A Logic-Based Learning Approach to Explore Diabetes Patient Behaviors

06/24/2019
by   Josephine Lamp, et al.
0

Type I Diabetes (T1D) is a chronic disease in which the body's ability to synthesize insulin is destroyed. It can be difficult for patients to manage their T1D, as they must control a variety of behavioral factors that affect glycemic control outcomes. In this paper, we explore T1D patient behaviors using a Signal Temporal Logic (STL) based learning approach. STL formulas learned from real patient data characterize behavior patterns that may result in varying glycemic control. Such logical characterizations can provide feedback to clinicians and their patients about behavioral changes that patients may implement to improve T1D control. We present both individual- and population-level behavior patterns learned from a clinical dataset of 21 T1D patients.

READ FULL TEXT
research
11/28/2020

PCPs: Patient Cardiac Prototypes

Many clinical deep learning algorithms are population-based and difficul...
research
03/02/2018

Clinically Meaningful Comparisons Over Time: An Approach to Measuring Patient Similarity based on Subsequence Alignment

Longitudinal patient data has the potential to improve clinical risk str...
research
01/14/2021

Analysis of E-commerce Ranking Signals via Signal Temporal Logic

The timed position of documents retrieved by learning to rank models can...
research
09/19/2021

Clinical Validation of Single-Chamber Model-Based Algorithms Used to Estimate Respiratory Compliance

Non-invasive estimation of respiratory physiology using computational al...
research
11/30/2021

What Do You See in this Patient? Behavioral Testing of Clinical NLP Models

Decision support systems based on clinical notes have the potential to i...
research
05/24/2022

The Curious Case of Control

Children acquiring English make systematic errors on subject control sen...

Please sign up or login with your details

Forgot password? Click here to reset