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Identification of clustered microcalcifications on digitized mammograms using morphology and topography-based computer-aided detection schemes. A preliminary experiment.

作者信息

Chang Y H, Zheng B, Good W F, Gur D

机构信息

Imaging Technology Division, Allegheny University of the Health Sciences, Pittsburgh, Pennsylvania 15212-4772, USA.

出版信息

Invest Radiol. 1998 Oct;33(10):746-51. doi: 10.1097/00004424-199810000-00006.

Abstract

RATIONALE AND OBJECTIVES

A mathematical morphology-based computer-aided detection (CAD) scheme for the identification of clustered microcalcifications was developed and tested. The potential for improving either sensitivity or specificity by combining the results with those previously reported was investigated.

METHODS

The CAD scheme presented here is based on mathematical morphology and a series of simple rule-based criteria for the identification of clustered microcalcifications. A database of 105 digitized mammograms was used for training and rule setting of the scheme. A test set of 191 digitized mammograms was used to evaluate its performance. The same test set had been used to evaluate a multilayer, topography-based scheme. The results obtained by the two schemes were then combined using logical OR and AND operations.

RESULTS

The morphology-based and topography-based CAD schemes performed at sensitivities of 82.9% and 89.5%, with false-positive detection rates of 1.3 and 0.4 per image, respectively. A logical OR operation resulted in 95.4% sensitivity. An AND operation achieved 76.2% sensitivity, with no false identifications on 93% of images.

CONCLUSIONS

By combining the results of the morphology-based and the topography-based schemes, either sensitivity or specificity can be improved.

摘要

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