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Estimating Counterfactual Treatment Outcomes over Time Through Adversarially Balanced Representations

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Identifying when to give treatments to patients and how to select among multiple treatments over time are important medical problems with a few existing solutions. In this paper, we introduce the Counterfactual Recurrent Network (CRN), a novel sequence-to-sequence model that leverages the increasingly available patient observational data to estimate treatment effects over time and answer such medical questions. To handle the bias from time-varying confounders, covariates affecting the treatment assignment policy in the observational data, CRN uses domain adversarial training to build balancing representations of the patient history. At each timestep, CRN constructs a treatment invariant representation which removes the association between patient history and treatment assignments and thus can be reliably used for making counterfactual predictions. On a simulated model of tumour growth, with varying degree of time-dependent confounding, we show how our model achieves lower error in estimating counterfactuals and in choosing the correct treatment and timing of treatment than current state-of-the-art methods.

Ioana Bica, Ahmed M. Alaa, James Jordon, Mihaela van der Schaar• 2020

Related benchmarks

TaskDatasetResultRank
Factual outcome predictionMIMIC-III extract
RMSE9.28
105
Counterfactual Tumor Growth PredictionPK-PD tumor growth simulator (test)
RMSE0.7
80
Counterfactual Outcome EstimationTumor Growth tau=2 synthetic (test)
RMSE4.05
77
Counterfactual outcome predictionMIMIC-III semi-synthetic (N=1000) (test)
RMSE0.42
35
Counterfactual outcome predictionMIMIC-III semi-synthetic (N=2000) (test)
RMSE0.39
35
Counterfactual outcome predictionMIMIC-III semi-synthetic (N=3000) (test)
RMSE0.37
35
Causal Treatment Effect EstimationCancer Treatment Simulation (gamma_c=5, gamma_r=5) (test)
Normalized RMSE2.43
20
Causal Treatment Effect EstimationCancer Treatment Simulation (gamma_c=5, gamma_r=0) (test)
Normalized RMSE1.08
20
Causal Treatment Effect EstimationCancer Treatment Simulation (gamma_c=0, gamma_r=5) (test)
Normalized RMSE1.54
20
Time-series counterfactual estimationSemi-synth
cf MAE0.083
10
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