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Automatic Labeling of Special Diagnostic Mammography Views from Images and DICOM Headers

机译:从图像和DICOM标头自动标记特殊诊断X线摄影视图

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摘要

Applying state-of-the-art machine learning techniques to medical images requires a thorough selection and normalization of input data. One of such steps in digital mammography screening for breast cancer is the labeling and removal of special diagnostic views, in which diagnostic tools or magnification are applied to assist in assessment of suspicious initial findings. As a common task in medical informatics is prediction of disease and its stage, these special diagnostic views, which are only enriched among the cohort of diseased cases, will bias machine learning disease predictions. In order to automate this process, here, we develop a machine learning pipeline that utilizes both DICOM headers and images to predict such views in an automatic manner, allowing for their removal and the generation of unbiased datasets. We achieve AUC of 99.72% in predicting special mammogram views when combining both types of models. Finally, we apply these models to clean up a dataset of about 772,000 images with expected sensitivity of 99.0%. The pipeline presented in this paper can be applied to other datasets to obtain high-quality image sets suitable to train algorithms for disease detection.Electronic supplementary materialThe online version of this article (10.1007/s10278-018-0154-z) contains supplementary material, which is available to authorized users.
机译:将最新的机器学习技术应用于医学图像需要对输入数据进行彻底的选择和标准化。在乳腺数字化乳腺X线摄影筛查中,此类步骤之一是标记和移除特殊的诊断视图,其中使用诊断工具或放大倍数来帮助评估可疑的初始发现。医学信息学的一项常见任务是疾病及其阶段的预测,这些仅在患病病例中丰富的特殊诊断观点将使机器学习疾病的预测产生偏差。为了使该过程自动化,在这里,我们开发了一种机器学习管道,该管道利用DICOM标头和图像来自动预测此类视图,从而允许移除它们并生成无偏数据集。当结合两种类型的模型时,在预测特殊的乳房X线照片视图时,我们实现了99.72%的AUC。最后,我们使用这些模型来清理约772,000张图像的数据集,预期灵敏度为99.0%。本文介绍的管道可以应用于其他数据集以获得适合训练疾病检测算法的高质量图像集。电子补充材料本文的在线版本(10.1007 / s10278-018-0154-z)包含补充材料,可供授权用户使用。

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