Loading...
Loading...
Browse all stories on DeepNewz
VisitWhat will be identified as the key factor influencing dietary responses in the NIH study by end of 2025?
Genetic factors • 25%
Microbiome composition • 25%
Lifestyle factors • 25%
Other factors • 25%
Official NIH publication or press release detailing findings
NIH Launches 'Nutrition for Precision Health' Study with AI to Personalize Dietary Guidance Nationwide
Nov 25, 2024, 07:08 PM
The National Institutes of Health (NIH) is initiating a groundbreaking study titled 'Nutrition for Precision Health,' aimed at providing personalized nutrition guidance to Americans. This innovative research, part of the All of Us Research Program, seeks to understand how individual responses to food vary among people. By leveraging artificial intelligence, the study will explore precision nutrition and the potential for repurposing existing drugs. The initiative is designed to engage participants nationwide, with significant involvement from Pennington Biomedical Research Center and LSU Health New Orleans. The study's findings are expected to transform nutrition research and inform dietary recommendations tailored to individual needs.
View original story
Processed foods • 25%
Red meat • 25%
Sugar • 25%
Dairy • 25%
Reduce seed oils • 25%
Reduce sugar intake • 25%
Increase fiber intake • 25%
Other • 25%
Ketogenic Diet • 25%
Carnivore Diet • 25%
Mediterranean Diet • 25%
Other • 25%
Increased funding for infectious disease research • 25%
Increased funding for chronic disease research • 25%
Increased funding for mental health research • 25%
Other funding priorities • 25%
Yes • 50%
No • 50%
Increased scrutiny on NIH studies • 25%
Changes in gender-affirming care policies • 25%
No significant consequence • 25%
Other consequence • 25%
WHO issues guidelines • 25%
UNICEF issues guidelines • 25%
Both WHO and UNICEF issue guidelines • 25%
No guidelines issued • 25%
COVID-19 management • 25%
Cancer research • 25%
Mental health • 25%
Other • 25%
Yes • 50%
No • 50%
Yes • 50%
No • 50%
No • 50%
Yes • 50%
No • 50%
Yes • 50%
Machine Learning • 25%
Other AI technologies • 25%
Natural Language Processing • 25%
Deep Learning • 25%