Pituitary adenomas (PAs) are among the most prevalent lesions of the sella turcica, accounting for 10%-25% of all intracranial neoplasms. Pituitary macroadenomas (PMAs) are defined with a maximum diameter of over 1 cm. Tumor characteristics are key factors influencing surgical effectiveness and complications of PMAs, with tumor perfusion and consistency identified as major predictive factors in literature. Conventional sequences provide limited information for predicting the perfusion and consistency of pituitary adenomas. Advanced sequences offer additional insights. However, the efficacy of combining radiomic features from multiparametric sequences, incorporating both conventional and advanced sequences, has not yet been proved. We aim to develop machine learning models that combines radiomic features developed from both conventional and advanced sequences to predict the perfusion and consistency of PMAs. Furthermore, we aim to demonstrate the clinically applicability of these models by constructing a MR-PIT stratification (Multiparametric Radiomic derived and tumor Perfusion and consIsTency based surgical difficulty stratification), which correlated with the surgical strategy and outcomes.
Study Type
OBSERVATIONAL
Enrollment
200
Advanced sequences, such as arterial spin labeling (ASL) and diffusion-weighted imaging (DWI)
Huashan Hospital
Shanghai, Shanghai Municipality, China
Extent of resection
Time frame: From enrollment to the end of treatment at 12 weeks
Severe postoperative complications
Time frame: From enrollment to the end of treatment at 12 weeks
This platform is for informational purposes only and does not constitute medical advice. Always consult a qualified healthcare professional.