Literature DB >> 21158311

Multilevel learning-based segmentation of ill-defined and spiculated masses in mammograms.

Yimo Tao1, Shih-Chung B Lo, Matthew T Freedman, Erini Makariou, Jianhua Xuan.   

Abstract

PURPOSE: A learning-based approach integrating the use of pixel-level statistical modeling and spiculation detection is presented for the segmentation of mammographic masses with ill-defined margins and spiculations.
METHODS: The algorithm involves a multiphase pixel-level classification, using a comprehensive group of features computed from regional intensity, shape, and textures, to generate a mass-conditional probability map (PM). Then, the mass candidate, along with the background clutters consisting of breast fibroglandular and other nonmass tissues, is extracted from the PM by integrating the prior knowledge of shape and location of masses. A multiscale steerable ridge detection algorithm is employed to detect spiculations. Finally, all the object-level findings, including mass candidate, detected spiculations, and clutters, along with the PM, are integrated by graph cuts to generate the final segmentation mask.
RESULTS: The method was tested on 54 masses (51 malignant and 3 benign), all with ill-defined margins and irregular shape or spiculations. The ground truth delineations were provided by five experienced radiologists. Area overlapping ratio of 0.689 (+/- 0.160) and 0.540 (+/- 0.164) were obtained for segmenting entire mass and margin portion only, respectively. Williams index of area and contour based measurements indicated that the segmentation results of the algorithm agreed well with the radiologists' delineation.
CONCLUSIONS: The proposed approach could closely delineate the mass body. Most importantly, it is capable of including mass margin and its spicule extensions which are considered as key features for breast lesion analyses.

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Year:  2010        PMID: 21158311      PMCID: PMC2988833          DOI: 10.1118/1.3490477

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  17 in total

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3.  Linear structures in mammographic images: detection and classification.

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4.  Steepest changes of a probability-based cost function for delineation of mammographic masses: a validation study.

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10.  Improved dynamic-programming-based algorithms for segmentation of masses in mammograms.

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4.  Dependence of Shape-Based Descriptors and Mass Segmentation Areas on Initial Contour Placement Using the Chan-Vese Method on Digital Mammograms.

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