Zeng Qingbo, Zhang Nianqing, Zeng Junjie, Zhong Lincui, Lin Qingwei, He Longping, Song Xiaomin, Song Jingchun
Intensive Care Unit, the 908th Hospital of Chinese PLA Logistic Support Force, Nanchang, 330002, China.
Intensive Care Unit, Nanchang Hongdu Hospital of Traditional Chinese Medicine, Nanchang, China.
Sci Rep. 2025 Jul 12;15(1):25216. doi: 10.1038/s41598-025-11022-w.
Early identification of the death risk of sepsis may improve short-term prognosis. The objective of this study was to identify urinary proteomic biomarkers and create a model to predict short-term outcomes in sepsis patients. A total of 46 sepsis patients selected from the intensive care unit of a comprehensive tertiary hospital were enrolled in this study. We used data-independent acquisition (DIA) proteomics to detect proteins in the urinary of death patients (n = 14) and survivals (n = 32). KEGG and GO analyses were conducted to investigate the possible functions of these proteins. Feature variables were selected from the differentially expressed proteins using the Least Absolute Shrinkage and Selection Operator (LASSO) and the random forest algorithms and by determining whether their proteins had an area under the curve (AUC) greater than 0.8. Nomogram model and ROC curves were constructed to evaluate the predictive efficacy of these identified protein biomarkers. In total, 2570 proteins were identified in urine. Statistical analysis revealed that 255 proteins exhibited differential expression, with 146 being upregulated and 109 downregulated. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analyses highlighted the involvement of key genes in processes such as the negative regulation of hemostasis, organization of the cortical actin cytoskeleton, the Rap1 signaling pathway, and cytoskeletal dynamics in muscle cells. Utilizing LASSO regression, random forest analysis, and a receiver operating characteristic (ROC) curve with an area under the curve (AUC) greater than 0.8, we identified potential protein biomarkers for predicting sepsis prognosis. Additionally, a nomogram incorporating biomarkers Solute Carrier Family 25 Member 24 (SLC25A24), Ubiquilin-1 (UBQLN1), and Cyclic AMP-responsive element-binding protein 3-like protein 3 (CREB3L3) demonstrated superior predictive accuracy for assessing the risk of sepsis-related mortality. This study has identified several novel proteomic biomarkers and has developed a practical prediction nomogram utilizing SLC25A24, UBQLN1, and CREB3L3 for the individualized prediction of sepsis mortality risk. This nomogram serves as a valuable tool in facilitating personalized treatment strategies.
早期识别脓毒症的死亡风险可能会改善短期预后。本研究的目的是识别尿液蛋白质组学生物标志物,并创建一个模型来预测脓毒症患者的短期结局。本研究共纳入了从一家综合性三级医院重症监护病房选取的46例脓毒症患者。我们使用数据非依赖采集(DIA)蛋白质组学技术检测死亡患者(n = 14)和存活患者(n = 32)尿液中的蛋白质。进行KEGG和GO分析以研究这些蛋白质的可能功能。使用最小绝对收缩和选择算子(LASSO)、随机森林算法,并通过确定其蛋白质的曲线下面积(AUC)是否大于0.8,从差异表达蛋白质中选择特征变量。构建列线图模型和ROC曲线以评估这些鉴定出的蛋白质生物标志物的预测效能。总共在尿液中鉴定出2570种蛋白质。统计分析显示,255种蛋白质表现出差异表达,其中146种上调,109种下调。基因本体论(GO)和京都基因与基因组百科全书(KEGG)通路富集分析突出了关键基因参与止血的负调控、皮质肌动蛋白细胞骨架的组织、Rap1信号通路以及肌肉细胞中的细胞骨架动力学等过程。利用LASSO回归、随机森林分析以及曲线下面积(AUC)大于0.8的受试者工作特征(ROC)曲线,我们识别出了用于预测脓毒症预后的潜在蛋白质生物标志物。此外,一个纳入溶质载体家族25成员24(SLC25A24)、泛素连接蛋白1(UBQLN1)和环磷酸腺苷反应元件结合蛋白3样蛋白3(CREB3L3)生物标志物的列线图在评估脓毒症相关死亡风险方面显示出卓越的预测准确性。本研究鉴定出了几种新型蛋白质组学生物标志物,并利用SLC25A24、UBQLN1和CREB3L3开发了一种实用的预测列线图,用于个性化预测脓毒症死亡风险。该列线图是促进个性化治疗策略的宝贵工具。