Literature DB >> 19320193

Comparative analysis of methods for accurate recognition of cells through nuclei staining of Ki-67 in neuroblastoma and estrogen/progesterone status staining in breast cancer.

Tomasz Markiewicz1, Piotr Wisniewski, Stanislaw Osowski, Janusz Patera, Wojciech Kozlowski, Robert Koktysz.   

Abstract

OBJECTIVE: To compare 2 automatic systems for the recognition and counting of 2 different families of cells through nuclei staining: Ki-67 in neuroblastoma and estrogen/progesterone (ER/PR) status staining in breast cancer. STUDY
DESIGN: Morphology-based segmentation strategies and the Support Vector Machine approach have been used for the accurate extraction and recognition of the cells. To achieve the highest possible accuracy, 2 specialized systems specially suited for Ki-67 and ER/PR staining have been developed.
RESULTS: The testing set of histologic slides of Ki-67 and ER/PR staining has been assessed by our system and the results compared to the score of a human expert. The results are in good agreement. The average differences are within the acceptable limits of 10%. The main advantage of the system is its absolute repeatability of scores.
CONCLUSION: The proposed computer-assisted automatic system of cell extraction and recognition through nuclei staining has confirmed sufficient accuracy for the tested images and may provide a useful tool for cell recognition and counting on the basis of histologic slides with Ki-67 and ER/PR staining.

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Year:  2009        PMID: 19320193

Source DB:  PubMed          Journal:  Anal Quant Cytol Histol        ISSN: 0884-6812            Impact factor:   0.302


  6 in total

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6.  Comparison of the manual, semiautomatic, and automatic selection and leveling of hot spots in whole slide images for Ki-67 quantification in meningiomas.

Authors:  Zaneta Swiderska; Anna Korzynska; Tomasz Markiewicz; Malgorzata Lorent; Jakub Zak; Anna Wesolowska; Lukasz Roszkowiak; Janina Slodkowska; Bartlomiej Grala
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  6 in total

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