首页|期刊导航|陆军军医大学学报|MoACG:一种基于自注意力机制和门控融合的多组学与临床数据整合模型用于多癌种预后预测

MoACG:一种基于自注意力机制和门控融合的多组学与临床数据整合模型用于多癌种预后预测OA

MoACG:A self-attention and gated fusion-based multi-omics and clinical data integration model for pan-cancer prognosis prediction

中文摘要英文摘要

目的 旨在对癌症多组学数据和临床数据进行深度融合和分析,从而提高癌症预后的预测能力.方法 获取TCGA数据库卵巢癌、肝癌及结直肠癌3个癌种的组学数据(mRNA、lncRNA和miRNA数据)和临床数据;构建一种新的癌症预后预测模型MoACG(multi-omics attention clinical gating Model),其基于自注意力机制(self-attention mechanism)探讨不同组学之间的潜在关联,利用门控融合(gated fusion)自适应地融合多组学信息和临床信息(年龄、性别、治疗方式);通过与多种机器学习方法对比验证模型的有效性,最后利用可解释性算法DeepLIFT量化基因对模型贡献,筛选核心预后基因.结果 在卵巢癌、肝癌及结直肠癌数据集中,五折交叉验证的AUC值分别为(0.793±0.042)、(0.791±0.065)和(0.789±0.086);AUPR值分别为(0.915±0.020)、(0.855±0.058)和(0.917±0.039);综合性能优于其他9种机器学习模型.消融实验证明,3种组学数据整合模型在各癌种中均展现出最优预测性能.DeepLIFT算法筛选出与肝癌相关的M E D 8、D L G A P 4、N A B P2等基因,与已有研究结论高度吻合,且能够通过表达水平有效区分患者的生存风险(P<0.005).结论 相较于既往研究,利用组学数据和临床数据构建的MoACG可有效提高癌症预后预测能力,为癌症诊疗、预后研究提供新方案.

Objective To perform in-depth integration and analysis of cancer multi-omics data and clinical data to enhance the predictive capability for cancer prognosis.Methods Multi-omics data(mRNA,lncRNA,and miRNA profiles)and clinical data for 3 cancer types,namely ovarian cancer,liver cancer,and colorectal cancer,were retrieved from The Cancer Genome Atlas(TCGA)database.A novel cancer prognosis prediction model,MoACG(Multi-omics Attention Clinical Gating Model),was constructed based on the self-attention mechanism to explore potential associations among different omics layers,and gated fusion was employed to adaptively integrate multi-omics information with clinical information(age,sex,and treatment modality).The effectiveness of the model was validated through comparison with multiple machine learning methods,and the interpretability algorithm DeepLIFT was utilized to quantify gene contributions to the model and identify core prognostic genes.Results In the ovarian cancer,liver cancer,and colorectal cancer datasets,five-fold cross-validation yielded the area under curve(AUC)values of receiver operating characteristic(ROC)curve of(0.793±0.042),(0.791±0.065),and(0.789±0.086),respectively,and the AUC values of precision-recall curve(AUPR)were(0.915±0.020),(0.855±0.058),and(0.917±0.039),respectively.The comprehensive performance surpassed that of 9 other machine learning models.Ablation experiments demonstrated that the 3-omics data integration model exhibited optimal predictive performance across all cancer types.The DeepLIFT algorithm identified MED8,DLGAP4,and NABP2 as genes associated with liver cancer,showing high concordance with existing research findings and effectively stratifying patient survival risk based on expression levels(P<0.005).Conclusion Compared with previous studies,the MoACG model,constructed by integrating multi-omics and clinical data,effectively enhances the predictive performance for cancer prognosis,thereby providing a novel approach for cancer diagnosis,treatment,and prognostic research.

秦茂洋;沈俊杰;王龙昊;郭泓麟;伍亚舟

陆军军医大学(第三军医大学)军事预防系医学系军队卫生统计学教研室,重庆陆军军医大学(第三军医大学)军事预防系医学系军队卫生统计学教研室,重庆陆军军医大学(第三军医大学)军事预防系医学系军队卫生统计学教研室,重庆陆军军医大学(第三军医大学)军事预防系医学系军队卫生统计学教研室,重庆陆军军医大学(第三军医大学)军事预防系医学系军队卫生统计学教研室,重庆

医药卫生

自注意力机制癌症多组学门控融合癌症预后可解释性

self-attention mechanismcancer multi-omicsgated fusioncancer prognosisinterpretability

《陆军军医大学学报》 2026 (6)

809-821,13

国家自然科学基金项目(82173621,82574207) Supported by the National Natural Science Foundation of China(82173621,82574207).

10.16016/j.2097-0927.202512061

评论