Individualized Multi-Treatment Response Curves Estimation using RBF-net with Shared Neurons
- URL: http://arxiv.org/abs/2401.16571v5
- Date: Fri, 18 Oct 2024 15:11:15 GMT
- Title: Individualized Multi-Treatment Response Curves Estimation using RBF-net with Shared Neurons
- Authors: Peter Chang, Arkaprava Roy,
- Abstract summary: Our non-parametric modeling of the response curves relies on radial basis function (RBF)-nets with shared hidden neurons.
Applying our proposed method to MIMIC data, we obtain several interesting findings related to the impact of different treatment strategies on the length of ICU stay and 12-hour SOFA score for sepsis patients who are home-discharged.
- Score: 1.1119247609126184
- License:
- Abstract: Heterogeneous treatment effect estimation is an important problem in precision medicine. Specific interests lie in identifying the differential effect of different treatments based on some external covariates. We propose a novel non-parametric treatment effect estimation method in a multi-treatment setting. Our non-parametric modeling of the response curves relies on radial basis function (RBF)-nets with shared hidden neurons. Our model thus facilitates modeling commonality among the treatment outcomes. The estimation and inference schemes are developed under a Bayesian framework using thresholded best linear projections and implemented via an efficient Markov chain Monte Carlo algorithm, appropriately accommodating uncertainty in all aspects of the analysis. The numerical performance of the method is demonstrated through simulation experiments. Applying our proposed method to MIMIC data, we obtain several interesting findings related to the impact of different treatment strategies on the length of ICU stay and 12-hour SOFA score for sepsis patients who are home-discharged.
Related papers
- Disentangled Representation via Variational AutoEncoder for Continuous Treatment Effect Estimation [1.105274635981989]
We propose a novel Dose-Response curve estimator via Variational AutoEncoder (DRVAE)
We show that our model outperforms the current state-of-the-art methods.
arXiv Detail & Related papers (2024-06-04T13:41:07Z) - Uncertainty Quantification in Heterogeneous Treatment Effect Estimation
with Gaussian-Process-Based Partially Linear Model [2.1212179660694104]
Estimating heterogeneous treatment effects across individuals has attracted growing attention as a statistical tool for performing critical decision-making.
We propose a Bayesian inference framework that quantifies the uncertainty in treatment effect estimation to support decision-making in a relatively small sample size setting.
arXiv Detail & Related papers (2023-12-16T12:42:28Z) - Comparison of Methods that Combine Multiple Randomized Trials to
Estimate Heterogeneous Treatment Effects [0.1398098625978622]
Leveraging multiple randomized controlled trials allows for the combination of datasets with unconfounded treatment assignment.
This paper discusses several non-parametric approaches for estimating heterogeneous treatment effects using data from multiple trials.
arXiv Detail & Related papers (2023-03-28T20:43:00Z) - TCFimt: Temporal Counterfactual Forecasting from Individual Multiple
Treatment Perspective [50.675845725806724]
We propose a comprehensive framework of temporal counterfactual forecasting from an individual multiple treatment perspective (TCFimt)
TCFimt constructs adversarial tasks in a seq2seq framework to alleviate selection and time-varying bias and designs a contrastive learning-based block to decouple a mixed treatment effect into separated main treatment effects and causal interactions.
The proposed method shows satisfactory performance in predicting future outcomes with specific treatments and in choosing optimal treatment type and timing than state-of-the-art methods.
arXiv Detail & Related papers (2022-12-17T15:01:05Z) - Benchmarking Heterogeneous Treatment Effect Models through the Lens of
Interpretability [82.29775890542967]
Estimating personalized effects of treatments is a complex, yet pervasive problem.
Recent developments in the machine learning literature on heterogeneous treatment effect estimation gave rise to many sophisticated, but opaque, tools.
We use post-hoc feature importance methods to identify features that influence the model's predictions.
arXiv Detail & Related papers (2022-06-16T17:59:05Z) - Scalable Intervention Target Estimation in Linear Models [52.60799340056917]
Current approaches to causal structure learning either work with known intervention targets or use hypothesis testing to discover the unknown intervention targets.
This paper proposes a scalable and efficient algorithm that consistently identifies all intervention targets.
The proposed algorithm can be used to also update a given observational Markov equivalence class into the interventional Markov equivalence class.
arXiv Detail & Related papers (2021-11-15T03:16:56Z) - SurvITE: Learning Heterogeneous Treatment Effects from Time-to-Event
Data [83.50281440043241]
We study the problem of inferring heterogeneous treatment effects from time-to-event data.
We propose a novel deep learning method for treatment-specific hazard estimation based on balancing representations.
arXiv Detail & Related papers (2021-10-26T20:13:17Z) - Efficient Causal Inference from Combined Observational and
Interventional Data through Causal Reductions [68.6505592770171]
Unobserved confounding is one of the main challenges when estimating causal effects.
We propose a novel causal reduction method that replaces an arbitrary number of possibly high-dimensional latent confounders.
We propose a learning algorithm to estimate the parameterized reduced model jointly from observational and interventional data.
arXiv Detail & Related papers (2021-03-08T14:29:07Z) - Estimating heterogeneous survival treatment effect in observational data
using machine learning [9.951103976634407]
Methods for estimating heterogeneous treatment effect in observational data have largely focused on continuous or binary outcomes.
Using flexible machine learning methods in the counterfactual framework is a promising approach to address challenges due to complex individual characteristics.
arXiv Detail & Related papers (2020-08-17T01:02:14Z) - Prediction of Thrombectomy Functional Outcomes using Multimodal Data [2.358784542343728]
We propose a novel deep learning approach to directly exploit multimodal data to estimate the success of endovascular treatment.
We incorporate an attention mechanism in our architecture to model global feature inter-dependencies, both channel-wise and spatially.
arXiv Detail & Related papers (2020-05-26T21:51:58Z) - Generalization Bounds and Representation Learning for Estimation of
Potential Outcomes and Causal Effects [61.03579766573421]
We study estimation of individual-level causal effects, such as a single patient's response to alternative medication.
We devise representation learning algorithms that minimize our bound, by regularizing the representation's induced treatment group distance.
We extend these algorithms to simultaneously learn a weighted representation to further reduce treatment group distances.
arXiv Detail & Related papers (2020-01-21T10:16:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.