Abstract

BackgroundThe 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.MethodsBiopsy 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.ResultsWe 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%.ConclusionsBy 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.

Highlights

  • The detection of suspicious microcalcifications on mammography represents one of the earliest signs of a malignant breast tumor

  • We considered suitable the use of Multiple instance-learning (MIL) algorithms for sample classification given the ambiguity in MCs inheriting sample labels

  • When using all the extracted features, we reached an accuracy of 77.03%, sensitivity of 60.46%, specificity of 89.77%, F-score of 76.35% and Area Under the Curve (AUC) value of 80.10% with Random Forest (RF) classifier

Read more

Summary

Introduction

The detection of suspicious microcalcifications on mammography represents one of the earliest signs of a malignant breast tumor. Historic evidence related to early indicators of breast cancer, dates back to 1913 when Soloman reported microcalcifications’ (MC) presence in the radiographic examination of a mastectomy specimen [2]. MCs are present in approximately 55% of all nonpalpable breast cancers and responsible for the detection of 85-95% of cases of ductal carcinoma in situ (DCIS) during mammogram scans [4, 5]. They are present in common benign lesions [6] (i.e: breast abnormalities, inflammatory lesions, fibrocystic changes, etc)

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call