Predicting peritumoral edema development after gamma knife radiosurgery of meningiomas using machine learning methods: a multicenter study.
Xuanxuan LiYiping LuLi LiuDongdong WangYajing ZhaoNan MeiDaoying GengXin MaWeiwei ZhengShaofeng DuanPu-Yeh WuHongkai WenYongli TanXiaogang SunShibin SunZhiwei LiTonggang YuBo YinPublished in: European radiology (2023)
• Machine learning models were built to predict post-GKS edema in meningioma. The random survival forest model with clinical, semantic, and ADC radiomics features achieved excellent performance. • The nomogram based on the predicted risks provides personalized prediction with a C-index of 0.962 (95%CI: 0.951-0.973) and satisfactory calibration and shows the potential to assist in better counselling, appropriate treatment decisions, and customized follow-up plans. • Given the excellent performance and convenient acquisition of the conventional sequence, we envision that this non-invasive and cost-effective tool will facilitate personalized medicine in meningioma treatment.