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Automated Classification of Benign and Malignant Proliferative Breast Lesions

机译:良性和恶性增生性乳腺病变的自动分类

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摘要

Misclassification of breast lesions can result in either cancer progression or unnecessary chemotherapy. Automated classification tools are seen as promising second opinion providers in reducing such errors. We have developed predictive algorithms that automate the categorization of breast lesions as either benign usual ductal hyperplasia (UDH) or malignant ductal carcinoma in situ (DCIS). From diagnosed breast biopsy images from two hospitals, we obtained 392 biomarkers using Dong et al.’s (2014) computational tools for nuclei identification and feature extraction. We implemented six machine learning models and enhanced them by reducing prediction variance, extracting active features, and combining multiple algorithms. We used the area under the curve (AUC) of the receiver operating characteristic (ROC) curve for performance evaluation. Our top-performing model, a Combined model with Active Feature Extraction (CAFE) consisting of two logistic regression algorithms, obtained an AUC of 0.918 when trained on data from one hospital and tested on samples of the other, a statistically significant improvement over Dong et al.’s AUC of 0.858. Pathologists can substantially improve their diagnoses by using it as an unbiased validator. In the future, our work can also serve as a valuable methodology for differentiating between low-grade and high-grade DCIS.
机译:乳房病变的错误分类可能导致癌症进展或不必要的化疗。自动化分类工具被视为减少此类错误的有前途的第二意见提供者。我们已经开发了预测算法,可以自动将乳腺病变归类为良性导管增生症(UDH)或原位恶性导管癌(DCIS)。从两家医院经诊断的乳腺活检图像中,我们使用Dong等人(2014)的计算工具获得了392个生物标记,以进行核识别和特征提取。我们实施了六个机器学习模型,并通过减少预测方差,提取活动特征并组合多种算法来增强了它们。我们使用接收器工作特性(ROC)曲线的曲线下面积(AUC)进行性能评估。我们的最佳模型是由两种逻辑回归算法组成的具有主动特征提取(CAFE)的组合模型,在对一所医院的数据进行训练并在另一所医院的样本上进行测试时,AUC为0.918,与Dong等人相比有统计学意义的改进的AUC为0.858。病理学家可以将其用作无偏验证器,从而大大改善他们的诊断。将来,我们的工作还可以作为区分低级和高级DCIS的宝贵方法。

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