by
lmh » Thu Oct 15, 2015 4:28 pm
question of which error you're looking at: I usually plot calibration curves with the response on the y-axis and concentration or amount on the x-axis, but some software does it the other way round, or offers the choice.
When fitting the calibration curve, it's important that the least-squares regression is done in the same direction as the likely errors. You are choosing the best fit that has the least error, so it wouldn't be logical to make the curve as close as it can be to the points sideways when the error you're trying to minimise is up and down. For this reason, I think the standard error has to be measured initially in the direction of the response (which I put on the y-axis).
The potential confusion is that actually you don't want to know the standard error in the response. You want to know the standard error in the final measurement, which is amount or concentration, and therefore the x-axis in my calibration curves. Fortunately, the uncertainty in concentration can be calculated from the uncertainty in response by using exactly the method you'd use to find the actual concentration in a sample from the actual response: dividing by the slope of a linear calibration curve. This, then, is what you do when finding the limit of quantification. The extra constant is just there so that you get the error-window that someone once decided was acceptable, but theoretically you could use any multiplier you wanted, dependent on what level of precision you want.