Wolsztynski Eric, O'Sullivan Janet, Hughes Nicola M, Mou Tian, Murphy Peter, O'Sullivan Finbarr, O'Regan Kevin
Department of Statistics, School of Mathematical Sciences, University College Cork, T12 XY86, Ireland.
Royal College of Surgeons in Ireland, Dublin, Ireland.
IEEE Trans Radiat Plasma Med Sci. 2019 Jul;3(4):421-433. doi: 10.1109/trpms.2019.2912433. Epub 2019 Apr 24.
Numerous studies have reported the prognostic utility of texture analyses and the effectiveness of radiomics in PET and PET/CT assessment of non-small cell lung cancer (NSCLC). Here we explore the potential, relative to this methodology, of an alternative model-based approach to tumour characterization, which was successfully applied to sarcoma in previous works. The spatial distribution of 3D FDG-PET uptake is evaluated in the spatial referential determined by the best-fitting ellipsoidal pattern, which provides a univariate uptake profile function of the radial position of intratumoral voxels. A group of structural features is extracted from this fit that include two heterogeneity variables and statistical summaries of local metabolic gradients. We demonstrate that these variables capture aspects of tumour metabolism that are separate to those described by conventional texture features. Prognostic model selection is performed in terms of a number of classifiers, including stepwise selection of logistic models, LASSO, random forests and neural networks with respect to two-year survival status. Our results for a cohort of 93 NSCLC patients show that structural variables have significant prognostic potential, and that they may be used in conjunction with texture features in a traditional radiomics sense, towards improved baseline multivariate models of patient overall survival. The statistical significance of these models also demonstrates the relevance of these machine learning classifiers for prognostic variable selection.
众多研究报告了纹理分析的预后效用以及放射组学在非小细胞肺癌(NSCLC)的PET和PET/CT评估中的有效性。在此,我们探索一种基于模型的肿瘤特征替代方法相对于该方法的潜力,该方法在先前的研究中已成功应用于肉瘤。在由最佳拟合椭球模式确定的空间参考系中评估3D FDG-PET摄取的空间分布,这提供了肿瘤内体素径向位置的单变量摄取剖面函数。从该拟合中提取一组结构特征,包括两个异质性变量和局部代谢梯度的统计摘要。我们证明这些变量捕获了肿瘤代谢中与传统纹理特征所描述的方面不同的方面。根据多种分类器进行预后模型选择,包括针对两年生存状态的逻辑模型、LASSO、随机森林和神经网络的逐步选择。我们对93例NSCLC患者队列的结果表明,结构变量具有显著的预后潜力,并且它们可以与传统放射组学意义上的纹理特征结合使用,以改进患者总生存的基线多变量模型。这些模型的统计学意义也证明了这些机器学习分类器在预后变量选择中的相关性。