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Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies

Ideally, a patient’s response to medication can be monitored by measuring changes in performance of some activity. In observational studies, however, any detected association between treatment (“on-medication” vs “off-medication”) and the outcome (performance in the activity) might be due to confoun...

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Autores principales: Chaibub Neto, Elias, Perumal, Thanneer M., Pratap, Abhishek, Tediarjo, Aryton, Bot, Brian M., Mangravite, Lara, Omberg, Larsson
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9352058/
https://www.ncbi.nlm.nih.gov/pubmed/35925980
http://dx.doi.org/10.1371/journal.pone.0271766
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author Chaibub Neto, Elias
Perumal, Thanneer M.
Pratap, Abhishek
Tediarjo, Aryton
Bot, Brian M.
Mangravite, Lara
Omberg, Larsson
author_facet Chaibub Neto, Elias
Perumal, Thanneer M.
Pratap, Abhishek
Tediarjo, Aryton
Bot, Brian M.
Mangravite, Lara
Omberg, Larsson
author_sort Chaibub Neto, Elias
collection PubMed
description Ideally, a patient’s response to medication can be monitored by measuring changes in performance of some activity. In observational studies, however, any detected association between treatment (“on-medication” vs “off-medication”) and the outcome (performance in the activity) might be due to confounders. In particular, causal inferences at the personalized level are especially vulnerable to confounding effects that arise in a cyclic fashion. For quick acting medications, effects can be confounded by circadian rhythms and daily routines. Using the time-of-the-day as a surrogate for these confounders and the performance measurements as captured on a smartphone, we propose a personalized statistical approach to disentangle putative treatment and “time-of-the-day” effects, that leverages conditional independence relations spanned by causal graphical models involving the treatment, time-of-the-day, and outcome variables. Our approach is based on conditional independence tests implemented via standard and temporal linear regression models. Using synthetic data, we investigate when and how residual autocorrelation can affect the standard tests, and how time series modeling (namely, ARIMA and robust regression via HAC covariance matrix estimators) can remedy these issues. In particular, our simulations illustrate that when patients perform their activities in a paired fashion, positive autocorrelation can lead to conservative results for the standard regression approach (i.e., lead to deflated true positive detection), whereas negative autocorrelation can lead to anticonservative behavior (i.e., lead to inflated false positive detection). The adoption of time series methods, on the other hand, leads to well controlled type I error rates. We illustrate the application of our methodology with data from a Parkinson’s disease mobile health study.
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spelling pubmed-93520582022-08-05 Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies Chaibub Neto, Elias Perumal, Thanneer M. Pratap, Abhishek Tediarjo, Aryton Bot, Brian M. Mangravite, Lara Omberg, Larsson PLoS One Research Article Ideally, a patient’s response to medication can be monitored by measuring changes in performance of some activity. In observational studies, however, any detected association between treatment (“on-medication” vs “off-medication”) and the outcome (performance in the activity) might be due to confounders. In particular, causal inferences at the personalized level are especially vulnerable to confounding effects that arise in a cyclic fashion. For quick acting medications, effects can be confounded by circadian rhythms and daily routines. Using the time-of-the-day as a surrogate for these confounders and the performance measurements as captured on a smartphone, we propose a personalized statistical approach to disentangle putative treatment and “time-of-the-day” effects, that leverages conditional independence relations spanned by causal graphical models involving the treatment, time-of-the-day, and outcome variables. Our approach is based on conditional independence tests implemented via standard and temporal linear regression models. Using synthetic data, we investigate when and how residual autocorrelation can affect the standard tests, and how time series modeling (namely, ARIMA and robust regression via HAC covariance matrix estimators) can remedy these issues. In particular, our simulations illustrate that when patients perform their activities in a paired fashion, positive autocorrelation can lead to conservative results for the standard regression approach (i.e., lead to deflated true positive detection), whereas negative autocorrelation can lead to anticonservative behavior (i.e., lead to inflated false positive detection). The adoption of time series methods, on the other hand, leads to well controlled type I error rates. We illustrate the application of our methodology with data from a Parkinson’s disease mobile health study. Public Library of Science 2022-08-04 /pmc/articles/PMC9352058/ /pubmed/35925980 http://dx.doi.org/10.1371/journal.pone.0271766 Text en © 2022 Chaibub Neto et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Chaibub Neto, Elias
Perumal, Thanneer M.
Pratap, Abhishek
Tediarjo, Aryton
Bot, Brian M.
Mangravite, Lara
Omberg, Larsson
Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title_full Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title_fullStr Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title_full_unstemmed Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title_short Disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
title_sort disentangling personalized treatment effects from “time-of-the-day” confounding in mobile health studies
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9352058/
https://www.ncbi.nlm.nih.gov/pubmed/35925980
http://dx.doi.org/10.1371/journal.pone.0271766
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