Department of Hematology, People's Hospital of Lianshui, Lianshui 223400, Huai'an, China.
J Healthc Eng. 2021 Dec 15;2021:6574491. doi: 10.1155/2021/6574491. eCollection 2021.
Multiple myeloma (MM) is the second most commonly diagnosed hematological malignancy. Understanding the basic mechanisms of the metabolism in MM may lead to new therapies that benefit patients. We collected the gene expression profile data of GSE39754 and performed differential analysis. Furthermore, identify the candidate genes that affect the prognosis of the differentially expressed genes (DEGs) related to the metabolism. Enrichment analysis is used to identify the biological effects of candidate genes. Perform coexpression analysis on the verified DEGs. In addition, the candidate genes are used to cluster MM into different subtypes through consistent clustering. Use LASSO regression analysis to identify key genes, and use Cox regression analysis to evaluate the prognostic effects of key genes. Evaluation of immune cell infiltration in MM is by CIBERSORT. We identified 2821 DEGs, of which 348 genes were metabolic-related prognostic genes and were considered candidate genes. Enrichment analysis revealed that the candidate genes are mainly related to the proteasome, purine metabolism, and cysteine and methionine metabolism signaling pathways. According to the consensus clustering method, we identified the two subtypes of group 1 and group 2 that affect the prognosis of MM patients. Using the LASSO model, we have identified 10 key genes. The prognosis of the high-risk group identified by Cox regression analysis is worse than that of the low-risk group. Among them, PKLR has a greater impact on the prognosis of MM, and the prognosis of MM patients is poor when the expression is high. In addition, the level of immune cell infiltration in the high-risk group is higher than that in the low-risk group. In the summary, metabolism-related genes significantly affect the prognosis of MM patients through the metabolic process of MM patients. PKLR may be a prognostic risk factor for MM patients.
多发性骨髓瘤(MM)是第二大常见的血液恶性肿瘤。了解 MM 代谢的基本机制可能会导致新的治疗方法,使患者受益。我们收集了 GSE39754 的基因表达谱数据并进行了差异分析。此外,确定候选基因,这些基因影响与代谢相关的差异表达基因(DEGs)的预后。富集分析用于确定候选基因的生物学效应。对验证的 DEGs 进行共表达分析。此外,通过一致聚类,候选基因将 MM 聚类为不同的亚型。使用 LASSO 回归分析识别关键基因,并使用 Cox 回归分析评估关键基因的预后效果。使用 CIBERSORT 评估 MM 中的免疫细胞浸润。我们确定了 2821 个 DEGs,其中 348 个基因与代谢相关的预后基因有关,被认为是候选基因。富集分析表明,候选基因主要与蛋白酶体、嘌呤代谢、半胱氨酸和蛋氨酸代谢信号通路有关。根据共识聚类方法,我们确定了影响 MM 患者预后的 1 组和 2 组两个亚型。使用 LASSO 模型,我们确定了 10 个关键基因。Cox 回归分析确定的高风险组的预后比低风险组差。其中,PKLR 对 MM 的预后影响较大,表达较高时 MM 患者的预后较差。此外,高风险组的免疫细胞浸润水平高于低风险组。总之,代谢相关基因通过 MM 患者的代谢过程显著影响 MM 患者的预后。PKLR 可能是 MM 患者的预后风险因素。