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1.
JMIR AI ; 2: e52888, 2023 Dec 06.
Artículo en Inglés | MEDLINE | ID: mdl-38875540

RESUMEN

BACKGROUND: Artificial intelligence (AI) and machine learning (ML) technology design and development continues to be rapid, despite major limitations in its current form as a practice and discipline to address all sociohumanitarian issues and complexities. From these limitations emerges an imperative to strengthen AI and ML literacy in underserved communities and build a more diverse AI and ML design and development workforce engaged in health research. OBJECTIVE: AI and ML has the potential to account for and assess a variety of factors that contribute to health and disease and to improve prevention, diagnosis, and therapy. Here, we describe recent activities within the Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity (AIM-AHEAD) Ethics and Equity Workgroup (EEWG) that led to the development of deliverables that will help put ethics and fairness at the forefront of AI and ML applications to build equity in biomedical research, education, and health care. METHODS: The AIM-AHEAD EEWG was created in 2021 with 3 cochairs and 51 members in year 1 and 2 cochairs and ~40 members in year 2. Members in both years included AIM-AHEAD principal investigators, coinvestigators, leadership fellows, and research fellows. The EEWG used a modified Delphi approach using polling, ranking, and other exercises to facilitate discussions around tangible steps, key terms, and definitions needed to ensure that ethics and fairness are at the forefront of AI and ML applications to build equity in biomedical research, education, and health care. RESULTS: The EEWG developed a set of ethics and equity principles, a glossary, and an interview guide. The ethics and equity principles comprise 5 core principles, each with subparts, which articulate best practices for working with stakeholders from historically and presently underrepresented communities. The glossary contains 12 terms and definitions, with particular emphasis on optimal development, refinement, and implementation of AI and ML in health equity research. To accompany the glossary, the EEWG developed a concept relationship diagram that describes the logical flow of and relationship between the definitional concepts. Lastly, the interview guide provides questions that can be used or adapted to garner stakeholder and community perspectives on the principles and glossary. CONCLUSIONS: Ongoing engagement is needed around our principles and glossary to identify and predict potential limitations in their uses in AI and ML research settings, especially for institutions with limited resources. This requires time, careful consideration, and honest discussions around what classifies an engagement incentive as meaningful to support and sustain their full engagement. By slowing down to meet historically and presently underresourced institutions and communities where they are and where they are capable of engaging and competing, there is higher potential to achieve needed diversity, ethics, and equity in AI and ML implementation in health research.

2.
Health Aff (Millwood) ; 30(2): 266-73, 2011 Feb.
Artículo en Inglés | MEDLINE | ID: mdl-21289348

RESUMEN

Electronic personal health records could become important tools for patients to use in managing and monitoring their health information and communicating with clinicians. With the emergence of new products and federal incentives that might indirectly encourage greater use of personal health records, policy makers should understand the views of physicians on using these records. In a national survey of physicians in 2008-09, we found that although 64 percent have never used a patient's electronic personal health record, 42 percent would be willing to try. Strikingly, rural physicians expressed much more willingness to use such records compared to urban or suburban physicians. Female physicians were significantly less willing to use these tools than their male peers (34 percent versus 46 percent). Physicians broadly have concerns about the impact on patients' privacy, the accuracy of underlying data, their potential liability for tracking all of the information that might be entered into a personal health record, and the lack of payment to clinicians for using or reviewing these patient records.


Asunto(s)
Actitud hacia los Computadores , Registros Electrónicos de Salud/estadística & datos numéricos , Medicina , Médicos/psicología , Ubicación de la Práctica Profesional , Servicios de Salud Rural/estadística & datos numéricos , Servicios Urbanos de Salud/estadística & datos numéricos , Adulto , Confidencialidad/psicología , Femenino , Encuestas de Atención de la Salud , Humanos , Responsabilidad Legal , Masculino , Médicos/estadística & datos numéricos , Factores Sexuales , Estados Unidos
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