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17 March 2008Semiautomatic segmentation for the computer aided diagnosis of clustered microcalcifications
Screening mammography is recognized as the most effective tool for early breast cancer detection. However, its
application in clinical practice shows some of its weaknesses. While clustered microcalcifications are often an
early sign of breast cancer, the discrimination of benign from malignant clusters based on their appearance in
mammograms is a very difficult task. Hence, it is not surprising that typically only 15% to 30% of breast biopsies
performed on calcifications will be positive for malignancy. As this low positive predictive value of mammography
regarding the diagnosis of calcification clusters results in many unnecessary biopsies performed on benign
calcifications, we propose a novel computer aided diagnosis (CADx) approach with the goal to improve the reliability
of microcalcification classification. As effective automatic classification of microcalcification clusters relies
on good segmentations of the individual calcification particles, many approaches to the automatic segmentation
of individual particles have been proposed in the past. Because none of the fully automatic approaches seem to
result in optimal segmentations, we propose a novel semiautomatic approach that has automatic components but
also allows some interaction of the radiologist. Based on the resulting segmentations we extract a broad range
of features that characterize the morphology and distribution of calcification particles. Using regions of interest
containing either benign or malignant clusters extracted from the digital database for screening mammography
we evaluate the performance of our approach using a support vector machine and ROC analysis. The resulting
ROC performance is very promising and we show that the performance of our semiautomatic segmentation is
significantly higher than that of a comparable fully automatic approach.
Matthias Elter andChristian Held
"Semiautomatic segmentation for the computer aided diagnosis of clustered microcalcifications", Proc. SPIE 6915, Medical Imaging 2008: Computer-Aided Diagnosis, 691524 (17 March 2008); https://doi.org/10.1117/12.770146
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Matthias Elter, Christian Held, "Semiautomatic segmentation for the computer aided diagnosis of clustered microcalcifications," Proc. SPIE 6915, Medical Imaging 2008: Computer-Aided Diagnosis, 691524 (17 March 2008); https://doi.org/10.1117/12.770146