This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
ApartSprints
AI Policy Hackathon at Johns Hopkins University
670822f88b8fdf04a35a4b76
AI Policy Hackathon at Johns Hopkins University
October 28, 2024
Accepted at the 
670822f88b8fdf04a35a4b76
 research sprint on 

mHeatlth Ai

This project proposes a scalable solution leveraging inertial measurement units (IMUs) and machine learning (ML) techniques to provide meaningful metrics on a person's movement performance throughout the day. By developing an activity recognition model and estimating movement quality metrics, we aim to offer continuous asynchronous feedback to patients and valuable insights to therapists. This system could enhance patient adherence, improve rehabilitation outcomes, and extend access to quality physical therapy, particularly in underserved areas. our video didnt have time to edit

By 
Patrick Puma, Ethan Graber, Will Kim
🏆 
4th place
3rd place
2nd place
1st place
 by peer review
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

This project is private