Errors-in-Variables Modeling of Personalized Treatment-Response Trajectories

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Zhang , G , Ashrafi , R A , Juuti , A , Pietiläinen , K & Marttinen , P 2021 , ' Errors-in-Variables Modeling of Personalized Treatment-Response Trajectories ' , IEEE Journal of Biomedical and Health Informatics , vol. 25 , no. 1 , pp. 201-208 . https://doi.org/10.1109/JBHI.2020.2987323

Title: Errors-in-Variables Modeling of Personalized Treatment-Response Trajectories
Author: Zhang, Guangyi; Ashrafi, Reza A.; Juuti, Anne; Pietiläinen, Kirsi; Marttinen, Pekka
Contributor organization: HUS Abdominal Center
Department of Medicine
Clinicum
Date: 2021-01
Language: eng
Number of pages: 8
Belongs to series: IEEE Journal of Biomedical and Health Informatics
ISSN: 2168-2194
DOI: https://doi.org/10.1109/JBHI.2020.2987323
URI: http://hdl.handle.net/10138/331683
Abstract: Estimating the impact of a treatment on a given response is needed in many biomedical applications. However, methodology is lacking for the case when the response is a continuous temporal curve, treatment covariates suffer extensively from measurement error, and even the exact timing of the treatments is unknown. We introduce a novel method for this challenging scenario. We model personalized treatment-response curves as a combination of parametric response functions, hierarchically sharing information across individuals, and a sparse Gaussian process for the baseline trend. Importantly, our model accounts for errors not only in treatment covariates, but also in treatment timings, a problem arising in practice for example when data on treatments are based on user self-reporting. We validate our model with simulated and real patient data, and show that in a challenging application of estimating the impact of diet on continuous blood glucose measurements, accounting for measurement error significantly improves estimation and prediction accuracy.
Subject: Trajectory
Measurement errors
Mathematical model
Informatics
Market research
Data models
Blood
Treatment-response trajectories
Bayesian methods
errors-in-variables
hierarchical models
Gaussian processes
wearable self-monitoring devices
time-series data
3111 Biomedicine
113 Computer and information sciences
Peer reviewed: Yes
Rights: cc_by
Usage restriction: openAccess
Self-archived version: publishedVersion


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