Yu Zhengyu, Qiu Bingquan, Zhou Hui, Li Linfeng, Niu Ting
Department of Hematology, West China Hospital, Sichuan University, Chengdu, 610041, Sichuan, China.
Department of Biochemistry and Biophysics, School of Basic Medical Sciences, Peking University Health Science Center, Beijing, China.
Cancer Cell Int. 2023 Aug 14;23(1):169. doi: 10.1186/s12935-023-03007-4.
About 10% of hematologic malignancies are multiple myeloma (MM), an untreatable cancer. Although lactate and branched-chain amino acids (BCAA) are involved in supporting various tumor growth, it is unknown whether they have any bearing on MM prognosis.
MM-related datasets (GSE4581, GSE136337, and TCGA-MM) were acquired from the Gene Expression Omnibus (GEO) database and the Cancer Genome Atlas (TCGA) database. Lactate and BCAA metabolism-related subtypes were acquired separately via the R package "ConsensusClusterPlus" in the GSE4281 dataset. The R package "limma" and Venn diagram were both employed to identify lactate-BCAA metabolism-related genes. Subsequently, a lactate-BCAA metabolism-related prognostic risk model for MM patients was constructed by univariate Cox, Least Absolute Shrinkage and Selection Operator (LASSO), and multivariate Cox regression analyses. The gene set enrichment analysis (GSEA) and R package "clusterProfiler"were applied to explore the biological variations between two groups. Moreover, single-sample gene set enrichment analysis (ssGSEA), Microenvironment Cell Populations-counter (MCPcounte), and xCell techniques were applied to assess tumor microenvironment (TME) scores in MM. Finally, the drug's IC50 for treating MM was calculated using the "oncoPredict" package, and further drug identification was performed by molecular docking.
Cluster 1 demonstrated a worse prognosis than cluster 2 in both lactate metabolism-related subtypes and BCAA metabolism-related subtypes. 244 genes were determined to be involved in lactate-BCAA metabolism in MM. The prognostic risk model was constructed by CKS2 and LYZ selected from this group of genes for MM, then the prognostic risk model was also stable in external datasets. For the high-risk group, a total of 13 entries were enriched. 16 entries were enriched to the low-risk group. Immune scores, stromal scores, immune infiltrating cells (except Type 17 T helper cells in ssGSEA algorithm), and 168 drugs'IC50 were statistically different between two groups. Alkylating potentially serves as a new agent for MM treatment.
CKS2 and LYZ were identified as lactate-BCAA metabolism-related genes in MM, then a novel prognostic risk model was built by using them. In summary, this research may uncover novel characteristic genes signature for the treatment and prognostic of MM.
约10%的血液系统恶性肿瘤为多发性骨髓瘤(MM),这是一种无法治愈的癌症。尽管乳酸和支链氨基酸(BCAA)参与支持多种肿瘤生长,但它们是否与MM的预后有关尚不清楚。
从基因表达综合数据库(GEO)和癌症基因组图谱(TCGA)数据库中获取MM相关数据集(GSE4581、GSE136337和TCGA-MM)。通过GSE4281数据集中的R包“ConsensusClusterPlus”分别获取乳酸和BCAA代谢相关亚型。使用R包“limma”和维恩图来识别乳酸-BCAA代谢相关基因。随后,通过单因素Cox、最小绝对收缩和选择算子(LASSO)以及多因素Cox回归分析构建MM患者的乳酸-BCAA代谢相关预后风险模型。应用基因集富集分析(GSEA)和R包“clusterProfiler”来探索两组之间的生物学差异。此外,应用单样本基因集富集分析(ssGSEA)、微环境细胞群体计数器(MCPcounte)和xCell技术来评估MM中的肿瘤微环境(TME)评分。最后,使用“oncoPredict”包计算治疗MM的药物半数抑制浓度(IC50),并通过分子对接进行进一步的药物鉴定。
在乳酸代谢相关亚型和BCAA代谢相关亚型中,簇1的预后均比簇2差。确定有244个基因参与MM中的乳酸-BCAA代谢。从这组基因中为MM选择CKS2和LYZ构建预后风险模型,该预后风险模型在外部数据集中也很稳定。对于高危组,共富集了13个条目。16个条目富集到低危组。两组之间的免疫评分、基质评分、免疫浸润细胞(ssGSEA算法中的17型辅助性T细胞除外)和168种药物的IC50存在统计学差异。烷化剂可能作为MM治疗的新药物。
CKS2和LYZ被确定为MM中乳酸-BCAA代谢相关基因,然后用它们构建了一个新的预后风险模型。总之,本研究可能揭示MM治疗和预后的新特征基因标志物。