Shu Deng, Jingjing Xiangang, Zhiyin Zheng, Jianping Shen
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引用次数: 0
Abstract
Lysosomes are crucial in the tumour immune microenvironment, which is essential for the survival and homeostasis in multiple myeloma (MM). Here, we aimed to identify lysosome-related genes for the prognosis of MM and predicted their regulatory mechanisms. Gene expression profiles of MM from the GSE2658 and GSE57317 datasets were analysed. Lysosome-related differentially expressed genes (DEGs) were identified and used for molecular subtyping of MM patients. A prognostic model was constructed using univariate Cox regression and LASSO regression analyses. The relationship between prognostic genes, immune cell types, and autophagy pathways was assessed through correlation analysis. RT-qPCR was performed to validate the expression of prognostic genes in MM cells. A total of 9,954 DEGs were identified between high and low immune score groups, with 213 intersecting with lysosomal genes. Molecular subtyping revealed two distinct MM subtypes with significant differences in immune cell types and autophagy pathway activities. Five lysosome-related DEGs (CORO1A, ELANE, PSAP, RNASE2, and SNAPIN) were identified as significant prognostic markers. The prognostic model showed moderate predictive accuracy with AUC values up to 0.723. Prognostic genes demonstrated significant correlations with various immune cell types and autophagy pathways. Additionally, CORO1A, PSAP and RNASE2 expression was up-regulated in MM cells, while ELANE and SNAPIN were down-regulated. Five lysosomal genes in MM were identified, and a new risk model for prognosis was developed using these genes. This research could lead to discovering important gene markers for the treatment and prognosis of MM.
溶酶体在肿瘤免疫微环境中至关重要,而肿瘤免疫微环境对多发性骨髓瘤(MM)的生存和稳态至关重要。在此,我们旨在确定与溶酶体相关的基因,并预测其对 MM 预后的调控机制。我们分析了 GSE2658 和 GSE57317 数据集中 MM 的基因表达谱。确定了溶酶体相关差异表达基因(DEGs),并将其用于 MM 患者的分子亚型分析。利用单变量 Cox 回归和 LASSO 回归分析构建了预后模型。通过相关性分析评估了预后基因、免疫细胞类型和自噬通路之间的关系。通过 RT-qPCR 验证了 MM 细胞中预后基因的表达。在高免疫得分组和低免疫得分组之间共鉴定出9954个DEGs,其中213个与溶酶体基因有交叉。分子亚型分析表明,两种不同的MM亚型在免疫细胞类型和自噬途径活性方面存在显著差异。五个溶酶体相关DEG(CORO1A、ELANE、PSAP、RNASE2和SNAPIN)被确定为重要的预后标志物。预后模型显示出中等程度的预测准确性,AUC值高达0.723。预后基因与各种免疫细胞类型和自噬通路有显著相关性。此外,CORO1A、PSAP和RNASE2的表达在MM细胞中上调,而ELANE和SNAPIN则下调。研究发现了 MM 中的五个溶酶体基因,并利用这些基因建立了一个新的预后风险模型。这项研究可能有助于发现治疗和预后 MM 的重要基因标记。
期刊介绍:
Journal of Cellular and Molecular Biology publishes articles describing original research aimed at the elucidation of a wide range of questions of biology and medicine at the cellular and molecular levels. Studies on all organisms as well as on human cells and tissues are welcome.