Weis Jared A, Miga Michael I, Arlinghaus Lori R, Li Xia, Abramson Vandana, Chakravarthy A Bapsi, Pendyala Praveen, Yankeelov Thomas E
Institute of Imaging Science, Vanderbilt University, Nashville, Tennessee. Department of Radiology and Radiological Sciences, Vanderbilt University, Nashville, Tennessee. Department of Biomedical Engineering, Vanderbilt University, Nashville, Tennessee.
Institute of Imaging Science, Vanderbilt University, Nashville, Tennessee. Department of Radiology and Radiological Sciences, Vanderbilt University, Nashville, Tennessee. Department of Biomedical Engineering, Vanderbilt University, Nashville, Tennessee. Department of Neurosurgery, Vanderbilt University, Nashville, Tennessee. Vanderbilt-Ingram Cancer Center, Vanderbilt University, Nashville, Tennessee.
Cancer Res. 2015 Nov 15;75(22):4697-707. doi: 10.1158/0008-5472.CAN-14-2945. Epub 2015 Sep 2.
Although there are considerable data on the use of mathematical modeling to describe tumor growth and response to therapy, previous approaches are often not of the form that can be easily applied to clinical data to generate testable predictions in individual patients. Thus, there is a clear need to develop and apply clinically relevant oncologic models that are amenable to available patient data and yet retain the most salient features of response prediction. In this study we show how a biomechanical model of tumor growth can be initialized and constrained by serial patient-specific magnetic resonance imaging data, obtained at two time points early in the course of therapy (before initiation and following one cycle of therapy), to predict the response for individual patients with breast cancer undergoing neoadjuvant therapy. Using our mechanics coupled modeling approach, we are able to predict, after the first cycle of therapy, breast cancer patients that would eventually achieve a complete pathologic response and those who would not, with receiver operating characteristic area under the curve (AUC) of 0.87, sensitivity of 92%, and specificity of 84%. Our approach significantly outperformed the AUCs achieved by standard (i.e., not mechanically coupled) reaction-diffusion predictive modeling (0.75), simple analysis of the tumor cellularity estimated from imaging data (0.73), and the Response Evaluation Criteria in Solid Tumors (0.71). Thus, we show the potential for mathematical model prediction for use as a prognostic indicator of response to therapy. The work indicates the considerable promise of image-driven biophysical modeling for predictive frameworks within therapeutic applications.
尽管有大量关于使用数学模型来描述肿瘤生长和对治疗反应的数据,但先前的方法往往不是那种能够轻松应用于临床数据以在个体患者中生成可测试预测的形式。因此,显然需要开发和应用与临床相关的肿瘤学模型,这些模型既要适合现有的患者数据,又要保留反应预测的最显著特征。在本研究中,我们展示了如何通过在治疗过程早期的两个时间点(治疗开始前和治疗一个周期后)获得的系列患者特异性磁共振成像数据,来初始化和约束肿瘤生长的生物力学模型,以预测接受新辅助治疗的乳腺癌个体患者的反应。使用我们的力学耦合建模方法,在治疗的第一个周期后,我们能够预测最终会实现完全病理反应的乳腺癌患者和不会实现完全病理反应的患者,受试者操作特征曲线下面积(AUC)为0.87,敏感性为92%,特异性为84%。我们的方法显著优于标准(即非力学耦合)反应扩散预测建模(AUC为0.75)、根据成像数据估计的肿瘤细胞密度的简单分析(AUC为0.73)以及实体瘤反应评估标准(AUC为0.71)所取得的AUC。因此,我们展示了数学模型预测作为治疗反应预后指标的潜力。这项工作表明了图像驱动的生物物理建模在治疗应用中的预测框架方面具有巨大的前景。