| Literature DB >> 20633293 |
Michael E Reichenheim1, Evandro S F Coutinho.
Abstract
BACKGROUND: Several papers have discussed which effect measures are appropriate to capture the contrast between exposure groups in cross-sectional studies, and which related multivariate models are suitable. Although some have favored the Prevalence Ratio over the Prevalence Odds Ratio -- thus suggesting the use of log-binomial or robust Poisson instead of the logistic regression models -- this debate is still far from settled and requires close scrutiny. DISCUSSION: In order to evaluate how accurately true causal parameters such as Incidence Density Ratio (IDR) or the Cumulative Incidence Ratio (CIR) are effectively estimated, this paper presents a series of scenarios in which a researcher happens to find a preset ratio of prevalences in a given cross-sectional study. Results show that, provided essential and non-waivable conditions for causal inference are met, the CIR is most often inestimable whether through the Prevalence Ratio or the Prevalence Odds Ratio, and that the latter is the measure that consistently yields an appropriate measure of the Incidence Density Ratio.Entities:
Mesh:
Year: 2010 PMID: 20633293 PMCID: PMC2919549 DOI: 10.1186/1471-2288-10-66
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Eight scenarios depicting cross-sectional studies carried out in different underlying conditions, yet all uncovering prevalence ratios between exposed and non-exposed groups of 2.0.
| Scenario | Type of outcome event | Duration of outcome ( | ||||
|---|---|---|---|---|---|---|
| 1 | Rare | Long and equal | 2.053 | (+2.6) | 2.025 | (+1.2) |
| 2 | Rare | Long and unequal | 0.205 | (-89.7) | 0.227 | (-88.6) |
| 3 | Rare | Short and equal | 2.053 | (+2.6) | 1.809 | (-9.5) |
| 4 | Rare | Short and unequal | 0.205 | (-89.7) | 0.443 | (-77.8) |
| 5 | Common | Long and equal | 3.000 | (+50.0) | 2.230 | (+11.5) |
| 6 | Common | Long and unequal | 0.300 | (-85.0) | 0.656 | (-67.2) |
| 7 | Common | Short and equal | 3.000 | (+50.0) | 1.037 | (-48.1) |
| 8 | Common | Short and unequal | 0.300 | (-85.0) | 1.000 | (-50.0) |
* In brackets: % bias (IDR) calculated as [-(PR - IDR )/PR]*100, where PR = 2.0 is fixed.
** In brackets: % bias (CIR) calculated as [-(PR - CIR )/PR]*100, where PR = 2.0 is fixed.
Time units used in the scenarios
Average duration of outcome long and equal → T= T= 1
Average duration of outcome long and unequal → T= 1; T= 0.1
Average duration of outcome short and equal → T= T= 0.1
Average duration of outcome short and unequal → T= 0.1; T= 0.01
Time interval for projecting CIR → Δt = 1
Prevalences according to exposure group and outcome frequency
Rare outcome → P= 0.05; P= 0.025
Common outcome → P= 0.5; P= 0.25
Figure 1Projected Cumulative Incidence Ratio (CIR) according to increasing disease durations (.
Figure 2Projected Cumulative Incidence Ratio (CIR) according to increasing disease durations (.
Figure 3Projected Cumulative Incidence by exposure group (CI1 and CI0) and ensuing Cumulative Incidence Ratio (CIR), according to increasing risk periods (Δt), given surveys detecting P1 = 0.5 and P0 = 0.25 (PR = 2.0), and .
Figure 4Decision tree for analyzing cross-sectional data.