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Computer-aided diagnosis scheme for histological classification of clustered microcalcifications on magnification mammograms.

机译:计算机辅助诊断方案,用于在放大的乳房X光照片上对簇状微钙化组织进行组织学分类。

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The histological classification of clustered microcalcifications on mammograms can be difficult, and thus often require biopsy or follow-up. Our purpose in this study was to develop a computer-aided diagnosis scheme for identifying the histological classification of clustered microcalcifications on magnification mammograms in order to assist the radiologists' interpretation as a "second opinion." Our database consisted of 58 magnification mammograms, which included 35 malignant clustered microcalcifications (9 invasive carcinomas, 12 noninvasive carcinomas of the comedo type, and 14 noninvasive carcinomas of the noncomedo type) and 23 benign clustered microcalcifications (17 mastopathies and 6 fibroadenomas). The histological classifications of all clustered microcalcifications were proved by pathologic diagnosis. The clustered microcalcifications were first segmented by use of a novel filter bank and a thresholding technique. Five objective features on clustered microcalcifications were determined by taking into account subjective features that experienced the radiologists commonly use to identify possible histological classifications. The Bayes decision rule with five objective features was employed for distinguishing between five histological classifications. The classification accuracies for distinguishing between three malignant histological classifications were 77.8% (7/9) for invasive carcinoma, 75.0% (9/12) for noninvasive carcinoma of the comedo type, and 92.9% (13/14) for noninvasive carcinoma of the noncomedo type. The classification accuracies for distinguishing between two benign histological classifications were 94.1% (16/17) for mastopathy, and 100.0% (6/6) for fibroadenoma. This computerized method would be useful in assisting radiologists in their assessments of clustered microcalcifications.
机译:乳房X线照片上聚集的微钙化的组织学分类可能很困难,因此通常需要进行活检或随访。我们在这项研究中的目的是开发一种计算机辅助诊断方案,以在放大的X线照片上识别成簇的微钙化的组织学分类,以帮助放射科医生将其解释为“第二意见”。我们的数据库由58个放大的乳房X线照片组成,其中包括35个恶性簇状微钙化(9个浸润癌,12个粉刺类型的非浸润性癌和14个非粉刺类型的非浸润性癌)和23个良性簇状微钙化(17个乳腺病和6个纤维腺瘤)。通过病理诊断证实了所有聚集的微钙化的组织学分类。首先通过使用新型滤器组和阈值化技术对成簇的微钙化进行细分。通过考虑放射科医师通常用于识别可能的组织学分类的经验性主观特征,确定了簇状微钙化的五个客观特征。采用具有五个客观特征的贝叶斯决策规则来区分五个组织学分类。区分三种恶性组织学分类的分类准确度是浸润性癌为77.8%(7/9),粉刺型非浸润性癌为75.0%(9/12),非浸润性癌为92.9%(13/14)。 noncomedo类型。区分两种良性组织学分类的乳腺病变的准确性为94.1%(16/17),而纤维腺瘤则为100.0%(6/6)。这种计算机化的方法将有助于放射线医师评估成簇的微钙化。

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