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Application of the computer vision system for evaluation of pathomorphological images

Vitaliy Gargin, Radiy Radutny, Ganna Titova, Dmytro Bibik, Aleksey Kirichenko, Oleksii Bazhenov

202061 citationsDOI

Abstract

Work of medical personal with images is one of sought-after skill with insufficient amount of specialists that realized in their overloading and possible. In that connection purpose of our work was implementation of the computer vision system for evaluation of pathomorphological images as pathologists are most scarce specialist in modern medicine. We performed programmed and manual study of pathomorpological slides (immunohistochemical and cytological) with application of machine vision systems for counting of selected objects and comparison with previously manual estimation. The software was written in the Python 2.7 programming language using the OpenCV library for other purposes was modified. Two features were used to determine the nuclei and cells: the characteristic color range and the ratio of the area of the object to the square of its perimeter. We obtain average relative error of the suggested soft version about 9.2%, so accuracy of detection of cancer markers is 90.8% that is sufficient for the initial examination of a patient with screening examination of large number of patients even in so difficult images as immunohistochemistry.

Topics & Concepts

Python (programming language)Computer scienceArtificial intelligenceComputer visionSoftwareMachine visionOperating systemAdvanced Scientific Research MethodsMedical and Biological SciencesEngineering Technology and Methodologies
Application of the computer vision system for evaluation of pathomorphological images | Litcius