Institute of Ophthalmology, Faculty of Brain Sciences, University College London, Greater London.
Department of Infection, Immunity and Cardiovascular Disease, University of Sheffield, Medical School, Beech Hill Road, Sheffield, United Kingdom.
Curr Protoc. 2022 May;2(5):e443. doi: 10.1002/cpz1.443.
With advancements in imaging techniques, data visualization allows new insights into fundamental biological processes of development and disease. However, although biomedical science is heavily reliant on imaging data, interpretation of datasets is still often based on subjective visual assessment rather than rigorous quantitation. This overview presents steps to validate image processing and segmentation using the zebrafish brain vasculature data acquired with light sheet fluorescence microscopy as a use case. Blood vessels are of particular interest to both medical and biomedical science. Specific image enhancement filters have been developed that enhance blood vessels in imaging data prior to segmentation. Using the Sato enhancement filter as an example, we discuss how filter application can be evaluated and optimized. Approaches from the medical field such as simulated, experimental, and augmented datasets can be used to gain the most out of the data at hand. Using such datasets, we provide an overview of how biologists and data analysts can assess the accuracy, sensitivity, and robustness of their segmentation approaches that allow extraction of objects from images. Importantly, even after optimization and testing of a segmentation workflow (e.g., from a particular reporter line to another or between immunostaining processes), its generalizability is often limited, and this can be tested using double-transgenic reporter lines. Lastly, due to the increasing importance of deep learning networks, a comparative approach can be adopted to study their applicability to biological datasets. In summary, we present a broad methodological overview ranging from image enhancement to segmentation with a mixed approach of experimental, simulated, and augmented datasets to assess and validate vascular segmentation using the zebrafish brain vasculature as an example. © 2022 The Authors. Current Protocols published by Wiley Periodicals LLC. HIGHLIGHTS: Simulated, experimental, and augmented datasets provide an alternative to overcome the lack of segmentation gold standards and phantom models for zebrafish cerebrovascular segmentation. Direct generalization of a segmentation approach to the data for which it was not optimized (e.g., different transgenics or antibody stainings) should be treated with caution. Comparison of different deep learning segmentation methods can be used to assess their applicability to data. Here, we show that the zebrafish cerebral vasculature can be segmented with U-Net-based architectures, which outperform SegNet architectures.
随着成像技术的进步,数据可视化使得人们能够深入了解发育和疾病的基本生物学过程。然而,尽管生物医学科学严重依赖于成像数据,但数据集的解释仍然常常基于主观的视觉评估,而不是严格的定量分析。本综述以使用光片荧光显微镜获取的斑马鱼大脑血管数据为例,介绍了验证图像处理和分割的步骤。血管对于医学和生物医学科学都具有特别的意义。已经开发了特定的图像增强滤波器,可在分割前增强成像数据中的血管。我们以 Sato 增强滤波器为例,讨论了如何评估和优化滤波器的应用。可以使用来自医学领域的方法,如模拟、实验和增强数据集,以充分利用手头的数据。使用这些数据集,我们概述了生物学家和数据分析人员如何评估其分割方法的准确性、灵敏度和稳健性,这些方法允许从图像中提取对象。重要的是,即使对分割工作流程(例如,从特定的报告基因线到另一个或免疫染色过程)进行了优化和测试,其通用性也常常受到限制,可以使用双转基因报告基因线来测试这一点。最后,由于深度学习网络的重要性日益增加,可以采用比较方法来研究它们在生物数据集上的适用性。总之,我们提出了一个广泛的方法学概述,从图像增强到分割,使用实验、模拟和增强数据集的混合方法,以斑马鱼大脑血管为例评估和验证血管分割。