학술논문

Towards Developing a Mobile-Based Care (KidneyCare) for Patients with Kidney Diseases Using Ten-second Fingertip Video and PPG with Machine Learning
Document Type
Conference
Source
2023 IEEE International Conference on Digital Health (ICDH) ICDH Digital Health (ICDH), 2023 IEEE International Conference on. :202-204 Jul, 2023
Subject
Computing and Processing
Maximum likelihood estimation
Pain
Filtration
Point of care
Data visualization
Machine learning
Electronic healthcare
Mobile Health (m-Health)
Creatinine
Glomerular filtration rate (GFR)
Creatinine Clearance (CrCl)
KidneyCare
Kidney Condition Monitoring
Language
Abstract
In this manuscript, we describe the architecture and development of a non-invasive prototype- KidneyCare that captures the ten-second fingertip video using the smartphone camera and NIR LED. Then this fingertip video will be analyzed to estimate the creatinine, GFR, and CrCl levels by using ML models. KidneyCare acts as a regular, remote, self-monitoring, and noninvasive point-of-care by providing information about the user’s kidney condition. KidneyCare provides data visualization features and conducts as a data management platform for practitioners which promotes early diagnosis and initiation of an early treatment plan. With all the above-mentioned features, KidneyCare will be a powerful mHealth-based system for monitoring kidney conditions by estimating Creatinine, GFR, and CrCl levels non-invasively.