Epidemiology analysis package
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Updated
May 7, 2023 - Python
Epidemiology analysis package
Variable importance through targeted causal inference, with Alan Hubbard
Streamlined Estimation for Static, Dynamic and Stochastic Treatment Regimes in Longitudinal Data
SuperLearner guide: fitting models, ensembling, prediction, hyperparameters, parallelization, timing, feature selection, etc.
Targeted Learning for Survival Analysis
Nonparametric estimators of the average treatment effect with doubly-robust confidence intervals and hypothesis tests
R functions for project setup, data cleaning, machine learning, SuperLearner, parallelization, and targeted learning.
A pure Julia implementation of the Targeted Minimum Loss-based Estimation
Doubly-Robust and Efficient Estimators for Survival and Ordinal Outcomes in RCTs Without Proportional Hazards or Odds Assumptions 💊
R/medltmle: Estimation and Inference for Natural Mediation Effect in Longitudinal Data
Targeted Learning entry in the Atlantic Causal Inference Conference's 2017 competition
Targeted maximum likelihood estimation (TMLE) enables the integration of machine learning approaches in comparative effectiveness studies. It is a doubly robust method, making use of both the outcome model and propensity score model to generate an unbiased estimate as long as at least one of the models is correctly specified.
Transporting intervention effects from one population to another with targeted learning
Collaborative Targeted Maximum Likelihood Estimation
Estimation and Inference for Context-Specific Causal Average Treatment Effect and Optimal Individualized Treatment Effect with Single Time Series
Tutorials illustrating the use of baseline information to conduct more efficient randomized trials
The R package trajmsm is based on the paper Marginal Structural Models with Latent Class Growth Analysis of Treatment Trajectories: https://doi.org/10.48550/arXiv.2105.12720.
Code for "Adaptive Selection of the Optimal Strategy to Improve Precision and Power in Randomized Trials"
Estimators of cross-validated prediction metrics with improved small sample performance
R/tstmle01: Estimation and Inference for Marginal Causal Effect with Single Binary Time Series
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