Quantifying errors without random sampling
Open Access
- 12 June 2003
- journal article
- Published by Springer Nature in BMC Medical Research Methodology
- Vol. 3 (1) , 9
- https://doi.org/10.1186/1471-2288-3-9
Abstract
All quantifications of mortality, morbidity, and other health measures involve numerous sources of error. The routine quantification of random sampling error makes it easy to forget that other sources of error can and should be quantified. When a quantification does not involve sampling, error is almost never quantified and results are often reported in ways that dramatically overstate their precision. We argue that the precision implicit in typical reporting is problematic and sketch methods for quantifying the various sources of error, building up from simple examples that can be solved analytically to more complex cases. There are straightforward ways to partially quantify the uncertainty surrounding a parameter that is not characterized by random sampling, such as limiting reported significant figures. We present simple methods for doing such quantifications, and for incorporating them into calculations. More complicated methods become necessary when multiple sources of uncertainty must be combined. We demonstrate that Monte Carlo simulation, using available software, can estimate the uncertainty resulting from complicated calculations with many sources of uncertainty. We apply the method to the current estimate of the annual incidence of foodborne illness in the United States. Quantifying uncertainty from systematic errors is practical. Reporting this uncertainty would more honestly represent study results, help show the probability that estimated values fall within some critical range, and facilitate better targeting of further research.Keywords
This publication has 7 references indexed in Scilit:
- Quantifying and Reporting Uncertainty from Systematic ErrorsEpidemiology, 2003
- Considering uncertainty in comparing the burden of illness due to foodborne microbial pathogensInternational Journal of Food Microbiology, 2001
- The economics of ‘more research is needed’International Journal of Epidemiology, 2001
- Phenylpropanolamine and the Risk of Hemorrhagic StrokeNew England Journal of Medicine, 2000
- A Sensitivity Analysis to Separate Bias Due to Confounding from Bias Due to Predicting Misclassification by a Variable That Does BothEpidemiology, 2000
- Food-Related Illness and Death in the United StatesEmerging Infectious Diseases, 1999
- International Editors: Emerging Viral Diseases: An Australian PerspectiveEmerging Infectious Diseases, 1999