Application of targeted maximum likelihood estimation in public health and epidemiological studies: a systematic review
Matthew J. Smith, Rachael V. Phillips, Miguel Angel Luque-Fernandez,, Camille Maringe

TL;DR
This systematic review highlights the growing adoption of Targeted Maximum Likelihood Estimation (TMLE) in epidemiology, emphasizing its methodological benefits, geographical spread, and increasing application across disciplines.
Contribution
It provides a comprehensive overview of TMLE applications in epidemiology, illustrating its dissemination, methodological developments, and impact over recent years.
Findings
70% of publications from outside the US by 2022
Wide adoption across 7 epidemiological disciplines
Growth driven by software, tutorials, and methodological advances
Abstract
The Targeted Maximum Likelihood Estimation (TMLE) statistical data analysis framework integrates machine learning, statistical theory, and statistical inference to provide a least biased, efficient and robust strategy for estimation and inference of a variety of statistical and causal parameters. We describe and evaluate the epidemiological applications that have benefited from recent methodological developments. We conducted a systematic literature review in PubMed for articles that applied any form of TMLE in observational studies. We summarised the epidemiological discipline, geographical location, expertise of the authors, and TMLE methods over time. We used the Roadmap of Targeted Learning and Causal Inference to extract key methodological aspects of the publications. We showcase the contributions to the literature of these TMLE results. Of the 81 publications included, 25%…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Health, Environment, Cognitive Aging · Health disparities and outcomes
