상세 보기
- Lee, Junhyeok;
- Jang, Joon;
- Eum, Heeseong;
- Jang, Han;
- Kim, Minchul;
- 외 6명
WEB OF SCIENCE
2SCOPUS
2초록
Adult diffuse gliomas are clinically and molecularly heterogeneous, complicating risk stratification and personalized management. We introduce GlioSurv, a multimodal transformer model based on an accelerated failure time framework to integrate multiparametric MRI, clinical and molecular variables, and treatment data for personalized survival prediction. In a retrospective analysis of 1944 patients, including one internal cohort (n = 891; mean OS 32.2 months) and three external cohorts (n = 84, 470, 499; mean OS 26.1, 18.8, 19.0 months), GlioSurv demonstrated robust discrimination (IAUC: 0.68-0.86), calibration (IBS: 0.10-0.21) and concordance (C-index: 0.61-0.80). It significantly outperformed a convolutional neural network, a vision transformer, and a non-imaging multimodal transformer (p < 0.01). Sequential integration of imaging, clinical, molecular, then treatment data, progressively improved C-index from 0.69 to 0.80 (p < 0.001). Interpretability analyses confirmed established prognostic factors and indicate the potential of GlioSurv to support personalized survival prediction and risk-stratified decision-making in diffuse glioma.
키워드
- 제목
- GlioSurv: interpretable transformer for multimodal, individualized survival prediction in diffuse glioma
- 저자
- Lee, Junhyeok; Jang, Joon; Eum, Heeseong; Jang, Han; Kim, Minchul; Park, Sung Hye; Park, Chul Kee; Choi, Seung Hong; Ahn, Sung Soo; Han, Yoseob; Choi, Kyu Sung
- 발행일
- 2025-11-14
- 유형
- Article
- 저널명
- NPJ DIGITAL MEDICINE
- 권
- 8
- 호
- 1