Analytical error and its consequences [Bioanalytics]
Dear all,
since I didn’t want to go too much off-topic in conversations I had with Franz and Detlew (see this post and followings) I prepared an example about analytical error. Calibration at six levels (replicates) compliant with the GL (CV ≤20% at the LLOQ, ≤15% above; back-calculated inaccuracy ≤±20/15%), linear model, weighting 1/σ².
I got:
Not that bad. But what about variability? How reliable are concentrations obtained from the calibration? Imagine samples in the mid-range and close to the LLOQ. We have two measurements (y) each. Can we distinguish between estimated concentrations (x)?
Note the asymmetric confidence interval of estimated concentrations, which is caused by the hyperbolic CI of the regression.
![[image]](img/uploaded/image122.png)
We can reliably distinguish between two concentrations in the mid-range, but not close to the LLOQ since their CIs overlap. That’s not rocket since, but basic stuff.*
When we talk about excluding data points in the estimation of λz we should keep this issue in mind. We must not forget that PK data are not isolated pieces of information, but highly correlated. We should apply scientific judgment (an euphemism for common sense) on which data are included – and which not.
since I didn’t want to go too much off-topic in conversations I had with Franz and Detlew (see this post and followings) I prepared an example about analytical error. Calibration at six levels (replicates) compliant with the GL (CV ≤20% at the LLOQ, ≤15% above; back-calculated inaccuracy ≤±20/15%), linear model, weighting 1/σ².
x y SDy CV%
1 0.032 0.0064 20.0
2 0.062 0.0091 14.7
4 0.128 0.0173 13.5
8 0.280 0.0392 14.0
16 0.520 0.0640 12.3
32 1.020 0.1224 12.0
I got:
ayx -0.013642 ±0.0019957
byx 0.032667 ±0.000738
R2 0.099797
Not that bad. But what about variability? How reliable are concentrations obtained from the calibration? Imagine samples in the mid-range and close to the LLOQ. We have two measurements (y) each. Can we distinguish between estimated concentrations (x)?
y x 95% CI
mid-range 0.40 12.3 11.7 – 13.0
0.45 13.8 13.1 – 14.6
close to LLOQ 0.040 1.27 1.13 – 1.40
0.045 1.42 1.29 – 1.55
Note the asymmetric confidence interval of estimated concentrations, which is caused by the hyperbolic CI of the regression.
![[image]](img/uploaded/image122.png)
We can reliably distinguish between two concentrations in the mid-range, but not close to the LLOQ since their CIs overlap. That’s not rocket since, but basic stuff.*
When we talk about excluding data points in the estimation of λz we should keep this issue in mind. We must not forget that PK data are not isolated pieces of information, but highly correlated. We should apply scientific judgment (an euphemism for common sense) on which data are included – and which not.
- Miller JC, Miller JN. Statistics and Chemometrics for Analytical Chemistry. Upper Saddle River; 6th ed 2010: Prentice Hall.
—
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Helmut Schütz
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Science Quotes
Dif-tor heh smusma 🖖🏼 Довге життя Україна!
![[image]](https://static.bebac.at/pics/Blue_and_yellow_ribbon_UA.png)
Helmut Schütz
![[image]](https://static.bebac.at/img/CC by.png)
The quality of responses received is directly proportional to the quality of the question asked. 🚮
Science Quotes
Complete thread:
- Analytical error and its consequencesHelmut 2012-10-09 19:30 [Bioanalytics]
- Analytical error and its consequences drcampos 2012-10-11 18:46
- CI of concentrations (quick & dirty R) Helmut 2012-10-11 20:26
- CI of concentrations (quick & dirty R) drcampos 2012-10-16 04:45
- CI of concentrations (quick & dirty R) Helmut 2012-10-11 20:26
- Analytical error and its consequences drcampos 2012-10-11 18:46