Abstract

Computer-aided diagnosis (CAD) has long become an integral part of radiological management of breast disease, facilitating a number of important clinical applications, including quantitative assessment of breast density and early detection of malignancies based on X-ray mammography. Common to such applications is the need to automatically discriminate between breast tissue and adjacent anatomy, with the latter being predominantly represented by pectoralis major (or pectoral muscle). Especially in the case of mammograms acquired in the mediolateral oblique (MLO) view, the muscle is easily confusable with some elements of breast anatomy due to their morphological and photometric similarity. As a result, the problem of automatic detection and segmentation of pectoral muscle in MLO mammograms remains a challenging task, innovative approaches to which are still required and constantly searched for. To address this problem, the present paper introduces a two-step segmentation strategy based on a combined use of data-driven prediction (deep learning) and graph-based image processing. In particular, the proposed method employs a convolutional neural network (CNN) which is designed to predict the location of breast-pectoral boundary at different levels of spatial resolution. Subsequently, the predictions are used by the second stage of the algorithm, in which the desired boundary is recovered as a solution to the shortest path problem on a specially designed graph. The proposed algorithm has been tested on three different datasets (i.e., MIAS, CBIS-DDSm, and InBreast) using a range of quantitative metrics. The results of comparative analysis show considerable improvement over state-of-the-art, while offering the possibility of model-free and fully automatic processing. The average values of dice similarity coefficient (DSC) and accuracy (ACC) on the mentioned three datasets are 97.22 ± 1.96% and 99.64±.27%, respectively.

Highlights

  • B REAST cancer (BC) is the most widespread malignancy in women worldwide

  • As it was mentioned earlier, the proposed method for breast segmentation has been tested on three public datasets (MIAS [25], InBreast [26] and CBIS-DDSM [27]), containing both scanned film and digital mammograms acquired from different subjects under various settings

  • The results indicate that the proposed method results in more accurate reconstruction in terms of False positive rate (FPR) and False negative rate (FNR)

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Summary

Introduction

Even though since the introduction of screening X-ray mammography the mortality from BC has been reduced by more than 40%, the disease keeps claiming around 400,000 lives around the globe every year [1]. To further reduce the fatality rates requires application of more accurate methods of detection of breast disease in screening mammograms. Analysis and interpretation of large amounts of mammographic data may be a challenging task for the radiologists, in which case they often opt to rely on computer-aided diagnosis (CAD) systems which render the problem far more manageable. CAD systems play an increasingly important role in detection and classification of breast lesions, especially in their early pathological stages, where they might be missed or overlooked by a human interpreter [3]

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