» Articles » PMID: 28992064

Estimating the Comparative Effectiveness of Feeding Interventions in the Pediatric Intensive Care Unit: A Demonstration of Longitudinal Targeted Maximum Likelihood Estimation

Overview
Journal Am J Epidemiol
Specialty Public Health
Date 2017 Oct 10
PMID 28992064
Citations 17
Authors
Affiliations
Soon will be listed here.
Abstract

Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To adjust for time-dependent confounding in these settings, longitudinal targeted maximum likelihood based estimation (TMLE), a doubly robust method that can be coupled with machine learning, has been proposed. This paper provides a tutorial in applying longitudinal TMLE, in contrast to inverse probability of treatment weighting and g-computation based on iterative conditional expectations. We apply these methods to estimate the causal effect of nutritional interventions on clinical outcomes among critically ill children in a United Kingdom study (Control of Hyperglycemia in Paediatric Intensive Care, 2008-2011). We estimate the probability of a child's being discharged alive from the pediatric intensive care unit by a given day, under a range of static and dynamic feeding regimes. We find that before adjustment, patients who follow the static regime "never feed" are discharged by the end of the fifth day with a probability of 0.88 (95% confidence interval: 0.87, 0.90), while for the patients who follow the regime "feed from day 3," the probability of discharge is 0.64 (95% confidence interval: 0.62, 0.66). After adjustment for time-dependent confounding, most of this difference disappears, and the statistical methods produce similar results. TMLE offers a flexible estimation approach; hence, we provide practical guidance on implementation to encourage its wider use.

Citing Articles

Comparisons of mental health treatment frequency and risk of suicidal thoughts and behaviors among youth.

Parry G, Overhage L, Williams P, Holmes K, Reddy A, Perez G Psychiatry Res. 2024; 342:116270.

PMID: 39580937 PMC: 11651294. DOI: 10.1016/j.psychres.2024.116270.


Machine learning in causal inference for epidemiology.

Moccia C, Moirano G, Popovic M, Pizzi C, Fariselli P, Richiardi L Eur J Epidemiol. 2024; 39(10):1097-1108.

PMID: 39535572 PMC: 11599438. DOI: 10.1007/s10654-024-01173-x.


Empirical Sandwich Variance Estimator for Iterated Conditional Expectation g-Computation.

Zivich P, Ross R, Shook-Sa B, Cole S, Edwards J Stat Med. 2024; 43(29):5562-5572.

PMID: 39489722 PMC: 11701803. DOI: 10.1002/sim.10255.


Causal Inference for Continuous Multiple Time Point Interventions.

Schomaker M, McIlleron H, Denti P, Diaz I Stat Med. 2024; 43(28):5380-5400.

PMID: 39420673 PMC: 11586917. DOI: 10.1002/sim.10246.


Invited Perspective: Opportunities and Obstacles of Longitudinal Data in Pregnancy to Quantify Mechanisms and Understand Etiology.

Goin D, Padula A Environ Health Perspect. 2023; 131(8):81303.

PMID: 37556306 PMC: 10411632. DOI: 10.1289/EHP13230.


References
1.
McClave S, Martindale R, Rice T, Heyland D . Feeding the critically ill patient. Crit Care Med. 2014; 42(12):2600-10. DOI: 10.1097/CCM.0000000000000654. View

2.
Gruber S, van der Laan M . A targeted maximum likelihood estimator of a causal effect on a bounded continuous outcome. Int J Biostat. 2011; 6(1):Article 26. PMC: 3126669. DOI: 10.2202/1557-4679.1260. View

3.
Cain L, Robins J, Lanoy E, Logan R, Costagliola D, Hernan M . When to start treatment? A systematic approach to the comparison of dynamic regimes using observational data. Int J Biostat. 2011; 6(2):Article 18. PMC: 3406513. DOI: 10.2202/1557-4679.1212. View

4.
Murphy S . An experimental design for the development of adaptive treatment strategies. Stat Med. 2004; 24(10):1455-81. DOI: 10.1002/sim.2022. View

5.
Bang H, Robins J . Doubly robust estimation in missing data and causal inference models. Biometrics. 2006; 61(4):962-73. DOI: 10.1111/j.1541-0420.2005.00377.x. View