Medical Physics Department, Veneto Institute of Oncology IOV - IRCCS, Padova, Italy.
Medical Physics Department, Veneto Institute of Oncology IOV - IRCCS, Padova, Italy.
Phys Med. 2019 Mar;59:117-126. doi: 10.1016/j.ejmp.2019.03.005. Epub 2019 Mar 16.
The evaluation of features robustness with respect to acquisition and post-processing parameter changes is fundamental for the reliability of radiomics studies. The aim of this study was to investigate the sensitivity of PET radiomic features to acquisition statistics reduction and standardized-uptake-volume (SUV) discretization in PET/MRI pediatric examinations.
Twenty-seven lesions were detected from the analysis of twenty-one 18F-FDG-PET/MRI pediatric examinations. By decreasing the count-statistics of the original list-mode data (3 MBq/kg), injected activity reduction was simulated. Two SUV discretization approaches were applied: 1) resampling lesion SUV range into fixed bins numbers (FBN); 2) rounding lesion SUV into fixed bin size (FBS). One hundred and six radiomic features were extracted. Intraclass Correlation Coefficient (ICC), Spearman correlation coefficient and coefficient-of-variation (COV) were calculated to assess feature reproducibility between low tracer activities and full tracer activity feature values.
More than 70% of Shape and first order features, and around 70% and 40% of textural features, when using FBS and FBN methods respectively, resulted robust till 1.2 MBk/kg. Differences in median features reproducibility (ICC) between FBS and FBN datasets were statistically significant for every activity level independently from bin number/size, with higher values for FBS. Differences in median Spearman coefficient (i.e. patient ranking according to feature values) were not statistically significant, varying the intensity resolution (i.e. bin number/size) for either FBS and FBN methods.
For each simulated count-statistic level, robust PET radiomic features were determined for pediatric PET/MRI examinations. A larger number of robust features were detected when using FBS methods.
针对获取和后处理参数变化,评估特征稳健性对于放射组学研究的可靠性至关重要。本研究旨在探讨 PET 放射组学特征对 PET/MRI 儿科检查中采集统计量减少和标准化摄取值(SUV)离散化的敏感性。
从 21 例 18F-FDG-PET/MRI 儿科检查的分析中检测到 27 个病灶。通过降低原始列表模式数据的计数统计量(3MBq/kg),模拟了注射活动的减少。应用了两种 SUV 离散化方法:1)将病灶 SUV 范围重采样到固定的 bin 数量(FBN);2)将病灶 SUV 四舍五入到固定的 bin 大小(FBS)。提取了 106 个放射组学特征。计算了组内相关系数(ICC)、Spearman 相关系数和变异系数(COV),以评估低示踪剂活性和全示踪剂活性特征值之间特征的可重复性。
当使用 FBS 和 FBN 方法时,超过 70%的形状和一阶特征,以及大约 70%和 40%的纹理特征,在 1.2MBk/kg 时表现出稳健性。在每个活动水平下,FBS 和 FBN 数据集之间特征可重复性(ICC)中位数的差异均具有统计学意义,而 FBS 的值更高。无论 bin 数量/大小如何,FBS 和 FBN 方法的中位 Spearman 系数(即根据特征值对患者进行排序)差异均无统计学意义,改变了强度分辨率(即 bin 数量/大小)。
对于每个模拟的计数统计量水平,确定了用于儿科 PET/MRI 检查的稳健 PET 放射组学特征。当使用 FBS 方法时,检测到更多的稳健特征。