microcopy

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.

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来源期刊
Photoacoustics
Photoacoustics Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
11.40
自引率
16.50%
发文量
96
审稿时长
53 days
期刊介绍: The open access Photoacoustics journal (PACS) aims to publish original research and review contributions in the field of photoacoustics-optoacoustics-thermoacoustics. This field utilizes acoustical and ultrasonic phenomena excited by electromagnetic radiation for the detection, visualization, and characterization of various materials and biological tissues, including living organisms. Recent advancements in laser technologies, ultrasound detection approaches, inverse theory, and fast reconstruction algorithms have greatly supported the rapid progress in this field. The unique contrast provided by molecular absorption in photoacoustic-optoacoustic-thermoacoustic methods has allowed for addressing unmet biological and medical needs such as pre-clinical research, clinical imaging of vasculature, tissue and disease physiology, drug efficacy, surgery guidance, and therapy monitoring. Applications of this field encompass a wide range of medical imaging and sensing applications, including cancer, vascular diseases, brain neurophysiology, ophthalmology, and diabetes. Moreover, photoacoustics-optoacoustics-thermoacoustics is a multidisciplinary field, with contributions from chemistry and nanotechnology, where novel materials such as biodegradable nanoparticles, organic dyes, targeted agents, theranostic probes, and genetically expressed markers are being actively developed. These advanced materials have significantly improved the signal-to-noise ratio and tissue contrast in photoacoustic methods.
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