Department of Radiology, The Fifth Affiliated Hospital of Zunyi Medical University, Zhuhai, China.
Department of Radiology, Affiliated Hospital of Qinghai University, Xining, China.
Ann Clin Transl Neurol. 2023 Aug;10(8):1284-1295. doi: 10.1002/acn3.51797. Epub 2023 Jul 6.
Preoperative prediction of meningioma venous sinus invasion would facilitate the selection of surgical approaches and predicting the prognosis. To predict venous sinus invasion in meningiomas, we used radiomic signatures to construct a model based on preoperative contrast-enhanced T1-weighted (T1C) and T2-weighted (T2) magnetic resonance imaging.
In total, 599 patients with pathologically confirmed meningioma were retrospectively enrolled. For each patient enrolled in this study, 1595 radiomic signatures were extracted from T1C and T2 image sequences. Pearson correlation analysis and recursive feature elimination were used to select the most relevant signatures extracted from different image sequences, and logistic regression algorithms were used to build a radiomic model for risk prediction of meningioma sinus invasion. Furthermore, a nomogram was built by incorporating clinical characteristics and radiomic signatures, and a decision curve analysis was used to evaluate the clinical utility of the nomogram.
Twenty radiomic signatures that were significantly related to venous sinus invasion were screened from 3190 radiomic signatures. Venous sinus invasion was associated with tumor position, and the clinicoradiomic model that incorporated the above characteristics (20 radiomic signatures and tumor position) had the best discriminating ability. The areas under the curve for the training and validation cohorts were 0.857 (95% confidence interval [CI], 0.824-0.890) and 0.824 (95% CI, 0.752-0.8976), respectively.
The clinicoradiomic model had good predictive performance for venous sinus invasion in meningioma, which can aid in devising surgical strategies and predicting prognosis.
术前预测脑膜瘤静脉窦侵犯有助于选择手术入路和预测预后。为了预测脑膜瘤的静脉窦侵犯,我们使用放射组学特征构建了一个基于术前对比增强 T1 加权(T1C)和 T2 加权(T2)磁共振成像的模型。
共回顾性纳入 599 例经病理证实的脑膜瘤患者。对纳入本研究的每位患者,从 T1C 和 T2 图像序列中提取 1595 个放射组学特征。采用 Pearson 相关分析和递归特征消除方法,从不同图像序列中选择最相关的特征,并使用逻辑回归算法构建脑膜瘤窦侵犯风险预测的放射组学模型。此外,通过纳入临床特征和放射组学特征构建列线图,并使用决策曲线分析评估列线图的临床实用性。
从 3190 个放射组学特征中筛选出与静脉窦侵犯显著相关的 20 个放射组学特征。静脉窦侵犯与肿瘤位置有关,纳入上述特征(20 个放射组学特征和肿瘤位置)的临床放射组学模型具有最佳的鉴别能力。训练队列和验证队列的曲线下面积分别为 0.857(95%置信区间 [CI],0.824-0.890)和 0.824(95%CI,0.752-0.8976)。
该临床放射组学模型对脑膜瘤静脉窦侵犯具有良好的预测性能,有助于制定手术策略和预测预后。