Department of Radiology, Lanzhou University Second Hospital, Lanzhou 730030, China; Second Clinical School, Lanzhou University, Lanzhou 730030, China; Key Laboratory of Medical Imaging of Gansu Province, Lanzhou 730030, China; Gansu International Scientific and Technological Cooperation Base of Medical Imaging Artificial Intelligence, Lanzhou 730030, China.
Image Center of Affiliated Hospital of Qinghai University, Xining, China.
Magn Reson Imaging. 2023 Dec;104:16-22. doi: 10.1016/j.mri.2023.09.002. Epub 2023 Sep 20.
To explore the clinical value of a clinical radiomics model nomogram based on magnetic resonance imaging (MRI) for preoperative meningioma grading.
We collected retrospectively 544 patients with pathological diagnosis of meningiomas were categorized into training (n = 380) and validation (n = 164) groups at the ratio of 7∶ 3. There were 3,376 radiomics features extracted from T2WI and T1C by shukun technology platform after manual segmentation using an independent blind method by two radiologists. The Selectpercentile and Lasso are used to filter the most strongly correlated features. Random forest (RF) radiomics model and clinical radiomics model nomogram were constructed respectively. The calibration, discrimination, and clinical validity were evaluated by using the calibration curve and decision analysis curve (DCA).
The RF radiomics model based on T1C and T2WI was the most effective to predict meningioma grade before surgery among the six different classifiers. The predictive ability of clinical radiomics model was slightly higher than that of RF model alone. The AUC, SEN, SPE, and ACC of the training set were 0.949, 0.976, 0.785, and 0.826, and the AUC, SEN, SPE, and ACC of the validation set were 0.838, 0.829, 0.783, and 0.793, respectively. The calibration curve and Hosmer-Lemeshow test showed the predictive probability of the fusion model was similar to the actual differentiated LGM and HGM. The analysis of the decision curve showed that the clinical radiomics model could obtain the best clinical net profit.
The clinical radiomics model nomogram based on T1C and T2WI has high accuracy and sensitivity for predicting meningioma grade.
探讨基于磁共振成像(MRI)的临床放射组学模型列线图在脑膜瘤术前分级中的临床价值。
回顾性收集 544 例经病理诊断为脑膜瘤的患者,采用 7∶3 的比例分为训练组(n=380)和验证组(n=164)。采用独立盲法由两名放射科医生手动分割后,通过 shukun 技术平台从 T2WI 和 T1C 中提取 3376 个放射组学特征。采用 Selectpercentile 和 Lasso 筛选出相关性最强的特征。分别构建随机森林(RF)放射组学模型和临床放射组学模型列线图。采用校准曲线和决策分析曲线(DCA)评估校准、判别和临床有效性。
在 6 种不同分类器中,基于 T1C 和 T2WI 的 RF 放射组学模型是预测脑膜瘤术前分级最有效的方法。临床放射组学模型的预测能力略高于单独的 RF 模型。训练集的 AUC、SEN、SPE 和 ACC 分别为 0.949、0.976、0.785 和 0.826,验证集的 AUC、SEN、SPE 和 ACC 分别为 0.838、0.829、0.783 和 0.793。校准曲线和 Hosmer-Lemeshow 检验显示,融合模型的预测概率与实际分化的 LGM 和 HGM 相似。决策曲线分析表明,临床放射组学模型可以获得最佳的临床净收益。
基于 T1C 和 T2WI 的临床放射组学模型列线图对脑膜瘤分级具有较高的准确性和敏感性。