Other Name
Sponsor Type
Federal
Country
United States
Grant Types
Fellowship/Scholarship/Dissertation Research Project Training/Course
 Contact Info
No contact information yet.
Last modified on 2024-10-03 20:39:46
Description
About AIM-AHEAD The National Institutes of Health’s Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity (AIM-AHEAD) program has established mutually beneficial, coordinated, and trusted partnerships to enhance the participation and representation of researchers and communities currently underrepresented in the development of artificial intelligence and machine learning (AI/ML) models and to improve the capabilities of this emerging technology, beginning with electronic health records (EHR) and extending to other diverse data to address health disparities and inequities. The rapid increase in the volume of data generated through electronic health records (EHR) and other biomedical research presents exciting opportunities for developing data science approaches (e.g., AI/ML methods) for biomedical research and improving healthcare. Many challenges hinder more widespread use of AI/ML technologies, such as the cost, capability for widespread application, and access to appropriate infrastructure, resources, and training. Additionally, lack of diversity of both data and researchers in the AI/ML field runs the risk of creating and perpetuating harmful biases in its practice, algorithms, and outcomes, thus fostering continued health disparities and inequities. Many underrepresented communities, which are often disproportionately affected by diseases and health conditions, have the potential to contribute expertise, data, diverse recruitment strategies, and cutting-edge science, and to inform the field on the most urgent research questions, but may lack financial, infrastructural, and data science training capacity to apply AI/ML approaches to research questions of interest to them. This program seeks to enhance trust within the communities impacted by this program. [National Institutes of Health](https://datascience.nih.gov/artificial-intelligence/aim-ahead) is committed to leveraging the potential of AI/ML to accelerate the pace of biomedical innovation, while prioritizing and addressing health disparities and inequities. Tackling the complex drivers of health disparities and inequities requires an innovative and transdisciplinary framework that transcends scientific and organizational silos. Mutually beneficial and trusted partnerships can be established to enhance the participation and representation of researchers and communities currently underrepresented in AI/ML modelling and application, and improve the capabilities of data curation and this emerging technology. The AIM-AHEAD Coordinating Center is a consortium of institutions and organizations that have a core mission to serve minorities and other underrepresented groups impacted by health disparities. The AIM-AHEAD Coordinating Center consists of four Cores: Leadership Core, Data Science Training Core, Data and Research Core and Infrastructure Core - Learn more about each Core using the links below.
Sponsor Relationship

  Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity is a part of:


  No sponsors in our database are part of Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity.

Most Recent Grants from This Sponsor
The AIM-AHEAD *All of Us* Training Program is intended to increase researcher diversity in AI/ML...
Added on 2024-11-18T07:37:11Z
**Program Description** The application of artificial intelligence and machine learning (AI/ML)...
Added on 2024-11-08T02:04:01Z
**Issued by** Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and...
Added on 2024-06-12T04:37:41Z
**About AIM-AHEAD** The AIM-AHEAD coordinating center was established to enhance diversity in...
Added on 2024-06-03T04:04:50Z
Deadline Approaching Grants
No grants from this sponsor have deadline within a month period.