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Split and merge watershed: A two-step method for cell segmentation in fluorescence microscopy images

机译:分割和合并分水岭:荧光显微镜图像中细胞分割的两步法

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The development of advanced techniques in medical imaging has allowed scanning of the human body to microscopic levels, making research on cell behavior more complex and more in-depth. Recent studies have focused on cellular heterogeneity since cell-to-cell differences are always present in the cell population and this variability contains valuable information. However, identifying each cell is not an easy task because, in the images acquired from the microscope, there are clusters of cells that are touching one another. Therefore, the segmentation stage is a problem of considerable difficulty in cell image processing. Although several methods for cell segmentation are described in the literature, they have drawbacks in terms of over-segmentation, under-segmentation or misidentification. Consequently, our main motivation in studying cell segmentation was to develop a new method to achieve a good tradeoff between accurately identifying all relevant elements and not inserting segmentation artifacts.This article presents a new method for cell segmentation in fluorescence microscopy images. The proposed approach combines the well-known Marker-Controlled Watershed algorithm (MC-Watershed) with a new, two-step method based on Watershed, Split and Merge Watershed (SM-Watershed): in the first step, or split phase, the algorithm identifies the clusters using inherent characteristics of the cell, such as size and convexity, and separates them using watershed. In the second step, or the merge stage, it identifies the over-segmented regions using proper features of the cells and eliminates the divisions. Before applying our two-step method, the input image is first preprocessed, and the MC-Watershed algorithm is used to generate an initial segmented image. However, this initial result may not be suitable for subsequent tasks, such as cell count or feature extraction, because not all cells are separated, and some cells may be mistakenly confused with the background. Thus, our proposal corrects this issue with its two-step process, reaching a high performance, a suitable tradeoff between over-segmentation and under-segmentation and preserving the shape of the cell, without the need of any labeled data or relying on machine learning processes. The latter is advantageous over state-of-the-art techniques that in order to achieve similar results require labeled data, which may not be available for all of the domains. Two cell datasets were used to validate this approach, and the results were compared with other methods in the literature, using traditional metrics and quality visual assessment. We obtained 90% of average visual accuracy and an F-index higher than 80%. This proposal outperforms other techniques for cell separation, achieving an acceptable balance between over-segmentation and under-segmentation, which makes it suitable for several applications in cell identification, such as virus infection analysis, high-content cell screening, drug discovery, and morphometry. (C) 2019 Elsevier Ltd. All rights reserved.
机译:医学成像中先进技术的发展已使人体扫描到微观水平,使对细胞行为的研究更加复杂和深入。最近的研究集中在细胞异质性上,因为细胞间的差异总是存在于细胞群中,并且这种变异性包含有价值的信息。但是,识别每个细胞并不是一件容易的事,因为在从显微镜获取的图像中,有成簇的细胞相互接触。因此,分割阶段是细胞图像处理中相当困难的问题。尽管在文献中描述了几种用于细胞分割的方法,但是它们在过度分割,分割不足或识别错误方面具有缺点。因此,我们研究细胞分割的主要动机是开发一种新方法,以在准确识别所有相关元素与不插入分割伪像之间取得良好的折衷。本文提出了一种在荧光显微镜图像中进行细胞分割的新方法。建议的方法将著名的标记控制分水岭算法(MC-Watershed)与基于分水岭,拆分和合并分水岭(SM-Watershed)的新的两步方法相结合:在第一步或拆分阶段中,该算法使用单元格的固有特征(例如大小和凸度)识别群集,并使用分水岭将其分离。在第二步或合并阶段,它使用单元格的适当特征来识别过度分割的区域并消除分割。在应用我们的两步法之前,首先对输入图像进行预处理,然后使用MC-Watershed算法生成初始的分割图像。但是,此初始结果可能不适用于后续任务,例如单元格计数或特征提取,因为并非所有单元格都被分离,并且某些单元格可能会与背景错误地混淆。因此,我们的提案通过两步过程纠正了此问题,实现了高性能,过度分割和欠分割之间的适当权衡,并保留了单元的形状,而无需任何标记数据或依赖机器学习流程。后者优于为了获得相似结果而需要标记数据的最新技术,而标记数据可能并非对所有域都可用。使用两个单元格数据集来验证此方法,并使用传统指标和质量视觉评估将结果与文献中的其他方法进行比较。我们获得了90%的平均视觉准确度,并且F指数高于80%。该建议优于其他细胞分离技术,在过度分割和分割不足之间取得了可接受的平衡,这使其适用于细胞鉴定中的多种应用,例如病毒感染分析,高内涵细胞筛选,药物发现和形态测定。 (C)2019 Elsevier Ltd.保留所有权利。

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