MetaReview

Cancer & Oncology Meta-Analysis Guide

From effect size selection to biomarker-stratified subgroup analysis. Everything you need to synthesize evidence from cancer clinical trials.

Table of Contents

  1. Why Meta-Analysis Matters in Oncology
  2. Defining Your Oncology Research Question (PICO)
  3. Choosing the Right Effect Size for Cancer Endpoints
  4. Survival Endpoints: HR Meta-Analysis in Practice
  5. Binary Endpoints: ORR, DCR, and Adverse Events
  6. Data Extraction Checklist for Oncology Studies
  7. Handling Heterogeneity in Cancer Trials
  8. Subgroup Analysis by Biomarker and Treatment Line
  9. Step-by-Step: Cancer Meta-Analysis in MetaReview
  10. Common Pitfalls in Oncology Meta-Analysis

Why Meta-Analysis Matters in Oncology

Cancer research produces thousands of clinical trials each year, but individual trials are often limited by small sample sizes, short follow-up, or narrow patient populations. Meta-analysis addresses these limitations by:

Key areas where oncology meta-analyses have shaped practice: Immunotherapy (PD-1/PD-L1 inhibitors) vs chemotherapy, adjuvant vs neoadjuvant therapy timing, targeted therapy in molecularly defined subgroups, and maintenance therapy strategies.

Defining Your Oncology Research Question (PICO)

A well-structured PICO framework is essential for a focused, reproducible oncology meta-analysis.

ElementDescriptionOncology Examples
P (Population)Cancer type, stage, molecular profileStage III-IV NSCLC with PD-L1 TPS ≥50%; HER2-positive metastatic breast cancer; Unresectable hepatocellular carcinoma
I (Intervention)Treatment being evaluatedPembrolizumab + chemotherapy; Trastuzumab deruxtecan; Atezolizumab + bevacizumab
C (Comparator)Control armChemotherapy alone; Placebo + chemotherapy; Standard of care
O (Outcomes)Primary and secondary endpointsOS, PFS, ORR, DCR, Grade ≥3 adverse events, QoL
Scope warning: Overly broad PICO definitions (e.g., "all cancer types, all immunotherapies") lead to extreme heterogeneity. Narrow your scope to a specific cancer type or mechanism of action. You can always expand later with subgroup analyses.

Search Strategy Tips for Oncology

Choosing the Right Effect Size for Cancer Endpoints

This is the most critical methodological decision in your cancer meta-analysis. The wrong effect size invalidates the entire analysis.

What is your outcome type? ├─ Survival / Time-to-event (OS, PFS, DFS, TTR) │ └─ Use Hazard Ratio (HR) │ └─ Accounts for censoring + time dimension ├─ Binary response (ORR, DCR, CR rate, AE rate) │ ├─ Common events (>20%) → Risk Ratio (RR) │ └─ Rare events (<20%) → Odds Ratio (OR) └─ Continuous (QoL score, tumor size change) ├─ Same scale across studies → MD └─ Different scales → SMD
EndpointTypeEffect SizeNull ValueInterpretation
Overall Survival (OS)Time-to-eventHR1.0HR < 1 = treatment reduces death risk
Progression-Free Survival (PFS)Time-to-eventHR1.0HR < 1 = treatment delays progression
Disease-Free Survival (DFS)Time-to-eventHR1.0HR < 1 = treatment reduces recurrence risk
Objective Response Rate (ORR)BinaryOR or RR1.0OR/RR > 1 = higher response with treatment
Disease Control Rate (DCR)BinaryOR or RR1.0OR/RR > 1 = better disease control
Grade ≥3 Adverse EventsBinaryOR or RR1.0OR/RR > 1 = more toxicity with treatment
Quality of Life (EORTC QLQ-C30)ContinuousMD0MD > 0 = better QoL with treatment
Critical rule: Never combine HR and OR/RR in the same pooled analysis. They measure fundamentally different things. HR accounts for when events occur (time dimension); OR/RR only counts whether events occurred by a fixed time point.

Survival Endpoints: HR Meta-Analysis in Practice

Why HR Is the Gold Standard for Survival Data

In oncology, survival endpoints (OS, PFS, DFS) are the most important efficacy measures. The Hazard Ratio is the correct effect size because:

Three Scenarios for HR Extraction

ScenarioData AvailableMethodReliability
Best caseHR + 95% CI directly reportedEnter values directlyHigh
AlternativeHR + p-value (no CI)Convert p to z-score, then SE = |log(HR)|/zModerate
Last resortOnly Kaplan-Meier curvesTierney method: digitize KM curves to reconstruct HRLower (measurement error)
SE[log(HR)] = [log(CI_upper) − log(CI_lower)] / (2 × 1.96)
MetaReview automatically handles log transformation. Simply enter HR, CI Lower, and CI Upper. The tool computes log(HR), SE, inverse-variance weight, and pools the result using your chosen model (fixed or random effects).

Interpreting the Pooled HR

Binary Endpoints: ORR, DCR, and Adverse Events

Many cancer meta-analyses also pool binary outcomes alongside survival endpoints. Common binary endpoints include:

Objective Response Rate (ORR)

Defined as CR + PR per RECIST 1.1 criteria. For each study, extract:

Use OR when ORR is rare (<20%) or RR when ORR is common (>20%). OR overestimates relative effects when baseline rates are high.

Adverse Event Rates

Grade ≥3 treatment-related adverse events are commonly pooled to compare safety profiles. Extract events/totals from each arm. Report separately for specific AE types (pneumonitis, hepatotoxicity, skin toxicity) when data permits.

EndpointExtractPreferred Effect SizeNote
ORR (CR+PR)Events / Total per armRR (common) or OR (rare)Use RECIST 1.1 criteria
DCR (CR+PR+SD)Events / Total per armRR or ORSD duration cutoff varies by study
Grade ≥3 AEEvents / Total per armRR or ORSeparate by AE type when possible
Treatment discontinuationEvents / Total per armRR or ORDistinguishes AE-related vs progression
Zero events handling: If one arm has zero events (e.g., no grade 5 AE in treatment group), MetaReview automatically applies continuity correction (adding 0.5 to each cell) to enable OR/RR calculation.

Data Extraction Checklist for Oncology Studies

Use a standardized extraction form to ensure consistency. For each included study, record:

Study Characteristics

Patient Population

Treatment Details

Outcomes Data

Crossover bias: Many oncology RCTs allow control-arm patients to cross over to the experimental treatment upon progression. This dilutes the OS benefit. Look for crossover-adjusted analyses (e.g., RPSFT method) and consider conducting a sensitivity analysis using adjusted vs unadjusted OS data.

Handling Heterogeneity in Cancer Trials

Heterogeneity is almost inevitable in oncology meta-analyses due to differences in cancer biology, patient selection, and treatment protocols.

Sources of Heterogeneity in Oncology

SourceExamplesImpact
Tumor biologyDifferent histological subtypes (squamous vs adenocarcinoma), molecular profilesMay respond differently to the same treatment
Patient selectionStage differences, ECOG PS, prior treatment historyAffects baseline prognosis and treatment benefit
Treatment protocolDrug doses, combination partners, treatment durationDifferent dose intensities may alter efficacy
Follow-up duration12 months vs 60 months median follow-upShort follow-up may miss delayed effects or crossover impact
Geographic / ethnicEast Asian vs Western populations, smoking prevalencePharmacogenomic differences in drug metabolism

Quantifying Heterogeneity

Strategies When I² Is High

  1. Pre-specified subgroup analysis — by tumor type, biomarker, treatment line
  2. Meta-regression — test continuous moderators (publication year, median age, sample size)
  3. Sensitivity analysis — leave-one-out, restrict to Phase III RCTs only, exclude studies with high risk of bias
  4. Narrative synthesis — if heterogeneity remains unexplained and I² > 85%, consider whether pooling is appropriate at all
Always use random-effects models for oncology meta-analyses unless you have strong reasons to believe all studies estimate the same effect (e.g., identical protocol, same cancer type, same line of therapy).

Subgroup Analysis by Biomarker and Treatment Line

Subgroup analysis is arguably the most clinically relevant component of an oncology meta-analysis. Modern cancer treatment is increasingly biomarker-driven, and pooled subgroup data can inform precision medicine decisions.

Common Pre-Specified Subgroups

Cancer TypeKey Biomarker SubgroupsClinical Relevance
NSCLCPD-L1 TPS (≥50%, 1-49%, <1%); EGFR/ALK status; Squamous vs non-squamousPD-L1 level predicts immunotherapy benefit; EGFR/ALK positive patients benefit more from targeted therapy
Breast cancerHER2 status; ER/PR status; Triple-negativeDetermines whether targeted therapy (trastuzumab) or endocrine therapy is effective
ColorectalKRAS/NRAS/BRAF status; MSI/dMMR; Left vs right-sidedKRAS wild-type responds to anti-EGFR therapy; MSI-high responds to immunotherapy
GastricHER2 status; PD-L1 CPS; Claudin 18.2HER2-positive benefits from trastuzumab; high CPS predicts immunotherapy benefit
MelanomaBRAF V600E; PD-L1; TMBBRAF-mutant benefits from BRAF/MEK inhibitors

Other Important Subgroups

Statistical Considerations

In MetaReview: Assign subgroup labels in the "Subgroup" column, then run the analysis. The tool generates a grouped forest plot with subgroup subtotals and Q-between significance test automatically.

Step-by-Step: Cancer Meta-Analysis in MetaReview

Step 1: Select Effect Measure

Open MetaReview and choose the appropriate effect measure from the dropdown:

Step 2: Enter Study Data

For HR analysis: enter Study name, Year, HR, CI Lower, CI Upper.

For OR/RR analysis: enter Study name, Year, Events and Total for both Treatment and Control arms.

Batch entry: Organize your data in Excel or Google Sheets, then copy and paste directly into MetaReview. The tool auto-detects tabular data and maps columns intelligently.

Step 3: Assign Subgroups

Use the "Subgroup" column to assign biomarker status, cancer type, or treatment line to each study. This enables stratified analysis.

Step 4: Run the Analysis

Click "Run Meta-Analysis". Results appear within seconds, including:

Step 5: Advanced Diagnostics

Step 6: Export Report

Generate a complete HTML or DOCX report with all figures, tables, auto-generated Methods paragraph (PRISMA 2020 format), and narrative interpretation.

Common Pitfalls in Oncology Meta-Analysis

Pitfall 1: Mixing Effect Sizes

Combining HR (survival) with OR (response) in a single pooled analysis is the most common and most serious error. They measure different aspects of treatment effect and use different statistical frameworks.

Solution: Conduct separate analyses for each endpoint type. Present OS (HR), PFS (HR), and ORR (OR/RR) as distinct results.

Pitfall 2: Ignoring Crossover Effects on OS

Many oncology RCTs allow control-arm patients to receive the experimental treatment upon progression. This blurs the OS difference between arms. An HR for PFS of 0.50 may translate to an OS HR of only 0.85 due to crossover.

Solution: Report both PFS and OS results. Look for crossover-adjusted OS analyses (RPSFT, IPCW methods). Discuss crossover as a limitation.

Pitfall 3: Including Immature Data

Early data cutoffs may show impressive PFS but immature OS. Subsequent data updates may reveal different results. Including both interim and final analyses from the same trial causes double-counting.

Solution: Use the most mature data available for each trial. If multiple publications exist, extract from the latest data cutoff. Never include both interim and final results from the same trial.

Pitfall 4: Overlooking Single-Arm Studies

Phase II single-arm trials report only the experimental arm (no comparator). These cannot be directly included in a comparative meta-analysis.

Solution: Restrict inclusion to comparative studies (RCTs or well-designed cohorts with control arms). Single-arm studies can be separately pooled to estimate single-arm ORR if needed.

Pitfall 5: Biomarker Subgroup Double-Counting

A trial reporting HR for PD-L1 ≥50%, PD-L1 1-49%, and PD-L1 <1% is one study with three subgroups, not three independent studies.

Solution: If your meta-analysis targets the overall effect, use the overall HR. If it targets a specific biomarker subgroup, extract only that subgroup HR.

Pitfall 6: Publication Bias in Positive Oncology Trials

Pharmaceutical-sponsored trials with positive results are more likely to be published quickly and in high-impact journals. Negative trials may be delayed or published as abstracts only.

Solution: Search ClinicalTrials.gov for completed but unreported studies. Include conference abstracts. Use Egger's test and Trim-and-Fill. Discuss potential bias transparently.

Start Your Oncology Meta-Analysis Now

Enter HR and 95% CI for survival endpoints, or events/totals for response rates. MetaReview handles the statistics, forest plots, and report generation. Free, no coding required.

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