Lab News

Brian Rice, MD

Recipient of the AIM-AHEAD Award

Brian Rice, MD, with Tina Hernandez-Boussard, PhD, and the team at the Alaska Native Tribal Health Consortium, and Southcentral Foundation have received a grant from the NIH's Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity (AIM-AHEAD) program. Funding  will support the piloting of AI models within the Tribal health system and the use community-engaged methods to understand implementation barriers for AI in rural Alaska Native communities. This grant is part of larger efforts to develop and implement AI tools using Alaska Native health data to help reduce the emergency care outcome disparities they experience living in remote communities off the road system in rural Alaska.

AI in Education and Mental Health for a Sustainable Future

The National Academies of Science, Engineering, and Medicine have released a high-level summary of key discussions during its May 30, 2024 workshop, "Artificial Intelligence in Education and Mental Health for a Sustainable Future: Proceedings of a Workshop” and Dr. Hernandez-Boussard was one of the invited experts to this workshop. The workshop consisted of two parts: AI in mental health and well-being and AI in education. Participants reviewed AI tools, applications, and strategies in education and mental health and the implications for sustainable development.

Recent Publications

Impact of Race, Ethinicty, and Sex on AI Fairness Model Predicting Glaucoma

Despite advances in artificial intelligence (AI) in glaucoma prediction, most models do not consider biases and fairness regarding sex, race, or ethnicity. Our latest study titled "The Impact of Race, Ethnicity, and Sex on Fairness in Artificial Intelligence for Glaucoma Prediction Models", aims to address this gap by examining the impact of these sensitive attributes on developing fair AI models that predict the need for incisional glaucoma surgery. We found AI models predicting glaucoma surgery progression demonstrated bias related to sex, race, and ethnicity.  The choice to include or exclude sensitive attributes had varying impacts on performance and fairness depending on the test population. Before deploying AI models in healthcare, it’s critical to evaluate fairness in the target population.

Defining and Pursuing Diversity in Human Genetic Studies

In recent years, calls for greater diversity in genetic data have come from multiple sources. While the importance of diverse data is recognized, there has often been ambiguity around what types of diversity matter and how to achieve them. In a commentary published in Nature Genetics in Sept. 2024, Dr. Hernandez-Boussard, and others from The Global Alliance for Genomics and Health (GA4GH), have developed a policy framework that guides researchers on addressing diversity in their data collection and research processes. The framework encourages researchers to focus on how diversity can help achieve specific goals, emphasizing that diversity should be a means to further scientific equity and improve health outcomes. It also stresses that diversity is not necessarily about statistical representativeness, but rather about including necessary variations (genetic, geographical, social) that align with the objectives of the research. Researchers are encouraged to consult bioethics experts and the communities impacted by their work, ensuring that diversity is pursued in a meaningful, ethically guided manner.