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Computerized Scheme for Histological Classification of Masses with Architectural Distortions in Ultrasonographic Images

机译:超声图像中具有结构畸变的肿块组织学分类的计算机化方案

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Architectural distortion is an important ultrasonographic indicator of breast cancer. However, it is difficult for clinicians to determine whether a given lesion is malignant because such distortions can be subtle in ultrasonographic images. In this paper, we report on a study to develop a computerized scheme for the histological classification of masses with architectural distortions as a differential diagnosis aid. Our database consisted of 72 ultrasonographic images obtained from 47 patients whose masses had architectural distortions. This included 51 malignant (35 invasive and 16 non-invasive carcinomas) and 21 benign masses. In the proposed method, the location of the masses and the area occupied by them were first determined by an experienced clinician. Fourteen objective features concerning masses with architectural distortions were then extracted automatically by taking into account subjective features commonly used by experienced clinicians to describe such masses. The k-nearest neighbors (k-NN) rule was finally used to distinguish three histological classifications. The proposed method yielded classification accuracy values of 91.4% (32/35) for invasive carcinoma, 75.0% (12/16) for noninvasive carcinoma, and 85.7% (18/21) for benign mass, respectively. The sensitivity and specificity values were 92.2% (47/51) and 85.7% (18/21), respectively. The positive predictive values (PPV) were 88.9% (32/36) for invasive carcinoma and 85.7% (12/14) for noninvasive carcinoma whereas the negative predictive values (NPV) were 81.8% (18/22) for benign mass. Thus, the proposed method can help the differential diagnosis of masses with architectural distortions in ultrasonographic images.
机译:建筑变形是乳腺癌的重要超声检查指标。但是,临床医生很难确定给定的病变是否是恶性的,因为这种畸变在超声图像中可能微妙。在本文中,我们报告了一项研究,以开发一种计算机化的方案,对具有建筑畸变的肿块进行组织学分类,以作为鉴别诊断的辅助手段。我们的数据库由从47例肿块具有建筑畸变的患者获得的72幅超声图像组成。其中包括51例恶性肿瘤(35例浸润性癌和16例非浸润性癌)和21例良性肿块。在提出的方法中,首先由经验丰富的临床医生确定肿块的位置及其所占的面积。然后,通过考虑经验丰富的临床医生通常用来描述此类质量的主观特征,自动提取涉及具有建筑变形的质量的14个客观特征。最后,使用k最近邻居(k-NN)规则来区分三种组织学分类。所提出的方法对于浸润性癌的分类准确度值为91.4%(32/35),对于非浸润性癌的分类准确度值分别为75.0%(12/16)和良性肿块的分类准确度值分别为85.7%(18/21)。敏感性和特异性值分别为92.2%(47/51)和85.7%(18/21)。浸润性癌的阳性预测值(PPV)为88.9%(32/36),非浸润性癌的阳性预测值(NPV)为81.8%(18/22),为良性肿块。因此,所提出的方法可以帮助对超声图像中具有建筑畸变的肿块进行鉴别诊断。

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