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Performance of machine learning software to classify breast lesions using BI-RADS radiomic features on ultrasound images

机译:机器学习软件使用超声图像上的BI-RADS放射特征对乳房病变进行分类的性能

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Abstract BackgroundThe purpose of this work was to evaluate computable Breast Imaging Reporting and Data System (BI-RADS) radiomic features to classify breast masses on ultrasound B-mode images.MethodsThe database consisted of 206 consecutive lesions (144 benign and 62 malignant) proved by percutaneous biopsy in a prospective study approved by the local ethical committee. A radiologist manually delineated the contour of the lesions on greyscale images. We extracted the main ten radiomic features based on the BI-RADS lexicon and classified the lesions as benign or malignant using a bottom-up approach for five machine learning (ML) methods: multilayer perceptron (MLP), decision tree (DT), linear discriminant analysis (LDA), random forest (RF), and support vector machine (SVM). We performed a 10-fold cross validation for training and testing of all classifiers. Receiver operating characteristic (ROC) analysis was used for providing the area under the curve with 95% confidence intervals (CI).ResultsThe classifier with the highest AUC at ROC analysis was SVM (AUC = 0.840, 95% CI 0.6667–0.9762), with 71.4% sensitivity (95% CI 0.6479–0.8616) and 76.9% specificity (95% CI 0.6148–0.8228). The best AUC for each method was 0.744 (95% CI 0.677–0.774) for DT, 0.818 (95% CI 0.6667–0.9444) for LDA, 0.811 (95% CI 0.710–0.892) for RF, and 0.806 (95% CI 0.677–0.839) for MLP.Lesion margin and orientation were the optimal features for all the machine learning methods.ConclusionsML can aid the distinction between benign and malignant breast lesion on ultrasound images using quantified BI-RADS descriptors. SVM provided the highest ROC-AUC (0.840).
机译:摘要背景这项工作的目的是评估可计算的乳腺成像报告和数据系统(BI-RADS)的放射学特征,以对B超图像进行乳腺肿块分类。经当地伦理委员会批准的前瞻性研究中进行了经皮穿刺活检。放射科医生在灰度图像上手动描绘了病变的轮廓。我们基于BI-RADS词典提取了主要的十项放射学特征,并使用五种机器学习(ML)方法的自下而上方法将病变分类为良性或恶性:多层感知器(MLP),决策树(DT),线性判别分析(LDA),随机森林(RF)和支持向量机(SVM)。我们对所有分类器进行了10倍交叉验证,以进行训练和测试。接收者工作特征(ROC)分析用于提供曲线下面积具有95%置信区间(CI)的结果。结果ROC分析中AUC最高的分类器是SVM(AUC = 0.840,95%CI 0.6667-0.9762),灵敏度为71.4%(95%CI 0.6479-0.8616),特异性为76.9%(95%CI 0.6148-0.8228)。每种方法的最佳AUC分别为DT 0.744(95%CI 0.677-0.774),LDA 0.818(95%CI 0.6667-0.9444),RF 0.811(95%CI 0.710-0.892)和0.806(95%CI 0.677)对于MLP,–0.839)。边缘裕度和方向是所有机器学习方法的最佳特征。结论ML可使用量化的BI-RADS描述符帮助区分超声图像上的乳腺良恶性病变。 SVM提供了最高的ROC-AUC(0.840)。

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