Department of Radiology and Nuclear Medicine, Third Faculty of Medicine, Charles University and University Hospital Kralovske Vinohrady, Prague, Czech Republic.
PLoS One. 2024 Apr 11;19(4):e0301978. doi: 10.1371/journal.pone.0301978. eCollection 2024.
Radiomic features are usually used to predict target variables such as the absence or presence of a disease, treatment response, or time to symptom progression. One of the potential clinical applications is in patients with Parkinson's disease. Robust radiomic features for this specific imaging method have not yet been identified, which is necessary for proper feature selection. Thus, we are assessing the robustness of radiomic features in dopamine transporter imaging (DaT). For this study, we made an anthropomorphic head phantom with tissue heterogeneity using a personal 3D printer (polylactide 82% infill); the bone was subsequently reproduced with plaster. A surgical cotton ball with radiotracer (123I-ioflupane) was inserted. Scans were performed on the two-detector hybrid camera with acquisition parameters corresponding to international guidelines for DaT single photon emission tomography (SPECT). Reconstruction of SPECT was performed on a clinical workstation with iterative algorithms. Open-source LifeX software was used to extract 134 radiomic features. Statistical analysis was made in RStudio using the intraclass correlation coefficient (ICC) and coefficient of variation (COV). Overall, radiomic features in different reconstruction parameters showed a moderate reproducibility rate (ICC = 0.636, p <0.01). Assessment of ICC and COV within CT attenuation correction (CTAC) and non-attenuation correction (NAC) groups and within particular feature classes showed an excellent reproducibility rate (ICC > 0.9, p < 0.01), except for an intensity-based NAC group, where radiomic features showed a good repeatability rate (ICC = 0.893, p <0.01). By our results, CTAC becomes the main threat to feature stability. However, many radiomic features were sensitive to the selected reconstruction algorithm irrespectively to the attenuation correction. Radiomic features extracted from DaT-SPECT showed moderate to excellent reproducibility rates. These results make them suitable for clinical practice and human studies, but awareness of feature selection should be held, as some radiomic features are more robust than others.
放射组学特征通常用于预测目标变量,如疾病的存在或不存在、治疗反应或症状进展时间。一个潜在的临床应用是在帕金森病患者中。对于这种特定的成像方法,尚未确定稳健的放射组学特征,这对于适当的特征选择是必要的。因此,我们正在评估多巴胺转运蛋白成像(DaT)中放射组学特征的稳健性。在这项研究中,我们使用个人 3D 打印机(聚乳酸 82%填充)制作了具有组织异质性的拟人头部体模;随后用石膏复制了骨头。将带有放射性示踪剂(123I-ioflupane)的外科棉球插入。使用与 DaT 单光子发射断层扫描(SPECT)国际指南相对应的采集参数在双探测器混合相机上进行扫描。SPECT 重建在临床工作站上使用迭代算法进行。使用开源 LifeX 软件提取 134 个放射组学特征。在 RStudio 中使用组内相关系数(ICC)和变异系数(COV)进行统计分析。总体而言,不同重建参数下的放射组学特征表现出中等的可重复性(ICC = 0.636,p <0.01)。在 CT 衰减校正(CTAC)和非衰减校正(NAC)组内以及特定特征类内评估 ICC 和 COV 显示出极好的可重复性(ICC > 0.9,p <0.01),除了基于强度的 NAC 组外,放射组学特征显示出良好的可重复性(ICC = 0.893,p <0.01)。根据我们的结果,CTAC 成为特征稳定性的主要威胁。然而,许多放射组学特征对所选重建算法敏感,而与衰减校正无关。从 DaT-SPECT 提取的放射组学特征表现出中等至极好的可重复性。这些结果使它们适用于临床实践和人体研究,但应该意识到特征选择的重要性,因为一些放射组学特征比其他特征更稳健。