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儿童脓毒症免疫组高维分析的临床及机制相关性

Clinical and mechanistic relevance of high-dimensionality analysis of the paediatric sepsis immunome.

作者信息

Pi Dandan, Wong Judith Ju Ming, Nay Yaung Katherine, Khoo Nicholas Kim Huat, Poh Su Li, Wasser Martin, Kumar Pavanish, Arkachaisri Thaschawee, Xu Feng, Tan Herng Lee, Mok Yee Hui, Yeo Joo Guan, Albani Salvatore

机构信息

Department of Paediatric Intensive Care Unit, Children's Hospital of Chongqing Medical University, National Clinical Research Center for Child Health and Disorders, Ministry of Education Key Laboratory of Child Development and Disorders, Chongqing, China.

China International Science and Technology Cooperation Base of Child Development and Critical Disorders, Chongqing, China.

出版信息

Front Immunol. 2025 May 13;16:1569096. doi: 10.3389/fimmu.2025.1569096. eCollection 2025.

Abstract

BACKGROUND

By employing a high-dimensionality approach, this study aims to identify mechanistically relevant cellular immune signatures that predict poor outcomes.

METHODS

This prospective study recruited 39 children with sepsis admitted to the intensive care unit and 19 healthy age-matched children. Peripheral blood mononuclear cells were studied with mass cytometry. Unique cell subsets were identified in the paediatric sepsis immunome and depicted with t-distributed stochastic neighbour embedding (tSNE) plots. Network analysis was performed to quantify interactions between immune subsets. Enriched immune subsets were included in a model for distinguishing sepsis and validated by flow cytometry in an independent cohort.

RESULTS

The median (interquartile range) age and paediatric sequential organ failure assessment (pSOFA) score in this cohort was 5.6(2.0, 11.3) years and 6.6 (IQR: 2.5, 10.1), respectively. High-dimensionality analyses of the immunome in sepsis revealed a loss of coordinated communication between immune subsets, particularly a loss of regulatory/inhibitory interaction between cell types, fewer interactions between cell subsets, and fewer negatively correlated edges than controls. Four independent immune subsets (CD45RACX3CR1CTLA4CD4 T cells, CD45RA17ACD4 T cells CD15CD14 monocytes, and Ki67 B cells) were increased in sepsis and provide a predictive model for diagnosis with area under the receiver operating characteristic curve, AUC 0.90 (95% confidence interval, CI 0.82-0.98) in the discovery cohort and AUC 0.94 (95% CI 0.83-1.00) in the validation cohort.

CONCLUSION

The sepsis immunome is deranged with loss of regulatory/inhibitory interactions. Four immune subsets increased in sepsis could be used in a model for diagnosis and prediction of poor outcomes.

摘要

背景

本研究采用高维方法,旨在识别预测不良预后的具有机制相关性的细胞免疫特征。

方法

这项前瞻性研究招募了39名入住重症监护病房的脓毒症患儿和19名年龄匹配的健康儿童。采用质谱流式细胞术研究外周血单个核细胞。在儿童脓毒症免疫组中鉴定出独特的细胞亚群,并用t分布随机邻域嵌入(tSNE)图进行描绘。进行网络分析以量化免疫亚群之间的相互作用。将富集的免疫亚群纳入区分脓毒症的模型,并在独立队列中通过流式细胞术进行验证。

结果

该队列的中位(四分位间距)年龄和小儿序贯器官衰竭评估(pSOFA)评分分别为5.6(2.0,11.3)岁和6.6(四分位间距:2.5,10.1)。脓毒症免疫组的高维分析显示免疫亚群之间的协调通信丧失,特别是细胞类型之间的调节/抑制相互作用丧失、细胞亚群之间的相互作用减少以及与对照组相比负相关边减少。脓毒症中四个独立的免疫亚群(CD45RA⁺CX3CR1⁺CTLA4⁺CD4⁺ T细胞、CD45RA⁺17A⁺CD4⁺ T细胞、CD15⁺CD14⁺单核细胞和Ki67⁺ B细胞)增加,并提供了一个诊断预测模型,在发现队列中受试者工作特征曲线下面积(AUC)为0.90(95%置信区间,CI 0.82 - 0.98),在验证队列中AUC为0.94(95% CI 0.83 - 1.00)。

结论

脓毒症免疫组紊乱,调节/抑制相互作用丧失。脓毒症中增加的四个免疫亚群可用于诊断和预测不良预后的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ed91/12106532/4a65e3200d75/fimmu-16-1569096-g001.jpg

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