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. 2008 Sep 4;12(5):427. doi: 10.1186/cc6991

Regression modelling in hospital epidemiology: a statistical note

Martin Wolkewitz 1,, Jan Beyersmann 1, Petra Gastmeier 2, Martin Schumacher 1
PMCID: PMC2592731  PMID: 18828871

Barnett and Graves [1], in their commentary on our report recently published in Critical Care [2], suggested that time-discrete methods should be used to address time-dependent risk factors and competing risks. In this letter we comment on two statements by those authors.

First, Barnett and Graves claim that, 'An alternative method to the competing risks model is a multistate model.' In fact, a multistate model is not an alternative to modelling competing risks, but a competing risks model is an example of a multistate model. This is explained in the tutorial by Putter and coworkers [3]. However, competing risks only model the time to first event and the event type (for example, time to noso-comial infection [NI]) or discharge/death, whatever comes first. To model subsequent events also, more complex multistate models are needed. Barnett and Graves give an example in which discharge/death events after NI are also modelled. However, such a complex multistate model is implicitly used in a competing risks analysis when time-dependent risk factors are included. For example, in our report we also analyzed discharge and death as competing events and NI as a time-dependent covariate. Such a model analyses discharge/death events after NI.

Second, Barnett and Graves claim that pooled logistic regression has some advantages over Cox regression. In our intensive care unit setting, if data are collected day by day then both models are technically identical survival models and provide identical results, even though the Cox model is less restrictive. The Cox model is a very flexible regression model with potential extensions. Usually, hazard ratios are assumed to be constant, but the assumption of proportional hazards can be relaxed such that the regression coefficients may vary with time (see Martinussen and Scheike [4]). Time since NI can be included as an additional covariate in this model. Random effects may also be studied (see the discussion of frailty models in the book by Hougaard [5]). However, in this context it should be noted that standard logistic regression (one patient – one record) does not model time to event and might not appropriately include time-dependent risk factors.

In accordance with our primary report [2], Barnett and Graves [1] highlighted the need to take into account both time-dependent risk factors and competing risks when the impact of nosocomial infections on intensive care unit death/discharge is the focus of interest. In addition, they highlighted important issues that would be worth studying and would be interesting for medical research. Extensions of the logistic and the Cox regression model are adequate models in which to study those complex medical questions.

Competing interests

The authors declare that they have no competing interests.

See related commentary by Barnett and Graves, http://ccforum.com/content/12/2/134, and see related research by Wolkewitz et al., http://ccforum.com/content/12/2/R44

Contributor Information

Martin Wolkewitz, Email: wolke@fdm.uni-freiburg.de.

Jan Beyersmann, Email: jan@fdm.uni-freiburg.de.

Petra Gastmeier, Email: petra.gastmeier@charite.de.

Martin Schumacher, Email: ms@imbi.uni-freiburg.de.

References

  1. Barnett A, Graves N. Competing risks models and time-dependent covariates. Crit Care. 2008;12:134. doi: 10.1186/cc6840. [DOI] [PMC free article] [PubMed] [Google Scholar]
  2. Wolkewitz M, Vonberg RP, Grundmann H, Beyersmann J, Gastmeier P, Baerwolff S, Geffers C, Behnke M, Rueden H, Schumacher M. Risk factors for the development of nosocomial pneumonia and mortality on intensive care units: application of competing risks models. Crit Care. 2008;12:R44. doi: 10.1186/cc6852. [DOI] [PMC free article] [PubMed] [Google Scholar]
  3. Putter H, Fiocco M, Geskus RB. Tutorial in biostatistics: competing risks and multistate models. Stat Med. 2007;26:2389–2430. doi: 10.1002/sim.2712. [DOI] [PubMed] [Google Scholar]
  4. Martinussen M, Scheike T. Statistics for Biology and Health. New York, NY: Springer; 2006. Dynamic regression models for survival data; pp. 205–213. [Google Scholar]
  5. Hougaard P. Statistics for Biology and Health. New York, NY: Springer; 2006. Analysis of multivariate survival data; p. 215. [Google Scholar]

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