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利用从超声造影视频中计算机提取的特征评估乳腺癌对新辅助化疗的病理反应。

Evaluating pathologic response of breast cancer to neoadjuvant chemotherapy with computer-extracted features from contrast-enhanced ultrasound videos.

作者信息

Zhang Qi, Yuan Congcong, Dai Wei, Tang Lei, Shi Jun, Li Zuoyong, Chen Man

机构信息

Institute of Biomedical Engineering, Shanghai University, Shanghai, China; Fujian Provincial Key Laboratory of Information Processing and Intelligent Control (Minjiang University), Fuzhou, China.

Department of Ultrasound, Ruijin Hospital, School of Medicine, Shanghai Jiaotong University, Shanghai, China.

出版信息

Phys Med. 2017 Jul;39:156-163. doi: 10.1016/j.ejmp.2017.06.023. Epub 2017 Jul 6.

Abstract

PURPOSE

To extract quantitative perfusion and texture features with computer assistance from contrast-enhanced ultrasound (CEUS) videos of breast cancer before and after neoadjuvant chemotherapy (NAC), and to evaluate pathologic response to NAC with these features.

METHODS

Forty-two CEUS videos with 140,484 images were acquired from 21 breast cancer patients pre- and post-NAC. Time-intensity curve (TIC) features were calculated including the difference between area under TIC within a tumor and that within a computer-detected reference region (AUT_T-R). Four texture features were extracted including Homogeneity and Contrast. All patients were identified as pathologic responders by Miller and Payne criteria. The features between pre- and post-treatment in these responders were statistically compared, and the discrimination between pre- and post-treatment cancers was assessed with a receiver operating characteristic (ROC) curve.

RESULTS

Compared with the pre-treatment cancers, the post-treatment cancers had significantly lower Homogeneity (p<0.001) and AUT_T-R (p=0.014), as well as higher Contrast (p<0.001), indicating the intratumoral contrast enhancement decreased and became more heterogeneous after NAC in responders. The combination of Homogeneity and AUT_T-R achieved an accuracy of 90.5% and area under ROC curve of 0.946 for discrimination between pre- and post-chemotherapy cancers without cross validation. The accuracy still reached as high as 85.7% under leave-one-out cross validation.

CONCLUSIONS

The computer-extracted CEUS features show reduced and more heterogeneous neovascularization of cancer after NAC. The features achieve high accuracy for discriminating between pre- and post-chemotherapy cancers in responders and thus are potentially valuable for tumor response evaluation in clinical practice.

摘要

目的

借助计算机辅助从新辅助化疗(NAC)前后的乳腺癌超声造影(CEUS)视频中提取定量灌注和纹理特征,并利用这些特征评估对NAC的病理反应。

方法

从21例乳腺癌患者NAC前后采集了42个CEUS视频,共140484张图像。计算时间-强度曲线(TIC)特征,包括肿瘤内TIC曲线下面积与计算机检测的参考区域内TIC曲线下面积之差(AUT_T-R)。提取了四个纹理特征,包括均匀性和对比度。所有患者均根据米勒和佩恩标准被确定为病理反应者。对这些反应者治疗前后的特征进行统计学比较,并通过受试者操作特征(ROC)曲线评估治疗前后癌症的区分度。

结果

与治疗前的癌症相比,治疗后的癌症具有显著更低的均匀性(p<0.001)和AUT_T-R(p=0.014),以及更高的对比度(p<0.001),表明反应者在NAC后肿瘤内的造影剂增强减少且变得更加不均匀。均匀性和AUT_T-R的组合在不进行交叉验证的情况下,区分化疗前后癌症的准确率达到90.5%,ROC曲线下面积为0.946。在留一法交叉验证下,准确率仍高达85.7%。

结论

计算机提取的CEUS特征显示NAC后癌症的新生血管减少且更加不均匀。这些特征在区分反应者化疗前后的癌症方面具有较高的准确率,因此在临床实践中对肿瘤反应评估可能具有重要价值。

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