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Deformable image registration as a tool to improve survival prediction after neoadjuvant chemotherapy for breast cancer: Results from the ACRIN 6657/I-SPY-1 trial

机译:可变形的图像登记作为提高生存预测的工具,以改善乳腺癌的Neoadjuvant化疗后:丙氨酸6657 / I-Spy-1试验结果

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We examined the ability of DCE-MRI longitudinal features to give early prediction of recurrence-free survival (RFS) in women undergoing neoadjuvant chemotherapy for breast cancer, in a retrospective analysis of 106 women from the I-SPY 1 cohort. These features were based on the voxel-wise changes seen in registered images taken before treatment and after the first round of chemotherapy. We computed the transformation field using a robust deformable image registration technique to match breast images from these two visits. Using the deformation field, parametric response maps (PRM) — a voxel-based feature analysis of longitudinal changes in images between visits — was computed for maps of four kinetic features (signal enhancement ratio, peak enhancement, and wash-in/wash-out slopes). A two-level discrete wavelet transform was applied to these PRMs to extract heterogeneity information about tumor change between visits. To estimate survival, a Cox proportional hazard model was applied with the C statistic as the measure of success in predicting RFS. The best PRM feature (as determined by C statistic in univariable analysis) was determined for each of the four kinetic features. The baseline model, incorporating functional tumor volume, age, race, and hormone response status, had a C statistic of 0.70 in predicting RFS. The model augmented with the four PRM features had a C statistic of 0.76. Thus, our results suggest that adding information on the texture of voxel-level changes in tumor kinetic response between registered images of first and second visits could improve early RFS prediction in breast cancer after neoadjuvant chemotherapy.
机译:我们研究了DCE-MRI纵向特征在乳腺癌中进行Neoadjuvant化疗的妇女的妇女早期预测的能力,以106名来自I-Spy 1 Cohort的备注分析。这些特征是基于在治疗前和第一轮化疗之前拍摄的注册图像中的体素-WISE变化。我们使用稳健的可变形图像配准技术计算转换字段以将乳房图像与这两个访问匹配。使用变形字段,参数响应映射(PRM) - 基于体素的纵向变化的特征分析,用于访问四种动力学特征的地图(信号增强比,峰值增强和洗涤/冲洗/冲洗/洗涤连续下坡)。将两级离散小波变换应用于这些PRMS以提取有关肿瘤变化之间的异质性信息。为了估计存活,将COX比例危害模型应用于C统计作为预测RFS成功的量度。对于四种动力学特征中的每一个,确定了最佳PRM特征(如在单稳态分析中的C统计学确定)。基线模型,掺入功能性肿瘤体积,年龄,种族和激素响应状态,在预测RFS时具有0.70的C统计。使用四个PRM功能增强的模型具有0.76的C统计信息。因此,我们的结果表明,在第一和第二次访问的登记图像之间添加有关肿瘤动力学响应的肿瘤动力学响应的质量的信息可以改善Neoadjuvant化疗后乳腺癌早期的RFS预测。

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