Literature DB >> 31742333

Machine learning in the estimation of causal effects: targeted minimum loss-based estimation and double/debiased machine learning.

Iván Díaz1.   

Abstract

In recent decades, the fields of statistical and machine learning have seen a revolution in the development of data-adaptive regression methods that have optimal performance under flexible, sometimes minimal, assumptions on the true regression functions. These developments have impacted all areas of applied and theoretical statistics and have allowed data analysts to avoid the biases incurred under the pervasive practice of parametric model misspecification. In this commentary, I discuss issues around the use of data-adaptive regression in estimation of causal inference parameters. To ground ideas, I focus on two estimation approaches with roots in semi-parametric estimation theory: targeted minimum loss-based estimation (TMLE; van der Laan and Rubin, 2006) and double/debiased machine learning (DML; Chernozhukov and others, 2018). This commentary is not comprehensive, the literature on these topics is rich, and there are many subtleties and developments which I do not address. These two frameworks represent only a small fraction of an increasingly large number of methods for causal inference using machine learning. To my knowledge, they are the only methods grounded in statistical semi-parametric theory that also allow unrestricted use of data-adaptive regression techniques.
© The Author 2019. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Keywords:  Causal inference; Double/debiased machine learning; Machine learning; Targeted minimum loss-based estimation

Mesh:

Year:  2020        PMID: 31742333     DOI: 10.1093/biostatistics/kxz042

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  7 in total

1.  On the Convergence of Epidemiology, Biostatistics, and Data Science.

Authors:  Neal D Goldstein; Michael T LeVasseur; Leslie A McClure
Journal:  Harv Data Sci Rev       Date:  2020-04-30

2.  Thirteen Questions About Using Machine Learning in Causal Research (You Won't Believe the Answer to Number 10!).

Authors:  Stephen J Mooney; Alexander P Keil; Daniel J Westreich
Journal:  Am J Epidemiol       Date:  2021-08-01       Impact factor: 4.897

Review 3.  Applications of Machine Learning to the Problem of Antimicrobial Resistance: an Emerging Model for Translational Research.

Authors:  Melis N Anahtar; Jason H Yang; Sanjat Kanjilal
Journal:  J Clin Microbiol       Date:  2021-06-18       Impact factor: 5.948

4.  AIPW: An R Package for Augmented Inverse Probability-Weighted Estimation of Average Causal Effects.

Authors:  Yongqi Zhong; Edward H Kennedy; Lisa M Bodnar; Ashley I Naimi
Journal:  Am J Epidemiol       Date:  2021-12-01       Impact factor: 5.363

5.  G-computation and machine learning for estimating the causal effects of binary exposure statuses on binary outcomes.

Authors:  Florent Le Borgne; Arthur Chatton; Maxime Léger; Rémi Lenain; Yohann Foucher
Journal:  Sci Rep       Date:  2021-01-14       Impact factor: 4.379

6.  Screening of antibacterial compounds with novel structure from the FDA approved drugs using machine learning methods.

Authors:  Wen-Xing Li; Xin Tong; Peng-Peng Yang; Yang Zheng; Ji-Hao Liang; Gong-Hua Li; Dahai Liu; Dao-Gang Guan; Shao-Xing Dai
Journal:  Aging (Albany NY)       Date:  2022-02-12       Impact factor: 5.682

7.  Estimating the effect of donor sex on red blood cell transfused patient mortality: A retrospective cohort study using a targeted learning and emulated trials-based approach.

Authors:  Peter Bruun-Rasmussen; Per Kragh Andersen; Karina Banasik; Søren Brunak; Pär Ingemar Johansson
Journal:  EClinicalMedicine       Date:  2022-08-27
  7 in total

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