Sadeghi Mahdi, Abdalvand Neda, Mahdavi Seied Rabi, Abdollahi Hamid, Qasempour Younes, Mohammadian Fatemeh, Birgani Mohammad Javad Tahmasebi, Hosseini Khadijeh, Hazbavi Maryam
Department of Medical Physics, School of Medicine, Iran University of Medical Sciences, Tehran, Iran.
Finetech in Medicine Research Center, Department of Medical Physics, School of Medicine, Iran University of Medical Sciences, Tehran, Iran.
J Med Signals Sens. 2024 Aug 6;14:23. doi: 10.4103/jmss.jmss_57_22. eCollection 2024.
Radiomic feature reproducibility assessment is critical in radiomics-based image biomarker discovery. This study aims to evaluate the impact of preprocessing parameters on the reproducibility of magnetic resonance image (MRI) radiomic features extracted from gross tumor volume (GTV) and high-risk clinical tumor volume (HR-CTV) in cervical cancer (CC) patients.
This study included 99 patients with pathologically confirmed cervical cancer who underwent an MRI prior to receiving brachytherapy. The GTV and HR-CTV were delineated on T2-weighted MRI and inputted into 3D Slicer for radiomic analysis. Before feature extraction, all images were preprocessed to a combination of several parameters of Laplacian of Gaussian (1 and 2), resampling (0.5 and 1), and bin width (5, 10, 25, and 50). The reproducibility of radiomic features was analyzed using the intra-class correlation coefficient (ICC).
Almost all shapes and first-order features had ICC values > 0.95. Most second-order texture features were not reproducible (ICC < 0.95) in GTV and HR-CTV. Furthermore, 20% of all neighboring gray-tone difference matrix texture features had ICC > 0.90 in both GTV and HR-CTV.
The results presented here showed that MRI radiomic features are vulnerable to changes in preprocessing, and this issue must be understood and applied before any clinical decision-making. Features with ICC > 0.90 were considered the most reproducible features. Shape and first-order radiomic features were the most reproducible features in both GTV and HR-CTV. Our results also showed that GTV and HR-CTV radiomic features had similar changes against preprocessing sets.
在基于放射组学的图像生物标志物发现中,放射组学特征的可重复性评估至关重要。本研究旨在评估预处理参数对从宫颈癌(CC)患者的大体肿瘤体积(GTV)和高危临床肿瘤体积(HR-CTV)中提取的磁共振图像(MRI)放射组学特征可重复性的影响。
本研究纳入了99例经病理证实的宫颈癌患者,这些患者在接受近距离放射治疗前接受了MRI检查。在T2加权MRI上勾画GTV和HR-CTV,并将其输入到3D Slicer中进行放射组学分析。在特征提取之前,所有图像都被预处理为高斯拉普拉斯算子的几个参数(1和2)、重采样(0.5和1)以及箱宽(5、10、25和50)的组合。使用组内相关系数(ICC)分析放射组学特征的可重复性。
几乎所有形状和一阶特征的ICC值均>0.95。在GTV和HR-CTV中,大多数二阶纹理特征不可重复(ICC<0.95)。此外,在GTV和HR-CTV中,所有邻域灰度差矩阵纹理特征的20%的ICC>0.90。
此处呈现的结果表明,MRI放射组学特征容易受到预处理变化的影响,在进行任何临床决策之前,必须理解并应用这一问题。ICC>0.90的特征被认为是最可重复的特征。形状和一阶放射组学特征在GTV和HR-CTV中都是最可重复的特征。我们的结果还表明,GTV和HR-CTV放射组学特征在预处理集方面具有相似的变化。