Volume 35, Issue 12
Research Article

Propensity score matching with clustered data. An application to the estimation of the impact of caesarean section on the Apgar score

Bruno Arpino

Corresponding Author

Department of Political and Social Sciences, Universitat Pompeu Fabra, Barcelona, Spain

Correspondence to: Bruno Arpino, Department of Political and Social Sciences, Universitat Pompeu Fabra, Carrer Ramon Trias Fargas 25‐27, 08005, Barcelona, Spain.

E‐mail: bruno.arpino@upf.edu

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Massimo Cannas

Department of Economic and Business Science, University of Cagliari, Via Sant'Ignazio 17, Cagliari, 09124 Italy

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First published: 01 February 2016
Citations: 19

Abstract

This article focuses on the implementation of propensity score matching for clustered data. Different approaches to reduce bias due to cluster‐level confounders are considered and compared using Monte Carlo simulations. We investigated methods that exploit the clustered structure of the data in two ways: in the estimation of the propensity score model (through the inclusion of fixed or random effects) or in the implementation of the matching algorithm. In addition to a pure within‐cluster matching, we also assessed the performance of a new approach, ‘preferential’ within‐cluster matching. This approach first searches for control units to be matched to treated units within the same cluster. If matching is not possible within‐cluster, then the algorithm searches in other clusters. All considered approaches successfully reduced the bias due to the omission of a cluster‐level confounder. The preferential within‐cluster matching approach, combining the advantages of within‐cluster and between‐cluster matching, showed a relatively good performance both in the presence of big and small clusters, and it was often the best method. An important advantage of this approach is that it reduces the number of unmatched units as compared with a pure within‐cluster matching. We applied these methods to the estimation of the effect of caesarean section on the Apgar score using birth register data. Copyright © 2016 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 19

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