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Using multimodal information for the segmentation of fluorescent micrographs with application to Virology and microbiology

机译:利用多峰信息对荧光显微照片进行分割,并应用于病毒学和微生物学

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In order to improve reproducibility and objectivity of fluorescence microscopy based experiments and to enable the evaluation of large datasets, flexible segmentation methods are required which are able to adapt to different stainings and cell types. This adaption is usually achieved by the manual adjustment of the segmentation methods parameters, which is time consuming and challenging for biologists with no knowledge on image processing. To avoid this, parameters of the presented methods automatically adapt to user generated ground truth to determine the best method and the optimal parameter setup. These settings can then be used for segmentation of the remaining images. As robust segmentation methods form the core of such a system, the currently used watershed transform based segmentation routine is replaced by a fast marching level set based segmentation routine which incorporates knowledge on the cell nuclei. Our evaluations reveal that incorporation of multimodal information improves segmentation quality for the presented fluorescent datasets.
机译:为了提高基于荧光显微镜的实验的可重复性和客观性,并能够评估大型数据集,需要灵活的分割方法,该方法能够适应不同的染色和细胞类型。通常通过手动调整分割方法参数来实现这种适应,这对于不了解图像处理知识的生物学家而言既耗时又具有挑战性。为了避免这种情况,提出的方法的参数会自动适应用户生成的地面真实情况,以确定最佳方法和最佳参数设置。然后可以将这些设置用于剩余图像的分割。由于健壮的分割方法形成了此类系统的核心,因此当前使用的基于分水岭变换的分割例程将被基于快速行进水平集的分割例程所取代,该例程将关于细胞核的知识纳入其中。我们的评估表明,多模态信息的结合可以改善所呈现荧光数据集的分割质量。

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