10 research outputs found
When Doubly Robust Methods Meet Machine Learning for Estimating Treatment Effects from Real-World Data: A Comparative Study
Observational cohort studies are increasingly being used for comparative
effectiveness research to assess the safety of therapeutics. Recently, various
doubly robust methods have been proposed for average treatment effect
estimation by combining the treatment model and the outcome model via different
vehicles, such as matching, weighting, and regression. The key advantage of
doubly robust estimators is that they require either the treatment model or the
outcome model to be correctly specified to obtain a consistent estimator of
average treatment effects, and therefore lead to a more accurate and often more
precise inference. However, little work has been done to understand how doubly
robust estimators differ due to their unique strategies of using the treatment
and outcome models and how machine learning techniques can be combined with
these estimators to boost their performance. Also, little has been understood
about the challenges of covariates selection, overlapping of covariate
distribution, and treatment effect heterogeneity on the performance of these
doubly robust estimators. Here we examine multiple popular doubly robust
methods in the categories of matching, weighting, or regression, and compare
their performance using different treatment and outcome modeling via extensive
simulations and a real-world application. We found that incorporating machine
learning with doubly robust estimators such as the targeted maximum likelihood
estimator gives the best overall performance. Practical guidance on how to
apply doubly robust estimators is provided.Comment: 24 pages, 5 figure
Do concomitant pain symptoms in patients with major depression affect quality of life even when taking into account baseline depression severity?
Patients with major depressive disorder (MDD) may suffer from concomitant pain symptoms. The aim of this study is to determine whether the presence of painful physical symptoms (PPS) influences quality of life when taking into account baseline depression severity
Which somatic symptoms are associated with an unfavorable course in Asian patients with major depressive disorder?
To investigate the impact of somatic symptoms on the severity and course of depression in Asian patients treated for an acute episode of major depressive disorder (MDD)