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Predicting response before initiation of neoadjuvant chemotherapy in breast cancer using new methods for the analysis of dynamic contrast enhanced MRI (DCE MRI) data

机译:使用新方法在乳腺癌中启动新辅助化疗开始前的响应,用于分析动态对比增强MRI(DCE MRI)数据

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The pharmacokinetic parameters derived from dynamic contrast enhanced (DCE) MRI have shown promise as biomarkers for tumor response to therapy. However, standard methods of analyzing DCE MRI data (Tofts model) require high temporal resolution, high signal-to-noise ratio (SNR), and the Arterial Input Function (AIF). Such models produce reliable biomarkers of response only when a therapy has a large effect on the parameters. We recently reported a method that solves the limitations, the Linear Reference Region Model (LRRM). Similar to other reference region models, the LRRM needs no AIF. Additionally, the LRRM is more accurate and precise than standard methods at low SNR and slow temporal resolution, suggesting LRRM-derived biomarkers could be better predictors. Here, the LRRM, Non-linear Reference Region Model (NRRM), Linear Tofts model (LTM), and Non-linear Tofts Model (NLTM) were used to estimate the R~(Ktrans) between muscle and tumor (or the K~(trans) for Tofts) and the tumor k_(ep,TOI) for 39 breast cancer patients who received neoadjuvant chemotherapy (NAC). These parameters and the receptor statuses of each patient were used to construct cross-validated predictive models to classify patients as complete pathological responders (pCR) or non-complete pathological responders (non-pCR) to NAC. Model performance was evaluated using area under the ROC curve (AUC). The AUC for receptor status alone was 0.62, while the best performance using predictors from the LRRM, NRRM, LTM, and NLTM were AUCs of 0.79, 0.55, 0.60, and 0.59 respectively. This suggests that the LRRM can be used to predict response to NAC in breast cancer.
机译:源自动态对比增强(DCE)MRI的药代动力学参数已作为肿瘤对治疗的反应的生物标志物所示。然而,分析DCE MRI数据(TOFTS模型)的标准方法需要高时分辨率,高信噪比(SNR)和动脉输入功能(AIF)。这些模型仅在治疗对参数对参数产生很大影响时产生可靠的响应生物标志物。我们最近报告了一种解决限制,线性参考区域模型(LRRM)的方法。类似于其他参考区域模型,LRRM不需要AIF。另外,LRRM比SNR低的标准方法更准确,精确,暗示LRRM衍生的生物标志物可能是更好的预测因子。这里,使用LRRM,非线性参考区域模型(NRRM),线性TOFTS模型(LTM)和非线性TOFTS模型(NLTM)来估计肌肉和肿瘤之间的R〜(Ktrans)(或K〜 TOFTS(TRANS)的TOFTS)和接受新辅助化疗(NAC)的39名乳腺癌患者的肿瘤K_(EP,TOI)。这些参数和每个患者的受体状态用于构建交叉验证的预测模型,将患者分类为完全病理响应者(PCR)或非完全病理响应者(非PCR)到NAC。使用ROC曲线(AUC)下的区域评估模型性能。对于受体状态单独的AUC为0.62,而使用来自LRRM,NRRM,LTM和NLTM的预测器的最佳性能分别为0.79,0.55,0.60和0.59的AUC。这表明LRRM可用于预测NAC在乳腺癌中的反应。

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