Title :
Automated seeded lesion segmentation on digital mammograms
Author :
Kupinski, Matthew A. ; Giger, Maryellen L.
Author_Institution :
Dept. of Radiol., Chicago Univ., IL, USA
Abstract :
Segmenting lesions is a vital step in many computerized mass-detection schemes for digital (or digitized) mammograms. The authors have developed two novel lesion segmentation techniques-one based on a single feature called the radial gradient index (RGI) and one based on simple probabilistic models to segment mass lesions, or other similar nodular structures, from surrounding background. In both methods a series of image partitions is created using gray-level information as well as prior knowledge of the shape of typical mass lesions. With the former method the partition that maximizes the RGI is selected. In the latter method, probability distributions for gray-levels inside and outside the partitions are estimated, and subsequently used to determine the probability that the image occurred for each given partition. The partition that maximizes this probability is selected as the final lesion partition (contour). The authors tested these methods against a conventional region growing algorithm using a database of biopsy-proven, malignant lesions and found that the new lesion segmentation algorithms more closely match radiologists´ outlines of these lesions. At an overlap threshold of 0.30, gray level region growing correctly delineates 62% of the lesions in the authors´ database while the RGI and probabilistic segmentation algorithms correctly segment 92% and 96% of the lesions, respectively.
Keywords :
cancer; diagnostic radiography; image segmentation; mammography; medical image processing; automated seeded lesion segmentation; biopsy-proven malignant lesions; computerized mass-detection schemes; conventional region growing algorithm; digital mammograms; final lesion partition; gray-level information; image partitions series; medical diagnostic imaging; nodular structures; radiologists´ outlines; simple probabilistic models; typical mass lesions; Algorithm design and analysis; Data mining; Image segmentation; Lesions; Partitioning algorithms; Performance analysis; Probability distribution; Radiology; Shape; Testing; Algorithms; Breast Neoplasms; Humans; Mammography; Radiographic Image Enhancement;
Journal_Title :
Medical Imaging, IEEE Transactions on