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估算放射治疗中的剂量涂抹效应:一种数学模型。

Estimating dose painting effects in radiotherapy: a mathematical model.

作者信息

Alfonso Juan Carlos López, Jagiella Nick, Núñez Luis, Herrero Miguel A, Drasdo Dirk

机构信息

Department of Applied Mathematics, Faculty of Mathematics, Universidad Complutense de Madrid, Madrid, Spain.

Institut National de Recherche en Informatique et en Automatique (INRIA), Domaine de Voluceau - Rocquencourt, Paris, France ; Institute of Computational Biology, Helmholtz Center Munich, German Research Center for Environmental Health, Neuherberg, Germany.

出版信息

PLoS One. 2014 Feb 26;9(2):e89380. doi: 10.1371/journal.pone.0089380. eCollection 2014.

Abstract

Tumor heterogeneity is widely considered to be a determinant factor in tumor progression and in particular in its recurrence after therapy. Unfortunately, current medical techniques are unable to deduce clinically relevant information about tumor heterogeneity by means of non-invasive methods. As a consequence, when radiotherapy is used as a treatment of choice, radiation dosimetries are prescribed under the assumption that the malignancy targeted is of a homogeneous nature. In this work we discuss the effects of different radiation dose distributions on heterogeneous tumors by means of an individual cell-based model. To that end, a case is considered where two tumor cell phenotypes are present, which we assume to strongly differ in their respective cell cycle duration and radiosensitivity properties. We show herein that, as a result of such differences, the spatial distribution of the corresponding phenotypes, whence the resulting tumor heterogeneity can be predicted as growth proceeds. In particular, we show that if we start from a situation where a majority of ordinary cancer cells (CCs) and a minority of cancer stem cells (CSCs) are randomly distributed, and we assume that the length of CSC cycle is significantly longer than that of CCs, then CSCs become concentrated at an inner region as tumor grows. As a consequence we obtain that if CSCs are assumed to be more resistant to radiation than CCs, heterogeneous dosimetries can be selected to enhance tumor control by boosting radiation in the region occupied by the more radioresistant tumor cell phenotype. It is also shown that, when compared with homogeneous dose distributions as those being currently delivered in clinical practice, such heterogeneous radiation dosimetries fare always better than their homogeneous counterparts. Finally, limitations to our assumptions and their resulting clinical implications will be discussed.

摘要

肿瘤异质性被广泛认为是肿瘤进展尤其是治疗后复发的一个决定性因素。不幸的是,当前的医学技术无法通过非侵入性方法推断出与肿瘤异质性相关的临床信息。因此,当放疗被用作首选治疗方法时,辐射剂量测定是在假定所靶向的恶性肿瘤具有均匀性质的前提下进行的。在这项工作中,我们通过基于单个细胞的模型来讨论不同辐射剂量分布对异质性肿瘤的影响。为此,我们考虑一种情况,即存在两种肿瘤细胞表型,我们假设它们在各自的细胞周期持续时间和放射敏感性特性方面有很大差异。我们在此表明,由于这些差异,随着生长的进行,可以预测相应表型的空间分布,从而预测由此产生的肿瘤异质性。特别是,我们表明,如果我们从大多数普通癌细胞(CCs)和少数癌症干细胞(CSCs)随机分布的情况开始,并且我们假设CSC周期的长度明显长于CCs,那么随着肿瘤生长,CSCs会集中在内部区域。因此我们得出,如果假设CSCs比CCs对辐射更具抗性,可以选择异质性剂量测定来通过增加对更具放射抗性的肿瘤细胞表型所占据区域的辐射来增强肿瘤控制。还表明,与临床实践中目前采用的均匀剂量分布相比,这种异质性辐射剂量测定总是比其均匀对应物表现更好。最后,将讨论我们假设的局限性及其产生的临床意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3c73/3935877/c6ee878dd920/pone.0089380.g001.jpg

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