Moreau Jeremy T, Hankinson Todd C, Baillet Sylvain, Dudley Roy W R
1McConnell Brain Imaging Centre, Department of Neurology and Neurosurgery, Montreal Neurological Institute, McGill University, Montreal, QC Canada.
2Department of Pediatric Surgery, Division of Neurosurgery, Montreal Children's Hospital, Montreal, QC Canada.
NPJ Digit Med. 2020 Jan 30;3:12. doi: 10.1038/s41746-020-0219-5. eCollection 2020.
Meningiomas are known to have relatively lower aggressiveness and better outcomes than other central nervous system (CNS) tumors. However, there is considerable overlap between clinical and radiological features characterizing benign, atypical, and malignant tumors. In this study, we developed methods and a practical app designed to assist with the diagnosis and prognosis of meningiomas. Statistical learning models were trained and validated on 62,844 patients from the Surveillance, Epidemiology, and End Results database. We used balanced logistic regression-random forest ensemble classifiers and proportional hazards models to learn multivariate patterns of association between malignancy, survival, and a series of basic clinical variables-such as tumor size, location, and surgical procedure. We demonstrate that our models are capable of predicting meaningful individual-specific clinical outcome variables and show good generalizability across 16 SEER registries. A free smartphone and web application is provided for readers to access and test the predictive models (www.meningioma.app). Future model improvements and prospective replication will be necessary to demonstrate true clinical utility. Rather than being used in isolation, we expect that the proposed models will be integrated into larger and more comprehensive models that integrate imaging and molecular biomarkers. Whether for meningiomas or other tumors of the CNS, the power of these methods to make individual-patient predictions could lead to improved diagnosis, patient counseling, and outcomes.
已知脑膜瘤相较于其他中枢神经系统(CNS)肿瘤,具有相对较低的侵袭性和较好的预后。然而,良性、非典型性和恶性肿瘤的临床及影像学特征存在相当大的重叠。在本研究中,我们开发了方法及一款实用应用程序,旨在辅助脑膜瘤的诊断和预后评估。在来自监测、流行病学和最终结果数据库的62844例患者中对统计学习模型进行了训练和验证。我们使用平衡逻辑回归-随机森林集成分类器和比例风险模型来了解恶性程度、生存率与一系列基本临床变量(如肿瘤大小、位置和手术方式)之间的多变量关联模式。我们证明我们的模型能够预测有意义的个体特异性临床结局变量,并在16个监测、流行病学和最终结果(SEER)登记处显示出良好的可推广性。为读者提供了一个免费的智能手机和网络应用程序,以访问和测试预测模型(www.meningioma.app)。未来需要对模型进行改进和前瞻性重复验证,以证明其真正的临床实用性。我们预计所提出的模型不会单独使用,而是会被整合到更大、更全面的整合影像学和分子生物标志物的模型中。无论是对于脑膜瘤还是其他中枢神经系统肿瘤,这些方法进行个体患者预测的能力都可能带来诊断、患者咨询及预后的改善。