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首页> 外文期刊>Physics in medicine and biology. >Impact of intensity discretization on textural indices of [18F]FDG-PET tumour heterogeneity in lung cancer patients
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Impact of intensity discretization on textural indices of [18F]FDG-PET tumour heterogeneity in lung cancer patients

机译:强度离散化对肺癌患者[18F] FDG-PET肿瘤异质性造影的影响

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Abstract, Quantifying tumour heterogeneity from [18F]FDG-PET images promises benefits for treatment selection of cancer patients. Here, the calculation of texture parameters mandates an initial discretization step (binning) to reduce the number of intensity levels. Typically, three types of discrimination methods are used: lesion relative resampling (LRR) with fixed bin number, lesion absolute resampling (LAR) and absolute resampling (AR) with fixed bin widths. We investigated the effects of varying bin widths or bin number using 27 commonly cited local and regional texture indices (TIs) applied on lung tumour volumes. The data set were extracted from 58 lung cancer patients, with three different and robust tumour segmentation methods. In our cohort, the variations of the mean value as the function of the bin widths were similar for TIs calculated with LAR and AR quantification. The TI histograms calculated by LRR method showed distinct behaviour and its numerical values substantially effected by the selected bin number. The correlations of the AR and LAR based TIs demonstrated no principal differences between these methods. However, no correlation was found for the interrelationship between the TIs calculated by LRR and LAR (or AR) discretization method. Visual classification of the texture was also performed for each lesion. This classification analysis revealed that the parameters show statistically significant correlation with the visual score, if LAR or AR discretization method is considered, in contrast to LRR. Moreover, all the resulted tendencies were similar regardless the segmentation methods and the type of textural features involved in this work
机译:摘要,量化来自[18F] FDG-PET图像的肿瘤异质性,有利于治疗癌症患者的益处。这里,纹理参数的任务的计算的初始离散化步骤(分级),以减少强度级的数目。通常,使用三种类型的识别方法:Lesion相对重新采样(LRR),具有固定的箱数,病变绝对重采样(LAR)和具有固定箱宽度的绝对重采样(AR)。我们调查了使用27种常用的局部和区域纹理指数(TIS)在肺肿瘤体积上使用27种常用的箱宽或箱数的影响。数据集从58例肺癌患者中提取,具有三种不同和强大的肿瘤分割方法。在我们的队列中,随着用Lar和Ar量化计算的TIS的TIS相似,平均值的变化是类似的。通过LRR方法计算的TI直方图显示出明显的行为及其数值,其基本上由所选择的箱数进行。基于AR和基于LAR的相关性在这些方法之间证明了这些方法之间的主要差异。然而,没有发现通过LRR和Lar(或AR)离散化方法计算的TIS之间的相互关系的相关性。还对每个病变进行了纹理的可视化分类。该分类分析表明,如果考虑LAR或AR离散化方法,参数与VAR或AR离散化方法相比,参数与视觉得分显示出统计学上的相关性。此外,无论分割方法以及参与这项工作所涉及的纹理特征的类型,所有所产生的趋势都是相似的

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