Identification... [Outliers]
Dear Sohail,
since you have agreed with the forum’s policy during registration, you do remember following lines for sure:
There are two types of potential outliers in a BE study; only the second one influences the outcome:
Some methods:
since you have agreed with the forum’s policy during registration, you do remember following lines for sure:
It’s nice to start your post with a salutation, and include a signature as well.
You may save a signature with your User’s data; it will be automatically attached to your posts.
There are two types of potential outliers in a BE study; only the second one influences the outcome:
- Concordant outlier
The PK responses for both test and reference deviate from the majority of the study sample.
E.g., poor metabolizers may lead to high concentrations in 5-10% of subjects.
Does not effect the BE-assessment, but should be discussed (polymorphism known?) in the report.
- Discordant outlier
The PK response of either test or reference deviates from the majority of the study sample.
Some methods:
- An XY-plot of subject’s PK responses, where X=reference and Y=test.
Applying a linear regression on the data, concordant outlier(s) will be close to the line but shifted from the cluster of subjects showing ‘normal’ responses. Discordant outlier(s) will show a shift from the line.
- Tukey Sum-Difference plot (X=ℯ(ln Test + ln Reference) and Y=ℯ(ln Test - ln Reference), both axes in log-scale) will show concordant outlier(s) as a horizontal shift, and discordant outlier(s) as a vertical shift.
- Analysis of residuals from ANOVA/GLM:
- Concordant outlier(s) will show a horizontal shift in an XY-plot (X=predicted value, Y=studentized intra-subject residual), whereas discordant outlier(s) will show a small horizontal shift and a large vertical shift.
- In a normal probability plot (X=normal score, Y=studentized intra-subject residual) concordant outlier(s) will show no deviation from the best fit (Hazen line), whereas discordant outlier(s) will show a large vertical shift.
- Tukey’s equal variance plot1 (X=predicted value, Y=sqrt(|raw residual in period 1|), will help in evaluating the equal variance assumption.
- A Cook’s Distance plot helps in identifying most influential subjects.
- Box-plots of intra-subject residuals will show discordant outliers, whereas box-plots of inter-subject residuals will show concordant outliers.
- The Lund-test2 was recommended in FDA's guideline in 1993, but dropped in later editions.
- Concordant outlier(s) will show a horizontal shift in an XY-plot (X=predicted value, Y=studentized intra-subject residual), whereas discordant outlier(s) will show a small horizontal shift and a large vertical shift.
- JW Tukey
Exploratory Data Analysis
Addison-Wesley, Reading (1977)
- RE Lund
Tables for An Approximate Test for Outliers in Linear Models
Technometrics 17(4), 473-6 (1975)
- Pikounis B, Bradstreet TE, and SP Millard
Graphical Insight and Data Analysis for the 2,2,2 Crossover Design
in: SP Millard and A Krause
Applied Statistics in the Pharmaceutical Industry
Springer, New York, pp 153-188 (2001)
download-link for chapter 7
—
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
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:
- How to identify subjects for outlier sohail 2007-11-15 09:28 [Outliers]
- Identification...Helmut 2007-11-15 15:35