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Main Authors: Hess, Konstantin, Feuerriegel, Stefan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.03514
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author Hess, Konstantin
Feuerriegel, Stefan
author_facet Hess, Konstantin
Feuerriegel, Stefan
contents Patient trajectories from electronic health records are widely used to estimate conditional average potential outcomes (CAPOs) of treatments over time, which then allows to personalize care. Yet, existing neural methods for this purpose have a key limitation: while some adjust for time-varying confounding, these methods assume that the time series are recorded in discrete time. In other words, they are constrained to settings where measurements and treatments are conducted at fixed time steps, even though this is unrealistic in medical practice. In this work, we aim to estimate CAPOs in continuous time. The latter is of direct practical relevance because it allows for modeling patient trajectories where measurements and treatments take place at arbitrary, irregular timestamps. We thus propose a new method called stabilized continuous time inverse propensity network (SCIP-Net). For this, we further derive stabilized inverse propensity weights for robust estimation of the CAPOs. To the best of our knowledge, our SCIP-Net is the first neural method that performs proper adjustments for time-varying confounding in continuous time.
format Preprint
id arxiv_https___arxiv_org_abs_2410_03514
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Stabilized Neural Prediction of Potential Outcomes in Continuous Time
Hess, Konstantin
Feuerriegel, Stefan
Machine Learning
Patient trajectories from electronic health records are widely used to estimate conditional average potential outcomes (CAPOs) of treatments over time, which then allows to personalize care. Yet, existing neural methods for this purpose have a key limitation: while some adjust for time-varying confounding, these methods assume that the time series are recorded in discrete time. In other words, they are constrained to settings where measurements and treatments are conducted at fixed time steps, even though this is unrealistic in medical practice. In this work, we aim to estimate CAPOs in continuous time. The latter is of direct practical relevance because it allows for modeling patient trajectories where measurements and treatments take place at arbitrary, irregular timestamps. We thus propose a new method called stabilized continuous time inverse propensity network (SCIP-Net). For this, we further derive stabilized inverse propensity weights for robust estimation of the CAPOs. To the best of our knowledge, our SCIP-Net is the first neural method that performs proper adjustments for time-varying confounding in continuous time.
title Stabilized Neural Prediction of Potential Outcomes in Continuous Time
topic Machine Learning
url https://arxiv.org/abs/2410.03514