Background Pancreatic ductal adenocarcinoma (PDAC), an aggressive cancer with poor prognosis, poses major challenges owing to late diagnosis and limited response to current therapies. However, the identification of candidate drugs through multi-omics analyses and therapeutic peptides targeting key molecular pathways may provide improved outcomes. Although lactate metabolism is a critical factor in tumor progression, affecting cell proliferation, metastasis, and immune evasion, its role in PDAC—particularly within the tumor microenvironment, remains underexplored. Objectives This study investigated lactate metabolism in PDAC using high-throughput transcriptomic sequencing and single-cell transcriptomic analysis. Methods Lactate metabolism–related gene expression was analyzed in tumor cells and their microenvironment, and correlations with patient prognosis were determined. Additionally, a machine learning–based prognostic model was established to identify lactate metabolism biomarkers for early diagnosis and personalized therapy. Results Lactate metabolism significantly impacted the survival of patients with PDAC (n = 92; log-rank test, p 0.05). Single-cell RNA and spatial transcriptomics analyses of 50, 795 cells from 8 PDAC samples revealed that 521 malignant cells exhibited hyperactive lactate metabolism (AUCell score comparison, p 0.001). A prognostic model constructed from lactate metabolism–related genes using ensemble machine learning (StepCox + Enet, α = 0.5) effectively stratified patients into high- and low-risk groups across multiple cohorts (ICGC: n = 92; GSE28735: n = 45; GSE62452: n = 69; GSE183795: n = 139; all log-rank p 0.05). Key prognostic genes identified included lysozyme ( LYZ ) and polymeric immunoglobulin receptor, which were significantly associated with patient survival (univariate Cox regression, p 0.05). These genes may serve as clinical biomarkers of PDAC. Conclusions This study provides insights into PDAC metabolic features and highlights lactate metabolism as a potential therapeutic target. The identified biomarkers could facilitate early diagnosis and improve treatment strategies, ultimately enhancing patient outcomes.
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Fan Gao
Zhe Tang
Jie Lian
SHILAP Revista de lepidopterología
Frontiers in Immunology
Shaoxing People's Hospital
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Gao et al. (Fri,) studied this question.
www.synapsesocial.com/papers/6992b3e59b75e639e9b08be4 — DOI: https://doi.org/10.3389/fimmu.2026.1743187