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Predicting Malignancy from Mammography Findings and Surgical Biopsies

机译:从乳腺X光检查结果和手术活检中预测恶性肿瘤

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Breast screening is the regular examination of a woman's breasts to find breast cancer earlier. The sole exam approved for this purpose is mammography. Usually, findings are annotated through the Breast Imaging Reporting and Data System (BIRADS) created by the American College of Radiology. The BIRADS system determines a standard lexicon to be used by radiologists when studying each finding. Although the lexicon is standard, the annotation accuracy of the findings depends on the experience of the radiologist. Moreover, the accuracy of the classification of a mammography is also highly dependent on the expertise of the radiologist. A correct classification is paramount due to economical and humanitarian reasons. The main goal of this work is to produce machine learning models that predict the outcome of a mammography from a reduced set of annotated mammography findings. In the study we used a data set consisting of 348 consecutive breast masses that underwent image guided or surgical biopsy performed between October 2005 and December 2007 on 328 female subjects. The main conclusions are threefold: (1) automatic classification of a mammography, independent on information about mass density, can reach equal or better results than the classification performed by a physician, (2) mass density seems to be a good indicator of malignancy, as previous studies suggested, (3) a machine learning model can predict mass density with a quality as good as the specialist blind to biopsy, which is one of our main contributions. Our model can predict malignancy in the absence of the mass density attribute, since we can fill up this attribute using our mass density predictor.
机译:乳房筛选是对女性乳房的定期检查,以先寻找乳腺癌。批准此目的批准的唯一考试是乳房X光检查。通常,调查结果通过美国放射学院创建的乳房成像报告和数据系统(Birads)注释。 Birads系统确定放射科学家在研究每个发现时用辐射科医生使用的标准词汇。虽然词典是标准的,但研究结果的注释精度取决于放射科学家的经验。此外,乳房X线检查的分类的准确性也高度依赖放射科医师的专业知识。由于经济和人道主义原因,正确的分类至关重要。这项工作的主要目的是生产从减少的注释乳房摄影结果中预测乳房X光检查的机器学习模型。在该研究中,我们使用了由348个连续的乳腺肿块组成的数据集,该乳腺群体在2005年10月和2007年12月至328名女性受试者之间进行了正在进行的图像引导或手术活组织检查。主要结论是三倍:(1)自动分类乳房X线照相术,独立于大众密度的信息,可以达到比医生所进行的分类相等或更好的结果,(2)质量密度似乎是恶性肿瘤的良好指标,随着以前的研究建议,(3)机器学习模型可以预测质量密度,质量与对活检的专业人士视而不见,这是我们主要贡献之一。我们的模型可以在没有质量密度属性的情况下预测恶性肿瘤,因为我们可以使用我们的质量密度预测器填充此属性。

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