Department of Emergency Surgery, The Second Affiliated Hospital of Fujian Medical University, Quanzhou, Fujian, China.
Department of Radiology, The Second Affiliated Hospital of Fujian Medical University, Quanzhou, Fujian, China.
Front Immunol. 2024 Jul 23;15:1398719. doi: 10.3389/fimmu.2024.1398719. eCollection 2024.
Metabolic dysregulation following sepsis can significantly compromise patient prognosis by altering immune-inflammatory responses. Despite its clinical relevance, the exact mechanisms of this perturbation are not yet fully understood.
Single-cell RNA sequencing (scRNA-seq) was utilized to map the immune cell landscape and its association with metabolic pathways during sepsis. This study employed cell-cell interaction and phenotype profiling from scRNA-seq data, along with pseudotime trajectory analysis, to investigate neutrophil differentiation and heterogeneity. By integrating scRNA-seq with Weighted Gene Co-expression Network Analysis (WGCNA) and machine learning techniques, key genes were identified. These genes were used to develop and validate a risk score model and nomogram, with their efficacy confirmed through Receiver Operating Characteristic (ROC) curve analysis. The model's practicality was further reinforced through enrichment and immune characteristic studies based on the risk score and validation of a critical gene associated with sepsis.
The complex immune landscape and neutrophil roles in metabolic disturbances during sepsis were elucidated by our in-depth scRNA-seq analysis. Pronounced neutrophil interactions with diverse cell types were revealed in the analysis of intercellular communication, highlighting pathways that differentiate between proximal and core regions within atherosclerotic plaques. Insight into the evolution of neutrophil subpopulations and their differentiation within the plaque milieu was provided by pseudotime trajectory mappings. Diagnostic markers were identified with the assistance of machine learning, resulting in the discovery of PIM1, HIST1H1C, and IGSF6. The identification of these markers culminated in the development of the risk score model, which demonstrated remarkable precision in sepsis prognosis. The model's capability to categorize patient profiles based on immune characteristics was confirmed, particularly in identifying individuals at high risk with suppressed immune cell activity and inflammatory responses. The role of PIM1 in modulating the immune-inflammatory response during sepsis was further confirmed through experimental validation, suggesting its potential as a therapeutic target.
The understanding of sepsis immunopathology is improved by this research, and new avenues are opened for novel prognostic and therapeutic approaches.
脓毒症后代谢失调可通过改变免疫炎症反应显著影响患者预后。尽管其具有临床相关性,但这种干扰的确切机制尚未完全阐明。
利用单细胞 RNA 测序(scRNA-seq)绘制脓毒症期间免疫细胞景观及其与代谢途径的关联。本研究采用细胞间相互作用和 scRNA-seq 数据分析中的表型分析,以及伪时间轨迹分析,研究中性粒细胞分化和异质性。通过将 scRNA-seq 与加权基因共表达网络分析(WGCNA)和机器学习技术相结合,确定关键基因。利用这些基因开发和验证风险评分模型和列线图,并通过接收者操作特征(ROC)曲线分析验证其疗效。通过基于风险评分的富集和免疫特征研究以及验证与脓毒症相关的关键基因,进一步证实了该模型的实用性。
通过深入的 scRNA-seq 分析,阐明了脓毒症期间复杂的免疫景观和中性粒细胞在代谢紊乱中的作用。在细胞间通讯分析中揭示了中性粒细胞与多种细胞类型的显著相互作用,突出了区分动脉粥样硬化斑块近端和核心区域的途径。通过伪时间轨迹映射提供了对中性粒细胞亚群演变及其在斑块环境中分化的深入了解。借助机器学习确定了诊断标志物,发现了 PIM1、HIST1H1C 和 IGSF6。这些标志物的发现促成了风险评分模型的开发,该模型在脓毒症预后方面表现出卓越的精度。基于免疫特征对患者谱进行分类的能力得到了证实,特别是在识别免疫细胞活性和炎症反应受到抑制的高风险个体方面。通过实验验证进一步证实了 PIM1 在调节脓毒症期间免疫炎症反应中的作用,表明其作为治疗靶点的潜力。
本研究增进了对脓毒症免疫病理学的理解,为新的预后和治疗方法开辟了新的途径。