Shakeri Mahsa, Mostaar Ahmad, Sadeghi Arash Zare, Hosseini Seyyed Mohammad, Joybari Ali Yaghobi, Ghadiri Hossein
Department of Medical Physics and Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.
Research Center for Molecular and Cellular Imaging (RCMCI), Advanced Medical Technologies and Equipment Institute (AMTEI), Tehran University of Medical Sciences (TUMS), Tehran, Iran.
J Med Phys. 2024 Oct-Dec;49(4):608-622. doi: 10.4103/jmp.jmp_149_24. Epub 2024 Dec 18.
Despite extensive research on various brain diseases, a few studies have focused on radiomic feature distribution in healthy brain images. The present study applied a novel radiomic framework to investigate the robustness and baseline values of radiomic features in normal brain magnetic resonance imaging (MRIs) regions.
Analyses were performed on T1 and T2 images including 276 normal brains and 14 healthy volunteers were scanned with three scanners using the same protocols. The images were divided into 1024 three-dimensional nonoverlap patches with the same pixel size. Seven patches located in the thalamus, putamen, hippocampus and brain stem were selected as volume of interest (VOI). Eighty-five radiomic features were generated. To investigate the variation of features across VOIs, the analysis of variance was performed and coefficient of variation (COV) and intraclass correlation coefficient (ICC) were explored to examine the features repeatability.
Thalamus (right and left) and hippocampus (left) resulted in more stable features (COV ≤ 6%) in T1 and T2 images, respectively. The inter-scanner ICC analysis demonstrated the features of T2 sequences represented more repeatable results and the brain stem and thalamus (both T1 and T2) showed particularly high repeatability (higher ICC values). Robust results (ICC ≥ 0.9) were identified for energy and range features of the first order class and several textures features across different brain regions.
Our results indicated the baselines of the repeatable texture features in healthy brain structural MRI highlighting inter-scanner stability. According to the findings, MRI sequencing and VOI location impact feature robustness and should be considered in brain radiomic studies.
尽管对各种脑部疾病进行了广泛研究,但很少有研究关注健康脑图像中的放射组学特征分布。本研究应用一种新型放射组学框架来研究正常脑磁共振成像(MRI)区域中放射组学特征的稳健性和基线值。
对T1和T2图像进行分析,包括276例正常脑,14名健康志愿者使用相同方案通过三台扫描仪进行扫描。将图像划分为1024个具有相同像素大小的三维不重叠补丁。选择位于丘脑、壳核、海马体和脑干的七个补丁作为感兴趣体积(VOI)。生成了85个放射组学特征。为了研究特征在不同VOI之间的变化,进行方差分析,并探索变异系数(COV)和组内相关系数(ICC)以检验特征的可重复性。
丘脑(右侧和左侧)和海马体(左侧)在T1和T2图像中分别产生了更稳定的特征(COV≤6%)。扫描仪间ICC分析表明,T2序列的特征表现出更可重复的结果,脑干和丘脑(T1和T2)表现出特别高的可重复性(更高的ICC值)。在不同脑区的一阶类能量和范围特征以及几个纹理特征中发现了稳健的结果(ICC≥0.9)。
我们的结果表明了健康脑结构MRI中可重复纹理特征的基线,突出了扫描仪间的稳定性。根据研究结果,MRI序列和VOI位置会影响特征的稳健性,在脑放射组学研究中应予以考虑。