Computer Assisted Immunohistochemical Score Prediction via Simplified Image Acquisition Technique
Author(s) -
Salam N. Jawad,
Bashar H. Abdullah
Publication year - 2017
Publication title -
journal of baghdad college of dentistry
Language(s) - English
Resource type - Journals
eISSN - 2311-5270
pISSN - 1817-1869
DOI - 10.12816/0038631
Subject(s) - stromal cell , immunohistochemistry , pathology , monoclonal antibody , stepwise regression , computer science , artificial intelligence , medicine , antibody , pattern recognition (psychology) , immunology
Background: techniques of image analysis have been used extensively to minimize interobserver variation of immunohistochemical scoring, yet; image acquisition procedures are often demanding, expensive and laborious. This study aims to assess the validity of image analysis to predict human observer’s score with a simplified image acquisition technique. Materials and methods: formalin fixedparaffin embedded tissue sections for ameloblastomas and basal cell carcinomas were immunohistochemically stained with monoclonal antibodies to MMP-2 and MMP-9. The extent of antibody positivity was quantified using Imagej® based application on low power photomicrographs obtained with a conventional camera. Results of the software were employed to predict human visual scoring results with stepwise multiple regression analysis. Results: the overall prediction of epithelial score depicted as r square value was 0.26 (p<0.001) which was obviously higher than that of stromal score (0.10; p<0.01). Epithelial and stromal MMP-2 score prediction was generally higher than that of MMP-9. Collectively, ameloblastomas had a more efficient score prediction compared to basal cell
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