Multimodal data integration using deep learning predicts overall survival of patients with glioma

View Pub Date : 2024-08-08 DOI:10.1002/viw.20240001
Yifan Yuan, Xuan Zhang, Yining Wang, Hongyan Li, Zengxin Qi, Zunguo Du, Ying‐Hua Chu, Danyang Feng, Jie Hu, Qingguo Xie, Jianping Song, Yuqing Liu, Jiajun Cai
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Abstract

Gliomas are highly heterogenous diseases with poor prognosis. Precise survival prediction could benefit further clinical decision‐making, clinical trial incursion, and health economics. Recent research has emphasized the prognostic value of magnetic resonance imaging, pathological specimens, and circulating biomarkers. However, the integrative potential and efficacy of these modalities require to be further validated. After incorporating 218 patients of The Cancer Genome Atlas glioma datasets of and 54 patients of the Huashan cohort with complementary prognostic information, we established a squeeze‐and‐excitation deep learning feature extractor for T1‐contrast enhanced images and histological slides and explored to screen significant circulating 5‐hydroxymethylcytosines (5hmC) profiles for glioma survival by least absolute shrinkage and selection operator‐Cox regression. Therefore, a prognostication predictive model with high efficiency was obtained through survival support vector machine multimodal integration of radiologic imaging, histopathologic imaging features, genome‐wide 5hmC in circulating cell‐free DNA and clinical variables, suggesting a valid strategy (concordance‐index = 0.897; Brier score = 0.118) for improved survival risk stratification of glioma patients.

Abstract Image

利用深度学习进行多模态数据整合可预测胶质瘤患者的总体生存率
胶质瘤是一种预后不良的高度异质性疾病。精确的生存预测有利于进一步的临床决策、临床试验和卫生经济学。最近的研究强调了磁共振成像、病理标本和循环生物标志物的预后价值。然而,这些方法的综合潜力和疗效还有待进一步验证。在纳入了具有互补预后信息的218例癌症基因组图谱胶质瘤患者数据集和54例华山队列患者数据集后,我们建立了一个针对T1对比增强图像和组织学切片的挤压-激发深度学习特征提取器,并探索通过最小绝对缩减和选择算子-Cox回归筛选出胶质瘤生存的重要循环5-羟甲基胞嘧啶(5hmC)谱。因此,通过对放射学成像、组织病理学成像特征、循环无细胞DNA中的全基因组5hmC和临床变量进行生存支持向量机多模态整合,获得了一个高效的预后预测模型,为改善胶质瘤患者的生存风险分层提供了一种有效的策略(一致性指数=0.897;布赖尔评分=0.118)。
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