Improved automated early detection of breast cancer based on high resolution 3D micro-CT microcalcification images

Author:

Brahimetaj Redona,Willekens Inneke,Massart Annelien,Forsyth Ramses,Cornelis Jan,Mey Johan De,Jansen Bart

Abstract

Abstract Background The detection of suspicious microcalcifications on mammography represents one of the earliest signs of a malignant breast tumor. Assessing microcalcifications’ characteristics based on their appearance on 2D breast imaging modalities is in many cases challenging for radiologists. The aims of this study were to: (a) analyse the association of shape and texture properties of breast microcalcifications (extracted by scanning breast tissue with a high resolution 3D scanner) with malignancy, (b) evaluate microcalcifications’ potential to diagnose benign/malignant patients. Methods Biopsy samples of 94 female patients with suspicious microcalcifications detected during a mammography, were scanned using a micro-CT scanner at a resolution of 9 μm. Several preprocessing techniques were applied on 3504 extracted microcalcifications. A high amount of radiomic features were extracted in an attempt to capture differences among microcalcifications occurring in benign and malignant lesions. Machine learning algorithms were used to diagnose: (a) individual microcalcifications, (b) samples. For the samples, several methodologies to combine individual microcalcification results into sample results were evaluated. Results We could classify individual microcalcifications with 77.32% accuracy, 61.15% sensitivity and 89.76% specificity. At the sample level diagnosis, we achieved an accuracy of 84.04%, sensitivity of 86.27% and specificity of 81.39%. Conclusions By studying microcalcifications’ characteristics at a level of details beyond what is currently possible by using conventional breast imaging modalities, our classification results demonstrated a strong association between breast microcalcifications and malignancies. Microcalcification’s texture features extracted in transform domains, have higher discriminating power to classify benign/malignant individual microcalcifications and samples compared to pure shape-features.

Funder

Fonds Wetenschappelijk Onderzoek

Publisher

Springer Science and Business Media LLC

Subject

Cancer Research,Genetics,Oncology

Reference54 articles.

1. World Health Organization. Cancer Statistics 2020. http://gco.iarc.fr/today/data/factsheets/populations/900-world-fact-sheets.pdf. Accessed 14 May 2021.

2. Salomon A. Beitrage zur Pathologic und Klinik der Mammacarcinoma. Arch Klin Chir. 1913; 103:573–668.

3. Leborgne R. Diagnóstico de los tumores de la mama por la radiografía simple. 1949.

4. Stomper PC, Geradts J, Edge SB, Levine EG. Mammographic predictors of the presence and size of invasive carcinomas associated with malignant microcalcification lesions without a mass. Am J Roentgenol. 2003; 181(6):1679–84.

5. Bent CK, Bassett LW, D’Orsi CJ, Sayre JW. The positive predictive value of bi-rads microcalcification descriptors and final assessment categories. Am J Roentgenol. 2010; 194(5):1378–83.

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