Computer assisted enhancement of mammograms for detection of microcalcifications

L. Estevez, N. Kehtarnavaz
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引用次数: 5

Abstract

The presence of microcalcifications in mammograms provides an early indication of possible breast cancer. Because of the difficulty associated with visual identification of microcalcifications and the large volume of mammograms read per day, the radiologist stands a good chance of missing some small microcalcification clusters. Although several computer-assisted programs have been developed for the automatic detection of microcalcifications in mammograms, they often generate too many false positives. This paper presents a computer-assisted enhancement technique which is capable of coping with false positive samples. More specifically, a general-purpose clustering algorithm, called Issac (Interactive Selective and Adaptive Clustering), has been developed which achieves a compromise between sensitivity and generalization attributes of existing clustering algorithms. Issac comprises two parts: (i) selective clustering and (ii) interactive adaptation. The first part reduces the number of false positives by identifying sensitive sample domains in the feature space. The second part allows the radiologist to improve results by interactively identifying additional false positive or true negative samples. The clinical evaluation of the results has indicated that the developed enhancement technique has the potential of being an effective mechanism to bring microcalcification areas to the attention of the radiologist during a routine reading session of mammograms. Further clinical evaluation is being carried out for the purpose of full-scale clinical deployment.<>
用于检测微钙化的计算机辅助增强乳房x线照片
乳房x光检查中出现微钙化是可能患乳腺癌的早期迹象。由于视觉识别微钙化的困难和每天阅读的大量乳房x光片,放射科医生很有可能错过一些小的微钙化簇。虽然已经开发了一些计算机辅助程序来自动检测乳房x线照片中的微钙化,但它们经常产生太多的假阳性。本文提出了一种能够处理假阳性样本的计算机辅助增强技术。更具体地说,开发了一种通用聚类算法,称为Issac(交互式选择和自适应聚类),它在现有聚类算法的敏感性和泛化属性之间取得了折衷。Issac包括两个部分:(i)选择性聚类和(ii)交互适应。第一部分通过识别特征空间中的敏感样本域来减少误报的数量。第二部分允许放射科医生通过交互式识别额外的假阳性或真阴性样本来改善结果。对结果的临床评估表明,所开发的增强技术有潜力成为一种有效的机制,在常规乳房x光片阅读期间将微钙化区域引起放射科医生的注意。为了全面的临床部署,正在进行进一步的临床评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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