Developing and enforcing study protocols is a foundational component of medical research. As study complexity for participant interactions increases, translating study protocols to supporting application code becomes challenging. A collaboration exists between the University of Kentucky and Arizona State University to determine the efficacy of time-restricted eating in improving metabolic risk among postmenopausal women. This study utilizes a graph-based approach to monitor and support adherence to a designated schedule, enabling the validation and step-wise audit of participants' statuses to derive dependable conclusions. A texting service, driven by a participant graph, automatically manages interactions and collects data. Participant data is then accessible to the research study team via a website, which enables viewing, management, and exportation. This paper presents a system for automatically managing participants in a time-restricted eating study that eliminates time-consuming interactions with participants.
@article{arxiv.2406.18718,
title = {State-Based Automation for Time-Restricted Eating Adherence},
author = {Samuel E. Armstrong and Aaron D. Mullen and J. Matthew Thomas and Dorothy D. Sears and Julie S. Pendergast and Jeffrey Talbert and Cody Bumgardner},
journal= {arXiv preprint arXiv:2406.18718},
year = {2024}
}
Comments
8 pages, 4 figures, submitted to AMIA 2024 Annual Symposium