An supervised learning method for overlapping cells
Pengfei Shen,Jie Yang +1 more
- 20 Apr 2015
- pp 1071-1075
About: This article is published in International Conference on Mechatronics. The article was published on 20 Apr 2015. and is currently open access. The article focuses on the topics: Supervised learning & Template matching.
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TL;DR: A method for distinguishing between follicular lesions of the thyroid based on nuclear morphology using an optimal transport-based linear embedding for segmented nuclei, together with an adaptation of existing classification methods is described.
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Cancer diagnosis by nuclear morphometry using spatial information
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TL;DR: A generic method for segmenting microscopy images based on supervised statistical modeling is described, using example input segmentations to learn a statistical model of the shape and texture of the structures to be segmented.
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