IDH Genotyping and Glioma Prognosis Research Based on an Interpretable Transformer Learning Framework
Xuan Yu , Yaping Wu , Yan Bai , Nan Meng , Shuting Jin , Qingxia Wu , Lijuan Chen , Ningli Wang , Xiaosheng Song , Guofeng Shen , Meiyun Wang
CAAI Transactions on Intelligence Technology ›› 2025, Vol. 10 ›› Issue (6) : 1813 -1828.
Accurate genotyping and prognosis of glioma patients present significant clinical challenges, often dependent on subjective judgement and insufficient scientific evidence. This study aims to develop a robust, noninvasive preoperative multi-modal MRI-based transformer learning model to predict IDH genotyping and glioma prognosis. This multi-centre study included 563 glioma patients to develop an interpretable classification model utilising various preoperative imaging sequences, including T1-weighted, T2-weighted, fiuid-attenuated inversion recovery, contrast-enhanced T1-weighted, and diffusion-weighted imaging. The model employs a multi-task learning framework to extract and fuse radiomic, deep learning, and clinical features for IDH genotyping and glioma prognosis. Additionally, a multi-modal transformer strategy is integrated to analyse structural and functional MRI, thereby enhancing model performance. Experimental results indicate that the model demonstrates superior performance, surpassing previous research and other state-of-the-art methods. The model achieves an AUC of 91.40% in the IDH genotyping task and 93.37% in the glioma prognosis task. Group analysis reveals that the model exhibits higher sensitivity to IDH-mutant cases and more accurately identifies low-risk groups compared to medium-or high-risk groups. This study aims to achieve accurate IDH genotyping and glioma prognosis through effective classification method, offering valuable diagnostic insights for clinical practice and expediting treatment decisions.
glioma prognosis / IDH genotyping / image analysis / image classification / multi-modal MRI / multi-task transformer learning
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National Natural Science Foundation of China(Grants 82441022)
National Natural Science Foundation of China(82371934)
Medical Science and Technology Research Project of Henan Province(SBGJ202101002)
Joint Fund of Henan Province Science and Technology R&D Programme(225200810062)
Henan Provincial Medical Science and Technology Research Joint Construction Project(LHGJ20240053)
Henan Provincial Medical Science and Technology Research Joint Construction Project(LHGJ20240036)
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