Title of article :
Optimization of Classification Strategies of Acetowhite Temporal Patterns towards Improving Diagnostic Performance of Colposcopy
Author/Authors :
Gutiérrez-Fragoso, Karina Universidad Veracruzana - Xalapa, Mexico , Acosta-Mesa, Héctor Gabriel Universidad Veracruzana - Xalapa, Mexico , Cruz-Ramírez, Nicandro Universidad Veracruzana - Xalapa, Mexico , Hernández-Jiménez, Rodolfo Obstetrician and Gynecologist - Private Practice - Xalapa, Mexico
Abstract :
Efforts have been being made to improve the diagnostic performance of colposcopy, trying to help better diagnose cervical cancer,
particularly in developing countries. However, improvements in a number of areas are still necessary, such as the time it takes to
process the full digital image of the cervix, the performance of the computing systems used to identify different kinds of tissues,
and biopsy sampling. In this paper, we explore three different, well-known automatic classification methods (k-Nearest Neighbors,
Na¨ıve Bayes, and C4.5), in addition to different data models that take full advantage of this information and improve the diagnostic
performance of colposcopy based on acetowhite temporal patterns. Based on the ROC and PRC area scores, the k-Nearest Neighbors
and discrete PLA representation performed better than other methods. The values of sensitivity, specificity, and accuracy reached
using this method were 60% (95% CI 50–70), 79% (95% CI 71–86), and 70% (95% CI 60–80), respectively. The acetowhitening
phenomenon is not exclusive to high-grade lesions, and we have found acetowhite temporal patterns of epithelial changes that are
not precancerous lesions but that are similar to positive ones. These findings need to be considered when developing more robust
computing systems in the future.
Keywords :
Colposcopy , Temporal , DNA
Journal title :
Computational and Mathematical Methods in Medicine