作者
Lixia Sheng,Changyu Jin,Huijie Hu,Yanli Lai,Huiying Qiu,Shasha You,Jiaping Wang,Shuyan Wang,Yan Xiong,Li Hu,Kaihong Xu,Ping Zhang,Yongcheng Sun,Lieguang Chen,Shanhao Tang,Xiao Wu,Yi Zhang,Qitian Mu,Tongyu Li,Xinjun Wang
摘要
Abstract Background The immunometabolic interface between gut microbiota and host immunity has emerged as a critical regulator of systemic malignancies. In diffuse large B-cell lymphoma (DLBCL), this crosstalk remains poorly defined, limiting early-response biomarker development. Using metagenomic, metabolomic, and immunomic analyses, we systematically profiled the microbiota–metabolism–cytokine axis in DLBCL patients and its evolution during immunochemotherapy, aiming to define microbiota-derived immunometabolic signatures associated with disease progression and therapy outcomes.Methods We prospectively enrolled 40 newly diagnosed, treatment-naïve DLBCL patients and 32 healthy controls, collecting paired fecal and serum samples before and after 4 cycles of R-CHOP or R-miniCHOP chemotherapy. Metagenomic sequencing (WGS), untargeted serum metabolomics (LC-MS/MS), and multiplex cytokine profiling were performed. Canonical correspondence analysis (CCA), random forest modeling, and Kaplan-Meier survival analysis were used to integrate cross-domain data and evaluate predictive performance.ResultsMicrobial Dysbiosis and Diversity Loss in DLBCL: DLBCL patients exhibited significantly reduced α-diversity (Shannon/Simpson indices, P<0.05) and altered β-diversity (PCoA; P<0.01) versus healthy controls. Progressive depletion of butyrate-producing genera (e.g., Lachnospiraceae, Roseburia, Faecalibacterium) correlated with disease stage. Fungal overgrowth (Candida, Tremellaceae) and expansion of Enterococcus defined late-stage microbial networks with enhanced cross-kingdom pathogenicity (R > 0.99). LEfSe identified 92 differentially abundant species (FDR<0.05), highlighting SCFA depletion and fungal dominance in advanced disease.Metabolomic Perturbations Reflect Microbial Disruption: Significant alterations in lipid, amino acid, and organic acid metabolism were detected. Proinflammatory and immunosuppressive metabolites, including kynurenic acid, 2-arachidonoylglycerol (2-AG), and N,N-dimethyl-L-arginine, were enriched in stage III–IV. SCFA-linked metabolites (e.g., propionate, Cys–Cys) were depleted and positively associated with microbial diversity (r>0.4, FDR<0.01). Plant-derived compounds were less stage-specific.Multi-Omics Integration Reveals a Core Immunometabolic Network: CCA explained 61.2% of the variance in microbiota-metabolite-cytokine relationships (P<0.01). Healthy controls clustered with SCFA-producing bacteria, IL-12p70, IL-23p19, and 2-AG, while DLBCL patients exhibited a shift toward TNF-α, IL-10, and neuroinflammatory metabolites (e.g., mannitol-1-phosphate). Butyrivibrio and Clostridium negatively correlated with MCP-1 and G-CSF (r=−0.37 to −0.44), suggesting suppression of myeloid and Th1 pathways.Chemotherapy Amplifies Dysbiosis and Metabolic Imbalance: After 4 cycles of immunochemotherapy, beneficial genera (Bifidobacterium, Faecalibacterium) declined, while opportunists (Shigella, Escherichia) increased. Metabolomics revealed elevated phospholipid remodeling (e.g., PC/PE 38:4), oxidative stress markers (malonic acid ↑, allantoin ↓), and depletion of L-histidine and acetylcarnitine, contributing to immune dysregulation.Microbiota-Metabolite Signatures Predict Treatment Response: Among 34 evaluable patients, 25 (62.5%) achieved CR. Linear discriminant analysis (FDR<0.05) identified 23 bacterial species discriminating CR from non-CR (NCR). CR was associated with Roseburia, Eubacterium, and Lachnospiraceae, linked to solasodine, 2-AG, and decahydrogambogic acid. NCR patients had increased Escherichia and Kluyvera, associated with inflammasome activity.Risk Models Predict PFS: A microbial-metabolite classifier (13 species + 9 metabolites) achieved AUCs of 0.982 (training) and 0.961 (validation, n=106). Kaplan-Meier analysis showed significant PFS stratification by microbial (Log-rank P=0.02) and metabolite (Log-rank P=0.02) risk scores.Conclusions This study delineates a dynamic immunometabolic network in DLBCL, shaped by disease stage and chemotherapy. Depletion of SCFA-producers, fungal overgrowth, and disrupted endocannabinoid metabolism define resistant states. Early recovery of these profiles aligns with remission and improved survival. Multi-omics signatures hold promise for microbiota-informed diagnosis, real-time monitoring, and targeted interventions in precision DLBCL care.