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基于乳腺影像组学特征的乳腺癌分子亚型预测。

Breast Cancer Molecular Subtype Prediction by Mammographic Radiomic Features.

机构信息

Department of Breast Imaging, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China; Key Laboratory of Breast Cancer Prevention and Therapy, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China; Tianjin's Clinical Research Center for Cancer, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China; Department of Biomedical and Engineering, Tianjin Medical University, Tianjin, China.

Department of Breast Imaging, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China; Key Laboratory of Breast Cancer Prevention and Therapy, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China; Tianjin's Clinical Research Center for Cancer, 24 Huanhuxi Rd, Hexi District, Tianjin 300060, China.

出版信息

Acad Radiol. 2019 Feb;26(2):196-201. doi: 10.1016/j.acra.2018.01.023. Epub 2018 Mar 8.

Abstract

RATIONALE AND OBJECTIVES

This study aimed to investigate whether quantitative radiomic features extracted from digital mammogram images are associated with molecular subtypes of breast cancer.

MATERIALS AND METHODS

In this institutional review board-approved retrospective study, we collected 331 Chinese women who were diagnosed with invasive breast cancer in 2015. This cohort included 29 triple-negative, 45 human epidermal growth factor receptor 2 (HER2)-enriched, 36 luminal A, and 221 luminal B lesions. A set of 39 quantitative radiomic features, including morphologic, grayscale statistic, and texture features, were extracted from the segmented lesion area. Three binary classifications of the subtypes were performed: triple-negative vs non-triple-negative, HER2-enriched vs non-HER2-enriched, and luminal (A + B) vs nonluminal. The Naive Bayes machine learning scheme was employed for the classification, and the least absolute shrink age and selection operator method was used to select the most predictive features for the classifiers. Classification performance was evaluated by the area under receiver operating characteristic curve and accuracy.

RESULTS

The model that used the combination of both the craniocaudal and the mediolateral oblique view images achieved the overall best performance than using either of the two views alone, yielding an area under receiver operating characteristic curve (or accuracy) of 0.865 (0.796) for triple-negative vs non-triple-negative, 0.784 (0.748) for HER2-enriched vs non-HER2-enriched, and 0.752 (0.788) for luminal vs nonluminal subtypes. Twelve most predictive features were selected by the least absolute shrink age and selection operator method and four of them (ie, roundness, concavity, gray mean, and correlation) showed a statistical significance (P< .05) in the subtype classification.

CONCLUSIONS

Our study showed that quantitative radiomic imaging features of breast tumor extracted from digital mammograms are associated with breast cancer subtypes. Future larger studies are needed to further evaluate the findings.

摘要

背景与目的

本研究旨在探讨从数字乳腺图像中提取的定量放射组学特征是否与乳腺癌的分子亚型相关。

材料与方法

在这项获得机构审查委员会批准的回顾性研究中,我们收集了 2015 年在中国被诊断为浸润性乳腺癌的 331 名女性患者的数据。该队列包括 29 例三阴性乳腺癌、45 例人表皮生长因子受体 2(HER2)过表达型乳腺癌、36 例 luminal A 型乳腺癌和 221 例 luminal B 型乳腺癌。从分割的病变区域中提取了一组 39 个定量放射组学特征,包括形态、灰度统计和纹理特征。将亚型进行了三组二分法分类:三阴性与非三阴性、HER2 过表达与非 HER2 过表达、luminal(A+B)与非 luminal。采用朴素贝叶斯机器学习方案进行分类,并使用最小绝对收缩和选择算子方法选择分类器最具预测性的特征。通过接受者操作特征曲线下面积和准确性评估分类性能。

结果

使用头尾位和内外斜位图像组合的模型比单独使用其中任何一种视图的模型表现更好,对头尾位和内外斜位图像组合的模型的总体性能最佳,对三阴性与非三阴性、HER2 过表达与非 HER2 过表达、luminal 与非 luminal 三种亚型的分类的受试者工作特征曲线下面积(或准确性)分别为 0.865(0.796)、0.784(0.748)和 0.752(0.788)。最小绝对收缩和选择算子方法选择了 12 个最具预测性的特征,其中 4 个特征(即圆形度、凹陷度、灰度均值和相关性)在亚型分类中具有统计学意义(P<0.05)。

结论

本研究表明,从数字乳腺图像中提取的乳腺肿瘤定量放射组学特征与乳腺癌亚型相关。未来需要更大的研究来进一步评估这些发现。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9e72/8082943/30297735716b/nihms-941573-f0001.jpg

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