BRIDGE2AI

Data Generation Project-AI READI

AI-READI Data Generation Project

Salutogenesis Grand Challenge

About the Project

The Salutogenesis project seeks to create and share a flagship ethically-sourced dataset of type 2 diabetes. The data will be optimized for future artificial intelligence/machine learning (AI/ML) analysis that could provide critical insights and especially shine a light on the salutogenic pathways from diabetes to return to health. The team of investigators will aim to collect a cross-sectional dataset of 4,000+ people and longitudinal data from 10% of the study cohort across the US. The long-term objective for this project is to develop a foundational dataset in diabetes, agnostic to existing classification criteria or biases, which can be used to reconstruct a temporal atlas of T2DM development and reversal towards health (i.e., salutogenesis). Six cross-disciplinary project modules involving teams located across eight institutions will work together to develop this flagship dataset.

The AI-READI Dataset

Flagship Dataset of Type 2 Diabetes from the AI-READI Project

1067

Participants

15

Data Modalities

165k

Data Files

2.01 TB

Dataset Size

Videos

Introduction to the Salutogenesis Grand Challenge

Introduction to the AI-READI Dataset

More AI–READI

Publications