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放疗期间个体患者肿瘤体积变化的建模与贝叶斯自适应预测。

Modelling and Bayesian adaptive prediction of individual patients' tumour volume change during radiotherapy.

作者信息

Tariq Imran, Chen Tao, Kirkby Norman F, Jena Rajesh

出版信息

Phys Med Biol. 2016 Mar 7;61(5):2145-61. doi: 10.1088/0031-9155/61/5/2145.

Abstract

The aim of this study is to develop a mathematical modelling method that can predict individual patients’ response to radiotherapy, in terms of tumour volume change during the treatment. The main concept is to start from a population-average model, which is subsequently updated from an individual’s tumour volume measurement. The model becomes increasingly personalized and so too does the prediction it produces. This idea of adaptive prediction was realised by using a Bayesian approach for updating the model parameters. The feasibility of the developed method was demonstrated on the data from 25 non-small cell lung cancer patients treated with helical tomotherapy, during which tumour volume was measured from daily imaging as part of the image-guided radiotherapy. The method could provide useful information for adaptive treatment planning and dose scheduling based on the patient’s personalised response.

摘要

本研究的目的是开发一种数学建模方法,该方法能够根据治疗期间肿瘤体积的变化来预测个体患者对放疗的反应。主要概念是从群体平均模型开始,随后根据个体的肿瘤体积测量值对其进行更新。该模型变得越来越个性化,其产生的预测也是如此。通过使用贝叶斯方法更新模型参数,实现了这种自适应预测的想法。基于25例接受螺旋断层放疗的非小细胞肺癌患者的数据,证明了所开发方法的可行性,在此期间,作为图像引导放疗的一部分,通过每日成像测量肿瘤体积。该方法可为基于患者个性化反应的自适应治疗计划和剂量安排提供有用信息。

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