Wu Xuewei, Zhang Shuaitong, Zhang Zhenyu, He Zicong, Xu Zexin, Wang Weiwei, Jin Zhe, You Jingjing, Guo Yang, Zhang Lu, Huang Wenhui, Wang Fei, Liu Xianzhi, Yan Dongming, Cheng Jingliang, Yan Jing, Zhang Shuixing, Zhang Bin
Department of Radiology, The First Affiliated Hospital of Jinan University, Guangzhou, Guangdong, China.
School of Medical Technology, Beijing Institute of Technology, Beijing, China.
NPJ Precis Oncol. 2024 Aug 16;8(1):181. doi: 10.1038/s41698-024-00670-2.
Deep learning models have been developed for various predictions in glioma; yet, they were constrained by manual segmentation, task-specific design, or a lack of biological interpretation. Herein, we aimed to develop an end-to-end multi-task deep learning (MDL) pipeline that can simultaneously predict molecular alterations and histological grade (auxiliary tasks), as well as prognosis (primary task) in gliomas. Further, we aimed to provide the biological mechanisms underlying the model's predictions. We collected multiscale data including baseline MRI images from 2776 glioma patients across two private (FAHZU and HPPH, n = 1931) and three public datasets (TCGA, n = 213; UCSF, n = 410; and EGD, n = 222). We trained and internally validated the MDL model using our private datasets, and externally validated it using the three public datasets. We used the model-predicted deep prognosis score (DPS) to stratify patients into low-DPS and high-DPS subtypes. Additionally, a radio-multiomics analysis was conducted to elucidate the biological basis of the DPS. In the external validation cohorts, the MDL model achieved average areas under the curve of 0.892-0.903, 0.710-0.894, and 0.850-0.879 for predicting IDH mutation status, 1p/19q co-deletion status, and tumor grade, respectively. Moreover, the MDL model yielded a C-index of 0.723 in the TCGA and 0.671 in the UCSF for the prediction of overall survival. The DPS exhibits significant correlations with activated oncogenic pathways, immune infiltration patterns, specific protein expression, DNA methylation, tumor mutation burden, and tumor-stroma ratio. Accordingly, our work presents an accurate and biologically meaningful tool for predicting molecular subtypes, tumor grade, and survival outcomes in gliomas, which provides personalized clinical decision-making in a global and non-invasive manner.
深度学习模型已被用于胶质瘤的各种预测;然而,它们受到手动分割、特定任务设计或缺乏生物学解释的限制。在此,我们旨在开发一种端到端的多任务深度学习(MDL)管道,该管道可以同时预测胶质瘤的分子改变和组织学分级(辅助任务)以及预后(主要任务)。此外,我们旨在提供模型预测背后的生物学机制。我们收集了多尺度数据,包括来自两个私人数据集(FAHZU和HPPH,n = 1931)和三个公共数据集(TCGA,n = 213;UCSF,n = 410;和EGD,n = 222)的2776例胶质瘤患者的基线MRI图像。我们使用我们的私人数据集训练并内部验证了MDL模型,并使用三个公共数据集进行了外部验证。我们使用模型预测的深度预后评分(DPS)将患者分为低DPS和高DPS亚型。此外,进行了放射多组学分析以阐明DPS的生物学基础。在外部验证队列中,MDL模型预测IDH突变状态、1p/19q共缺失状态和肿瘤分级的曲线下平均面积分别为0.892-0.903、0.710-0.894和0.850-0.879。此外,MDL模型在TCGA中预测总生存期的C指数为0.723,在UCSF中为0.671。DPS与激活的致癌途径、免疫浸润模式、特定蛋白表达、DNA甲基化、肿瘤突变负担和肿瘤-基质比显著相关。因此,我们的工作提出了一种准确且具有生物学意义的工具,用于预测胶质瘤的分子亚型、肿瘤分级和生存结果,以全球和非侵入性方式提供个性化临床决策。