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Prediction of occult invasive disease in ductal carcinoma in situ using computer-extracted mammographic features

机译:使用计算机提取的乳房X线图特征预测导管癌癌中的肠道肠道疾病

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Predicting the risk of occult invasive disease in ductal carcinoma in situ (DCIS) is an important task to help address the overdiagnosis and overtreatment problems associated with breast cancer. In this work, we investigated the feasibility of using computer-extracted mammographic features to predict occult invasive disease in patients with biopsy proven DCIS. We proposed a computer-vision algorithm based approach to extract mammographic features from magnification views of full field digital mammography (FFDM) for patients with DCIS. After an expert breast radiologist provided a region of interest (ROI) mask for the DCIS lesion, the proposed approach is able to segment individual microcalcifications (MCs), detect the boundary of the MC cluster (MCC), and extract 113 mammographic features from MCs and MCC within the ROI. In this study, we extracted mammographic features from 99 patients with DCIS (74 pure DCIS; 25 DCIS plus invasive disease). The predictive power of the mammographic features was demonstrated through binary classifications between pure DCIS and DCIS with invasive disease using linear discriminant analysis (LDA). Before classification, the minimum redundancy Maximum Relevance (mRMR) feature selection method was first applied to choose subsets of useful features. The generalization performance was assessed using Leave-One-Out Cross-Validation and Receiver Operating Characteristic (ROC) curve analysis. Using the computer-extracted mammographic features, the proposed model was able to distinguish DCIS with invasive disease from pure DCIS, with an average classification performance of AUC = 0.61 ± 0.05. Overall, the proposed computer-extracted mammographic features are promising for predicting occult invasive disease in DCIS.
机译:预测导管癌中神经侵袭性疾病的风险原位(DCIS)是有助于解决与乳腺癌相关的过度吞噬和过度处理问题的重要任务。在这项工作中,我们调查了使用计算机提取的乳房X XMMPACTIA特征来预测活组织检查验证DCIS患者隐匿性侵袭性疾病的可行性。我们提出了一种基于计算机视觉算法的方法,用于提取来自全场数字乳房X线摄影(FFDM)的乳房X线图的乳房X线,用于DCIS的患者。在专家乳房放射科医师提供了用于DCIS病变的感兴趣区域(ROI)掩模之后,所提出的方法能够对单独的微钙化(MCS)进行分割,检测MC集群(MCC)的边界,并从MCS提取113乳房X XMPoare特征并在投资回报杆内的MCC。在这项研究中,我们从99例DCIS患者中提取了乳房X线,(74纯DCIS; 25 dCIS加入侵入性疾病)。通过使用线性判别分析(LDA)通过纯DCIS和DCI之间的二元分类证明了乳腺素特征的预测力。在分类之前,首先应用最小冗余最大相关性(MRMR)特征选择方法以选择有用功能的子集。使用休假交叉验证和接收器操作特征(ROC)曲线分析评估泛化性能。使用计算机提取的乳房X线图特征,所提出的模型能够将DCIS与纯DCIS的侵入性疾病区分开,平均分类性能= 0.61±0.05。总的来说,所提出的计算机提取的乳房X线图具有预测DCIS中神秘的侵袭性疾病的前景。

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