research Performance Evaluation of the Generative Pre-trained Transformer (GPT-4) on the Family Medicine In-Training Examination Read Performance Evaluation of the Generative Pre-trained Transformer (GPT-4) on the Family Medicine In-Training Examination
Phoenix Newsletter - March 2025 President’s Message: ABFM’s Unwavering Commitment to Diplomates and the Specialty Read President’s Message: ABFM’s Unwavering Commitment to Diplomates and the Specialty
A Conversation with Dr. Phillip Wagner “Family Medicine Was All I Ever Wanted to Do” Dr. Phillip Wagner Read “Family Medicine Was All I Ever Wanted to Do”
Home Research Research Library What Complexity Science Predicts About the Potential of Artificial Intelligence/Machine Learning to Improve Primary Care What Complexity Science Predicts About the Potential of Artificial Intelligence/Machine Learning to Improve Primary Care 2024 Author(s) Young, Richard A, Martin, Carmel M, Sturmberg, Joachim P, Hall, Sally, Bazemore, Andrew W, Kakadiaris, Ioannis A, and Lin, Steven Topic(s) Achieving Health System Goals Keyword(s) Physician Experience (Burnout / Satisfaction) Volume Journal of the American Board of Family Medicine Source Journal of the American Board of Family Medicine Primary care physicians are likely both excited and apprehensive at the prospects for artificial intelligence (AI) and machine learning (ML). Complexity science may provide insight into which AI/ML applications will most likely affect primary care in the future. AI/ML has successfully diagnosed some diseases from digital images, helped with administrative tasks such as writing notes in the electronic record by converting voice to text, and organized information from multiple sources within a health care system. AI/ML has less successfully recommended treatments for patients with complicated single diseases such as cancer; or improved diagnosing, patient shared decision making, and treating patients with multiple comorbidities and social determinant challenges. AI/ML has magnified disparities in health equity, and almost nothing is known of the effect of AI/ML on primary care physician-patient relationships. An intervention in Victoria, Australia showed promise where an AI/ML tool was used only as an adjunct to complex medical decision making. Putting these findings in a complex adaptive system framework, AI/ML tools will likely work when its tasks are limited in scope, have clean data that are mostly linear and deterministic, and fit well into existing workflows. AI/ML has rarely improved comprehensive care, especially in primary care settings, where data have a significant number of errors and inconsistencies. Primary care should be intimately involved in AI/ML development, and its tools carefully tested before implementation; and unlike electronic health records, not just assumed that AI/ ML tools will improve primary care work life, quality, safety, and person-centered clinical decision making. Read More ABFM Research Read all 2020 The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care Go to The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care 2011 Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA) Go to Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA) 2020 Burnout Among Family Physicians by Gender and Age Go to Burnout Among Family Physicians by Gender and Age 2018 A State Chapter Perspective on Burnout and Resiliency Go to A State Chapter Perspective on Burnout and Resiliency
Author(s) Young, Richard A, Martin, Carmel M, Sturmberg, Joachim P, Hall, Sally, Bazemore, Andrew W, Kakadiaris, Ioannis A, and Lin, Steven Topic(s) Achieving Health System Goals Keyword(s) Physician Experience (Burnout / Satisfaction) Volume Journal of the American Board of Family Medicine Source Journal of the American Board of Family Medicine
ABFM Research Read all 2020 The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care Go to The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care 2011 Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA) Go to Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA) 2020 Burnout Among Family Physicians by Gender and Age Go to Burnout Among Family Physicians by Gender and Age 2018 A State Chapter Perspective on Burnout and Resiliency Go to A State Chapter Perspective on Burnout and Resiliency
2020 The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care Go to The Dilution of Family Medicine: Waning Numbers of Family Physicians Providing Pediatric Care
2011 Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA) Go to Rewarding family medicine while penalizing comprehensiveness? Primary care payment incentives and health reform: the Patient Protection and Affordable Care Act (PPACA)
2020 Burnout Among Family Physicians by Gender and Age Go to Burnout Among Family Physicians by Gender and Age
2018 A State Chapter Perspective on Burnout and Resiliency Go to A State Chapter Perspective on Burnout and Resiliency