Linked Sensitivity Analysis, Calibration, and Uncertainty Analysis Using a System Dynamics Model for Stroke Comparative Effectiveness Research.

dc.contributor.author

Tian, Yuan

dc.contributor.author

Hassmiller Lich, Kristen

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Osgood, Nathaniel D

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Eom, Kirsten

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Matchar, David B

dc.date.accessioned

2021-05-05T07:50:32Z

dc.date.available

2021-05-05T07:50:32Z

dc.date.issued

2016-11

dc.date.updated

2021-05-05T07:50:22Z

dc.description.abstract

Background

As health services researchers and decision makers tackle more difficult problems using simulation models, the number of parameters and the corresponding degree of uncertainty have increased. This often results in reduced confidence in such complex models to guide decision making.

Objective

To demonstrate a systematic approach of linked sensitivity analysis, calibration, and uncertainty analysis to improve confidence in complex models.

Methods

Four techniques were integrated and applied to a System Dynamics stroke model of US veterans, which was developed to inform systemwide intervention and research planning: Morris method (sensitivity analysis), multistart Powell hill-climbing algorithm and generalized likelihood uncertainty estimation (calibration), and Monte Carlo simulation (uncertainty analysis).

Results

Of 60 uncertain parameters, sensitivity analysis identified 29 needing calibration, 7 that did not need calibration but significantly influenced key stroke outcomes, and 24 not influential to calibration or stroke outcomes that were fixed at their best guess values. One thousand alternative well-calibrated baselines were obtained to reflect calibration uncertainty and brought into uncertainty analysis. The initial stroke incidence rate among veterans was identified as the most influential uncertain parameter, for which further data should be collected. That said, accounting for current uncertainty, the analysis of 15 distinct prevention and treatment interventions provided a robust conclusion that hypertension control for all veterans would yield the largest gain in quality-adjusted life years.

Conclusions

For complex health care models, a mixed approach was applied to examine the uncertainty surrounding key stroke outcomes and the robustness of conclusions. We demonstrate that this rigorous approach can be practical and advocate for such analysis to promote understanding of the limits of certainty in applying models to current decisions and to guide future data collection.
dc.identifier

0272989X16643940

dc.identifier.issn

0272-989X

dc.identifier.issn

1552-681X

dc.identifier.uri

https://hdl.handle.net/10161/22814

dc.language

eng

dc.publisher

SAGE Publications

dc.relation.ispartof

Medical decision making : an international journal of the Society for Medical Decision Making

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10.1177/0272989x16643940

dc.subject

Humans

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Monte Carlo Method

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Probability

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Uncertainty

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Decision Making

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Quality-Adjusted Life Years

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Models, Theoretical

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United States Department of Veterans Affairs

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Computer Simulation

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United States

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Stroke

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Comparative Effectiveness Research

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Clinical Decision-Making

dc.title

Linked Sensitivity Analysis, Calibration, and Uncertainty Analysis Using a System Dynamics Model for Stroke Comparative Effectiveness Research.

dc.type

Journal article

duke.contributor.orcid

Matchar, David B|0000-0003-3020-2108

pubs.begin-page

1043

pubs.end-page

1057

pubs.issue

8

pubs.organisational-group

School of Medicine

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Duke Clinical Research Institute

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Duke Global Health Institute

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Pathology

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Medicine, General Internal Medicine

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Duke

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Institutes and Centers

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University Institutes and Centers

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Institutes and Provost's Academic Units

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Clinical Science Departments

pubs.organisational-group

Medicine

pubs.publication-status

Published

pubs.volume

36

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