Artículos de revistas
Fibroglandular Tissue Quantification in Mammography by Optimized Fuzzy C-Means with Variable Compactness
Fecha
2017-08-01Registro en:
Irbm. New York: Elsevier Science Inc, v. 38, n. 4, p. 228-233, 2017.
1959-0318
10.1016/j.irbm.2017.05.002
WOS:000410462400010
WOS000410462400010.pdf
Autor
Universidade Estadual Paulista (Unesp)
Univ Clermont Auvergne
Institución
Resumen
Background: Mammography is a wordwild image modality used to diagnose breast cancer, even for asymptomatic women. Due to its large availability, mammograms can be used to measure breast density and to predict cancer development. Methods: We developed a methodology to estimate breast density using post-processed digital mammogram. Our automatic approach utilizes an optimized Fuzzy C-Means with variable compactness algorithm to classify and quantify fibroglandular tissue in mammograms. Results: Fibroglandular tissue percentage estimation by our method has been compared with BI-RADS assessment from radiologist and achieved 67.8% of correct classification, with Spearman's correlation coefficient of p = 0.618, for p < 0.001. Furthermore, a Bland Altman statistics showed no significant differences (bias of -0.20 +/- 1.52) between both methods, indicating that the assessment widely used in clinical routine is consistent with the results generated by the algorithms. Cohen's kappa coefficient comparing the performance of the algorithm with the visual assessment for the different BI-RADS scores was 0.47 suggesting a moderate agreement. Conclusion: Then, our methodology showed to be robust and accurate when compared with visual assessment. Furthermore, our methodology is fully automatic and reproducible, avoiding inter and intra observers variation, which has a potential to be implemented in clinical routine. (C) 2017 AGBM. Published by Elsevier Masson SAS. All rights reserved.