Morphological Separation Of Clustered Nuclei In Histological Images

IMAGE ANALYSIS AND RECOGNITION (ICIAR 2016)(2016)

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摘要
Automated nuclear segmentation is essential in the analysis of most microscopy images. This paper presents a novel concavity-based method for the separation of clusters of nuclei in binary images. A heuristic rule, based on object size, is used to infer the existence of merged regions. Concavity extrema detected along the merged-cluster boundary are used to guide the separation of overlapping regions. Inner split contours of multiple concavities along the nuclear boundary are estimated via a series of morphological procedures. The algorithm was evaluated on images of H400 cells in monolayer cultures and compares favourably with the state-of-art watershed method commonly used to separate overlapping nuclei.
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关键词
Histological images,Nuclear segmentation,Concavity analysis,Mathematical morphology
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