Publication:
Using longitudinal targeted maximum likelihood estimation in complex settings with dynamic interventions.

dc.contributor.authorSchomaker, M
dc.contributor.authorLuque-Fernandez, M A
dc.contributor.authorLeroy, V
dc.contributor.authorDavies, M A
dc.date.accessioned2023-01-25T13:39:47Z
dc.date.available2023-01-25T13:39:47Z
dc.date.issued2019-08-22
dc.description.abstractLongitudinal targeted maximum likelihood estimation (LTMLE) has very rarely been used to estimate dynamic treatment effects in the context of time-dependent confounding affected by prior treatment when faced with long follow-up times, multiple time-varying confounders, and complex associational relationships simultaneously. Reasons for this include the potential computational burden, technical challenges, restricted modeling options for long follow-up times, and limited practical guidance in the literature. However, LTMLE has desirable asymptotic properties, ie, it is doubly robust, and can yield valid inference when used in conjunction with machine learning. It also has the advantage of easy-to-calculate analytic standard errors in contrast to the g-formula, which requires bootstrapping. We use a topical and sophisticated question from HIV treatment research to show that LTMLE can be used successfully in complex realistic settings, and we compare results to competing estimators. Our example illustrates the following practical challenges common to many epidemiological studies: (1) long follow-up time (30 months); (2) gradually declining sample size; (3) limited support for some intervention rules of interest; (4) a high-dimensional set of potential adjustment variables, increasing both the need and the challenge of integrating appropriate machine learning methods; and (5) consideration of collider bias. Our analyses, as well as simulations, shed new light on the application of LTMLE in complex and realistic settings: We show that (1) LTMLE can yield stable and good estimates, even when confronted with small samples and limited modeling options; (2) machine learning utilized with a small set of simple learners (if more complex ones cannot be fitted) can outperform a single, complex model, which is tailored to incorporate prior clinical knowledge; and (3) performance can vary considerably depending on interventions and their support in the data, and therefore critical quality checks should accompany every LTMLE analysis. We provide guidance for the practical application of LTMLE.
dc.identifier.citationSchomaker M, Luque-Fernandez MA, Leroy V, Davies MA. Using longitudinal targeted maximum likelihood estimation in complex settings with dynamic interventions. Stat Med. 2019 Oct 30;38(24):4888-4911. doi: 10.1002/sim.8340.
dc.identifier.doi10.1002/sim.8340
dc.identifier.essn1097-0258
dc.identifier.pmcPMC6800798
dc.identifier.pmid31436859
dc.identifier.pubmedURLhttps://www.ncbi.nlm.nih.gov/pmc/articles/PMC6800798/pdf
dc.identifier.unpaywallURLhttps://researchonline.lshtm.ac.uk/id/eprint/4646698/7/1802.05005v9.pdf
dc.identifier.urihttp://hdl.handle.net/10668/14428
dc.issue.number24
dc.journal.titleStatistics in medicine
dc.journal.titleabbreviationStat Med
dc.language.isoen
dc.organizationEscuela Andaluza de Salud Pública-EASP
dc.organizationInstituto de Investigación Biosanitaria de Granada (ibs.GRANADA)
dc.page.number4888-4911
dc.provenanceRealizada la curación de contenido 14/08/2024
dc.publisherNature Publishing Group
dc.pubmedtypeJournal Article
dc.relation.publisherversionhttps://www.ncbi.nlm.nih.gov/pmc/articles/pmid/31436859/
dc.rights.accessRightsRestricted Access
dc.subjectHIV treatment
dc.subjectTMLE
dc.subjectcausal inference
dc.subjectg-methods
dc.subject.decsCausalidad
dc.subject.decsFactores de confusión
dc.subject.decsEpidemiológicos
dc.subject.decsFunciones de verosimilitud
dc.subject.decsFármacos anti-VIH
dc.subject.decsHumanos
dc.subject.decsInfecciones por VIH
dc.subject.decsNiño
dc.subject.decsSimulación por computador
dc.subject.decsTamaño de la muestra
dc.subject.meshAnti-HIV Agents
dc.subject.meshCausality
dc.subject.meshChild
dc.subject.meshComputer Simulation
dc.subject.meshConfounding Factors, Epidemiologic
dc.subject.meshHIV Infections
dc.subject.meshHumans
dc.subject.meshLikelihood Functions
dc.subject.meshSample Size
dc.titleUsing longitudinal targeted maximum likelihood estimation in complex settings with dynamic interventions.
dc.typeresearch article
dc.type.hasVersionAM
dc.volume.number38
dspace.entity.typePublication

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