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A Bayesian spatial random effects model characterisation of tumour heterogeneity implemented using Markov chain Monte Carlo (MCMC) simulation

机译:使用马尔可夫链蒙特卡罗(mCmC)模拟实现的肿瘤异质性的贝叶斯空间随机效应模型表征

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摘要

The focus of this study is the development of a statistical modelling procedure for characterising intra-tumour heterogeneity, motivated by recent clinical literature indicating that a variety of tumours exhibit a considerable degree of genetic spatial variability. A formal spatial statistical model has been developed and used to characterise the structural heterogeneity of a number of supratentorial primitive neuroecto-dermal tumours (PNETs), based on diffusionweighted magnetic resonance imaging. Particular attention is paid to the spatial dependence of diffusion close to the tumour boundary, in order to determine whether the data provide statistical evidence to support the proposition that water diffusivity in the boundary region of some tumours exhibits a deterministic dependence on distance from the boundary, in excess of an underlying random 2D spatial heterogeneity in diffusion. Tumour spatial heterogeneity measures were derived from the diffusion parameter estimates obtained using a Bayesian spatial random effects model. The analyses were implemented using Markov chain Monte Carlo (MCMC) simulation. Posterior predictive simulation was used to assess the adequacy of the statistical model. The main observations are that the previously reported relationship between diffusion and boundary proximity remains observable and achieves statistical significance after adjusting for an underlying random 2D spatial heterogeneity in the diffusion model parameters. A comparison of the magnitude of the boundary-distance effect with the underlying random 2D boundary heterogeneity suggests that both are important sources of variation in the vicinity of the boundary. No consistent pattern emerges from a comparison of the boundary and core spatial heterogeneity, with no indication of a consistently greater level of heterogeneity in one region compared with the other. The results raise the possibility that DWI might provide a surrogate marker of intra-tumour genetic regional heterogeneity, which would provide a powerful tool with applications in both patient management and in cancer research.
机译:这项研究的重点是用于表征肿瘤内异质性的统计建模程序的发展,这一过程受最近的临床文献的启发,表明多种肿瘤表现出相当程度的遗传空间变异性。基于扩散加权磁共振成像技术,已经开发出一种正式的空间统计模型,并用于表征许多幕上原始神经外胚层肿瘤(PNET)的结构异质性。为了确定数据是否提供统计证据来支持某些肿瘤边界区域的水扩散率表现出对距边界距离的确定性依赖性这一命题,应特别注意靠近肿瘤边界的扩散的空间依赖性,超过潜在的随机2D空间扩散异质性。从使用贝叶斯空间随机效应模型获得的扩散参数估计中得出肿瘤空间异质性度量。分析使用马尔可夫链蒙特卡罗(MCMC)模拟进行。后验预测模拟用于评估统计模型的适当性。主要观察结果是,在对扩散模型参数中的基础随机2D空间异质性进行调整之后,先前报告的扩散与边界邻近性之间的关系仍然可以观察到并获得统计学意义。边界距离效应的大小与潜在的随机2D边界异质性的比较表明,两者都是边界附近变化的重要来源。通过边界和核心空间异质性的比较,没有出现一致的模式,也没有迹象表明一个区域的异质性水平始终高于另一个区域。结果增加了DWI可能提供肿瘤内遗传区域异质性的替代标记的可能性,这将为在患者管理和癌症研究中的应用提供强大的工具。

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    King MD; Grech-Sollars M;

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