Sampling Strategies for Internal Validation Samples for Exposure Measurement–Error Correction: A Study of Visceral Adipose Tissue Measures Replaced by Waist Circumference Measures — Linda Nab (2021) | RDL Network
Sampling Strategies for Internal Validation Samples for Exposure Measurement–Error Correction: A Study of Visceral Adipose Tissue Measures Replaced by Waist Circumference Measures
American Journal of Epidemiology 190(9): 1935-1947
Article 2021 English
Authors
LN
Linda Nab
MS
Maarten van Smeden
RM
Renée de Mutsert
Abstract
1 min read
Statistical correction for measurement error in epidemiologic studies is possible, provided that information about the measurement error model and its parameters are available. Such information is commonly obtained from a randomly sampled internal validation sample. It is however unknown whether randomly sampling the internal validation sample is the optimal sampling strategy. We conducted a simulation study to investigate various internal validation sampling strategies in conjunction with regression calibration. Our simulation study showed that for an internal validation study sample of 40% of the main study's sample size, stratified random and extremes sampling had a small efficiency gain over random sampling (10% and 12% decrease on average over all scenarios, respectively). The efficiency gain was more pronounced in smaller validation samples of 10% of the main study's sample size (i.e., a 31% and 36% decrease on average over all scenarios, for stratified random and extremes sampling, respectively). To mitigate the bias due to measurement error in epidemiologic studies, small efficiency gains can be achieved for internal validation sampling strategies other than random, but only when measurement error is nondifferential. For regression calibration, the gain in efficiency is, however, at the cost of a higher percentage bias and lower coverage.
Sebastiaan C. Boone, Maarten van Smeden, Frits R. Rosendaal, Saskia le Cessie, Rolf H. H. Groenwold, J. Wouter Jukema, Ko Willems van Dijk, Hildo J. Lamb, Philip Greenland, Ian J. Neeland, Matthew Allison, Michael H. Criqui, Matthew J. Budoff, Lars Lind, Joel Kullberg, Håkan Åhlström, Dennis O. Mook‐Kanamori, Renée de Mutsert
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