In observational studies, one of the main difficulties consists in the comparison of treat- ment effects. In fact, receiving a treatment is not a “purely random” event, and there could be relevant differences between treatment groups. Propensity score is a popular tool to account for this source of bias. However, its use requires a careful modelization of the dependence relationships of the treatment on the covariates. In this work, we consider a general setting with multiple treatments and discrete multi-valued outcome. We propose to estimate the propensity score by using Bayesian Networks and, based on this, we develop an inferential methodology to evaluate the treatments effect. The performance of the pro- posed approach have been studied through a simulation study with very promising results.

Conti, P., Cugnata, F., Di Serio, C., Mecatti, F., Rancoita, P., Vicard, P. (2024). Treatment effect assessment in observational studies with multi-level treatment and outcome. In F.M. Chelli, M. Ciommi, S. Ingrassia, F. Mariani, M.C. Recchioni (a cura di), SIS 2023, Book of Shirt Papers (pp. 393-398). Springer.

Treatment effect assessment in observational studies with multi-level treatment and outcome

Mecatti, F;
2024

Abstract

In observational studies, one of the main difficulties consists in the comparison of treat- ment effects. In fact, receiving a treatment is not a “purely random” event, and there could be relevant differences between treatment groups. Propensity score is a popular tool to account for this source of bias. However, its use requires a careful modelization of the dependence relationships of the treatment on the covariates. In this work, we consider a general setting with multiple treatments and discrete multi-valued outcome. We propose to estimate the propensity score by using Bayesian Networks and, based on this, we develop an inferential methodology to evaluate the treatments effect. The performance of the pro- posed approach have been studied through a simulation study with very promising results.
Capitolo o saggio
Potential outcomes, propensity score, covariate balance, observational study, Bayesian networks
English
SIS 2023, Book of Shirt Papers
Chelli, FM; Ciommi, M; Ingrassia, S; Mariani, F; Recchioni, MC
2024
9788891935618
Springer
393
398
Conti, P., Cugnata, F., Di Serio, C., Mecatti, F., Rancoita, P., Vicard, P. (2024). Treatment effect assessment in observational studies with multi-level treatment and outcome. In F.M. Chelli, M. Ciommi, S. Ingrassia, F. Mariani, M.C. Recchioni (a cura di), SIS 2023, Book of Shirt Papers (pp. 393-398). Springer.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/475019
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