Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.
Who will be affected?
Readers: No access to all 28 journals. We recommend accessing our articles via PubMed Central
Authors: No access to the submission form or your user account.
Reviewers: No access to your user account. Please download manuscripts you are reviewing for offline reading before Wednesday, July 01, 2020 at 7:00 PM.
Editors: No access to your user account to assign reviewers or make decisions.
Copyeditors: No access to user account. Please download manuscripts you are copyediting before Wednesday, July 01, 2020 at 7:00 PM.
Barbosa da Silva J Jr, Birminghamm M, Rivière Cinnamond A, Boisson E, Valdez ML, Garcia Saiso S, Souza JP, Marti M, Leah-Marie Richards LM, Guzman J, Nelson J, Pesce K, Haddad AE, Fitzgerald J, Bascolo E, Dagostino M
Bias-Mitigated AI as a Foundation for Resilient and Effective Health Systems
Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.
Bias-Free AI as a Foundation for Resilient and Effective Health Systems
Jarbas Barbosa da Silva Jr;
Maureen Birminghamm;
Ana Rivière Cinnamond;
Eldona Boisson;
Mary Lou Valdez;
Sebastian Garcia Saiso;
Joao Paulo Souza;
Myrna Marti;
Leah-Marie Leah-Marie Richards;
Javier Guzman;
Jennifer Nelson;
Karina Pesce;
Ana Estela Haddad;
James Fitzgerald;
Ernesto Bascolo;
Marcelo Dagostino
ABSTRACT
Artificial intelligence (AI) is rapidly reshaping the landscape of health, from clinical diagnostics and disease surveillance to the prediction of individual health risks. Yet, its immense promise will only materialize if the tools we deploy work for everyone. When algorithms are trained on incomplete or biased datasets, they risk embedding historical health disparities and can replicate patterns of uneven data representation that limit accuracy and generalizability across population groups (1). Addressing algorithmic bias should be treated as a health quality standard, comparable in importance to safety and efficacy evaluations, ensuring consistent performance across all segments of the population. This editorial aims to inform both policymakers and technical experts, offering a framework that bridges scientific rigor with practical, regionally grounded governance models.
Citation
Please cite as:
Barbosa da Silva J Jr, Birminghamm M, Rivière Cinnamond A, Boisson E, Valdez ML, Garcia Saiso S, Souza JP, Marti M, Leah-Marie Richards LM, Guzman J, Nelson J, Pesce K, Haddad AE, Fitzgerald J, Bascolo E, Dagostino M
Bias-Mitigated AI as a Foundation for Resilient and Effective Health Systems