Max Rady College of Medicine, University of Manitoba, Winnipeg, Canada.
Department of Biochemistry, University of Winnipeg, Winnipeg, Canada.
Neuroradiology. 2024 Aug;66(8):1301-1310. doi: 10.1007/s00234-024-03404-0. Epub 2024 Jun 21.
Meningioma is the most common intracranial tumor, graded on pathology using WHO criteria to predict tumor course and treatment. However, pathological grading via biopsy may not be possible in cases with poor surgical access due to tumor location. Therefore, our systematic review aims to evaluate whether diagnostic imaging features can differentiate high grade (HG) from low grade (LG) meningiomas as an alternative to pathological grading.
Three databases were searched for primary studies that either use routine magnetic resonance imaging (MRI) or computed tomography (CT) to assess pathologically WHO-graded meningiomas. Two investigators independently screened and extracted data from included studies.
24 studies met our inclusion criteria with 12 significant (p < 0.05) CT and MRI features identified for differentiating HG from LG meningiomas. Cystic changes in the tumor had the highest specificity (93.4%) and irregular tumor-brain interface had the highest positive predictive value (65.0%). Mass effect had the highest sensitivity (81.0%) and negative predictive value (90.7%) of all imaging features. Imaging feature with the highest accuracy for identifying HG disease was irregular tumor-brain interface (79.7%). Irregular tumor-brain interface and heterogenous tumor enhancement had the highest AUC values of 0.788 and 0.703, respectively.
Our systematic review highlight imaging features that can help differentiate HG from LG meningiomas.
脑膜瘤是最常见的颅内肿瘤,根据世卫组织标准进行病理分级,以预测肿瘤的病程和治疗。然而,由于肿瘤位置,在手术入路不佳的情况下,通过活检进行病理分级可能不可行。因此,我们的系统评价旨在评估诊断性影像学特征是否可以替代病理分级来区分高级别(HG)和低级别(LG)脑膜瘤。
我们在三个数据库中搜索了使用常规磁共振成像(MRI)或计算机断层扫描(CT)评估经病理组织学 WHO 分级的脑膜瘤的原始研究。两名研究人员独立筛选并从纳入的研究中提取数据。
24 项研究符合我们的纳入标准,有 12 项重要的(p<0.05)CT 和 MRI 特征被确定用于区分 HG 和 LG 脑膜瘤。肿瘤的囊性改变具有最高的特异性(93.4%),不规则的肿瘤-脑界面具有最高的阳性预测值(65.0%)。所有影像学特征中,肿块效应的敏感性(81.0%)和阴性预测值(90.7%)最高。用于识别 HG 疾病的影像学特征中,具有最高准确性的是不规则的肿瘤-脑界面(79.7%)。不规则的肿瘤-脑界面和不均匀的肿瘤强化具有最高的 AUC 值,分别为 0.788 和 0.703。
我们的系统评价强调了有助于区分 HG 和 LG 脑膜瘤的影像学特征。