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Credible practice of modeling and simulation in healthcare: ten rules from a multidisciplinary perspectiveThe complexities of modern biomedicine are rapidly increasing. Thus, modeling and simulation have become increasingly important as a strategy to understand and predict the trajectory of pathophysiology, disease genesis, and disease spread in support of clinical and policy decisions. In such cases, inappropriate or ill-placed trust in the model and simulation outcomes may result in negative outcomes, and hence illustrate the need to formalize the execution and communication of modeling and simulation practices. Although verification and validation have been generally accepted as significant components of a model’s credibility, they cannot be assumed to equate to a holistic credible practice, which includes activities that can impact comprehension and in-depth examination inherent in the devel-opment and reuse of the models. For the past several years, the Committee on Credible Practice of Modeling and Simulation in Healthcare, an interdisciplinary group seeded from a U.S. interagency initiative, has worked to codify best practices. Here, we provide Ten Rules for credible practice of modeling and simulation in healthcare developed from a comparative analysis by the Committee’s multidisciplinary membership, followed by a large stakeholder com-munity survey. These rules establish a unified conceptual framework for modeling and simulation design, implementation, evaluation, dissemination and usage across the modeling and simulation life-cycle. While biomedical science and clinical care domains have somewhat different requirements and expectations for credible practice, our study converged on rules that would be useful across a broad swath of model types. In brief, the rules are: (1) Define context clearly. (2) Use contextually appropriate data. (3) Evaluate within context. (4) List limitations explicitly. (5) Use version control. (6) Document appropriately. (7) Disseminate broadly. (8) Get independent reviews. (9) Test competing imple-mentations. (10) Conform to standards. Although some of these are common sense guidelines, we have found that many are often missed or misconstrued, even by seasoned practitioners. Computational models are already widely used in basic science to generate new biomedical knowledge. As they penetrate clinical care and healthcare policy, contributing to personalized and precision medicine, clinical safety will require established guidelines for the credible practice of modeling and simulation in healthcare.
Document ID
20205008688
Acquisition Source
Glenn Research Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Ahmet Erdemir ORCID
(Cleveland Clinic Cleveland, Ohio, United States)
Lealem Mulugeta ORCID
(InSilico Labs LLC Houston, Texas)
Joy P. Ku ORCID
(Stanford University Stanford, California, United States)
Andrew Drach ORCID
(The University of Texas at Austin Austin, Texas, United States)
Marc Horner ORCID
(Ansys (United States) Canonsburg, Pennsylvania, United States)
Tina Morrison ORCID
(United States Food and Drug Administration Silver Spring, Maryland, United States)
Grace C. Y. Peng ORCID
(National Institute of Biomedical Imaging and Bioengineering Bethesda, Maryland, United States)
Rajanikanth Vadigepalli ORCID
(Thomas Jefferson University Philadelphia, Pennsylvania, United States)
William W. Lytton ORCID
(Kings County Hospital Center Brooklyn, New York, United States)
Jerry G Myers ORCID
(Glenn Research Center Cleveland, Ohio, United States)
Date Acquired
October 14, 2020
Publication Date
September 29, 2020
Publication Information
Publication: Journal of Translational Medicine
Publisher: BioMed Central Ltd (BMC)
Volume: 18
Issue: 369
Issue Publication Date: January 1, 2020
ISSN: 1479-5876
Subject Category
Life Sciences (General)
Funding Number(s)
WBS: 836404.01.02.10
CONTRACT_GRANT: R01EB009643
CONTRACT_GRANT: R01GM104139
CONTRACT_GRANT: R01EB024573
CONTRACT_GRANT: P2C HD065690
CONTRACT_GRANT: R01GM12444301
CONTRACT_GRANT: U54EB020405
CONTRACT_GRANT: U01HL133360
CONTRACT_GRANT: U01EB023224
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
Single Expert
Keywords
Credibility
Simulation
Healthcare
Verification
Validation
Computational modeling
Computer modeling
Reliability
Reproducibility