Randomisation Flashcards
essence of randomization
based purely on chance
2 elements
- creating a randomization scheme (before the start of a study)
- allocating patients to intervention or control group (once patients start to participate in the study)
simple randomization
like throwing a dice
issues:
- uneven groups/ imbalance (not 50/50)
how to solve imbalance with simple randomization
use block randomization:
essence: after every block, balance is 50/50
- you can choose the size of the block (after e.g. 6/8 etc. the groups are even)
problem with block size of 2
predictable, after the first randomization outcome, you know what the second one will be
problems with large blocks
if you stop recruiting earlier than expected, you have uneven groups again (e.g., block of 200 –> 100 in intervention, 50 in control)
best block size
vary block size randomly, e.g., between 2 and 4 (then even when you’re in a block size of 2 atm, you don’t know that, so you don’t know the outcome of the next person)
creating a randomization scheme
- use block randomization
- with randomly varying block size
problem of unequal distribution of variables
-problematic if they are prognostic factors (e.g., if gender is associated with the effect)
when stratification?
when you expect a variable to be strongly related to effect (i.e. prognostic factor) –> to ensure equal distribution of this variable
- not really necessary in large trials, because you expect variables to be distributed equally (known and unknown prognostic factors)
- use sparsely, mainly with strong prognostic factors
how stratification? procedure
- determine the variables you want to use
- determine the number of groups (stratum/ strata) for each variable
- not continuous! groups! e.g. age: 18-40, 41-60, 60+ (3 strata) - calculate total number go groups/ strata, e.g. 2 variables with 2 strata –> 4 total number of strata
- create a randomization scheme for each of the groups/ strata: e.g. 4 randomization schemes
problem with stratification
you quickly have too many strata: 4 variables with 2 groups results into 16 strata!
- -> too complicated
- -> you need a huge sample
minimisation
another way of randomization
- the chance on intervention/ control depends on characteristics of those already assigned, e.g. all women are assigned to intervention group –> chance of next women to draw control group is increased (best used when you have more factors to randomize on)
allocating patients: what is that?
- after eligibility screen –> allocation
(patients enter RCT gradually!) - allocation needs to be blinded! might create bias, if person screening for eligibility knows the next allocation outcome
allocating patients steps
- independent person stores randomization scheme
- researcher includes patient
- researcher asks independent person to reveal randomization outcome (=allocates the next patient)