Can supervised deep learning architecture outperform autoencoders in building propensity score models for matching?
BMC Med Res Methodol
; 24(1): 167, 2024 Aug 02.
Article
in En
| MEDLINE
| ID: mdl-39095707
ABSTRACT
PURPOSE:
Propensity score matching is vital in epidemiological studies using observational data, yet its estimates relies on correct model-specification. This study assesses supervised deep learning models and unsupervised autoencoders for propensity score estimation, comparing them with traditional methods for bias and variance accuracy in treatment effect estimations.METHODS:
Utilizing a plasmode simulation based on the Right Heart Catheterization dataset, under a variety of settings, we evaluated (1) a supervised deep learning architecture and (2) an unsupervised autoencoder, alongside two traditionalmethods:
logistic regression and a spline-based method in estimating propensity scores for matching. Performance metrics included bias, standard errors, and coverage probability. The analysis was also extended to real-world data, with estimates compared to those obtained via a double robust approach.RESULTS:
The analysis revealed that supervised deep learning models outperformed unsupervised autoencoders in variance estimation while maintaining comparable levels of bias. These results were supported by analyses of real-world data, where the supervised model's estimates closely matched those derived from conventional methods. Additionally, deep learning models performed well compared to traditional methods in settings where exposure was rare.CONCLUSION:
Supervised deep learning models hold promise in refining propensity score estimations in epidemiological research, offering nuanced confounder adjustment, especially in complex datasets. We endorse integrating supervised deep learning into epidemiological research and share reproducible codes for widespread use and methodological transparency.Key words
Full text:
1
Collection:
01-internacional
Database:
MEDLINE
Main subject:
Propensity Score
/
Deep Learning
Limits:
Humans
Language:
En
Journal:
BMC Med Res Methodol
Journal subject:
MEDICINA
Year:
2024
Document type:
Article
Affiliation country:
Country of publication: