bims-traimu Biomed News
on Trained immunity
Issue of 2025–11–09
six papers selected by
Yantong Wan, Southern Medical University



  1. Elife. 2025 Nov 05. pii: e106029. [Epub ahead of print]14
      The articles in this focus issue discuss progress towards a more complete understanding of memory in the innate immune system, and efforts to exploit "trained immunity" for the development of new vaccines and therapeutics.
    Keywords:  epigenetic changes; immunology; immunotherapy; infectious disease; inflammation; innate immune cells; microbiology; trained immunity
    DOI:  https://doi.org/10.7554/eLife.106029
  2. Trends Immunol. 2025 Nov 06. pii: S1471-4906(25)00248-0. [Epub ahead of print]
      Trained immunity (TRIM) is a de facto form of innate immune memory. While histone modifications contribute to TRIM, their reversible nature and susceptibility to dilution during cell division cannot fully account for its long-term persistence. Here, we propose that DNA methylation patterns, particularly hypomethylation at proinflammatory gene loci, could serve as a key epigenetic mechanism contributing to long-term TRIM. Mechanistically, these hypomethylated states are biochemically stable and faithfully inherited through cell division, acting as a permissive scaffold that enables the rapid accumulation of activating histone marks upon restimulation. This DNA-methylation-mediated process could underpin the durability of TRIM across multiple contexts, including hematopoietic stem cell self-renewal, differentiation from central to peripheral compartments, and autonomy of tissue-resident cells.
    Keywords:  DNA methylation; epigenetic dynamics; histone modification; innate immune response; long-term trained immunity; trained immunity
    DOI:  https://doi.org/10.1016/j.it.2025.10.004
  3. Cell Rep. 2025 Nov 04. pii: S2211-1247(25)01289-6. [Epub ahead of print]44(11): 116518
      Myocardial infarction (MI) ranks among the leading causes of death globally, with its prognosis closely linked to inflammatory responses. Both excessive early inflammation and persistent residual inflammation lead to adverse cardiac remodeling and heart failure. In recent years, the role of trained immunity in cardiovascular risk factors and MI-associated inflammatory responses has garnered increasing attention. Cardiovascular risk factors can induce trained immunity, placing the body in a "preactivated" innate immune state prior to MI occurrence. This state is further amplified upon myocardial necrosis, triggering excessive inflammation. Additionally, MI itself can induce trained immunity, leading to long-term inflammatory memory and residual inflammation risk. Targeting metabolic and epigenetic pathways of trained immunity offers approaches for post-MI anti-inflammatory interventions. A comprehensive understanding of trained immunity's mechanisms in MI holds promise for establishing theoretical foundations and translational directions for precision anti-inflammatory therapies and improving long-term patient outcomes.
    Keywords:  CP: immunology; inflammation; myocardial infarction; risk factors; trained immunity
    DOI:  https://doi.org/10.1016/j.celrep.2025.116518
  4. Signal Transduct Target Ther. 2025 Nov 05. 10(1): 362
      Sepsis is a life-threatening syndrome characterized by dysregulated host responses to infection, leading to severe organ dysfunction and a high mortality rate. Reducing the incidence of sepsis is of paramount importance. Given that sepsis-associated drugs largely fail in clinical trials, in this project, we devised and validated a novel long-acting C5a-blocking cyclic peptide drug (Cp1) via phage screening technology to block the upstream "bottleneck molecule" C5a-mediated amplification cascade of the inflammatory response. In the early stage of infection, we utilized the efficient neutralization of Cp1 against C5a to effectively curb the "waterfall effect" of inflammatory factors and mitigate the progression to dysregulated systemic inflammation, thereby providing effective prevention and therapeutic intervention for sepsis. First, in vitro and in vivo studies collectively demonstrated the optimal binding affinity and blocking selectivity of Cp1. The excellent plasma stability of Cp1 further endows it with antibody-like systemic circulation. In the CLP-induced sepsis model, Cp1 significantly suppressed the expression of inflammatory factors and chemokines in both plasma and peritoneal lavage fluid (PLF). Additionally, Cp1 potently inhibited innate immune injury. Ultimately, after a single administration of Cp1, the CLP-induced septic mice presented a significant reduction in bacterial burden, evident amelioration of organ dysfunction, and notable prolongation of survival time. Overall, the novel cyclic peptide drug Cp1 developed in this study is a highly promising and cost-competitive therapeutic option for sepsis prophylaxis and therapy.
    DOI:  https://doi.org/10.1038/s41392-025-02457-8
  5. Cell Syst. 2025 Nov 05. pii: S2405-4712(25)00276-5. [Epub ahead of print] 101443
      Single-cell RNA sequencing provides detailed insights into cellular heterogeneity and responses to external stimuli. However, distinguishing inherent cellular variation from extrinsic effects induced by external stimuli remains a major analytical challenge. Here, we present scCausalVI, a causality-aware generative model designed to disentangle these sources of variation. scCausalVI decouples intrinsic cellular states from treatment effects through a deep structural causal network that explicitly models the causal mechanisms governing cell-state-specific responses to external perturbations while accounting for technical variations. Our model integrates structural causal modeling with cross-condition in silico prediction to infer gene expression profiles under hypothetical scenarios. Comprehensive benchmarking demonstrates that scCausalVI outperforms existing methods in disentangling causal relationships, quantifying treatment effects, generalizing to unseen cell types, and separating biological signals from technical variation in multi-source data integration. Applied to COVID-19 datasets, scCausalVI effectively identifies treatment-responsive populations and delineates molecular signatures of cellular susceptibility.
    Keywords:  causal disentanglement; cell-state-specific treatment effect; deep structural causal model; in silico perturbation; multi-source data integration; out-of-distribution prediction; perturbational analysis; responsive cell identification
    DOI:  https://doi.org/10.1016/j.cels.2025.101443