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A Novel Dictionary Based Computer Vision Method for the Detection of Cell Nuclei

机译:基于字典的新型计算机视觉检测细胞核方法

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摘要

Cell nuclei detection in fluorescent microscopic images is an important and time consuming task in a wide range of biological applications. Blur, clutter, bleed through and partial occlusion of nuclei make individual nuclei detection a challenging task for automated image analysis. This paper proposes a novel and robust detection method based on the active contour framework. Improvement over conventional approaches is achieved by exploiting prior knowledge of the nucleus shape in order to better detect individual nuclei. This prior knowledge is defined using a dictionary based approach which can be formulated as the optimization of a convex energy function. The proposed method shows accurate detection results for dense clusters of nuclei, for example, an F-measure (a measure for detection accuracy) of 0.96 for the detection of cell nuclei in peripheral blood mononuclear cells, compared to an F-measure of 0.90 achieved by state-of-the-art nuclei detection methods.
机译:在许多生物学应用中,荧光显微图像中的细胞核检测是一项重要且耗时的任务。核的模糊,混乱,渗出和部分阻塞使单个核的检测成为自动化图像分析的一项艰巨任务。本文提出了一种基于主动轮廓框架的新颖,鲁棒的检测方法。通过利用核形状的先验知识以更好地检测单个核,可以实现对常规方法的改进。使用基于字典的方法定义该先验知识,该方法可以公式化为凸能量函数的优化。所提出的方法显示出对密集核簇的准确检测结果,例如,用于检测外周血单核细胞中细胞核的F量度(检测准确性的量度)为0.96,而实现的F量度为0.90通过最新的核检测方法。

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