Zhang Jing, Zhang Guojin, Cao Yuntai, Ren Jialiang, Zhao Zhiyong, Han Tao, Chen Kuntao, Zhou Junlin
Department of Radiology, The Fifth Affiliated Hospital of Zunyi Medical University, Zhuhai, China.
Department of Radiology, Sichuan Provincial People's Hospital, University of Electronic Science and Technology of China, Chengdu, China.
Front Oncol. 2022 Jan 21;12:811767. doi: 10.3389/fonc.2022.811767. eCollection 2022.
Preoperative distinction between transitional meningioma and atypical meningioma would aid the selection of appropriate surgical techniques, as well as the prognosis prediction. Here, we aimed to differentiate between these two tumors using radiomic signatures based on preoperative, contrast-enhanced T1-weighted and T2-weighted magnetic resonance imaging. A total of 141 transitional meningioma and 101 atypical meningioma cases between January 2014 and December 2018 with a histopathologically confirmed diagnosis were retrospectively reviewed. All patients underwent magnetic resonance imaging before surgery. For each patient, 1227 radiomic features were extracted from contrast-enhanced T1-weighted and T2-weighted images each. Least absolute shrinkage and selection operator regression analysis was performed to select the most informative features of different modalities. Subsequently, stepwise multivariate logistic regression was chosen to further select strongly correlated features and build classification models that can distinguish transitional from atypical meningioma. The diagnostic abilities were evaluated by receiver operating characteristic analysis. Furthermore, a nomogram was built by incorporating clinical characteristics, radiological features, and radiomic signatures, and decision curve analysis was used to validate the clinical usefulness of the nomogram. Sex, tumor shape, brain invasion, and four radiomic features differed significantly between transitional meningioma and atypical meningioma. The clinicoradiomic model derived by fusing the above features resulted in the best discrimination ability, with areas under the curves of 0.809 (95% confidence interval, 0.743-0.874) and 0.795 (95% confidence interval, 0.692-0.899) and sensitivity values of 74.0% and 71.4% in the training and validation cohorts, respectively. The clinicoradiomic model demonstrated good performance for the differentiation between transitional and atypical meningioma. It is a quantitative tool that can potentially aid the selection of surgical techniques and the prognosis prediction and can thus be applied in patients with these two meningioma subtypes.
术前区分过渡型脑膜瘤和非典型脑膜瘤有助于选择合适的手术技术以及预测预后。在此,我们旨在基于术前增强T1加权和T2加权磁共振成像,利用放射组学特征区分这两种肿瘤。回顾性分析了2014年1月至2018年12月期间共141例过渡型脑膜瘤和101例非典型脑膜瘤病例,其诊断均经组织病理学证实。所有患者在手术前均接受了磁共振成像检查。对于每位患者,分别从增强T1加权和T2加权图像中提取1227个放射组学特征。进行最小绝对收缩和选择算子回归分析以选择不同模态中最具信息量的特征。随后,选择逐步多变量逻辑回归进一步选择强相关特征并建立可区分过渡型和非典型脑膜瘤的分类模型。通过受试者操作特征分析评估诊断能力。此外,通过纳入临床特征、放射学特征和放射组学特征构建列线图,并使用决策曲线分析验证列线图的临床实用性。过渡型脑膜瘤和非典型脑膜瘤在性别、肿瘤形态、脑侵犯以及四个放射组学特征方面存在显著差异。融合上述特征得出的临床放射组学模型具有最佳的区分能力,在训练队列和验证队列中的曲线下面积分别为0.809(95%置信区间,0.743 - 0.874)和0.795(95%置信区间,0.692 - 0.899),灵敏度值分别为74.0%和71.4%。临床放射组学模型在区分过渡型和非典型脑膜瘤方面表现良好。它是一种定量工具,可能有助于手术技术的选择和预后预测,因此可应用于这两种脑膜瘤亚型的患者。