From Surf Wiki (app.surf) — the open knowledge base
Information bias (epidemiology)
Bias arising from measurement error
Bias arising from measurement error
In epidemiology, information bias refers to bias arising from measurement error. Information bias is also referred to as observational bias and misclassification. A Dictionary of Epidemiology, sponsored by the International Epidemiological Association, defines this as the following:
"1. A flaw in measuring exposure, covariate, or outcome variables that results in different quality (accuracy) of information between comparison groups. The occurrence of information biases may not be independent of the occurrence of selection biases. 2. Bias in an estimate arising from measurement errors."
Misclassification
Misclassification thus refers to measurement error. There are two types of misclassification in epidemiological research: non-differential misclassification and differential misclassification.
Nondifferential misclassification
Nondifferential misclassification is when all classes, groups, or categories of a variable (whether exposure, outcome, or covariate) have the same error rate or probability of being misclassified for all study subjects. It has traditionally been assumed that in the case of binary or dichotomous variables nondifferential misclassification would result in an 'underestimation' of the hypothesized relationship between exposure and outcome. However, this has more recently been challenged in that results of individual studies represent a single estimate and not the average of repeated measurements and thus can be farther (or nearer) from the null value (i.e. zero) than the true value.
Differential misclassification
Differential misclassification occurs when the error rate or probability of being misclassified differs across groups of study subjects. For example, the accuracy of blood pressure measurement may be lower for heavier than lighter study subjects, or a study of elderly persons may find that reports from elderly persons with dementia are less reliable than those without dementia. The effect(s) of such misclassification can vary from an overestimation to an underestimation of the true value.{{Cite journal
References
References
- Rothman, K.. (2008). "Modern Epidemiology". Lippincott Williams & Wilkins.
- (2008). "A Dictionary of Epidemiology". Oxford University Press.
- (2004). "Proper interpretation of non-differential misclassification effects: Expectations vs observations". International Journal of Epidemiology.
- (1988). "Variance estimation for epidemiologic effect estimates under misclassification". Statistics in Medicine.
This article was imported from Wikipedia and is available under the Creative Commons Attribution-ShareAlike 4.0 License. Content has been adapted to SurfDoc format. Original contributors can be found on the article history page.
Ask Mako anything about Information bias (epidemiology) — get instant answers, deeper analysis, and related topics.
Research with MakoFree with your Surf account
Create a free account to save articles, ask Mako questions, and organize your research.
Sign up freeThis content may have been generated or modified by AI. CloudSurf Software LLC is not responsible for the accuracy, completeness, or reliability of AI-generated content. Always verify important information from primary sources.
Report