Department of Neurosurgery, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
International Education College of Henan University, Kaifeng, China.
Eur Radiol. 2024 Apr;34(4):2468-2479. doi: 10.1007/s00330-023-10252-8. Epub 2023 Oct 9.
The purpose of this study was to develop and validate a nomogram combined multiparametric MRI and clinical indicators for identifying the WHO grade of meningioma.
Five hundred and sixty-eight patients were included in this study, who were diagnosed pathologically as having meningiomas. Firstly, radiomics features were extracted from CE-T1, T2, and 1-cm-thick tumor-to-brain interface (BTI) images. Then, difference analysis and the least absolute shrinkage and selection operator were orderly used to select the most representative features. Next, the support vector machine algorithm was conducted to predict the WHO grade of meningioma. Furthermore, a nomogram incorporated radiomics features and valuable clinical indicators was constructed by logistic regression. The performance of the nomogram was assessed by calibration and clinical effectiveness, as well as internal validation.
Peritumoral edema volume and gender are independent risk factors for predicting meningioma grade. The multiparametric MRI features incorporating CE-T1, T2, and BTI features showed the higher performance for prediction of meningioma grade with a pooled AUC = 0.885 (95% CI, 0.821-0.946) and 0.860 (95% CI, 0.788-0.923) in the training and test groups, respectively. Then, a nomogram with a pooled AUC = 0.912 (95% CI, 0.876-0.961), combined radiomics score, peritumoral edema volume, and gender improved diagnostic performance compared to radiomics model or clinical model and showed good calibration as the true results. Moreover, decision curve analysis demonstrated satisfactory clinical effectiveness of the proposed nomogram.
A novel nomogram is simple yet effective in differentiating WHO grades of meningioma and thus can be used in patients with meningiomas.
We proposed a nomogram that included clinical indicators and multi-parameter radiomics features, which can accurately, objectively, and non-invasively differentiate WHO grading of meningioma and thus can be used in clinical work.
• The study combined radiomics features and clinical indicators for objectively predicting the meningioma grade. • The model with CE-T1 + T2 + brain-to-tumor interface features demonstrated the best predictive performance by investigating seven different radiomics models. • The nomogram potentially has clinical applications in distinguishing high-grade and low-grade meningiomas.
本研究旨在开发和验证一种列线图,结合多参数 MRI 和临床指标来识别脑膜瘤的 WHO 分级。
本研究共纳入 568 例经病理诊断为脑膜瘤的患者。首先,从 CE-T1、T2 和 1cm 厚的肿瘤与脑界面(BTI)图像中提取放射组学特征。然后,依次进行差异分析和最小绝对收缩和选择算子(LASSO)以选择最具代表性的特征。接下来,使用支持向量机算法预测脑膜瘤的 WHO 分级。此外,通过逻辑回归构建了一个纳入放射组学特征和有价值的临床指标的列线图。通过校准和临床有效性以及内部验证来评估该列线图的性能。
瘤周水肿体积和性别是预测脑膜瘤分级的独立危险因素。纳入 CE-T1、T2 和 BTI 特征的多参数 MRI 特征在预测脑膜瘤分级方面表现出更高的性能,在训练组和测试组的合并 AUC 分别为 0.885(95%CI,0.821-0.946)和 0.860(95%CI,0.788-0.923)。然后,一个合并 AUC 为 0.912(95%CI,0.876-0.961)的列线图,结合放射组学评分、瘤周水肿体积和性别,与放射组学模型或临床模型相比,提高了诊断性能,并且表现出良好的校准,即真实结果。此外,决策曲线分析表明,所提出的列线图具有令人满意的临床有效性。
一种新的列线图可简单、有效地区分脑膜瘤的 WHO 分级,因此可用于脑膜瘤患者。
我们提出了一个包含临床指标和多参数放射组学特征的列线图,可以准确、客观、无创地区分脑膜瘤的 WHO 分级,因此可用于临床工作。
本研究结合放射组学特征和临床指标,客观预测脑膜瘤分级。
通过研究七种不同的放射组学模型,发现 CE-T1+T2+脑-肿瘤界面特征的模型具有最佳预测性能。
该列线图在区分高级别和低级别脑膜瘤方面具有潜在的临床应用价值。