Title: Bias in casecrossover analyses of environmental time series data
1Bias in case-crossover analyses of environmental
time series data
- Paddy Farrington,
- Heather Whitaker and Mounia Hocine
- The Open University, UK
2The message
- Case-crossover methods are frequently used in
environmental epidemiology. - Some of them are biased, owing to incorrect use
of the case-control paradigm. - This can be fixed by using case series methods.
- However there is little point in doing so as time
series methods are more flexible.
3Environmental time series
- Data xt on an environmental exposure (eg
temperature, pollution level) in a given area are
available at times t 1, 2, , T. - Counts of events nt (eg vascular events, asthma
hospitalizations) are documented at each time
point. - Question is there an association between the
counts and the exposures?
4(No Transcript)
5Case-crossover methods applied to environmental
time series
- For an event at time t, select a window Wt
determined by t and containing t (eg times t ?1,
t and t 1). - Treat the exposures in Wt as a matched
case-control set, xt being the case exposure. - Do a conditional logistic regression as if this
were a matched case-control study.
6 t 1 t t 1
Control Case Control
Exposures xt-1 xt
xt1 Count nt
Likelihood contribution of events at t
7Overlap bias
- There is a large industry on how to choose the
referent window Wt. - It has been shown that this method of analysis
sometimes produces biased estimates. - This bias has been called overlap bias.
- But up till now the source of the bias has not
been clear.
8Exchangeability of the exposure distribution
within matched sets
- Matched case-control studies require the
distribution of exposures in each matched set to
be exchangeable - given the unordered set of exposures E X0, X1,
, XM), for any permutation ? of the indices, - P(X0,,XME) P(X?(0) ,,X?(M)E)
9The (full) case-control likelihood
- Consider a matched set of size M 1 (one case
and M controls). For each label r 0, 1, , M let
The likelihood contribution for this matched set
is then
provided that exposures are exchangeable.
10Exchangeability of environmental exposures?
- For environmental time series, sampling of the
reference windows Wt determines the exposures. - Available orderings of exposures across reference
windows are determined by the time series (and
form a finite population). - The exchangeability condition may not be met if
not this results in overlap bias.
11Binary exposures - Example
- Consider the exposure series 01011 and case
positions 2, 3 and 4. - Exposure vectors
- Case position 2 (0,1,0)
- Case position 3 (1,0,1)
- Case position 4 (0,1,1)
- Exposures are not exchangeable e.g. the vectors
(1,0,0), (0,0,1) do not appear. - This will result in overlap bias.
12Case series methods
- Overlap bias can be avoided by dropping the
case-control paradigm. - Instead, partition the time series into
non-overlapping windows Wt and treat event times
within each window as random. - This is a cohort approach, which is not subject
to overlap bias. - It has recently been extended to allow for the
residual effects of seasonality.
13Is this approach worth rescuing?
- The key assumptions of the method when applied to
such data are - The counts are Poisson, and
- There is no underlying time trend in event rates
within each window Wt. - Failure of either assumption invalidates the
method. - Time series methods make no such assumptions.
14Example Relative risk of RSV per 10oC
15Conclusions
- For modelling environmental time series, the
case-crossover method is biased as exposures are
usually not exchangeable. - Case series methods are unbiased.
- They are equivalent to Poisson time series models
with piecewise constant rate. - Time series regression models are far more
flexible and should be preferred. - Whitaker et al, Environmetrics 18 157 (2007)