发掘隐藏的宝藏:利用深度学习绘制人类间充质干细胞向成骨细胞分化过程中的形态变化图

IF 2.5 3区 工程技术 Q1 MICROSCOPY Micron Pub Date : 2024-01-08 DOI:10.1016/j.micron.2023.103581
Faisal Quadri , Mano Govindaraj , Soja Soman , Niti M. Dhutia , Sanjairaj Vijayavenkataraman
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引用次数: 0

摘要

深度学习(DL)能够以比人类研究人员更快的速度、更高的准确性和更强的可重复性执行复杂而耗时的任务,从而让研究人员能够将时间投入到更复杂的任务中去,因此它正成为生命科学研究中越来越受欢迎的技术。DL 的一个潜在应用是分析显微镜拍摄的细胞图像。细胞显微镜图像的定量分析仍然是一项挑战--人工细胞表征需要耗费大量的时间和精力。DL 可以快速提取此类数据,并对图像进行严格的实证分析,从而解决这些问题。在这里,DL 被用来定量分析间充质干细胞(MSCs)分化成成骨细胞(OBs)的图像,跟踪整个分化过程中的形态变化。整个分化过程中的形态变化证明了细胞在分化过程中经历了不同的形态转变路径,在中心性发生变化之前就能观察到周长的变化。随后的分化实验可与我们的数据集进行定量比较,以具体评估不同条件对分化的影响,本文还可作为研究人员在自己的实验室中如何利用 DL 工作流程的指南。
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Uncovering hidden treasures: Mapping morphological changes in the differentiation of human mesenchymal stem cells to osteoblasts using deep learning

Deep Learning (DL) is becoming an increasingly popular technology being employed in life sciences research due to its ability to perform complex and time-consuming tasks with significantly greater speed, accuracy, and reproducibility than human researchers – allowing them to dedicate their time to more complex tasks. One potential application of DL is to analyze cell images taken by microscopes. Quantitative analysis of cell microscopy images remain a challenge – with manual cell characterization requiring excessive amounts of time and effort. DL can address these issues, by quickly extracting such data and enabling rigorous, empirical analysis of images. Here, DL is used to quantitively analyze images of Mesenchymal Stem Cells (MSCs) differentiating into Osteoblasts (OBs), tracking morphological changes throughout this transition. The changes in morphology throughout the differentiation protocol provide evidence for a distinct path of morphological transformations that the cells undergo in their transition, with changes in perimeter being observable before changes in eceentricity. Subsequent differentiation experiments can be quantitatively compared with our dataset to concretely evaluate how different conditions affect differentiation and this paper can also be used as a guide for researchers on how to utilize DL workflows in their own labs.

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来源期刊
Micron
Micron 工程技术-显微镜技术
CiteScore
4.30
自引率
4.20%
发文量
100
审稿时长
31 days
期刊介绍: Micron is an interdisciplinary forum for all work that involves new applications of microscopy or where advanced microscopy plays a central role. The journal will publish on the design, methods, application, practice or theory of microscopy and microanalysis, including reports on optical, electron-beam, X-ray microtomography, and scanning-probe systems. It also aims at the regular publication of review papers, short communications, as well as thematic issues on contemporary developments in microscopy and microanalysis. The journal embraces original research in which microscopy has contributed significantly to knowledge in biology, life science, nanoscience and nanotechnology, materials science and engineering.
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