Department of Advanced Biomedical Sciences, University of Naples "Federico II", Via Pansini 5, 80131, Naples, Italy.
Department of Clinical Medicine and Surgery, University of Naples "Federico II", Via Pansini 5, 80131, Naples, Italy.
Neuroradiology. 2021 Aug;63(8):1293-1304. doi: 10.1007/s00234-021-02668-0. Epub 2021 Mar 2.
To systematically review and evaluate the methodological quality of studies using radiomics for diagnostic and predictive purposes in patients with intracranial meningioma. To perform a meta-analysis of machine learning studies for the prediction of intracranial meningioma grading from pre-operative brain MRI.
Articles published from the year 2000 on radiomics and machine learning applications in brain imaging of meningioma patients were included. Their methodological quality was assessed by three readers with the radiomics quality score, using the intra-class correlation coefficient (ICC) to evaluate inter-reader reproducibility. A meta-analysis of machine learning studies for the preoperative evaluation of meningioma grading was performed and their risk of bias was assessed with the Quality Assessment of Diagnostic Accuracy Studies tool.
In all, 23 studies were included in the systematic review, 8 of which were suitable for the meta-analysis. Total (possible range, -8 to 36) and percentage radiomics quality scores were respectively 6.96 ± 4.86 and 19 ± 13% with a moderate to good inter-reader reproducibility (ICC = 0.75, 95% confidence intervals, 95%CI = 0.54-0.88). The meta-analysis showed an overall AUC of 0.88 (95%CI = 0.84-0.93) with a standard error of 0.02.
Machine learning and radiomics have been proposed for multiple applications in the imaging of meningiomas, with promising results for preoperative lesion grading. However, future studies with adequate standardization and higher methodological quality are required prior to their introduction in clinical practice.
系统回顾和评估颅内脑膜瘤患者基于影像组学的诊断和预测目的的研究方法学质量。对术前脑 MRI 预测颅内脑膜瘤分级的机器学习研究进行荟萃分析。
纳入 2000 年以来发表的关于脑膜瘤患者脑成像中影像组学和机器学习应用的文章。使用组内相关系数(ICC)评估读者间的可重复性,三位读者使用影像组学质量评分评估其方法学质量。对术前评估脑膜瘤分级的机器学习研究进行荟萃分析,并使用诊断准确性研究质量评估工具(Quality Assessment of Diagnostic Accuracy Studies tool)评估其偏倚风险。
共纳入 23 项系统评价研究,其中 8 项适合进行荟萃分析。总(可能范围,-8 至 36)和百分比影像组学质量评分分别为 6.96 ± 4.86 和 19 ± 13%,读者间具有中度至良好的可重复性(ICC = 0.75,95%置信区间,95%CI = 0.54-0.88)。荟萃分析显示,总体 AUC 为 0.88(95%CI = 0.84-0.93),标准误为 0.02。
机器学习和影像组学已被提出用于脑膜瘤成像的多种应用,在术前病变分级方面具有有前景的结果。然而,在将其引入临床实践之前,需要进行具有充分标准化和更高方法学质量的未来研究。