| Literature DB >> 17578572 |
Abstract
BACKGROUND: Power for assessing interactions during data analysis is often poor in epidemiologic studies. This is because epidemiologic studies are frequently powered primarily to assess main effects only. In light of this, some investigators raise the Type I error rate, thereby increasing power, when testing interactions. However, this is a poor analysis strategy if the study is chronically under-powered (e.g. in a small study) or already adequately powered (e.g. in a very large study). To demonstrate this point, this study quantified the gain in power for testing interactions when the Type I error rate is raised, for a variety of study sizes and types of interaction.Entities:
Year: 2007 PMID: 17578572 PMCID: PMC1910596 DOI: 10.1186/1742-5573-4-4
Source DB: PubMed Journal: Epidemiol Perspect Innov ISSN: 1742-5573
Figure 1Population Odds Ratios for Ten Hypothetical Interaction Scenarios (based on Greenland, 1983).
Effect of Raising the Type I Error Rate on the Statistical Power for the Wald1 Test of Interaction for Three Study Sizes in a Case-Control Study of Two Binary Exposures2
| Small Study Size (75 Cases & 150 Controls) | Large Study Size (300 cases & 600 controls) | Very Large Study Size (1200 Cases & 2400 Controls) | |||||||||||
| Type of Interaction | Type I Error Rate | Type I Error Rate | Type I Error Rate | ||||||||||
| 5% | 10% | 15% | 20% | 5% | 10% | 15% | 20% | 5% | 10% | 15% | 20% | ||
| S1 | Sub-additive | 43% | 55% | 63% | 69% | ||||||||
| A1 | Additive | 21% | 31% | 39% | 45% | ||||||||
| A2 | Additive | 26% | 37% | 45% | 52% | ||||||||
| A3 | Additive | 24% | 35% | 43% | 49% | ||||||||
| I1 | Intermediate | 18% | 28% | 35% | 42% | ||||||||
| I2 | Intermediate | 11% | 18% | 24% | 30% | 28% | 40% | 48% | 54% | ||||
| M1 | Multiplicative | 5% | 10% | 15% | 20% | 5% | 10% | 15% | 20% | 5% | 10% | 15% | 20% |
| T1 | Super-multiplicative | 7% | 13% | 19% | 24% | 14% | 22% | 29% | 35% | 40% | 53% | 61% | 67% |
| T2 | Super-multiplicative | 16% | 25% | 32% | 38% | ||||||||
| T3 | Super-multiplicative | 30% | 42% | 50% | 57% | ||||||||
1In simulations, almost identical results were obtained for the Likelihood Ratio test and Breslow-Day Test
2Bolded table cells indicate "middle-ground" scenarios in which there is a useful gain in power due to raising the Type I error rate. Italicized table cells indicate "high-ground" scenarios in which power is already high and raising the Type I error rate is unnecessary. Table cells that are neither bolded nor italicized indicate "low-ground" scenarios in which power is so low that raising the Type I error rate does not usefully boost power. A useful gain in power was defined as situations where raising the Type I error rate from 5% to 20% resulted in a 10% or greater gain in power, and power was above 70% when the Type I error rate was 20%.