Abstract

Segmentation of clinically relevant regions from potentially noisy images represents a significant challenge in the field of mammography. We propose novel approaches based on the WaveCluster clustering algorithm for segmenting both the breast profile in the presence of significant acquisition noise and segmenting regions of interest (ROIs) within the breast. Using prior manual segmentations performed by domain experts as ground truth data, we apply our method to 150 film mammograms with significant acquisition noise from the University of South Florida’s Digital Database for Screening Mammography. We then apply a similar segmentation procedure to detect the position and extent of suspicious regions of interest. Our approach was able to segment the breast profile from all 150 images, leaving minor residual noise adjacent to the breast in three. Performance on ROI extraction was also excellent, with 81% sensitivity and 0.96 false positives per image when measured against manually segmented ground truth ROIs. When not utilizing image morphology, our approach ran in linear time with the input size. These results highlight the potential of WaveCluster as a useful addition to the mammographic segmentation repertoire.

Highlights

  • IntroductionSegmentation of clinically relevant regions of interest (ROIs) represents a significant challenge in the medical imaging domain, central to the performance of computer-assisted diagnostic systems

  • Segmentation of clinically relevant regions of interest (ROIs) represents a significant challenge in the medical imaging domain, central to the performance of computer-assisted diagnostic systems.Within the context of screening mammography, segmentation is typically performed to extract and delineate possible lesions from the surrounding normal tissue

  • The transition to full-field digital mammography is ameliorating the need for mammographic background removal, Algorithms 2012, 5 segmentation of the entire breast from a film mammogram with potentially significant acquisition noise represents a challenge in the many facilities which are as yet unable to transition to fully digital solutions, and in mining legacy data

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Summary

Introduction

Segmentation of clinically relevant regions of interest (ROIs) represents a significant challenge in the medical imaging domain, central to the performance of computer-assisted diagnostic systems. The transition to full-field digital mammography is ameliorating the need for mammographic background removal, Algorithms 2012, 5 segmentation of the entire breast from a film mammogram with potentially significant acquisition noise represents a challenge in the many facilities which are as yet unable to transition to fully digital solutions, and in mining legacy data. These segmentation tasks are related: as we will show, the same approaches used to segment the entire breast profile are useful for ROI extraction. In the remainder of this paper, we demonstrate the efficacy of the approach in the domain of mammographic segmentation

Mammographic Segmentation
WaveCluster Algorithm
WaveCluster Parameters
Dataset
Breast Profile Segmentation
ROI Segmentation
Performance
Comparison
Conclusions
Full Text
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