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首页> 外文期刊>BMC Bioinformatics >Cell segmentation methods for label-free contrast microscopy: review and comprehensive comparison
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Cell segmentation methods for label-free contrast microscopy: review and comprehensive comparison

机译:无标记对比度显微镜的细胞分段方法:审查和全面比较

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摘要

Because of its non-destructive nature, label-free imaging is an important strategy for studying biological processes. However, routine microscopic techniques like phase contrast or DIC suffer from shadow-cast artifacts making automatic segmentation challenging. The aim of this study was to compare the segmentation efficacy of published steps of segmentation work-flow (image reconstruction, foreground segmentation, cell detection (seed-point extraction) and cell (instance) segmentation) on a dataset of the same cells from multiple contrast microscopic modalities. We built a collection of routines aimed at image segmentation of viable adherent cells grown on the culture dish acquired by phase contrast, differential interference contrast, Hoffman modulation contrast and quantitative phase imaging, and we performed a comprehensive comparison of available segmentation methods applicable for label-free data. We demonstrated that it is crucial to perform the image reconstruction step, enabling the use of segmentation methods originally not applicable on label-free images. Further we compared foreground segmentation methods (thresholding, feature-extraction, level-set, graph-cut, learning-based), seed-point extraction methods (Laplacian of Gaussians, radial symmetry and distance transform, iterative radial voting, maximally stable extremal region and learning-based) and single cell segmentation methods. We validated suitable set of methods for each microscopy modality and published them online. We demonstrate that image reconstruction step allows the use of segmentation methods not originally intended for label-free imaging. In addition to the comprehensive comparison of methods, raw and reconstructed annotated data and Matlab codes are provided.
机译:由于其无损性质,无标签成像是研究生物过程的重要策略。然而,常规的微观技术类似相位对比度或DIC遭受暗影铸造的伪影,使自动分割挑战。本研究的目的是将公开步骤的分割工作流(图像重建,前景分段,细胞检测(SEED点提取)和小区(实例)分段)的分割效能进行比较来自多个单元的数据集对比度微观方式。我们构建了一系列常规的惯例,其在由相位对比,差分干扰对比度,霍夫曼调制对比度和定量相位成像获得的培养皿上生长的可活粘附细胞的图像分割,我们对适用于标签的可用分割方法进行了全面的比较 - 免费数据。我们展示了执行图像重建步骤至关重要,从而实现了最初不适用于无标签图像的分段方法。此外,我们进一步比较了前景分割方法(阈值,特征提取,水平集,平面切割,学习的),种子点提取方法(高斯的Laplacian,径向对称和距离变换,迭代径向投票,最大稳定的极值区域和基于学习的)和单个单元分段方法。我们验证了每个显微镜模型的合适方法集,并在线发布它们。我们证明图像重建步骤允许使用不最初用于无标记成像的分段方法。除了对方法的全面比较外,还提供了原始和重建的注释数据和MATLAB代码。

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