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Performance of CADx on a Large Clinical Database ofFFDM Images

机译:CADx在大型FFDM图像临床数据库中的性能

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摘要

The purpose of this study is to evaluate the performance of computer-aided diagnosis (CADx) methods for use with images from full-field digital mammography (FFDM) for breast mass lesion classification. A total of 739 FFDM images, including 287 breast mass lesions, were retrospectively collected under an institutional review board approved protocol. All mass lesion margins were delineated by an expert breast radiologist and were used, along with the pathology, as truth in the subsequent evaluation. Our computerized image analysis method for radiologist-indicated lesions consists of several steps: 1) automatic extraction of the lesion from the parenchymal background using computerized segmentation methods; 2) automatic extraction of various lesion features (mathematical descriptors) from image data of the lesions and surrounding tissues; and 3) merging of selected features into an estimate of the probability of malignancy using a Bayesian artificial neural network classifier. The features were selected using a stepwise feature selection procedure. Performance of the CADx system in the task of differentiating between malignant and benign lesions was evaluated using receiver operating characteristic (ROC) analysis. An AUC value of 0.83 was obtained in the task of distinguishing between malignant and benign mass lesions in a leave-one-out by case evaluation with dual-stage segmentation method on the entire FFDM dataset. Results show that the computerized analysis methods for the diagnosis of breast lesions on FFDM are promising, and can potentially be used to aid clinicians in the diagnostic interpretation of FFDM.
机译:这项研究的目的是评估计算机辅助诊断(CADx)方法与用于乳腺肿块病变分类的全场数字乳房X线照片(FFDM)图像一起使用的性能。根据机构审查委员会批准的方案,回顾性收集了739张FFDM图像,包括287个乳腺肿块病变。由乳腺放射线专家划定了所有的肿块病灶边缘,并将其与病理学一起用作随后评估中的真相。我们针对放射科医生指示的病变的计算机图像分析方法包括以下几个步骤:1)使用计算机分割方法从实质背景中自动提取病变; 2)从病变和周围组织的图像数据中自动提取各种病变特征(数学描述符);和3)使用贝叶斯人工神经网络分类器将选定特征合并到恶性概率估计中。使用逐步特征选择过程选择特征。使用接收器工作特征(ROC)分析评估了CADx系统在区分恶性和良性病变方面的性能。通过在整个FFDM数据集上通过双阶段分割方法进行病例评估来区分遗忘症中的恶性肿块和良性肿块,获得的AUC值为0.83。结果表明,用于FFDM的乳腺病变诊断的计算机分析方法是有前途的,并且可以潜在地用于帮助临床医生对FFDM进行诊断解释。

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