From MACE composite endpoints to lipid-lowering CVOTs. Everything you need to synthesize evidence from cardiovascular clinical trials.
Cardiovascular medicine generates more clinical trial data than almost any other specialty. Meta-analysis plays a central role because:
| Element | Description | CV Examples |
|---|---|---|
| P (Population) | CV condition, risk profile, comorbidities | Patients with established ASCVD; T2DM with high CV risk; HFrEF (EF ≤40%); AF on anticoagulation |
| I (Intervention) | Treatment being evaluated | SGLT2 inhibitors; PCSK9 inhibitors; DOACs; GLP-1 receptor agonists |
| C (Comparator) | Control treatment | Placebo + standard of care; Warfarin; Statin monotherapy |
| O (Outcomes) | Primary and secondary endpoints | 3-point MACE; CV death; MI; Stroke; HF hospitalization; All-cause death; LDL-C change |
CV trials use a hierarchy of endpoints ranging from hard clinical outcomes to surrogate markers.
| Endpoint | Definition | Analysis Type | Effect Size |
|---|---|---|---|
| All-cause death | Death from any cause | Time-to-event | HR |
| CV death | Death attributed to cardiovascular cause | Time-to-event | HR |
| Non-fatal MI | MI not resulting in death within 28 days | Time-to-event | HR |
| Non-fatal stroke | Stroke not resulting in death within 28 days | Time-to-event | HR |
| HF hospitalization | Hospitalization for worsening heart failure | Time-to-event | HR |
| Composite | Components | Used In |
|---|---|---|
| 3-point MACE | CV death + non-fatal MI + non-fatal stroke | Most CVOTs (FDA-required) |
| 4-point MACE | 3-point MACE + hospitalization for unstable angina | Some older CVOTs |
| HF composite | CV death + HF hospitalization | HF trials (EMPEROR, DAPA-HF) |
| Kidney composite | Sustained eGFR decline + ESKD + renal death | Cardiorenal trials |
MACE is the most common primary endpoint in CVOTs, but its definition is not standardized across all trials.
| Trial | MACE Definition | Components |
|---|---|---|
| EMPA-REG OUTCOME | 3-point MACE | CV death + non-fatal MI + non-fatal stroke |
| CANVAS Program | 3-point MACE | CV death + non-fatal MI + non-fatal stroke |
| LEADER | 3-point MACE | CV death + non-fatal MI + non-fatal stroke |
| SAVOR-TIMI 53 | 3-point MACE | CV death + MI + ischemic stroke |
| Older trials | 4-point MACE | 3-point + unstable angina hospitalization |
| Field | Source in Paper | Notes |
|---|---|---|
| HR (95% CI) for MACE | Abstract or primary results table | Use ITT population |
| HR for CV death | Component analysis table or forest plot | May be in supplementary appendix |
| HR for MI | Component analysis table | Distinguish fatal vs non-fatal |
| HR for stroke | Component analysis table | Distinguish ischemic vs hemorrhagic |
| HR for HF hospitalization | Secondary endpoint or supplementary | Often not a primary endpoint |
| Events / N per arm | Results table | For calculating event rates |
| Median follow-up | Methods or results | Affects maturity of OS data |
| Source | Examples | Approach |
|---|---|---|
| Baseline CV risk | Primary vs secondary prevention; HFrEF vs HFpEF | Subgroup analysis |
| Background therapy | Statin use (30% vs 95%), antiplatelet variation | Meta-regression on % statin use |
| Follow-up duration | 1.5 years (SUSTAIN-6) vs 5.4 years (FOURIER) | Sensitivity analysis, meta-regression |
| Drug dose | Different doses within the same class | Dose-response meta-analysis |
| Geographic variation | Regional differences in CV risk profile | Subgroup by region |
| Endpoint adjudication | Central vs investigator-reported | Sensitivity analysis |
Cardiovascular trials are particularly amenable to clinically meaningful subgroup analyses because baseline risk strongly modifies absolute treatment benefit.
| Subgroup Variable | Categories | Clinical Rationale |
|---|---|---|
| Prevention type | Primary vs secondary | Event rates differ 3-5x, affecting absolute benefit |
| Heart failure status | HFrEF vs HFpEF vs no HF | SGLT2i show differential HF benefit by EF |
| Diabetes status | T2DM vs no diabetes | Some drug classes approved only for diabetic patients |
| Renal function | eGFR ≥60 vs 30-59 vs <30 | CV risk increases with CKD stage; some drugs contraindicated |
| Age | <65 vs ≥65 vs ≥75 | Bleeding risk increases with age (anticoagulants) |
| Baseline LDL-C | Above vs below median | Higher baseline = greater absolute LDL-C reduction |
| Prior MI | Yes vs no | Post-MI patients have higher event rates |
Absolute risk reduction (ARR) and Number Needed to Treat (NNT) vary dramatically by baseline risk:
Example for HR = 0.80:
Open MetaReview and choose:
For each CVOT, enter the trial name/acronym (e.g., "EMPA-REG 2015"), publication year, and HR + 95% CI from the ITT analysis.
Conduct separate meta-analyses for:
This component-level analysis reveals whether the composite result is driven by one specific endpoint.
Label studies as "Primary Prevention" or "Secondary Prevention" in the Subgroup column. Re-run to see stratified forest plots with Q-between interaction test.
Generate HTML or DOCX reports with all forest plots (composite + components), funnel plots, heterogeneity statistics, and auto-generated Methods paragraph in PRISMA 2020 format.
Pooling 3-point MACE with 4-point MACE inflates heterogeneity. Studies adding unstable angina hospitalization will have higher event rates.
Solution: Pool only studies with identical MACE definitions. Alternatively, analyze individual MACE components where definitions are standardized.
ITT preserves randomization but may dilute treatment effects due to discontinuation. Per-protocol inflates effects by excluding non-compliant patients.
Solution: Use ITT results as the primary analysis. Report per-protocol as sensitivity analysis. Document which population each study uses.
Older CV trials had lower statin use (30-50%), while modern CVOTs have near-universal statin use (90%+). This affects the baseline event rate and the potential for additional benefit.
Solution: Record background therapy rates and use meta-regression to explore whether statin use modifies the treatment effect.
Large CVOTs often produce multiple publications: primary results, extended follow-up, subgroup analyses, and mechanistic sub-studies. Using data from multiple timepoints of the same trial creates bias.
Solution: Use the most recent (most mature) data cutoff for each trial. Track trial registration numbers (NCT IDs) to identify duplicate publications.
A pooled HR of 0.80 sounds impressive, but if the baseline event rate is only 2%, the ARR is just 0.4% (NNT = 250). Relative measures alone can overstate clinical importance.
Solution: Report ARR and NNT alongside HR. Calculate NNT at different baseline risk levels to help clinicians apply results to their patient populations.
FDA-mandated CVOTs are designed to demonstrate non-inferiority for safety, with superiority as a secondary objective. Positive results receive prominent publication; neutral results may be reported with less emphasis.
Solution: Search ClinicalTrials.gov for all registered CVOTs with the drug class. Compare registered primary endpoints against published endpoints to detect outcome switching. Include industry-funded and independently-funded studies.
Enter HR and 95% CI from CVOTs. MetaReview handles pooling, forest plots, component analysis, and report generation. Free, no coding required.
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