Abstract
OBJECTIVES: Atypical meningioma (AM) has a high recurrence rate. This study explored the factors associated with recurrence and built a predictive model for AM by combining radiomic and clinical features. METHODS: This retrospective cohort study enrolled 451 adult AM patients who underwent surgical treatment at three institutions between May 2012 and April 2024. The patients in institution 1 were randomly assigned to the training dataset (n = 246) or internal validation dataset (n = 164) at a ratio of 6:4, and patients in institutions 2 and 3 composed the external validation dataset (n = 41). The clinical and pathological characteristics of the patients were collected, and radiomics technology was used to extract image features from preoperative multiparametric MR images. After feature screening, three types of AM recurrence prediction models were constructed: the radiomic model, the clinical model and the combined model. RESULTS: The median follow-up time was 27 months, and 22.8% (n = 103) of the patients relapsed after surgery. A total of 23 radiomic features were included in the model. Compared with the radiomic model and clinical model, the combined model performed better in predicting recurrence, with C-index values of 0.8453, 0.7867 and 0.8125 in the training, internal validation and external validation datasets, respectively, and the AUC value remained above 0.85 within 5 years. The radiomics score plays the most important role in predicting the recurrence of AM, with features such as t1c_original_shape_MajorAxisLength and t1c_original_shape_Flatness being of high importance. Among the clinical features, secondary tumors, subtotal resection and high Ki-67 levels contribute to AM recurrence. CONCLUSIONS: Radiomics has additional value for predicting AM tumor recurrence and has favorable predictive performance when combined with clinical features.