Estimating the Effect of Healthcare-Associated Infections on Excess Length of Hospital Stay Using Inverse Probability–Weighted Survival Curves

Author:

Pouwels Koen B12ORCID,Vansteelandt Stijn34,Batra Rahul5,Edgeworth Jonathan5,Wordsworth Sarah1,Robotham Julie V6, ,Anyanwu Philip E,Borek Aleksandra,Bright Nicole,Buchanan James,Butler Christopher,Campbell Anne,Costelloe Ceire,Hayhoe Benedict,Holmes Alison,Hopkins Susan,Majeed Azeem,McLeod Monsey,Moore Michael,Morrell Liz,Pouwels Koen B,Robotham Julie V,Roope Laurence S J,Tonkin-Crine Sarah,Walker Ann Sarah,Wordsworth Sarah,Zalevski Anna

Affiliation:

1. Health Economics Research Centre, Nuffield Department of Population Health, University of Oxford, Oxford, United Kingdom

2. National Institute for Health Research Health Protection Research Unit in Healthcare Associated Infections and Antimicrobial Resistance, University of Oxford, Oxford, United Kingdom

3. Department of Applied Mathematics, Computer Science and Statistics, Ghent University, Ghent, Belgium

4. Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, United Kingdom

5. Centre for Clinical Infection and Diagnostics Research, Department of Infectious Diseases, King’s College London and Guy’s and St Thomas’ National Health Services Foundation Trust, London, United Kingdom

6. Modelling and Economics Unit, National Infection Service, Public Health England, London, United Kingdom

Abstract

Abstract Background Studies estimating excess length of stay (LOS) attributable to nosocomial infections have failed to address time-varying confounding, likely leading to overestimation of their impact. We present a methodology based on inverse probability–weighted survival curves to address this limitation. Methods A case study focusing on intensive care unit–acquired bacteremia using data from 2 general intensive care units (ICUs) from 2 London teaching hospitals were used to illustrate the methodology. The area under the curve of a conventional Kaplan-Meier curve applied to the observed data was compared with that of an inverse probability–weighted Kaplan-Meier curve applied after treating bacteremia as censoring events. Weights were based on the daily probability of acquiring bacteremia. The difference between the observed average LOS and the average LOS that would be observed if all bacteremia cases could be prevented was multiplied by the number of admitted patients to obtain the total excess LOS. Results The estimated total number of extra ICU days caused by 666 bacteremia cases was estimated at 2453 (95% confidence interval [CI], 1803–3103) days. The excess number of days was overestimated when ignoring time-varying confounding (2845 [95% CI, 2276–3415]) or when completely ignoring confounding (2838 [95% CI, 2101–3575]). Conclusions ICU-acquired bacteremia was associated with a substantial excess LOS. Wider adoption of inverse probability–weighted survival curves or alternative techniques that address time-varying confounding could lead to better informed decision making around nosocomial infections and other time-dependent exposures.

Funder

Economic and Social Research Council

Antimicrobial Resistance Cross Council Initiative

National Institute for Health Research

Healthcare Associated Infections

University of Oxford

Public Health England

NIHR Biomedical Research Centre

National Health Service

Kings College London

Infection and Immunity

NIHR Collaboration for Leadership in Applied Health Research and Care South London at King’s College Hospital NHS Foundation Trust

Publisher

Oxford University Press (OUP)

Subject

Infectious Diseases,Microbiology (medical)

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