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| Name | Class |
|---|---|
| CE Outcomes | UNKNOWN |
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This study will test the quality of physician care decisions using a patient-simulation based measurement and feedback approach that combines multiple-choice care decisions with real-time, personalized scoring and feedback. The study will also measure the impact of gaming-inspired competition and motivation, including a weekly leaderboard, to improve evidence-based care decisions. In addition, the study the test the impact of CME and MOC credits on participant engagement in the process.
Primary care providers (PCPs) make many of the most important care decisions, especially for patients with chronic conditions and multiple co-morbidities. Studies have confirmed that unwarranted variation is common among PCPs, with high level of variation in care documented between urban and rural practices, across regions, and even among providers within a single healthcare system.
The investigators' previous work has shown that patient simulations can rapidly and reliably measure unwarranted practice variation among providers. In addition, published work shows that patient simulations, when administered serially and combined with customized feedback on improvement opportunities can reduce practice variation and improve performance on patient-level quality measures. Given the large scope of unwarranted variation in medical practice, there is a need for scalable approaches to measure care decisions, provide feedback on improvement opportunities and benchmark performance to peers.
This study seeks to evaluate the impact of measurement, feedback and competition on evidence-based care decisions made by primary care providers across the country. It is a randomized, controlled trial with multiple measurements across key domains of clinical care. All participants are asked to care for simulated patients designed to look like typical patients seen in a primary care practice. In each case, providers will answer multiple-choice questions about their preferred course of action to work-up, diagnose and treat patients in the primary care setting. After each question, providers will receive evidence-based feedback, including references, on the appropriateness of each of their care decisions. Feedback will be supported with relevant reference to evidence-based guidelines, including national MIPS quality measures.
All participants will receive the following interventions:
Half of the recruits will be offered Category I CME credit approved by The University of California, San Francisco School of Medicine (UCSF) which has been accredited by the Accreditation Council of Continuing Medical Education to provide CME for physicians and MOC points in the ABIM's MOC program.
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| Label | Type | Description | Intervention Names |
|---|---|---|---|
| Control | Active Comparator | The Control arm will be asked to care for online, Quality IQ patient simulations and will receive feedback based on their care decisions made in each case. The feedback will identify correct care, unneeded care, or gaps in care and recommend or reinforce evidence-based care decisions and includes references. This arm will not be offered Continuing Medical Education (CME) or American Board of Internal Medicine (ABIM) Part II Maintenance of Certification (MOC) credits for their participation. |
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| CME | Experimental | The CME arm will be asked to care for online, Quality IQ patient simulations and will receive feedback based on their care decisions made in each case. The feedback will identify correct care, unneeded care, or gaps in care and recommend or reinforce evidence-based care decisions and includes references. This arm will be offered Continuing Medical Education (CME) and American Board of Internal Medicine (ABIM) Part II Maintenance of Certification (MOC) credits for their participation. |
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| Name | Type | Description | Arm Group Labels | Other Names |
|---|---|---|---|---|
| Continuing Medical Education | Other | CME or ABIM MOC credits |
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| Measure | Description | Time Frame |
|---|---|---|
| Change in the percentage of evidence-based diagnostic and treatment decisions made in the simulations. | In each case, participants will answer multiple-choice questions about their preferred course of action to work-up, diagnose and treat patients in the primary care setting. Each question has specific evidence-based scoring criteria identifying necessary and unnecessary care decisions. Each provider will get a score for each case, ranging from 0 to 100 percentage based on the care decisions they make in the case. Over the course of the project, the investigators will track the percentage of correct, evidence-based care decisions made by participants, with the hypothesis that serial measurement and feedback on evidence-based care decisions will lead to increases in appropriate decisions over time. Higher scores represent a better outcome. | 3 months |
| Measure | Description | Time Frame |
|---|---|---|
| Change in MIPS-relevant care decisions made in the patient simulations | As described in the primary outcome measure, the investigators will track the percentage of evidence-based care decisions made by participants in the patient simulations. A subset of these care decisions tie directly to quality measures tracked by Medicare through the Merit-based Incentive Payment System (MIPS). For this outcome measure, the investigators will track changes in the percentage of MIPS-relevant work-up and treatment decisions made in the patient simulations. Higher scores represent a better outcome. |
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Inclusion Criteria:
Exclusion Criteria:
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| Name | Affiliation | Role |
|---|---|---|
| John Peabody, MD, PhD | QURE Healthcare | Principal Investigator |
| Facility | Status | City | State | ZIP | Country | Contacts |
|---|---|---|---|---|---|---|
| QURE Healthcare | San Francisco | California | 94109 | United States |
| PubMed Identifier | Type | Citation | Retractions |
|---|---|---|---|
| 30328782 | Background | Burgon TB, Cox-Chapman J, Czarnecki C, Kropp R, Guerriere R, Paculdo D, Peabody JW. Engaging Primary Care Providers to Reduce Unwanted Clinical Variation and Support ACO Cost and Quality Goals: A Unique Provider-Payer Collaboration. Popul Health Manag. 2019 Aug;22(4):321-329. doi: 10.1089/pop.2018.0111. Epub 2018 Oct 17. | |
| 26376210 |
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No individual participant data will be shared with other researchers. Analysis will be conducted at the aggregate group level.
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| ID | Term |
|---|---|
| D003920 | Diabetes Mellitus |
| D006973 | Hypertension |
| D003863 | Depression |
| D010003 | Osteoarthritis |
| D001249 | Asthma |
| D010146 | Pain |
| D006333 | Heart Failure |
| ID | Term |
|---|---|
| D044882 | Glucose Metabolism Disorders |
| D008659 | Metabolic Diseases |
| D009750 | Nutritional and Metabolic Diseases |
| D004700 | Endocrine System Diseases |
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The study will enroll practicing PCPs in the US. Once eligibility is determined and providers are enrolled in the study, they will be randomized into one of two arms:
All providers will then care for 1 Quality IQ patient simulation each week over the course of 6-8 weeks.
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The Control arm, who are not offered CME or ABIM MOC credits for their participation, will be unaware of the interventional CME arm. The CME arm will also be unaware of the Control arm. Per recommendations from the IRB, all participants at the end of the study will receive a study debrief letter informing them of the other study arms.
| Quality IQ Patient Simulations | Other | Online patient cases designed to simulate typical patients seen in a primary care practice. In each case, providers will answer multiple-choice questions about their preferred course of action to work-up, diagnose and treat patients in the primary care setting. After each question, providers will receive evidence-based feedback, including references, on the appropriateness of each of their care decisions. Feedback will be supported with relevant reference to evidence-based guidelines, including national MIPS quality measures. Cases will cover clinical conditions aligned with MIPS measures that are commonly seen in the primary care setting including: diabetes, hypertension, depression, osteoarthritis, asthma and pain control. |
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| 3 months |
| Change in ordering of unneeded work-up tests made in the patient simulations | As described in the primary outcome measure, the investigators will track the percentage of evidence-based care decisions made by participants in the patient simulations. A subset of these care decisions tie to ordering of unneeded laboratory and imaging testing that is not supported by the evidence-based guidelines. For this outcome measure, the investigators will track changes in the frequency with which unneeded tests are ordered in the patient simulations. Higher scores represent a better outcome. | 3 months |
| Participant case completion rate | The investigators will track the percentage of enrolled participants who stay engaged in the study and complete at least 75% of their patient simulation cases. | 3 months |
| Participant Satisfaction | Investigators will measure participant satisfaction as measured by post-evaluation survey. On a scale of 1 to 5 (with 5 being the highest), participants will be asked about the overall quality of the material, the relevance to their practice and the educational content. Higher scores represent a better outcome. | 3 months |
| Impact of available CME and ABIM MOC on recruitment rate | Operating under the hypothesis that physicians offered CME and MOC credits are more likely to participate in a quality improvement program like this, the investigators will track the rate at which a randomized group of primary care physicians enroll in the program when offered CME and MOC credit and compare that to a group that is not offered CME and MOC credit for their participation. | 3 months |
| Impact of available CME and ABIM MOC on retention rate | Operating under the hypothesis that physicians offered CME and MOC credits are more likely to continue participating in a quality improvement program, the investigators will track the rate at which a primary care physicians eligible to earn CME and MOC credit complete the full 8 week project and compare that to a group that is not offered CME and MOC credit. | 3 months |
| Weigel PA, Ullrich F, Shane DM, Mueller KJ. Variation in Primary Care Service Patterns by Rural-Urban Location. J Rural Health. 2016 Spring;32(2):196-203. doi: 10.1111/jrh.12146. Epub 2015 Sep 16. |
| 10755498 | Background | Peabody JW, Luck J, Glassman P, Dresselhaus TR, Lee M. Comparison of vignettes, standardized patients, and chart abstraction: a prospective validation study of 3 methods for measuring quality. JAMA. 2000 Apr 5;283(13):1715-22. doi: 10.1001/jama.283.13.1715. |
| 15545677 | Background | Peabody JW, Luck J, Glassman P, Jain S, Hansen J, Spell M, Lee M. Measuring the quality of physician practice by using clinical vignettes: a prospective validation study. Ann Intern Med. 2004 Nov 16;141(10):771-80. doi: 10.7326/0003-4819-141-10-200411160-00008. |
| 34941547 | Derived | Burgon T, Casebeer L, Aasen H, Valdenor C, Tamondong-Lachica D, de Belen E, Paculdo D, Peabody J. Measuring and Improving Evidence-Based Patient Care Using a Web-Based Gamified Approach in Primary Care (QualityIQ): Randomized Controlled Trial. J Med Internet Res. 2021 Dec 23;23(12):e31042. doi: 10.2196/31042. |
| D014652 | Vascular Diseases |
| D002318 | Cardiovascular Diseases |
| D001526 | Behavioral Symptoms |
| D001519 | Behavior |
| D001168 | Arthritis |
| D007592 | Joint Diseases |
| D009140 | Musculoskeletal Diseases |
| D012216 | Rheumatic Diseases |
| D001982 | Bronchial Diseases |
| D012140 | Respiratory Tract Diseases |
| D008173 | Lung Diseases, Obstructive |
| D008171 | Lung Diseases |
| D012130 | Respiratory Hypersensitivity |
| D006969 | Hypersensitivity, Immediate |
| D006967 | Hypersensitivity |
| D007154 | Immune System Diseases |
| D009461 | Neurologic Manifestations |
| D012816 | Signs and Symptoms |
| D013568 | Pathological Conditions, Signs and Symptoms |
| D006331 | Heart Diseases |