Quantifying Benefit–Risk Preferences for Medical Interventions: An Overview of a Growing Empirical Literature

Decisions regarding the development, regulation, sale, and utilization of pharmaceutical and medical interventions require an evaluation of the balance between benefits and risks. Such evaluations are subject to two fundamental challenges—measuring the clinical effectiveness and harms associated with the treatment, and determining the relative importance of these different types of outcomes. In some ways, determining the willingness to accept treatment-related risks in exchange for treatment benefits is the greater challenge because it involves the individual subjective judgments of many decision makers, and these decision makers may draw different conclusions about the optimal balance between benefits and risks. In response to increasing demand for benefit–risk evaluations, researchers have applied a variety of existing welfare-theoretic preference methods for quantifying the tradeoffs decision makers are willing to accept among expected clinical benefits and risks. The methods used to elicit benefit–risk preferences have evolved from different theoretical backgrounds. To provide some structure to the literature that accommodates the range of approaches, we begin by describing a welfare-theoretic conceptual framework underlying the measurement of benefit–risk preferences in pharmaceutical and medical treatment decisions. We then review the major benefit–risk preference-elicitation methods in the empirical literature and provide a brief overview of the studies using each of these methods. The benefit–risk preference methods described in this overview fall into two broad categories: direct-elicitation methods and conjoint analysis. Rating scales (6 studies), threshold techniques (9 studies), and standard gamble (2 studies) are examples of direct elicitation methods. Conjoint analysis studies are categorized by the question format used in the study, including ranking (1 study), graded pairs (1 study), and discrete choice (21 studies). The number of studies reviewed here demonstrates that this body of research already is substantial, and it appears that the number of benefit–risk preference studies in the literature will continue to increase. In addition, benefit–risk preference-elicitation methods have been applied to a variety of healthcare decisions and medical interventions, including pharmaceuticals, medical devices, surgical and medical procedures, and diagnostics, as well as resource-allocation decisions such as facility placement. While preference-elicitation approaches may differ across studies, all of the studies described in this review can be used to provide quantitative measures of the tradeoffs patients and other decision makers are willing to make between benefits and risks of medical interventions. Eliciting and quantifying the preferences of decision makers allows for a formal, evidence-based consideration of decision-makers’ values that currently is lacking in regulatory decision making. Future research in this area should focus on two primary issues—developing best-practice standards for preference-elicitation studies and developing methods for combining stated preferences and clinical data in a manner that is both understandable and useful to regulatory agencies.

[1]  R. Simes,et al.  Patient preferences for adjuvant chemotherapy of early breast cancer: how much benefit is needed? , 2001, Journal of the National Cancer Institute. Monographs.

[2]  L. Lynd,et al.  An Evaluation of Patients' Willingness to Trade Symptom-Free Days for Asthma-Related Treatment Risks: A Discrete Choice Experiment , 2008, The Journal of asthma : official journal of the Association for the Care of Asthma.

[3]  W. Holden,et al.  Benefit-Risk Analysis , 2003, Drug safety.

[4]  R F Nease,et al.  Patient preferences for location of care: implications for regionalization. , 1999, Medical care.

[5]  Larry D Lynd,et al.  Advances in risk-benefit evaluation using probabilistic simulation methods: an application to the prophylaxis of deep vein thrombosis. , 2004, Journal of clinical epidemiology.

[6]  M. Ryan,et al.  Does One Size Fit All? Investigating Heterogeneity in Men’s Preferences for Benign Prostatic Hyperplasia Treatment Using Mixed Logit Analysis , 2009, Medical decision making : an international journal of the Society for Medical Decision Making.

[7]  Mark J Sculpher,et al.  Using the incremental net benefit framework for quantitative benefit-risk analysis in regulatory decision-making--a case study of alosetron in irritable bowel syndrome. , 2010, Value in health : the journal of the International Society for Pharmacoeconomics and Outcomes Research.

[8]  Michael Gough,et al.  Readings in Risk , 2013 .

[9]  F Reed Johnson,et al.  Crohn's disease patients' risk-benefit preferences: serious adverse event risks versus treatment efficacy. , 2007, Gastroenterology.

[10]  L. Lynd,et al.  Quantifying women's stated benefit-risk trade-off preferences for IBS treatment outcomes. , 2010, Value in health : the journal of the International Society for Pharmacoeconomics and Outcomes Research.

[11]  F. Reed Johnson,et al.  Multiple sclerosis patients—benefit-risk preferences: Serious adverse event risks versus treatment efficacy , 2009, Journal of Neurology.

[12]  J. Kopec,et al.  Pain relief in osteoarthritis: patients' willingness to risk medication-induced gastrointestinal, cardiovascular, and cerebrovascular complications. , 2007, The Journal of rheumatology.

[13]  Dick R. Wittink,et al.  Understanding Patient Preferences for the Treatment of Lupus Nephritis With Adaptive Conjoint Analysis , 2001, Medical care.

[14]  F. Johnson,et al.  Patients' Benefit-Risk Preferences for Chronic Idiopathic Thrombocytopenic Purpura Therapies , 2010, The Annals of pharmacotherapy.

[15]  T. Pullar,et al.  The risk of treatment. A study of rheumatoid arthritis patients' attitudes. , 1998, British journal of rheumatology.

[16]  S. Sen,et al.  How Do Physicians Weigh Benefits and Risks Associated with Treatments in Patients with Osteoarthritis in the United Kingdom? , 2012, The Journal of Rheumatology.

[17]  D. Smith,et al.  Investigation of Risk Acceptance in Hand Transplantation , 2007 .

[18]  A Calin,et al.  Willingness to accept risk in the treatment of rheumatic disease. , 1990, Journal of epidemiology and community health.

[19]  M. Mckee,et al.  Do Clinicians Always Maximize Patient Outcomes? A Conjoint Analysis of Preferences for Carotid Artery Testing , 2008, Journal of health services research & policy.

[20]  M. Neary,et al.  Patient Benefit-Risk Preferences for Targeted Agents in the Treatment of Renal Cell Carcinoma , 2011, PharmacoEconomics.

[21]  M S Thompson,et al.  Willingness to pay and accept risks to cure chronic disease. , 1986, American journal of public health.

[22]  F Reed Johnson,et al.  Are Adult Patients More Tolerant of Treatment Risks Than Parents of Juvenile Patients? , 2009, Risk Analysis.

[23]  A. Diver Investigation of risk acceptance in facial transplantation. , 2007, Plastic and reconstructive surgery.

[24]  F. Johnson,et al.  Are Gastroenterologists Less Tolerant of Treatment Risks than Patients? Benefit-Risk Preferences in Crohn's Disease Management , 2010, Journal of managed care pharmacy : JMCP.

[25]  Howard Fillit,et al.  Older Americans' Risk-benefit Preferences for Modifying the Course of Alzheimer Disease , 2009, Alzheimer disease and associated disorders.

[26]  F. Johnson,et al.  Eliciting Benefit–Risk Preferences and Probability-Weighted Utility Using Choice-Format Conjoint Analysis , 2011, Medical decision making : an international journal of the Society for Medical Decision Making.

[27]  T. Marteau,et al.  A comparison of Australian and UK obstetricians' and midwives' preferences for screening tests for Down syndrome , 2006, Prenatal diagnosis.

[28]  A. Hauber,et al.  Patients rank toxicity against progression free survival in second-line treatment of advanced renal cell carcinoma , 2012, Journal of medical economics.

[29]  J. Ward,et al.  Evidence‐based consumer choice: a case study in colorectal cancer screening , 2003, Australian and New Zealand journal of public health.

[30]  C. Naylor,et al.  In the queue for total joint replacement: patients' perspectives on waiting times. Ontario Hip and Knee Replacement Project Team. , 1998, Journal of evaluation in clinical practice.

[31]  A. Tversky,et al.  Choices, Values, and Frames , 2000 .

[32]  F Reed Johnson,et al.  Women's willingness to accept perceived risks for vasomotor symptom relief. , 2007, Journal of women's health.

[33]  M. Buxton,et al.  Patients' preferences for characteristics associated with treatments for osteoarthritis. , 2003, Rheumatology.

[34]  F. Johnson,et al.  Physicians’ stated trade-off preferences for chronic hepatitis B treatment outcomes in Germany, France, Spain, Turkey, and Italy , 2012, European journal of gastroenterology & hepatology.

[35]  T. Öberg,et al.  Conjoint analysis , 2008, Environmental science and pollution research international.

[36]  F Reed Johnson,et al.  Benefits, risk, and uncertainty: preferences of antiretroviral-naïve African Americans for HIV treatments. , 2009, AIDS patient care and STDs.

[37]  R. D'Agostino,et al.  Primary Prevention Drug Therapy: Can It Meet Patients’ Requirements for Reduced Risk? , 2002, Medical decision making : an international journal of the Society for Medical Decision Making.

[38]  C. Naylor,et al.  Breast cancer patients' attitudes about rationing postlumpectomy radiation therapy: applicability of trade-off methods to policy-making. , 1997, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.

[39]  C D Naylor,et al.  Using a Trade-off Technique to Assess Patients' Treatment Preferences for Benign Prostatic Hyperplasia , 1996, Medical decision making : an international journal of the Society for Medical Decision Making.

[40]  L. Fraenkel,et al.  Patient willingness to take teriparatide. , 2007, Patient education and counseling.

[41]  J. Ratcliffe,et al.  PATIENTS' PREFERENCES REGARDING THE PROCESS AND OUTCOMES OF LIFE-SAVING TECHNOLOGY , 1999, International Journal of Technology Assessment in Health Care.

[42]  J. Banis,et al.  Risk Acceptance in Laryngeal Transplantation , 2006, The Laryngoscope.

[43]  R. Bremnes,et al.  Cancer patients, doctors and nurses vary in their willingness to undertake cancer chemotherapy. , 1995, European journal of cancer.

[44]  J. Kopec,et al.  Probabilistic threshold technique showed that patients' preferences for specific trade-offs between pain relief and each side effect of treatment in osteoarthritis varied. , 2007, Journal of clinical epidemiology.

[45]  John F P Bridges,et al.  Patients' preferences for treatment outcomes for advanced non-small cell lung cancer: a conjoint analysis. , 2012, Lung cancer.

[46]  C. Dirksen,et al.  Patients’ preferences for osteoporosis drug treatment: a discrete-choice experiment , 2014, Arthritis Research & Therapy.

[47]  J. Cox,et al.  Differences between perspectives of physicians and patients on anticoagulation in patients with atrial fibrillation: observational study. , 2001, BMJ : British Medical Journal.