Automatic cell segmentation using a shape-classification model in immunohistochemically stained cytological images

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Abstract

This paper presents a segmentation method for detecting cells in immunohistochemically stained cytological images. A two-phase approach to segmentation is used where an unsupervised clustering approach coupled with cluster merging based on a fitness function is used as the first phase to obtain a first approximation of the cell locations. A joint segmentation- classification approach incorporating ellipse as a shape model is used as the second phase to detect the final cell contour. The segmentation model estimates a multivariate density function of low-level image features from training samples and uses it as a measure of how likely each image pixel is to be a cell. This estimate is constrained by the zero level set, which is obtained as a solution to an implicit representation of an ellipse. Results of segmentation are presented and compared to ground truth measurements. Copyright © 2008 The Institute of Electronics, Information and Communication Engineers.

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APA

Shah, S. (2008). Automatic cell segmentation using a shape-classification model in immunohistochemically stained cytological images. In IEICE Transactions on Information and Systems (Vol. E91-D, pp. 1955–1962). Institute of Electronics, Information and Communication, Engineers, IEICE. https://doi.org/10.1093/ietisy/e91-d.7.1955

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