Effect of non-significant proportional bias in the final measurement uncertainty.

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Department of Analytical and Organic Chemistry, Institute of Advanced Studies, Rovira i Virgili University of Tarragona, Pl. Imperial Tàrraco, 1, 43005 Tarragona, Catalonia, Spain.

Published: April 2003

AI Article Synopsis

  • The trueness of an analytical method is evaluated by calculating its proportional bias based on apparent recovery; if recovery is close to one, bias is considered insignificant.
  • If bias is deemed non-significant, it can be ignored, but there's a risk of underestimating uncertainty in the results, which remains a concern in evaluating trueness.
  • Using the Monte-Carlo method, the study finds that non-significant bias can indeed lead to underestimating uncertainty, particularly when bias contributes over 20% to overall uncertainty, with a more pronounced effect when it exceeds 50%.

Article Abstract

The trueness of an analytical method can be assessed by calculating the proportional bias of the method in terms of apparent recovery. If the apparent recovery does not differ significantly from one, the analytical method has not a significant bias. If this is the case, the bias is neglected and the uncertainty associated with this bias is included in the uncertainty budget of results. However, when assessing trueness there is always a probability of incorrectly concluding that the proportional bias is not significant. Therefore, the uncertainty of results may be underestimated. In this paper, we study how non-significant bias affects the uncertainty of analytical results. Moreover, we study how to avoid the underestimation of uncertainty by including the non-significant bias calculated in the uncertainty budget. To answer these questions, we have used the Monte-Carlo method to simulate the process of estimating the apparent recovery of a biased analytical method and, subsequently, the future results this method provides. The results of the simulation show that non-significant bias may underestimate the uncertainty of analytical results when bias contributes in more than 20% to the overall uncertainty. Uncertainty is specially underestimated when bias contributes in more than 50% to the overall uncertainty.

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Source
http://dx.doi.org/10.1039/b210526hDOI Listing

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