Open Framework for Mammography-based Breast Cancer Risk Assessment

Said Pertuz, German F. Torres, R. Tamimi, Joni-Kristian Kämäräinen
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引用次数: 14

Abstract

In recent years, several studies have established a relationship between mammographic parenchymal patterns and breast cancer risk. However, there is a lack of publicly available data and software for objective comparison and clinical validation. This paper presents an open and adaptable implementation (OpenBreast v1.0) of a fully-automatic computerized framework for mammographic image analysis for breast cancer risk assessment. OpenBreast implements mammographic image analysis in four stages: breast segmentation, detection of region-of-interests, feature extraction and risk scoring. For each stage, we provide implementations of several state-of-the-art methods. The pipeline is tested on a set of 305 full-field digital mammography images corresponding to 84 patients (51 cases and 49 controls) from the breast cancer digital repository (BCDR). OpenBreast achieves a competitive AUC of 0.846 in breast cancer risk assessment. In addition, used jointly with widely accepted risk factors such as patient age and breast density, mammographic image analysis using OpenBreast shows a statistically significant improvement in performance with an AUC of 0.876 ($\mathrm{p}<0.001$). Our framework will be made publicly available and it is easy to incorporate new methods.
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基于乳房x光检查的乳腺癌风险评估开放框架
近年来,一些研究已经确立了乳腺实质形态与乳腺癌风险之间的关系。然而,缺乏公开可用的数据和软件来进行客观比较和临床验证。本文提出了一个开放和适应性强的全自动计算机化框架(OpenBreast v1.0),用于乳腺癌风险评估的乳房x光图像分析。OpenBreast通过乳房分割、兴趣区域检测、特征提取和风险评分四个阶段来实现乳腺图像分析。对于每个阶段,我们提供几种最先进方法的实现。该管道在来自乳腺癌数字存储库(BCDR)的84名患者(51例和49例对照)的305幅全视野数字乳房x线摄影图像上进行了测试。OpenBreast在乳腺癌风险评估中的AUC为0.846。此外,在与患者年龄、乳腺密度等广为接受的危险因素联合使用时,使用OpenBreast进行乳房x线图像分析,显示出具有统计学意义的性能改善,AUC为0.876 ($\ mathm {p}<0.001$)。我们的框架将是公开可用的,并且很容易纳入新的方法。
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