资源论文Forecasting Treatment Responses Over Time Using Recurrent Marginal Structural Networks

Forecasting Treatment Responses Over Time Using Recurrent Marginal Structural Networks

2020-02-14 | |  118 |   43 |   0

Abstract

 Electronic health records provide a rich source of data for machine learning methods to learn dynamic treatment responses over time. However, any direct estimation is hampered by the presence of time-dependent confounding, where actions taken are dependent on time-varying variables related to the outcome of interest. Drawing inspiration from marginal structural models, a class of methods in epidemiology which use propensity weighting to adjust for time-dependent confounders, we introduce the Recurrent Marginal Structural Network a sequence-to-sequence architecture for forecasting a patient’s expected response to a series of planned treatments. Using simulations of a state-of-the-art pharmacokinetic-pharmacodynamic (PK-PD) model of tumor growth [12], we demonstrate the ability of our network to accurately learn unbiased treatment responses from observational data – even under changes in the policy of treatment assignments – and performance gains over benchmarks.

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