Volume 33, Issue 29
Research Article

EM for regularized zero‐inflated regression models with applications to postoperative morbidity after cardiac surgery in children

Zhu Wang

Corresponding Author

Department of Research, Connecticut Children's Medical Center, Department of Pediatrics, University of Connecticut School of Medicine, Hartford, CT, U.S.A.

Correspondence to: Zhu Wang, Department of Research, Connecticut Children's Medical Center, Department of Pediatrics, University of Connecticut School of Medicine, Hartford, CT, U.S.A.

E‐mail: zwang@connecticutchildrens.org

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Shuangge Ma

Department of Biostatistics, School of Public Health, Yale University, New Haven, CT, U.S.A.

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Ching‐Yun Wang

Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, WA, U.S.A.

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Michael Zappitelli

Division of Nephrology, Department of Pediatrics, Montreal Children's Hospital, McGill University Health Centre, Montreal, Quebec, Canada

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Prasad Devarajan

Department of Nephrology, and Hypertension, Center for Acute Care Nephrology, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, U.S.A.

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Chirag Parikh

Section of Nephrology and Program of Applied Translational Research, Department of Medicine, Yale University School of Medicine, New Haven, CT, Clinical Epidemiology Research Center, Veterans Affairs Medical Center, West Haven, CT, U.S.A.

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First published: 26 September 2014
Citations: 10

Abstract

This paper proposes a new statistical approach for predicting postoperative morbidity such as intensive care unit length of stay and number of complications after cardiac surgery in children. In a recent multi‐center study sponsored by the National Institutes of Health, 311 children undergoing cardiac surgery were enrolled. Morbidity data are count data in which the observations take only nonnegative integer values. Often, the number of zeros in the sample cannot be accommodated properly by a simple model, thus requiring a more complex model such as the zero‐inflated Poisson regression model. We are interested in identifying important risk factors for postoperative morbidity among many candidate predictors. There is only limited methodological work on variable selection for the zero‐inflated regression models. In this paper, we consider regularized zero‐inflated Poisson models through penalized likelihood function and develop a new expectation–maximization algorithm for numerical optimization. Simulation studies show that the proposed method has better performance than some competing methods. Using the proposed methods, we analyzed the postoperative morbidity, which improved the model fitting and identified important clinical and biomarker risk factors. Copyright © 2014 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 10

  • Zero-inflated models for adjusting varying exposures: a cautionary note on the pitfalls of using offset, Journal of Applied Statistics, 10.1080/02664763.2020.1796943, (1-23), (2020).
  • A Note on the Adaptive LASSO for Zero-Inflated Poisson Regression, Journal of Probability and Statistics, 10.1155/2018/2834183, 2018, (1-9), (2018).
  • Group regularization for zero‐inflated negative binomial regression models with an application to health care demand in Germany, Statistics in Medicine, 10.1002/sim.7804, 37, 20, (3012-3026), (2018).
  • Group regularization for zero-inflated poisson regression models with an application to insurance ratemaking, Journal of Applied Statistics, 10.1080/02664763.2018.1555232, (1-15), (2018).
  • Simultaneously modelling clustered marginal counts and multinomial proportions with zero inflation with application to analysis of osteoporotic fractures data, Journal of the Royal Statistical Society: Series C (Applied Statistics), 10.1111/rssc.12216, 67, 1, (185-200), (2017).
  • Network analysis for count data with excess zeros, BMC Genetics, 10.1186/s12863-017-0561-z, 18, 1, (2017).
  • Stochastic variable selection strategies for zero-inflated models, Statistical Modelling: An International Journal, 10.1177/1471082X17711068, (1471082X1771106), (2017).
  • Early detection of acute kidney injury after pediatric cardiac surgery, Progress in Pediatric Cardiology, 10.1016/j.ppedcard.2016.01.011, 41, (9-16), (2016).
  • EM Adaptive LASSO—A Multilocus Modeling Strategy for Detecting SNPs Associated with Zero-inflated Count Phenotypes, Frontiers in Genetics, 10.3389/fgene.2016.00032, 7, (2016).
  • Variable selection for zero‐inflated and overdispersed data with application to health care demand in Germany, Biometrical Journal, 10.1002/bimj.201400143, 57, 5, (867-884), (2015).

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