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The AIM-AHEAD Research Fellowship Program: Improving Health Research with AI/ML for all Americans.
0
Zitationen
6
Autoren
2025
Jahr
Abstract
The AIM-AHEAD Research Fellowship Program is a transformative initiative supporting early-career researchers, including graduate students, postdoctoral scholars, junior faculty, and those conducting research outside academia. This program offers a unique opportunity for researchers to receive funding and support for pioneering data science projects that address health research in AI/ML algorithm or data. Aligned with the overarching goals of the AIM-AHEAD initiative, the program emphasizes the use of Artificial Intelligence and Machine Learning (AI/ML) methodologies to analyze biomedical research data, including clinical and genomic cohorts. The primary focus is on North Star (III): Use AI/ML to improve behavioral health, cardiometabolic health and cancer outcomes for all. The program's cohorts have shown increasing interest, with the first cohort beginning in September 2022, the second in September 2023, the third in October 2024, and the fourth expected to start in September 2025. Application submissions grew from 41 for the first cohort to 85 for the forth cohort. Over the years, the available datasets expanded from one in 2022 to five in 2025, supporting diverse research areas including mental health, substance abuse disorder, diabetes, cardiovascular disease, maternity health, HIV, food insecurity, and sleep health. The AIM-AHEAD Research Fellowship Program is a critical platform for early-career researchers to engage in cutting-edge AI/ML research with the potential to significantly increasing health research. By supporting innovative projects and fostering a collaborative research environment, AIM-AHEAD aims to make meaningful strides toward health improving health for all Americans.
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