Patient-Preference Diagnostics: Adapting Stated-Preference Methods to Inform Effective Shared Decision Making.
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2022-07-29
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Abstract
Background
While clinical practice guidelines underscore the need to incorporate patient preferences in clinical decision making, incorporating meaningful assessment of patient preferences in clinical encounters is challenging. Structured approaches that combine quantitative patient preferences and clinical evidence could facilitate effective patient-provider communication and more patient-centric health care decisions. Adaptive conjoint or stated-preference approaches can identify individual preference parameters, but they can require a relatively large number of choice questions or simplifying assumptions about the error with which preferences are elicited.Method
We propose an approach to efficiently diagnose preferences of patients for outcomes of treatment alternatives by leveraging prior information on patient preferences to generate adaptive choice questions to identify a patient's proximity to known preference phenotypes. This information can be used for measuring sensitivity and specificity, much like any other diagnostic procedure. We simulated responses with varying levels of choice errors for hypothetical patients with specific preference profiles to measure sensitivity and specificity of a 2-question preference diagnostic.Results
We identified 4 classes representing distinct preference profiles for patients who participated in a previous first-time anterior shoulder dislocation (FTASD) survey. Posterior probabilities of class membership at the end of a 2-question sequence ranged from 87% to 89%. We found that specificity and sensitivity of the 2-question sequences were robust to respondent errors. The questions appeared to have better specificity than sensitivity.Conclusions
Our results suggest that this approach could help diagnose patient preferences for treatments for a condition such as FTASD with acceptable precision using as few as 2 choice questions. Such preference-diagnostic tools could be used to improve and document alignment of treatment choices and patient preferences.Highlights
Approaches that combine patient preferences and clinical evidence can facilitate effective patient-provider communication and more patient-centric healthcare decisions. However, diagnosing individual-level preferences is challenging, and no formal diagnostic tools exist.We propose a structured approach to efficiently diagnose patient preferences based on prior information on the distribution of patient preferences in a population.We generated a 2-question test of preferences for the outcomes associated with the treatment of first-time anterior shoulder dislocation.The diagnosis of preferences can help physicians discuss relevant aspects of the treatment options and proactively address patient concerns during the clinical encounter.Type
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Gonzalez Sepulveda, Juan Marcos, F Reed Johnson, Shelby D Reed, Charles Muiruri, Carolyn A Hutyra and Richard C Mather (2022). Patient-Preference Diagnostics: Adapting Stated-Preference Methods to Inform Effective Shared Decision Making. Medical decision making : an international journal of the Society for Medical Decision Making. p. 272989X221115058. 10.1177/0272989x221115058 Retrieved from https://hdl.handle.net/10161/25550.
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Scholars@Duke
F. Reed Johnson
F. Reed Johnson, PhD, has more than 40 years of academic and research experience in health and environmental economics. He has served on the faculties of several universities in the United States, Canada, and Sweden, and as Distinguished Fellow at Research Triangle Institute. He currently is Senior Research Scholar in the Duke Clinical Research Institute. As a staff member in the US Environmental Protection Agency’s environmental economics research program during the 1980s, Reed helped pioneer the development of basic non-market valuation techniques which are widely used for benefit-cost analysis in health and environmental economics. He has designed and analyzed numerous surveys for measuring preferences for and value of health outcomes, health risk reductions, and improved environmental quality.
Dr. Johnson has over 140 publications in books and peer-reviewed journals. His research has been published in various medical journals, the Review of Economics and Statistics, Journal of Health Economics, Medical Decision Making, Health Economics, Value in Health, Journal of Policy Analysis and Management, and other journals. He has coauthored a book on techniques for using existing environmental and health value estimates for policy analysis.
His current research involves quantifying patients’ willingness to accept sideeffect risks in return for therapeutic benefits and estimating general time equivalences among health states. He led the first FDA sponsored study on patients’ willingness to accept benefit-risk tradeoffs for new health technologies. The study was used to develop recent FDA guidance on submitting patient-preference data to support regulatory reviews of medical devices.
Areas of expertise: Clinical Decision Sciences, Health Measurement, Health Policy, and Health Economics
Shelby Derene Reed
Shelby D. Reed, PhD, is Professor in the Departments of Population Health Sciences and Medicine at Duke University’s School of Medicine. She is the director of the Center for Informing Health Decisions and Therapeutic Area leader for Population Health Sciences at the Duke Clinical Research Institute (DCRI). She also is core faculty at the Duke-Margolis Center for Health Policy. Dr. Reed has over 20 years of experience leading multidisciplinary health outcomes research studies. Dr. Reed has extensive expertise in designing and conducting trial-based and model-based cost-effectiveness analyses of diagnostics, drugs and patient-centered interventions. In 2016, she co-founded the Preference Evaluation Research (PrefER) Group at the DCRI, and she currently serves as its director. She and the group are frequently sought to conduct stated-preference studies to inform regulatory decisions, health policy, care delivery, value assessment and clinical decision making with applied projects spanning a wide range of therapeutic areas. She served as President for ISPOR in 2017-2018, and she currently is Past-Chair of the Society’s Health Science Policy Council.
Areas of expertise: Health Economics, Health Measurement, Stated Preference Research, Health Policy, and Health Services Research
Charles Muiruri
Dr. Muiruri is a health services researcher, Assistant Professor in the Duke Department of Population Health Sciences, Assistant Research Professor in the Global Health Institute, and Adjunct lecturer at the Kilimanjaro Christian Medical University College, Moshi Tanzania.
Broadly, his research seeks to improve the quality of healthcare and reduce disparities for persons with multiple chronic conditions both in and outside the United States. His current work focuses on prevention of nonAIDS comorbidities among people living with HIV. His current projects funded by NIAID, NHLBI and NIMHD focus on improving the quality of cardiovascular disease prevention and care among people living with HIV in North Carolina and Tanzania.
Areas of Expertise: Mixed methods, Qualitative methods, Applied Econometrics in Health services Research, Preference research, Implementation Science, Global Health, Health Policy
Richard Charles Mather
Richard C. “Chad” Mather III MD, MBA is an assistant professor and vice chairman of practice innovation in the Department of Orthopaedic Surgery at Duke University School of Medicine. He is also a faculty member at the Duke Clinical Research Institute. Dr. Mather is a health services researcher and decision scientist with a focus on economic analysis, health policy, health preference measurement and personalized decision-making. His current work focuses on building tools for healthcare consumerism by facilitating measurement and communication of individual patient preferences in treatment decisions. Additionally, he has great interest in health innovation, particularly in developing new care and payment models to foster different incentives and practice approaches. He was a health policy fellow with the American Academy of Orthopaedic Surgeons and the Arthroscopy Association of North America. Dr. Mather received an undergraduate degree in economics from Miami University and a medical doctorate and masters in business administration from Duke, where he also completed residency training in orthopaedic surgery. He completed a sports medicine fellowship at Rush University Medical Center. His clinical practice focuses on hip arthroscopy including both FAI and extra-articular hip endoscopy. Specifically to the hip in addition to health service research applications he conducts translational research on biomarkers and hip instability.
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