Laura R
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Israel,
2017-06-01 16:57
(2510 d 16:39 ago)

Posting: # 17439
Views: 3,896
 

 Assumptions for powering a XO study [Power / Sample Size]

Hi Forum,
We are planning a XO BE study to support a manufacturing change, and have only data from a single administration (from which we extracted %CV).
In order to calculate sample size, do I need information regarding expected correlation between PK parameters in period 1 (test) vs period 2 (ref)? What would be a reasonable assumption when there is no prior data?
Thanks, Laura


Edit: Category changed; see also this post #1. [Helmut]
Helmut
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Vienna, Austria,
2017-06-01 17:47
(2510 d 15:49 ago)

@ Laura R
Posting: # 17440
Views: 3,385
 

 CVintra ≠ CVtotal

Hi Laura,

❝ We are planning a XO BE study to support a manufacturing change, and have only data from a single administration (from which we extracted %CV).


That’s the total CV. It is pooled from the between- and within-subject variability. The fact that you administered the product only once, does not mean that the within-subject variability (or inter-occasion variability) does not exist.
Only from a Xover you could estimate (besides CVtotal) both CVintra and CVinter (see this presentation, slides 12–13).

❝ In order to calculate sample size, do I need information regarding expected correlation between PK parameters in period 1 (test) vs period 2 (ref)?


In a Xover you have two sequences (RT|TR). Hence, T in ½N in period 1 and ½N in period 2. Same for R: ½N in period 1 and ½N in period 2. Administering T and R without randomization (T in period 1 and R in period 2) would be a paired design which is not acceptable in BE (requires lacking period effects).

❝ What would be a reasonable assumption when there is no prior data?


None. You need the within-subject CV which you cannot obtain from the data you have. In most (!) cases CVintra < CVinter but the actual relationship is unknown till you have data from a Xover. I know, that’s a vicious circle.
Don’t be tempted to design the Xover based on your CVtotal (e.g., your company is “wealthy” enough and the guy in the Armani-suit tells you “We have the budget. Go ahead!”).
  • Bad statistical practice and against most guidances.
  • Unethical. Example polymorphism: CVtotal will be extreme though CVintra might be pretty low. Say CVtotal 60% and CVintra 12%. To obtain 90% power for an expected GMR 0.90 you would falsely design the study with 182 (!) subjects instead of the required 12…
    Hopefully the IEC will have enough statistical expertise to reject the protocol.
Sorry, there are no shortcuts. Either perform a pilot study or – if you don’t have to deal with a HVD(P) – a two-stage design.

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