Integrated analysis of single-cell RNA-seq and chipset data unravels PANoptosis-related genes in sepsis

Front Immunol. 2024 Jan 3:14:1247131. doi: 10.3389/fimmu.2023.1247131. eCollection 2023.

Abstract

Background: The poor prognosis of sepsis warrants the investigation of biomarkers for predicting the outcome. Several studies have indicated that PANoptosis exerts a critical role in tumor initiation and development. Nevertheless, the role of PANoptosis in sepsis has not been fully elucidated.

Methods: We obtained Sepsis samples and scRNA-seq data from the GEO database. PANoptosis-related genes were subjected to consensus clustering and functional enrichment analysis, followed by identification of differentially expressed genes and calculation of the PANoptosis score. A PANoptosis-based prognostic model was developed. In vitro experiments were performed to verify distinct PANoptosis-related genes. An external scRNA-seq dataset was used to verify cellular localization.

Results: Unsupervised clustering analysis using 16 PANoptosis-related genes identified three subtypes of sepsis. Kaplan-Meier analysis showed significant differences in patient survival among the subtypes, with different immune infiltration levels. Differential analysis of the subtypes identified 48 DEGs. Boruta algorithm PCA analysis identified 16 DEGs as PANoptosis-related signature genes. We developed PANscore based on these signature genes, which can distinguish different PANoptosis and clinical characteristics and may serve as a potential biomarker. Single-cell sequencing analysis identified six cell types, with high PANscore clustering relatively in B cells, and low PANscore in CD16+ and CD14+ monocytes and Megakaryocyte progenitors. ZBP1, XAF1, IFI44L, SOCS1, and PARP14 were relatively higher in cells with high PANscore.

Conclusion: We developed a machine learning based Boruta algorithm for profiling PANoptosis related subgroups with in predicting survival and clinical features in the sepsis.

Keywords: Boruta algorithm; PANoptosis; sepsis; single-cell RNA-seq; ssGSEA.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • B-Lymphocytes
  • Cell Transformation, Neoplastic
  • Humans
  • Sepsis* / genetics
  • Single-Cell Gene Expression Analysis*

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was supported by grants from the Science and Technology Projects of Jiangxi Provincial Department of Education (No. GJJ2205803), the Science and Technology Projects of Jiangxi Provincial Health Commission (No. 202212784), the Science and Technology Plan Projects of Jiangxi Provincial Administration of Traditional Chinese Medicine (No. 2022A377), the Natural Science Foundation of Fujian (No. 2020J011086) and the Young-Middle-aged Backbone Talent Training Program of Fujian Provincial Health organization (2021GGA003).