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头颈部癌放射治疗的治疗失败预测

Treatment failure prediction for head-and-neck cancer radiation therapy.

作者信息

Rocha H, Khouri L, Lopes M C, Dias J, Ferreira B

机构信息

School of Health Sciences, University of Minho, Braga, Portugal; Institute for Systems Engineering and Computers (INESC), Coimbra, Portugal.

Radiation Therapy Department, Portuguese Institute of Oncology of Coimbra (IPOCFG, EPE), Coimbra, Portugal.

出版信息

Cancer Radiother. 2016 Jun;20(4):268-74. doi: 10.1016/j.canrad.2016.02.012. Epub 2016 Jun 16.

Abstract

PURPOSE

Treatment outcome prediction is an important emerging topic in oncologic care. To support radiation oncologists on their decisions, with individualized, tailored treatment regimens increasingly becoming the standard of care, accurate tools to predict tumour response to treatment are needed. The goal of this work is to identify the most determinant factor(s) for treatment response aiming to develop prediction models that robustly estimate tumour response to radiation therapy in patients with head-and-neck cancer.

PATIENTS AND METHODS

A population-based cohort study was performed on 92 patients with head-and-neck cancer treated with radiation from 2007 until 2014 at the Portuguese Institute of Oncology of Coimbra (IPOCFG). Correlation analysis and multivariate binary logistic regression analysis were conducted in order to explore the predictive power of the considered predictors. Performance of the models is expressed as the area under the curve (AUC) of the receiver operating characteristics (ROC) curve. A nomogram to predict treatment failure was developed.

RESULTS

Significant prognostic factors for treatment failure, after multivariate regression, were older age, non-concomitant radiation therapy and larger primary tumour volume. A regression model with these predictors revealed an AUC of .78 for an independent data set.

CONCLUSION

For patients with head-and-neck cancer treated with definitive radiation, we have developed a prediction nomogram based on models that presented good discriminative ability in making predictions of tumour response to treatment. The probability of treatment failure is higher for older patients with larger tumours treated with non-concomitant radiation.

摘要

目的

治疗结果预测是肿瘤护理中一个重要的新兴话题。为了辅助放射肿瘤学家做出决策,随着个体化、量身定制的治疗方案日益成为护理标准,需要准确的工具来预测肿瘤对治疗的反应。这项工作的目标是确定治疗反应的最具决定性的因素,旨在开发能够可靠估计头颈癌患者放疗后肿瘤反应的预测模型。

患者与方法

对2007年至2014年在科英布拉葡萄牙肿瘤研究所(IPOCFG)接受放疗的92名头颈癌患者进行了一项基于人群的队列研究。进行相关性分析和多变量二元逻辑回归分析,以探索所考虑的预测因素的预测能力。模型的性能用受试者工作特征(ROC)曲线下面积(AUC)表示。开发了一个预测治疗失败的列线图。

结果

多变量回归分析后,治疗失败的显著预后因素为年龄较大、非同步放疗和原发肿瘤体积较大。包含这些预测因素的回归模型对独立数据集的AUC为0.78。

结论

对于接受根治性放疗的头颈癌患者,我们基于在预测肿瘤对治疗反应方面具有良好辨别能力的模型开发了一个预测列线图。对于年龄较大、肿瘤较大且接受非同步放疗的患者,治疗失败的概率更高。

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