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Tumor hypoxia and blood vessel detection: an image analysis technique for simultaneous tumor hypoxia grading and blood vessel detection in tissue sections

Authors :
Constantinos G, Loukas
George D, Wilson
Borivoj, Vojnovic
Alf, Linney
Source :
Annals of the New York Academy of Sciences. 980
Publication Year :
2003

Abstract

We have developed a multistage image analysis technique for the simultaneous segmentation of blood vessels and hypoxic regions in dual-stained tumor tissue sections. The algorithm, which is integrated in a task-oriented image analysis system developed on-site, initially uses the K-nearest neighbor classification rule in order to label the image pixels. Classification is based on a training set selected from manually drawn regions corresponding to the areas of interest. If the output image contains a significant number of misclassified pixels, the user has the option to apply a series of specific problem-designed routines (texture analysis, fuzzy c-means clustering, and edge detection) in order to improve the final segmentation result. Validation experiments indicate that the algorithm can robustly detect these biological features, even in tissue sections with a very low quality of staining. This approach has also been combined with other image analysis based procedures in order to objectively obtain quantitative measurements of potential clinical interest.

Details

ISSN :
00778923
Volume :
980
Database :
OpenAIRE
Journal :
Annals of the New York Academy of Sciences
Accession number :
edsair.pmid..........40d71a16a5413cb41d7e379dbd4f356f