Department of Pneumology, Children's Hospital Affiliated to Zhengzhou University, Henan Children's Hospital, Zhengzhou Children's Hospital, Zhengzhou, Henan, China.
Deparment of Haematology, Shaanxi Provincial People's Hospital, Xi'an, Shanxi, China.
PLoS One. 2018 Mar 23;13(3):e0194245. doi: 10.1371/journal.pone.0194245. eCollection 2018.
Acute myeloid leukemia (AML) is a heterogeneous disease, and survival signatures are urgently needed to better monitor treatment. MiRNAs displayed vital regulatory roles on target genes, which was necessary involved in the complex disease. We therefore examined the expression levels of miRNAs and genes to identify robust signatures for survival benefit analyses. First, we reconstructed subpathway graphs by embedding miRNA components that were derived from low-throughput miRNA-gene interactions. Then, we randomly divided the data sets from The Cancer Genome Atlas (TCGA) into training and testing sets, and further formed 100 subsets based on the training set. Using each subset, we identified survival-related miRNAs and genes, and identified survival subpathways based on the reconstructed subpathway graphs. After statistical analyses of these survival subpathways, the most robust subpathways with the top three ranks were identified, and risk scores were calculated based on these robust subpathways for AML patient prognoses. Among these robust subpathways, three representative subpathways, path: 05200_10 from Pathways in cancer, path: 04110_20 from Cell cycle, and path: 04510_8 from Focal adhesion, were significantly associated with patient survival in the TCGA training and testing sets based on subpathway risk scores. In conclusion, we performed integrated analyses of miRNAs and genes to identify robust prognostic subpathways, and calculated subpathway risk scores to characterize AML patient survival.
急性髓系白血病 (AML) 是一种异质性疾病,迫切需要生存特征来更好地监测治疗效果。miRNAs 对靶基因具有重要的调节作用,这对于复杂疾病的研究至关重要。因此,我们检测了 miRNAs 和基因的表达水平,以确定用于生存获益分析的稳健特征。首先,我们通过嵌入低通量 miRNA-基因相互作用衍生的 miRNA 成分来构建亚通路图。然后,我们将来自癌症基因组图谱 (TCGA) 的数据集随机分为训练集和测试集,并进一步基于训练集形成 100 个子集。使用每个子集,我们鉴定了与生存相关的 miRNAs 和基因,并基于重建的亚通路图鉴定了生存亚通路。对这些生存亚通路进行统计分析后,鉴定出最稳健的亚通路,前三个排名的亚通路,并基于这些稳健的亚通路计算 AML 患者预后的风险评分。在这些稳健的亚通路中,基于亚通路风险评分,三条代表性的亚通路,癌症途径中的 05200_10 途径、细胞周期中的 04110_20 途径和焦点黏附中的 04510_8 途径,在 TCGA 训练和测试集中与患者生存显著相关。总之,我们对 miRNAs 和基因进行了综合分析,以鉴定稳健的预后亚通路,并计算亚通路风险评分来描述 AML 患者的生存情况。