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Daily Report

Daily Sepsis Research Analysis

03/20/2026
3 papers selected
39 analyzed

Analyzed 39 papers and selected 3 impactful papers.

Summary

A multicohort Lancet Respiratory Medicine study introduced a validated three-biomarker score to quantify immune dysregulation in pneumonia/sepsis and showed hydrocortisone benefits only in severely dysregulated patients. A Lancet Global Health meta-analysis found that combined regulation, education, and optimization strategies reduce neonatal mortality and antimicrobial resistance in LMICs. A Critical Care Medicine meta-analysis linked lower socioeconomic position with higher sepsis mortality, underscoring equity-focused care.

Research Themes

  • Precision immunophenotyping to guide sepsis immunomodulation
  • Integrated antimicrobial stewardship and infection prevention in neonatal care (LMICs)
  • Health equity and socioeconomic determinants of sepsis outcomes

Selected Articles

1. Quantifying immune dysregulation in pneumonia and sepsis with a parsimonious machine-learning model: a multicohort analysis across care settings and reanalysis of a hydrocortisone randomised controlled trial.

88.5Level IICohort
The Lancet. Respiratory medicine · 2026PMID: 41856148

Across three cohorts, a three-biomarker model (procalcitonin, soluble TREM-1, IL-6) accurately quantified immune dysregulation (DIP stages and cDIP) independent of clinical severity. Validation in five external cohorts showed increasing cDIP associated with higher mortality and secondary infections, and CAPE COD reanalysis indicated hydrocortisone benefited only severely dysregulated patients.

Impact: Provides a pragmatic, validated tool to measure host immune dysregulation and identify who may benefit from immunomodulators, enabling precision sepsis care.

Clinical Implications: Incorporating procalcitonin, soluble TREM-1, and IL-6 to compute a dysregulation score could stratify patients for immunomodulatory therapy (e.g., hydrocortisone) and inform trial enrichment, rather than relying solely on clinical severity.

Key Findings

  • A three-biomarker ML framework (procalcitonin, soluble TREM-1, IL-6) predicted immune dysregulation stages with 91.2% accuracy; cDIP RMSE 0.056 versus 35 biomarkers.
  • Clinical severity was an inadequate proxy for immune dysregulation across CAP cohorts.
  • Each 10% increase in cDIP was associated with higher mortality (OR 1.26, 95% CI 1.13–1.40) and secondary infections (OR 1.50, 95% CI 1.22–1.93), independent of severity.
  • Hydrocortisone reduced 30-day mortality only in severely dysregulated patients (DIP3 OR 0.25; cDIP ≥0.63 OR 0.21) and accelerated immune recovery.
  • The model generalized across five external cohorts (n=1191) spanning infections, severities, and care settings.

Methodological Strengths

  • Multicohort derivation with 35 biomarkers and unsupervised trajectory inference to define DIP/cDIP.
  • External validation across five independent cohorts and treatment-effect modification shown via post-hoc RCT reanalysis.

Limitations

  • Post-hoc analysis for hydrocortisone effect modification; prospective stratified trials are needed.
  • Derivation focused on CAP; applicability to all sepsis phenotypes and assay availability require evaluation.

Future Directions: Prospective, biomarker-stratified RCTs testing immunomodulators; implementation studies integrating cDIP into ED/ICU workflows and multiplex assays.

BACKGROUND: Sepsis is a dysregulated host response to infection resulting in life-threatening organ failure. Although immune dysregulation is central to the sepsis definition, immunomodulation trials enrol participants based on clinical severity, not the extent of dysregulation, which could contribute to treatment heterogeneity. A pragmatic way to quantify immune dysregulation could improve prognostication, help to evaluate treatment responses, and identify individuals most likely to benefit from immunomodulation. We aimed to construct a parsimonious machine-learning tool that defines and quantifies immune dysregulation, thereby supporting biologically informed immunomodulation. METHODS: In this multicohort analysis and reanalysis of a randomised controlled trial, the primary objective was to derive and validate a categorical and continuous immune dysregulation score that is independent of clinical presentation or outcome. We measured 35 plasma biomarkers reflecting key host response domains in individuals with community-acquired pneumonia (CAP) across different care settings (emergency department, general ward, and intensive care unit) and disease severities using data from three independent cohorts. We applied unsupervised trajectory inference analysis to identify an immune dysregulation gradient captured as discrete immune dysregulation stages (Dysregulated Immune Profile [DIP]) and a continuous score (cDIP; 0-1). We developed two parsimonious machine-learning models to predict the DIP stages and cDIP scores based on 35 biomarkers, and validated their ability to capture immune dysregulation and predict clinical outcomes in five independent cohorts. On the basis of our hypothesis that only individuals with severe immune dysregulation benefit from immunomodulation, we carried out a post-hoc analysis of a randomised trial evaluating hydrocortisone in severe CAP (CAPE COD trial, NCT02517489), assessing treatment effects across DIP stages and the cDIP continuum, and how hydrocortisone influenced dysregulation trajectories over time. FINDINGS: We organised 398 participants with CAP along a continuum of immune dysregulation from mild to severe on the basis of 35 plasma biomarkers, yielding three dysregulation stages (DIP1-3) and a continuous score (cDIP). Clinical severity proved to be an inadequate proxy for immune dysregulation. A three-biomarker machine-learning framework (procalcitonin, soluble TREM-1, and IL-6) accurately predicted the degree of dysregulation derived from 35 biomarkers (DIP stage accuracy 91·2%; cDIP root mean square error 0·056). Although the framework was not designed for outcome prediction, increased immune dysregulation-reflected in DIP and cDIP-was associated with a gradual rise in mortality (cDIP odds ratio [OR] 1·26 [95% CI 1·13-1·40] per 10% increase, p<0·0001) and secondary infections (OR 1·50 [1·22-1·93] per 10% increase, p=0·0005), independent of clinical severity. The three-biomarker tool was validated in five external cohorts of varying infections, severities, and care settings (n=1191). Reanalysis of the CAPE COD trial showed that hydrocortisone conferred a survival benefit only in participants classified as severely dysregulated by our model (30-day mortality: DIP3 OR 0·25 [0·05-0·85], p=0·042; cDIP ≥0·63 OR 0·21 [0·10-0·72], p=0·011), accompanied by faster immune recovery (time × treatment interaction, p<0·0001). No such effect modification was observed when stratifying participants by clinical severity. INTERPRETATION: We have provided a publicly available three-biomarker framework to determine the extent of host response dysregulation with potential value for precision-guided immunomodulatory therapy. FUNDING: EU Horizon 2020.

2. Strategies to reduce antimicrobial resistance in newborns in low-income and middle-income countries: a systematic review and meta-analysis.

77Level IIMeta-analysis
The Lancet. Global health · 2026PMID: 41856138

Across 31 facility-based LMIC studies, regulation reduced neonatal antibiotic exposure by 21%, and optimization reduced culture-positive sepsis by 32% and antibiotic use by 13%. Combining regulation, education, and optimization reduced neonatal mortality by 27% and multidrug-resistant infections/colonisation by 29% while markedly shortening antibiotic courses.

Impact: Defines effective, scalable, and integrated strategies that improve neonatal outcomes and curb AMR in resource-limited settings, guiding policy and program design.

Clinical Implications: Neonatal units in LMICs should implement bundled strategies—facility regulation (eg, antibiotic stewardship policies), staff education, and optimization of prescribing—to reduce mortality, sepsis, and resistance while minimizing unnecessary antibiotic exposure.

Key Findings

  • Regulation reduced the proportion of newborns receiving any antibiotic by 21% (RR 0.79, 95% CI 0.77–0.80).
  • Optimization reduced culture-positive sepsis by 32% (RR 0.68, 95% CI 0.55–0.83) and antibiotic exposure by 13% (RR 0.87, 95% CI 0.78–0.98).
  • Combining regulation, education, and optimization reduced neonatal mortality by 27% (RR 0.73, 95% CI 0.57–0.93) and MDR infection/colonisation by 29% (RR 0.71, 95% CI 0.52–0.97).
  • Combined strategies reduced the risk of antibiotic courses >5 days by 64% (RR 0.36, 95% CI 0.14–0.93).
  • Implementation barriers included delayed culture reporting, IPC non-adherence, and prescribing challenges in culture-negative sepsis-like illness.

Methodological Strengths

  • Comprehensive, multi-database search including grey literature with PROSPERO registration.
  • Quantitative pooling by strategy type and effect direction synthesis; facility-focused evidence relevant to LMIC practice.

Limitations

  • Predominantly non-randomised, heterogeneous studies; potential residual confounding.
  • Limited community-based data and variable implementation fidelity across settings.

Future Directions: Pragmatic cluster-RCTs of bundled strategies, implementation science to overcome barriers (eg, rapid diagnostics, IPC adherence), and standardized AMR metrics in neonatal care.

BACKGROUND: Optimal strategies to reduce antimicrobial resistance (AMR) and their effect on newborns in low-income and middle-income countries (LMICs) remain unclear. We assessed the effectiveness of AMR mitigation strategies for newborn care in LMICs. METHODS: A systematic review and meta-analysis was conducted. We searched MEDLINE, Embase, CINAHL, Global Index Medicus, Cochrane Central Register of Controlled Trials, and grey literature from Jan 1, 2000, to Nov 20, 2025, for randomised or quasi-randomised trials, quasi-experimental studies, observational or implementation studies, and programme evaluations. We included studies comparing any intervention, policy, or strategy designed to mitigate AMR development and spread (intervention) among newborns receiving facility-based or community-based care in LMICs (population), with standard practices or no intervention (comparator), on a range of outcomes including clinical and antibiotic use outcomes (outcome). Strategies to reduce AMR were categorised as regulation (structural or organisational actions), education (health-care worker trainings), or optimisation (responsible antimicrobial use). We pooled data from included studies to estimate the effectiveness of each of the three strategy types or a combination thereof. Given the low-resource context, we also narratively synthesised the available evidence on barriers and facilitators to implementing strategies to reduce AMR in newborn care settings (PROSPERO CRD42023388338). FINDINGS: Of 3688 studies screened, 31 facility-based studies were included. Regulation reduced the risk of newborns receiving at least one antimicrobial by 21% (risk ratio 0·79 [95% CI 0·77-0·80]), but had no effect on neonatal sepsis risk. Optimisation reduced culture-positive sepsis risk by 32% (0·68 [0·55-0·83]) and risk of newborns on antibiotics by 13% (0·87 [0·78-0·98]), but had no effect on neonatal mortality risk. Regulation and optimisation did not significantly reduce neonatal mortality due to nosocomial bloodstream infection (BSI) risk (0·62 [0·31-1·25]). Regulation, education, and optimisation reduced neonatal mortality risk by 27% (0·73 [0·57-0·93]) and multidrug-resistant organism infections or colonisation risk by 29% (0·71 [0·52-0·97]). Regulation, education, and optimisation also decreased the risk of newborns receiving antibiotics by 29% (0·71 [0·61-0·81]) and the risk of duration of antibiotic therapy exceeding 5 days by 64% (0·36 [0·14-0·93]). Effect direction plots revealed overall positive directions of effect for outcomes including neonatal mortality (72·72%), neonatal mortality due to nosocomial BSI (100%), sepsis (75%), and drug-resistant (100%) and multidrug-resistant (80%) infection and colonisation. Effect direction plots also showed decreased overall antibiotic use (94·7%), access (71·4%) and watch (88·9%) antibiotic use, and duration of antibiotic therapy (83·3%) after strategies to reduce AMR were implemented. Common implementation barriers included delays in reporting culture test results, health-care worker non-adherence to infection prevention and control measures, and challenges in antibiotic prescribing for culture-negative newborns with sepsis-like presentation. INTERPRETATION: To improve clinical outcomes, interventions targeting the control of antimicrobials alone will not suffice. Our results showed that three types of interventions (regulation, education, and optimisation) must be taken together to reduce AMR. These results can inform and accelerate guidance development for multi-dimensional, holistic, and integrated maternal and newborn care programmes in LMICs. FUNDING: The Bill & Melinda Gates Foundation.

3. The Association Between Socioeconomic Position and Mortality in Patients With Sepsis and Septic Shock-A Systematic Review and Meta-Analysis.

75.5Level IIMeta-analysis
Critical care medicine · 2026PMID: 41860316

Across 13 studies (n≈3.95 million), lack of private insurance, lower neighborhood SEP, and lower income were associated with higher short-term mortality in sepsis/septic shock. Education and employment showed probable associations, highlighting the need to collect equity-relevant variables and design targeted interventions.

Impact: Quantifies the mortality impact of socioeconomic disadvantage in sepsis, directing health systems to integrate equity metrics and interventions into sepsis care pathways.

Clinical Implications: Systems should capture SEP indicators (insurance, income, education, employment, neighborhood deprivation) for risk adjustment and resource targeting, and develop equity-focused sepsis bundles and access initiatives.

Key Findings

  • Lack of private insurance increased mortality (aOR 1.34; 95% CI 1.19–1.51; high certainty).
  • Lower neighborhood socioeconomic status increased mortality (aOR 1.35; 95% CI 1.29–1.41; moderate certainty).
  • Lower income was associated with higher mortality (aOR 1.06; 95% CI 1.01–1.11; aHR 1.51; 95% CI 1.01–2.25; moderate certainty).
  • Less education (aOR 1.33; 95% CI 1.14–1.55) and unemployment (aOR 1.91; 95% CI 1.00–3.63) may increase mortality (low certainty).

Methodological Strengths

  • Large pooled population (≈3.95 million) with adjusted effect estimates using random-effects models.
  • Rigorous bias and certainty assessments (QUIPS, GRADE) with duplicate extraction.

Limitations

  • Observational designs subject to residual confounding and variable SEP measurements.
  • Heterogeneity in outcome definitions and follow-up; generalisability beyond included settings uncertain.

Future Directions: Prospective collection of equity variables in sepsis registries/RCTs, evaluation of targeted access and care-bundle interventions to reduce disparities.

OBJECTIVES: To evaluate the association between socioeconomic position (SEP) and mortality in patients with sepsis or septic shock. DATA SOURCES: We searched MEDLINE, Embase, and Cochrane CENTRAL from inception to August 11, 2025. STUDY SELECTION: We included English-language observational studies that evaluated the association between SEP indicators and mortality in adults with sepsis and/or septic shock. DATA EXTRACTION: Two reviewers independently and in duplicate performed data extraction and risk-of-bias assessment using the Quality in Prognosis Studies tool. We pooled adjusted odds ratios (aORs) or adjusted hazard ratios (aHRs) using random-effects models and assessed certainty of evidence using the Grading of Recommendations Assessment, Development, and Evaluation approach. DATA SYNTHESIS: We included 13 observational studies involving 3,951,677 patients. Lack of private insurance (aOR, 1.34; 95% CI, 1.19-1.51; high certainty) was associated with increased mortality while lower neighborhood socioeconomic status (aOR, 1.35; 95% CI, 1.29-1.41; moderate certainty) and lower income (aOR, 1.06; 95% CI, 1.01-1.11; aHR, 1.51; 95% CI, 1.01-2.25; moderate certainty) were probably associated with increased mortality. Less education (aOR, 1.33; 95% CI, 1.14-1.55; low certainty) and unemployment (aOR, 1.91; 95% CI, 1.00-3.63; low certainty) may be associated with increased mortality. CONCLUSIONS: We found that several indicators of SEP were associated with increased short-term mortality in patients with sepsis and septic shock. These findings underscore the need for routine collection of equity-relevant variables in sepsis research to inform health policy and support equitable care delivery. Given that some of these variables are potentially modifiable, targeted interventions may help improve outcomes and reduce disparities in disadvantaged populations.