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首页> 外文期刊>Journal of medical systems >Discovering mammography-based machine learning classifiers for breast cancer diagnosis.
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Discovering mammography-based machine learning classifiers for breast cancer diagnosis.

机译:发现用于乳腺癌诊断的基于乳腺摄影的机器学习分类器。

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摘要

This work explores the design of mammography-based machine learning classifiers (MLC) and proposes a new method to build MLC for breast cancer diagnosis. We massively evaluated MLC configurations to classify features vectors extracted from segmented regions (pathological lesion or normal tissue) on craniocaudal (CC) and/or mediolateral oblique (MLO) mammography image views, providing BI-RADS diagnosis. Previously, appropriate combinations of image processing and normalization techniques were applied to reduce image artifacts and increase mammograms details. The method can be used under different data acquisition circumstances and exploits computer clusters to select well performing MLC configurations. We evaluated 286 cases extracted from the repository owned by HSJ-FMUP, where specialized radiologists segmented regions on CC and/or MLO images (biopsies provided the golden standard). Around 20,000 MLC configurations were evaluated, obtaining classifiers achieving an area under the ROC curve of 0.996 when combining features vectors extracted from CC and MLO views of the same case.
机译:这项工作探索了基于乳腺摄影的机器学习分类器(MLC)的设计,并提出了一种构建用于诊断乳腺癌的MLC的新方法。我们对MLC配置进行了大规模评估,以对从颅尾(CC)和/或中外侧斜(MLO)乳腺X线摄影图像视图上的分段区域(病理病变或正常组织)提取的特征向量进行分类,从而提供BI-RADS诊断。以前,将图像处理和规范化技术的适当组合应用于减少图像伪像并增加乳房X线照片的细节。该方法可以在不同的数据采集情况下使用,并利用计算机集群来选择性能良好的MLC配置。我们评估了从HSJ-FMUP拥有的资料库中提取的286个病例,在那里,专门的放射科医生对CC和/或MLO图像(活检提供了黄金标准)进行了分割。评估了大约20,000个MLC配置,当组合从相同情况的CC和MLO视图提取的特征向量时,获得的分类器在ROC曲线下的面积达到0.996。

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