Li Lingmei, Wei Yifang, Shi Guojing, Yang Haitao, Li Zhi, Fang Ruiling, Cao Hongyan, Cui Yuehua
Division of Health Statistics, School of Public Health, Shanxi Medical University, Taiyuan, Shanxi 030001, PR China.
Division of Health Statistics, School of Public Health, Hebei Medical University, Shijiazhuang, Hebei 050017, PR China.
Comput Struct Biotechnol J. 2022 Jul 2;20:3482-3492. doi: 10.1016/j.csbj.2022.06.065. eCollection 2022.
Lower-grade gliomas (LGG), characterized by heterogeneity and invasiveness, originate from the central nervous system. Although studies focusing on molecular subtyping and molecular characteristics have provided novel insights into improving the diagnosis and therapy of LGG, there is an urgent need to identify new molecular subtypes and biomarkers that are promising to improve patient survival outcomes. Here, we proposed a joint similarity network fusion (Joint-SNF) method to integrate different omics data types to construct a fused network using the Joint and Individual Variation Explained (JIVE) technique under the SNF framework. Focusing on the joint network structure, a spectral clustering method was employed to obtain subtypes of patients. Simulation studies show that the proposed Joint-SNF method outperforms the original SNF approach under various simulation scenarios. We further applied the method to a Chinese LGG data set including mRNA expression, DNA methylation and microRNA (miRNA). Three molecular subtypes were identified and showed statistically significant differences in patient survival outcomes. The five-year mortality rates of the three subtypes are 80.8%, 32.1%, and 34.4%, respectively. After adjusting for clinically relevant covariates, the death risk of patients in Cluster 1 was 5.06 times higher than patients in other clusters. The fused network attained by the proposed Joint-SNF method enhances strong similarities, thus greatly improves subtyping performance compared to the original SNF method. The findings in the real application may provide important clues for improving patient survival outcomes and for precision treatment for Chinese LGG patients. An R package to implement the method can be accessed in Github at https://github.com/Sameerer/Joint-SNF.
低级别胶质瘤(LGG)起源于中枢神经系统,具有异质性和侵袭性。尽管聚焦于分子亚型和分子特征的研究为改善LGG的诊断和治疗提供了新的见解,但迫切需要识别出有望改善患者生存结局的新分子亚型和生物标志物。在此,我们提出了一种联合相似性网络融合(Joint-SNF)方法,以整合不同的组学数据类型,并在SNF框架下使用联合和个体变异解释(JIVE)技术构建融合网络。基于联合网络结构,采用谱聚类方法来获得患者的亚型。模拟研究表明,所提出的Joint-SNF方法在各种模拟场景下均优于原始的SNF方法。我们进一步将该方法应用于一个包含mRNA表达、DNA甲基化和微小RNA(miRNA)的中国LGG数据集。识别出了三种分子亚型,它们在患者生存结局方面显示出统计学上的显著差异。这三种亚型的五年死亡率分别为80.8%、32.1%和34.4%。在调整了临床相关协变量后,第1组患者的死亡风险比其他组患者高5.06倍。所提出的Joint-SNF方法获得的融合网络增强了强相似性,因此与原始的SNF方法相比,大大提高了亚型分类性能。实际应用中的这些发现可能为改善患者生存结局以及为中国LGG患者的精准治疗提供重要线索。可在Github上的https://github.com/Sameerer/Joint-SNF访问实现该方法的R包。