| Literature DB >> 32513119 |
Shuhuang Lin1,2, Yukun Ma2, Zunnan Huang3,4.
Abstract
BACKGROUND: Stratification analyses have been widely utilized in molecular association meta-analyses to estimate the interaction between genetic and environmental factors or to control for the confounding variables linked to a disease. Two calculation methods utilized in practical research, which are known as the variants of factorial stratification analysis and confounder-controlling stratification analysis in our nomenclature, have been applied in previous studies, but none of which have presented a methodology and application for these analyses.Entities:
Keywords: Biomarkers; Comprehensive meta-analysis; Genetic polymorphisms; Mixed-effects model; Risk factors; Stratified data
Mesh:
Year: 2020 PMID: 32513119 PMCID: PMC7278161 DOI: 10.1186/s12874-020-01020-z
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Schematic of the stratification in meta-analyses
Sorting table for stratified data in molecular association meta-analysis of case-control studies
| No. of studies | Genetic susceptibility | Stratum1 | Stratum2 | … | Stratumq | |||
|---|---|---|---|---|---|---|---|---|
| Cases | Controls | Cases | Controls | Cases | Controls | |||
| 1 | + | a11 | b11 | a12 | b12 | … | a1q | b1q |
| – | c11 | d11 | c12 | d12 | c1q | d1q | ||
| 2 | + | a21 | b21 | a22 | b22 | … | a2q | b2q |
| – | c21 | d21 | c22 | d22 | c2q | d2q | ||
| … | ||||||||
| k | + | ak1 | bk1 | ak2 | bk2 | … | akq | bkq |
| – | ck1 | dk1 | ck2 | dk2 | ckq | dkq | ||
Meta-analysis of the association of the CYP1A1 MspI polymorphism and smoking with the risk of renal cell carcinoma
| Meta-analysis | No. of studies | CYP1A1 MspI | Non-smokers | Smokers | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Cases | Controls | OR | 95%CI | Cases | Controls | OR | 95%CI | |||||
| 2 | Wt/Wt | 75 | 205 | 1 (reference) | NA | 67 | 128 | 1.43 | 0.96–2.13 | 0.08 | ||
| Wt/Vt + Vt/Vt | 92 | 119 | 2.11 | 1.44–3.09 | < 0.001 | 90 | 73 | 3.37 | 2.24–5.06 | < 0.001 | ||
Note: OR odds ratio, CI confidence interval, NA not available, CYP1A1 cytochrome P450 1A1
Meta-analysis of the association of the PPARγ rs1801282 polymorphism and NSAID use with the risk of cancer
| Meta-analysis | No. of studies | Genetic comparison | Non-NSAID users | NSAID users | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Model | OR | 95%CI | Model | OR | 95%CI | ||||||||
| 6 | NA | 1 (reference) | NA | NA | 1 (reference) | NA | |||||||
| 0.865 | F | 0.932 | 0.830-1.046 | 0.865 | 0.034 | R | 0.942 | 0.724-1.226 | 0.658 | ||||
| NA | 1 (reference) | NA | NA | 1 (reference) | NA | ||||||||
| 0.942 | F | 0.743 | 0.673-0.820 | 0 | 0.065 | F | 0.786 | 0.663-0.932 | 0.006 | ||||
Note: OR odds ratio, CI confidence interval; F fixed-effect model; NA not available, NSAID nonsteroidal anti-inflammatory drug, PPARγ peroxisome proliferator-activated receptor gamma
Meta-analysis of the MDM2 rs2279744 polymorphism in lung cancer by smoking status
| Meta-analysis | No. of studies | Sources of results | Genetic comparison | Non-smokers | Smokers | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Model | OR | 95%CI | Model | OR | 95%CI | ||||||||||
| 5 | 28.60% | F | 1.275 | 1.066-1.526 | 0.008 | 72.40% | R | 1.015 | 0.816-1.262 | 0.896 | |||||
| 0.00% | F | 1.583 | 1.257-1.994 | < 0.001 | 84.00% | R | 1.201 | 0.816-1.768 | 0.353 | ||||||
| 40.50% | F | 1.334 | 1.125-1.581 | 0.001 | 83.2%a | R | 1.072 | 0.823-1.394 | 0.607 | ||||||
| Model | OR | 95%CI | Model | OR | 95%CI | ||||||||||
| – | 1.271 | 1.063-1.521 | – | 1.013 | 0.846-1.212 | ||||||||||
| – | 1.521 | 1.214-1.905 | 1.200 | 0.886-1.625 | |||||||||||
| 40.50% | F | 1.328 | 1.119-1.575 | – | NA | NA | |||||||||
Note: OR odds ratio, CI confidence interval, F fixed-effect model, NA not available A: statistical results calculated by us using STATA 14.0; B: statistical results calculated by original authors using METAGEN; MDM2 murine double minute-2
a complementally calculated by us
Factorial stratification analysis and confounder-controlling stratification analysis
| Exposure | Stratum 1 | Stratum 2 | ICR and ORint |
| – | Reference | OR2− | |
| + | OR1+ | OR2+ | |
| Exposure | Stratum 1 | Stratum 2 | Combined OR |
| – | Reference1 | Reference2 | |
| + | OR1 | OR2 | |
Note: OR odds ratio, ICR interaction contrast ratio
Fig. 2Flow diagram of the process of standard stratification analysis in meta-analyses
Fig. 3Template table of the standard stratification analysis in meta-analyses
Standard stratification analysis by NSAID use status for the association between the PPARγ rs1801282 polymorphism and the risk of cancer
| PPARγ rs1801282 | Non-NSAID users | NSAID users | Test of association and heterogeneity (b) | ||
|---|---|---|---|---|---|
| Case | Control | Case | Control | ||
| 2208 | 2773 | 1059 | 1653 | 0.743 (0.673–0.820) ~ 46.70% | |
| 664 | 902 | 338 | 575 | 0.811 (0.622–1.056) ~ 51.8% | |
| 0.932 (0.830–1.046) ~ 0.00% | 0.942 (0.724–1.226) ~ 58.70% | 0.765 (0.576–1.015) ~ 68.30% | |||
Number of included studies: 6
Variation across strata: ;
Adjusted ORs across stratification: OR((95 % CI) = 0.934 (0.840 − 1.038); OR((95 % CI) = 0.751 (0.685 − 0.824)
Crude ORs: OR(95 % CI) = 0.927 (0.845 − 1.017); OR(95 % CI) = 0.799 (0.840 − 1.038)
Standard stratification analysis by smoking status for the association between the MDM2 rs2279744 polymorphism and the risk of lung cancer
| MDM2 rs2279744 | Non-smokers | Smokers | Test of association and heterogeneity (b) | ||
|---|---|---|---|---|---|
| Case | Control | Case | Control | ||
| 273 | 861 | 1393 | 1208 | 2.274 (1.015–5.094) ~ 95.50% | |
| 711 | 1057 | 2363 | 2253 | 1.796 (0.735–4.387) ~ 98.30% | |
| 1.334 (1.125–1.581) ~ 40.50% | 1.072 (0.823–1.394) ~ 83.20% | 2.469 (1.116–5.461) ~ 95.90% | |||
Number of included studies: 5
Variation across strata: ;
Adjusted OR across stratification: OR(combined)a(95 % CI) = 1.232 (1.054 − 1.410); OR(combined)b(95 % CI) = 2.045 (1.124 − 3.722)
Crude ORs: OR(95 % CI) = 1.110 (0.871 − 1.414); OR(95 % CI) = 1.908 (0.793 − 4.589)