Park Jae Hyun, Quang Le Thanh, Yoon Woong, Baek Byung Hyun, Park Ilwoo, Kim Seul Kee
Department of Radiology, Chonnam National University Hospital, Gwangju 61469, Republic of Korea.
Department of Artificial Intelligence Convergence, Chonnam National University, Gwangju 61469, Republic of Korea.
Biomedicines. 2023 Dec 10;11(12):3268. doi: 10.3390/biomedicines11123268.
Meningiomas are common primary brain tumors, and their accurate preoperative grading is crucial for treatment planning. This study aimed to evaluate the value of radiomics and clinical imaging features in predicting the histologic grade of meningiomas from preoperative MRI. We retrospectively reviewed patients with intracranial meningiomas from two hospitals. Preoperative MRIs were analyzed for tumor and edema volumes, enhancement patterns, margins, and tumor-brain interfaces. Radiomics features were extracted, and machine learning models were employed to predict meningioma grades. A total of 212 patients were included. In the training group (Hospital 1), significant differences were observed between low-grade and high-grade meningiomas in terms of tumor volume ( = 0.012), edema volume ( = 0.004), enhancement ( = 0.001), margin ( < 0.001), and tumor-brain interface ( < 0.001). Five radiomics features were selected for model development. The prediction model for radiomics features demonstrated an average validation accuracy of 0.74, while the model for clinical imaging features showed an average validation accuracy of 0.69. When applied to external test data (Hospital 2), the radiomics model achieved an area under the receiver operating characteristics curve (AUC) of 0.72 and accuracy of 0.69, while the clinical imaging model achieved an AUC of 0.82 and accuracy of 0.81. An improved performance was obtained from the model constructed by combining radiomics and clinical imaging features. In the combined model, the AUC and accuracy for meningioma grading were 0.86 and 0.73, respectively. In conclusion, this study demonstrates the potential value of radiomics and clinical imaging features in predicting the histologic grade of meningiomas. The combination of both radiomics and clinical imaging features achieved the highest AUC among the models. Therefore, the combined model of radiomics and clinical imaging features may offer a more effective tool for predicting clinical outcomes in meningioma patients.
脑膜瘤是常见的原发性脑肿瘤,其术前准确分级对于治疗方案的制定至关重要。本研究旨在评估放射组学和临床影像特征在术前MRI预测脑膜瘤组织学分级中的价值。我们回顾性分析了两家医院颅内脑膜瘤患者的资料。对术前MRI进行分析,测量肿瘤和水肿体积、强化模式、边界以及肿瘤-脑界面。提取放射组学特征,并采用机器学习模型预测脑膜瘤分级。共纳入212例患者。在训练组(医院1)中,低级别和高级别脑膜瘤在肿瘤体积(P = 0.012)、水肿体积(P = 0.004)、强化(P = 0.001)、边界(P < 0.001)和肿瘤-脑界面(P < 0.001)方面存在显著差异。选择了五个放射组学特征用于模型构建。放射组学特征预测模型的平均验证准确率为0.74,而临床影像特征模型的平均验证准确率为0.69。当应用于外部测试数据(医院2)时,放射组学模型的受试者操作特征曲线下面积(AUC)为0.72,准确率为0.69,而临床影像模型的AUC为0.82,准确率为0.81。将放射组学和临床影像特征相结合构建的模型性能有所提高。在联合模型中,脑膜瘤分级的AUC和准确率分别为0.86和0.73。总之,本研究证明了放射组学和临床影像特征在预测脑膜瘤组织学分级中的潜在价值。放射组学和临床影像特征相结合在各模型中获得了最高的AUC。因此,放射组学和临床影像特征联合模型可能为预测脑膜瘤患者的临床结局提供更有效的工具。