Histological Grading of Breast Cancer Malignancy Using Automated Image Analysis and Subsequent Machine Learning

Authors

  • Dominik Lenz

  • Paulo César Ribeiro Boasquevisque

  • Robson Dettmann Jarske

  • Célio Siman Mafra Nunes

  • Isabela Passos Pereira Quintaes

  • Samuel Santana Sodré

DOI:

https://doi.org/10.34257/GJMRCVOL23IS3PG39

Keywords:

breast cancer; image analysis; machine learning; cellular diagnosis; histological malignancy grade

Abstract

Aim The objective of this study was to determine the histological degree of breast cancer malignancy using the automated principle of machine learning with the free access computer programs CellProfiler and Tanagra Methods and results Digital photographs of neoplastic tissue histological slides were obtained from 224 women with breast cancer The digitized images were transferred to the CellProfiler software and treated according to a predetermined algorithm resulting in a database exported to the Tanagra software for further automated classification of the histological degree of malignancy The Kappa index of agreement between the medical pathologist and the automated analysis performed in the Tanagra software was 0 91 for the tubular score 0 55 for the nuclear score and 0 49 for the mitotic index score

How to Cite

Dominik Lenz, Paulo César Ribeiro Boasquevisque, Robson Dettmann Jarske, Célio Siman Mafra Nunes, Isabela Passos Pereira Quintaes, & Samuel Santana Sodré. (2023). Histological Grading of Breast Cancer Malignancy Using Automated Image Analysis and Subsequent Machine Learning. Global Journal of Medical Research, 23(C3), 39–45. https://doi.org/10.34257/GJMRCVOL23IS3PG39

Histological Grading of Breast Cancer Malignancy Using Automated Image Analysis and Subsequent Machine Learning

Published

2023-12-25