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Computer-aided Global Breast MR Image Feature Analysis for Prediction of Tumor Response to Chemotherapy: Performance Assessment

机译:计算机辅助的全球乳腺癌MR图像特征分析,用于预测对化疗的肿瘤反应:性能评估

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Dynamic contrast-enhanced breast magnetic resonance imaging (DCE-MRI) has been used increasingly in breast cancer diagnosis and assessment of cancer treatment efficacy. In this study, we applied a computer-aided detection (CAD) scheme to automatically segment breast regions depicting on MR images and used the kinetic image features computed from the global breast MR images acquired before neoadjuvant chemotherapy to build a new quantitative model to predict response of the breast cancer patients to the chemotherapy. To assess performance and robustness of this new prediction model, an image dataset involving breast MR images acquired from 151 cancer patients before undergoing neoadjuvant chemotherapy was retrospectively assembled and used. Among them, 63 patients had "complete response" (CR) to chemotherapy in which the enhanced contrast levels inside the tumor volume (pre-treatment) was reduced to the level as the normal enhanced background parenchymal tissues (post-treatment), while 88 patients had "partially response" (PR) in which the high contrast enhancement remain in the tumor regions after treatment. We performed the studies to analyze the correlation among the 22 global kinetic image features and then select a set of 4 optimal features. Applying an artificial neural network trained with the fusion of these 4 kinetic image features, the prediction model yielded an area under ROC curve (AUC) of 0.83±0.04. This study demonstrated that by avoiding tumor segmentation, which is often difficult and unreliable, fusion of kinetic image features computed from global breast MR images without tumor segmentation can also generate a useful clinical marker in predicting efficacy of chemotherapy.
机译:动态对比增强型乳房磁共振成像(DCE-MRI)已被越来越多地用于乳腺癌的诊断和癌症治疗效果的评估。在这项研究中,我们应用了计算机辅助检测(CAD)方案来自动分割描绘在MR图像上的乳房区域,并使用从新辅助化疗之前获取的全球乳房MR图像计算出的动力学图像特征来建立新的定量模型来预测反应乳腺癌患者接受化疗。为了评估此新预测模型的性能和鲁棒性,回顾性地组装和使用了涉及从151名癌症患者中接受新辅助化疗之前获得的乳腺MR图像的图像数据集。其中63例患者对化疗有“完全反应”(CR),其中肿瘤体积内的增强对比水平(治疗前)降低至正常的背景实质组织增强水平(治疗后),而88例患者具有“部分反应”(PR),其中高对比度增强在治疗后仍保留在肿瘤区域中。我们进行了研究,以分析22个全局动力学图像特征之间的相关性,然后选择4个最佳特征的集合。应用融合了这四个动力学图像特征而训练的人工神经网络,预测模型得出的ROC曲线下面积(AUC)为0.83±0.04。这项研究表明,通过避免肿瘤分割(通常是困难而又不可靠的),从整体乳房MR图像计算出的动力学图像特征融合而无需进行肿瘤分割,也可以在预测化学疗法的疗效方面产生有用的临床标记。

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