Litcius/Paper detail

M-estimation for common epidemiological measures: introduction and applied examples

Rachael K. Ross, Paul N. Zivich, Jeffrey S. A. Stringer, Stephen R. Cole

2024International Journal of Epidemiology14 citationsDOIOpen Access PDF

Abstract

M-estimation is a statistical procedure that is particularly advantageous for some comon epidemiological analyses, including approaches to estimate an adjusted marginal risk contrast (i.e. inverse probability weighting and g-computation) and data fusion. In such settings, maximum likelihood variance estimates are not consistent. Thus, epidemiologists often resort to bootstrap to estimate the variance. In contrast, M-estimation allows for consistent variance estimates in these settings without requiring the computational complexity of the bootstrap. In this paper, we introduce M-estimation and provide four illustrative examples of implementation along with software code in multiple languages. M-estimation is a flexible and computationally efficient estimation procedure that is a powerful addition to the epidemiologist's toolbox.

Topics & Concepts

EstimationContrast (vision)WeightingVariance (accounting)StatisticsToolboxComputer scienceComputationAlgorithmEconometricsMathematicsData miningArtificial intelligenceMedicineRadiologyProgramming languageAccountingEconomicsBusinessManagementStatistical Methods and Bayesian InferenceAdvanced Causal Inference TechniquesStatistical Methods and Inference
M-estimation for common epidemiological measures: introduction and applied examples | Litcius