Defining and Monitoring Patient Clusters Based on Therapy Adherence in Sleep Apnea Management

Student

Mourya Karan Reddy Baddam

Advisor

Jaideep Srivastava

Abstract

Obstructive Sleep Apnea (OSA) is a disorder in which breathing repeatedly stops and starts due to recurrent episodes of partial and complete airway obstruction during sleep. One of the common treatments for moderate and severe OSA cases includes the use of Continuous Positive Airway Pressure (CPAP) devices that keep the airways open. Unfortunately, about 40% of the patients using CPAP devices abandon their therapy within six months. This work proposes a method to cluster and monitor patients according to their therapy usage behavior aiming for a timely and appropriate intervention. The data used for this project corresponds to 1815 CPAP users in their first six months of CPAP therapy. In contrast to the simple rule-based methods currently employed by sleep clinics to identify non-adherent behavior, this approach uses clustering techniques to group patients based on their CPAP usage patterns. After identifying four main clusters, we further investigate how patients can change between clusters over time using Markov Chain analysis. We observed that patients who change to a healthy cluster have a higher probability of staying there in the future, reinforcing the need for early intervention. Finally, we use machine learning-based models to predict the next month’s likelihood of adherence and non-adherence according to our pre-defined cluster definitions.

Video

Defining and Monitoring Patient Clusters Based on Therapy Adherence in Sleep Apnea Management