Shanxi Medical University, Taiyuan, People's Republic of China.
Heping Hospital Affiliated to Changzhi Medical College, Changzhi, People's Republic of China.
Hematology. 2023 Dec;28(1):2246268. doi: 10.1080/16078454.2023.2246268.
To construct an endoplasmic reticulum stress-related prognostic risk score (RS) model to predict prognosis and perform a preliminary analysis of immune infiltration in patients with acute myeloid leukemia (AML).
The whole-genome expression data for AML and endoplasmic reticulum stress (ER stress)-related genes were downloaded from the GEO and GSEA databases, respectively. The samples were divided into death and survival groups, combined with clinical prognosis information. LASSO regression was used to construct a prognostic RS model. The Kaplan-Meier curve method was used to evaluate the association between different risk groups and actual survival prognosis information. A cox regression analysis was used to screen for independent survival prognostic clinical factors and construct a nomogram. CIBERSORT and ssGSEA was used for immune-related analysis.
Eighteen ER-stress related genes were identified and a comprehensive network was constructed. Further, 5 CC, 8 MF, 17 BP, and 2 KEGG pathways were enriched. Ten optimal DEGs were obtained and a prognostic risk model was constructed. Compared to the low RS group, the OS values of the high RS group were significantly lower. A significant correlation between the different risk groups and the actual prognosis was demonstrated. Ten immune cells with significantly different distributions in different risk groups were screened. KEGG enrichment analysis showed that there were 5 signaling pathways in the high-risk group.
The RS model can effectively predict the prognosis and has clinical implications for the prognosis of AML, combined with the correlation between different RS groups and the immune microenvironment.
构建内质网应激相关预后风险评分(RS)模型,预测急性髓系白血病(AML)患者的预后,并对其免疫浸润进行初步分析。
分别从 GEO 和 GSEA 数据库下载 AML 的全基因组表达数据和内质网应激(ER 应激)相关基因。将样本分为死亡和存活组,结合临床预后信息。使用 LASSO 回归构建预后 RS 模型。Kaplan-Meier 曲线法评估不同风险组与实际生存预后信息的相关性。Cox 回归分析筛选独立的生存预后临床因素并构建列线图。使用 CIBERSORT 和 ssGSEA 进行免疫相关分析。
鉴定出 18 个 ER 应激相关基因,并构建了综合网络。进一步富集了 5 个 CC、8 个 MF、17 个 BP 和 2 个 KEGG 通路。获得了 10 个最优的 DEG,并构建了预后风险模型。与低 RS 组相比,高 RS 组的 OS 值明显较低。不同风险组与实际预后存在显著相关性。筛选出不同风险组中分布差异显著的 10 种免疫细胞。KEGG 富集分析显示,高危组中有 5 个信号通路。
RS 模型可有效预测预后,并结合不同 RS 组与免疫微环境的相关性,对 AML 的预后具有临床意义。