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Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions

The development of mobile-health technology has the potential to revolutionize personalized medicine. Biomedical sensors (e.g., wearables) can assist with determining treatment plans for individuals, provide quantitative information to healthcare providers, and give objective measurements of health,...

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Autores principales: Liu, Jason, Spakowicz, Daniel J., Ash, Garrett I., Hoyd, Rebecca, Ahluwalia, Rohan, Zhang, Andrew, Lou, Shaoke, Lee, Donghoon, Zhang, Jing, Presley, Carolyn, Greene, Ann, Stults-Kolehmainen, Matthew, Nally, Laura M., Baker, Julien S., Fucito, Lisa M., Weinzimer, Stuart A., Papachristos, Andrew V., Gerstein, Mark
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8412351/
https://www.ncbi.nlm.nih.gov/pubmed/34424894
http://dx.doi.org/10.1371/journal.pcbi.1009303
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author Liu, Jason
Spakowicz, Daniel J.
Ash, Garrett I.
Hoyd, Rebecca
Ahluwalia, Rohan
Zhang, Andrew
Lou, Shaoke
Lee, Donghoon
Zhang, Jing
Presley, Carolyn
Greene, Ann
Stults-Kolehmainen, Matthew
Nally, Laura M.
Baker, Julien S.
Fucito, Lisa M.
Weinzimer, Stuart A.
Papachristos, Andrew V.
Gerstein, Mark
author_facet Liu, Jason
Spakowicz, Daniel J.
Ash, Garrett I.
Hoyd, Rebecca
Ahluwalia, Rohan
Zhang, Andrew
Lou, Shaoke
Lee, Donghoon
Zhang, Jing
Presley, Carolyn
Greene, Ann
Stults-Kolehmainen, Matthew
Nally, Laura M.
Baker, Julien S.
Fucito, Lisa M.
Weinzimer, Stuart A.
Papachristos, Andrew V.
Gerstein, Mark
author_sort Liu, Jason
collection PubMed
description The development of mobile-health technology has the potential to revolutionize personalized medicine. Biomedical sensors (e.g., wearables) can assist with determining treatment plans for individuals, provide quantitative information to healthcare providers, and give objective measurements of health, leading to the goal of precise phenotypic correlates for genotypes. Even though treatments and interventions are becoming more specific and datasets more abundant, measuring the causal impact of health interventions requires careful considerations of complex covariate structures, as well as knowledge of the temporal and spatial properties of the data. Thus, interpreting biomedical sensor data needs to make use of specialized statistical models. Here, we show how the Bayesian structural time series framework, widely used in economics, can be applied to these data. This framework corrects for covariates to provide accurate assessments of the significance of interventions. Furthermore, it allows for a time-dependent confidence interval of impact, which is useful for considering individualized assessments of intervention efficacy. We provide a customized biomedical adaptor tool, MhealthCI, around a specific implementation of the Bayesian structural time series framework that uniformly processes, prepares, and registers diverse biomedical data. We apply the software implementation of MhealthCI to a structured set of examples in biomedicine to showcase the ability of the framework to evaluate interventions with varying levels of data richness and covariate complexity and also compare the performance to other models. Specifically, we show how the framework is able to evaluate an exercise intervention’s effect on stabilizing blood glucose in a diabetes dataset. We also provide a future-anticipating illustration from a behavioral dataset showcasing how the framework integrates complex spatial covariates. Overall, we show the robustness of the Bayesian structural time series framework when applied to biomedical sensor data, highlighting its increasing value for current and future datasets.
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spelling pubmed-84123512021-09-03 Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions Liu, Jason Spakowicz, Daniel J. Ash, Garrett I. Hoyd, Rebecca Ahluwalia, Rohan Zhang, Andrew Lou, Shaoke Lee, Donghoon Zhang, Jing Presley, Carolyn Greene, Ann Stults-Kolehmainen, Matthew Nally, Laura M. Baker, Julien S. Fucito, Lisa M. Weinzimer, Stuart A. Papachristos, Andrew V. Gerstein, Mark PLoS Comput Biol Research Article The development of mobile-health technology has the potential to revolutionize personalized medicine. Biomedical sensors (e.g., wearables) can assist with determining treatment plans for individuals, provide quantitative information to healthcare providers, and give objective measurements of health, leading to the goal of precise phenotypic correlates for genotypes. Even though treatments and interventions are becoming more specific and datasets more abundant, measuring the causal impact of health interventions requires careful considerations of complex covariate structures, as well as knowledge of the temporal and spatial properties of the data. Thus, interpreting biomedical sensor data needs to make use of specialized statistical models. Here, we show how the Bayesian structural time series framework, widely used in economics, can be applied to these data. This framework corrects for covariates to provide accurate assessments of the significance of interventions. Furthermore, it allows for a time-dependent confidence interval of impact, which is useful for considering individualized assessments of intervention efficacy. We provide a customized biomedical adaptor tool, MhealthCI, around a specific implementation of the Bayesian structural time series framework that uniformly processes, prepares, and registers diverse biomedical data. We apply the software implementation of MhealthCI to a structured set of examples in biomedicine to showcase the ability of the framework to evaluate interventions with varying levels of data richness and covariate complexity and also compare the performance to other models. Specifically, we show how the framework is able to evaluate an exercise intervention’s effect on stabilizing blood glucose in a diabetes dataset. We also provide a future-anticipating illustration from a behavioral dataset showcasing how the framework integrates complex spatial covariates. Overall, we show the robustness of the Bayesian structural time series framework when applied to biomedical sensor data, highlighting its increasing value for current and future datasets. Public Library of Science 2021-08-23 /pmc/articles/PMC8412351/ /pubmed/34424894 http://dx.doi.org/10.1371/journal.pcbi.1009303 Text en © 2021 Liu 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
Liu, Jason
Spakowicz, Daniel J.
Ash, Garrett I.
Hoyd, Rebecca
Ahluwalia, Rohan
Zhang, Andrew
Lou, Shaoke
Lee, Donghoon
Zhang, Jing
Presley, Carolyn
Greene, Ann
Stults-Kolehmainen, Matthew
Nally, Laura M.
Baker, Julien S.
Fucito, Lisa M.
Weinzimer, Stuart A.
Papachristos, Andrew V.
Gerstein, Mark
Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title_full Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title_fullStr Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title_full_unstemmed Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title_short Bayesian structural time series for biomedical sensor data: A flexible modeling framework for evaluating interventions
title_sort bayesian structural time series for biomedical sensor data: a flexible modeling framework for evaluating interventions
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8412351/
https://www.ncbi.nlm.nih.gov/pubmed/34424894
http://dx.doi.org/10.1371/journal.pcbi.1009303
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