Whole tissue imaging of cellular boundaries at sub-micron resolutions for deep learning cell segmentation: Applications in the analysis of epithelial bending of ectoderm.

IF 1.5 3区 生物学 Q2 ANATOMY & MORPHOLOGY
Sam C P Norris, Jimmy K Hu, Neil H Shubin
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引用次数: 0

Abstract

Background: To understand cellular morphology, biologists have relied on traditional optical microscopy of tissues combined with tissue clearing protocols to image structures deep within tissues. Unfortunately, these protocols often struggle to retain cell boundary markers, especially at high enough resolutions necessary for precise cell segmentation. This limitation affects the ability to study changes in cell shape during major developmental events.

Results: We introduce a method that preserves cell boundary markers and matches the refractive index of tissues with water. This technique enables the use of high-magnification, long working distance water-dipping objectives that provide sub-micron resolution images. We subsequently segment individual cells using a trained neural network segmentation model. These segmented images facilitate quantification of cell properties of the entire three-dimensional tissue. As a demonstration, we examine mandibles of transgenic mice that express fluorescent proteins in their cell membranes and extend this technique to a non-model animal, the catshark, investigating its dental lamina and dermal denticles-invaginating and evaginating ectodermal structures, respectively. This technique provides insight into the mechanical environment that cells experience during developmental transitions.

Conclusions: This pipeline, named MORPHOVIEW, provides a powerful tool to quantify in high throughput the 3D structures of cells and tissues during organ morphogenesis.

深度学习细胞分割的亚微米分辨率细胞边界全组织成像:外胚层上皮弯曲分析中的应用。
背景:为了了解细胞形态,生物学家依靠传统的组织光学显微镜结合组织清除协议来成像组织深处的结构。不幸的是,这些协议往往难以保留细胞边界标记,特别是在精确细胞分割所需的足够高的分辨率下。这一限制影响了在主要发育过程中研究细胞形状变化的能力。结果:我们提出了一种保留细胞边界标记并使组织折射率与水相匹配的方法。该技术可以使用高倍率、长工作距离的浸水物镜,提供亚微米分辨率的图像。随后,我们使用训练有素的神经网络分割模型分割单个细胞。这些分割图像有利于整个三维组织的细胞特性的量化。作为演示,我们检查了在其细胞膜中表达荧光蛋白的转基因小鼠的下颌骨,并将该技术扩展到非模型动物猫鲨,分别研究了其牙板和真皮牙-内翻和外翻外胚层结构。这项技术提供了对细胞在发育转变过程中所经历的机械环境的深入了解。结论:这个名为MORPHOVIEW的管道为器官形态发生过程中细胞和组织的三维结构提供了高通量定量的强大工具。
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来源期刊
Developmental Dynamics
Developmental Dynamics 生物-发育生物学
CiteScore
5.10
自引率
8.00%
发文量
116
审稿时长
3-8 weeks
期刊介绍: Developmental Dynamics, is an official publication of the American Association for Anatomy. This peer reviewed journal provides an international forum for publishing novel discoveries, using any model system, that advances our understanding of development, morphology, form and function, evolution, disease, stem cells, repair and regeneration.
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