Solution to the Quality Assurance Challenge 1

Reichenbächer, Manfred; Einax, Jürgen W.
September 2005
Analytical & Bioanalytical Chemistry;Sep2005, Vol. 383 Issue 1, p3
Academic Journal
Presents a solution to the quality assurance challenge 1 on analytical chemistry, which was published online in the July 29, 2005 issue of the journal "Analytical & Bioanalytical Chemistry." Validation of the mathematical model; Homoscedasticity; Accuracy of the mean.


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