Litcius/Paper detail

Deep learning and radiomics-based approach to meningioma grading: exploring the potential value of peritumoral edema regions

Zhuo Zhang, Ying Miao, Jixuan Wu, Xiaochen Zhang, Quanfeng Ma, Hua Bai, Qiang Gao

2024Physics in Medicine and Biology21 citationsDOIOpen Access PDF

Abstract

Abstract Objective. To address the challenge of meningioma grading, this study aims to investigate the potential value of peritumoral edema (PTE) regions and proposes a unique approach that integrates radiomics and deep learning techniques. Approach. The primary focus is on developing a transfer learning-based meningioma feature extraction model (MFEM) that leverages both vision transformer (ViT) and convolutional neural network (CNN) architectures. Additionally, the study explores the significance of the PTE region in enhancing the grading process. Main results. The proposed method demonstrates excellent grading accuracy and robustness on a dataset of 98 meningioma patients. It achieves an accuracy of 92.86%, precision of 93.44%, sensitivity of 95%, and specificity of 89.47%. Significance. This study provides valuable insights into preoperative meningioma grading by introducing an innovative method that combines radiomics and deep learning techniques. The approach not only enhances accuracy but also reduces observer subjectivity, thereby contributing to improved clinical decision-making processes.

Topics & Concepts

MeningiomaGrading (engineering)Convolutional neural networkFluid-attenuated inversion recoveryRadiomicsDeep learningArtificial intelligenceComputer scienceMagnetic resonance imagingMachine learningRadiologyMedicinePattern recognition (psychology)EngineeringCivil engineeringRadiomics and Machine Learning in Medical ImagingMeningioma and schwannoma managementArtificial Intelligence in Healthcare and Education