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Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them

Critical care, like many healthcare areas, is under a dual assault from significantly increasing demographic and economic pressures. Intensive care unit (ICU) patients are highly variable in response to treatment, and increasingly aging populations mean ICUs are under increasing demand and their coh...

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Autores principales: Chase, J. Geoffrey, Preiser, Jean-Charles, Dickson, Jennifer L., Pironet, Antoine, Chiew, Yeong Shiong, Pretty, Christopher G., Shaw, Geoffrey M., Benyo, Balazs, Moeller, Knut, Safaei, Soroush, Tawhai, Merryn, Hunter, Peter, Desaive, Thomas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5819676/
https://www.ncbi.nlm.nih.gov/pubmed/29463246
http://dx.doi.org/10.1186/s12938-018-0455-y
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author Chase, J. Geoffrey
Preiser, Jean-Charles
Dickson, Jennifer L.
Pironet, Antoine
Chiew, Yeong Shiong
Pretty, Christopher G.
Shaw, Geoffrey M.
Benyo, Balazs
Moeller, Knut
Safaei, Soroush
Tawhai, Merryn
Hunter, Peter
Desaive, Thomas
author_facet Chase, J. Geoffrey
Preiser, Jean-Charles
Dickson, Jennifer L.
Pironet, Antoine
Chiew, Yeong Shiong
Pretty, Christopher G.
Shaw, Geoffrey M.
Benyo, Balazs
Moeller, Knut
Safaei, Soroush
Tawhai, Merryn
Hunter, Peter
Desaive, Thomas
author_sort Chase, J. Geoffrey
collection PubMed
description Critical care, like many healthcare areas, is under a dual assault from significantly increasing demographic and economic pressures. Intensive care unit (ICU) patients are highly variable in response to treatment, and increasingly aging populations mean ICUs are under increasing demand and their cohorts are increasingly ill. Equally, patient expectations are growing, while the economic ability to deliver care to all is declining. Better, more productive care is thus the big challenge. One means to that end is personalised care designed to manage the significant inter- and intra-patient variability that makes the ICU patient difficult. Thus, moving from current “one size fits all” protocolised care to adaptive, model-based “one method fits all” personalised care could deliver the required step change in the quality, and simultaneously the productivity and cost, of care. Computer models of human physiology are a unique tool to personalise care, as they can couple clinical data with mathematical methods to create subject-specific models and virtual patients to design new, personalised and more optimal protocols, as well as to guide care in real-time. They rely on identifying time varying patient-specific parameters in the model that capture inter- and intra-patient variability, the difference between patients and the evolution of patient condition. Properly validated, virtual patients represent the real patients, and can be used in silico to test different protocols or interventions, or in real-time to guide care. Hence, the underlying models and methods create the foundation for next generation care, as well as a tool for safely and rapidly developing personalised treatment protocols over large virtual cohorts using virtual trials. This review examines the models and methods used to create virtual patients. Specifically, it presents the models types and structures used and the data required. It then covers how to validate the resulting virtual patients and trials, and how these virtual trials can help design and optimise clinical trial. Links between these models and higher order, more complex physiome models are also discussed. In each section, it explores the progress reported up to date, especially on core ICU therapies in glycemic, circulatory and mechanical ventilation management, where high cost and frequency of occurrence provide a significant opportunity for model-based methods to have measurable clinical and economic impact. The outcomes are readily generalised to other areas of medical care.
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spelling pubmed-58196762018-02-26 Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them Chase, J. Geoffrey Preiser, Jean-Charles Dickson, Jennifer L. Pironet, Antoine Chiew, Yeong Shiong Pretty, Christopher G. Shaw, Geoffrey M. Benyo, Balazs Moeller, Knut Safaei, Soroush Tawhai, Merryn Hunter, Peter Desaive, Thomas Biomed Eng Online Review Critical care, like many healthcare areas, is under a dual assault from significantly increasing demographic and economic pressures. Intensive care unit (ICU) patients are highly variable in response to treatment, and increasingly aging populations mean ICUs are under increasing demand and their cohorts are increasingly ill. Equally, patient expectations are growing, while the economic ability to deliver care to all is declining. Better, more productive care is thus the big challenge. One means to that end is personalised care designed to manage the significant inter- and intra-patient variability that makes the ICU patient difficult. Thus, moving from current “one size fits all” protocolised care to adaptive, model-based “one method fits all” personalised care could deliver the required step change in the quality, and simultaneously the productivity and cost, of care. Computer models of human physiology are a unique tool to personalise care, as they can couple clinical data with mathematical methods to create subject-specific models and virtual patients to design new, personalised and more optimal protocols, as well as to guide care in real-time. They rely on identifying time varying patient-specific parameters in the model that capture inter- and intra-patient variability, the difference between patients and the evolution of patient condition. Properly validated, virtual patients represent the real patients, and can be used in silico to test different protocols or interventions, or in real-time to guide care. Hence, the underlying models and methods create the foundation for next generation care, as well as a tool for safely and rapidly developing personalised treatment protocols over large virtual cohorts using virtual trials. This review examines the models and methods used to create virtual patients. Specifically, it presents the models types and structures used and the data required. It then covers how to validate the resulting virtual patients and trials, and how these virtual trials can help design and optimise clinical trial. Links between these models and higher order, more complex physiome models are also discussed. In each section, it explores the progress reported up to date, especially on core ICU therapies in glycemic, circulatory and mechanical ventilation management, where high cost and frequency of occurrence provide a significant opportunity for model-based methods to have measurable clinical and economic impact. The outcomes are readily generalised to other areas of medical care. BioMed Central 2018-02-20 /pmc/articles/PMC5819676/ /pubmed/29463246 http://dx.doi.org/10.1186/s12938-018-0455-y Text en © The Author(s) 2018 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Review
Chase, J. Geoffrey
Preiser, Jean-Charles
Dickson, Jennifer L.
Pironet, Antoine
Chiew, Yeong Shiong
Pretty, Christopher G.
Shaw, Geoffrey M.
Benyo, Balazs
Moeller, Knut
Safaei, Soroush
Tawhai, Merryn
Hunter, Peter
Desaive, Thomas
Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title_full Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title_fullStr Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title_full_unstemmed Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title_short Next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
title_sort next-generation, personalised, model-based critical care medicine: a state-of-the art review of in silico virtual patient models, methods, and cohorts, and how to validation them
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5819676/
https://www.ncbi.nlm.nih.gov/pubmed/29463246
http://dx.doi.org/10.1186/s12938-018-0455-y
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