Combined adaptive enhancement and region-growing segmentation of breast masses on digitized mammograms
- 9 August 1999
- journal article
- Published by Wiley in Medical Physics
- Vol. 26 (8) , 1642-1654
- https://doi.org/10.1118/1.598658
Abstract
As an ongoing effort to develop a computer aid for detection of masses on mammograms, we recently designed an object-based region-growing technique to improve mass segmentation. This segmentation method utilizes the density-weighted contrast enhancement (DWCE) filter as a pre-processing step. The DWCE filter adaptively enhances the contrast between the breast structures and the background. Object-based region growing was then applied to each of the identified structures. The region-growing technique uses gray-scale and gradient information to adjust the initial object borders and to reduce merging between adjacent or overlapping structures. Each object is then classified as a breast mass or normal tissue based on extracted morphological and texture features. In this study we evaluated the sensitivity of this combined segmentation scheme and its ability to reduce false positive (FP) detections on a data set of 253 digitized mammograms, each of which contained a biopsy-proven breast mass. It was found that the segmentation scheme detected 98% of the 253 biopsy-proven breast masses in our data set. After final FP reduction, the detection resulted in 4.2 FP per image at a 90% true positive (TP) fraction and 2.0 FPs per image at an 80% TP fraction. The combined DWCE and object-based region growing technique increased the initial detection sensitivity, reduced merging between neighboring structures, and reduced the number of FP detections in our automated breast mass detection scheme.Keywords
This publication has 22 references indexed in Scilit:
- Automated detection of breast masses on mammograms using adaptive contrast enhancement and texture classificationMedical Physics, 1996
- Detection of spicules on mammogram based on skeleton analysisIEEE Transactions on Medical Imaging, 1996
- Detection of stellate distortions in mammogramsIEEE Transactions on Medical Imaging, 1996
- Markov random field for tumor detection in digital mammographyIEEE Transactions on Medical Imaging, 1995
- Computer-aided mammographic screening for spiculated lesions.Radiology, 1994
- Benefit of independent double reading in a population-based mammography screening program.Radiology, 1994
- Computer vision and artificial intelligence in mammography.American Journal of Roentgenology, 1994
- Computerized detection of masses in digital mammograms: Analysis of bilateral subtraction imagesMedical Physics, 1991
- An approach to automated detection of tumors in mammogramsIEEE Transactions on Medical Imaging, 1990
- REDUCTION IN MORTALITY FROM BREAST CANCER AFTER MASS SCREENING WITH MAMMOGRAPHYThe Lancet, 1985