Research Article
Why Do We Need a Remote Health Monitoring System? A Study on Predictive Analytics for Heart Failure Patients
@INPROCEEDINGS{10.4108/eai.15-12-2016.2267790, author={Mohammad Pourhomayoun and Nabil Alshurafa and Foad Dabiri and Ehsan Ardestani and Ahsan Samiee and Hassan Ghasemzadeh and Majid Sarrafzadeh}, title={Why Do We Need a Remote Health Monitoring System? A Study on Predictive Analytics for Heart Failure Patients}, proceedings={11th International Conference on Body Area Networks}, publisher={ACM}, proceedings_a={BODYNETS}, year={2017}, month={4}, keywords={mhealth remote health monitoring systems (rhms) body area networks predictive analytics electronic health records (ehr) cognitive heart failure (chf)}, doi={10.4108/eai.15-12-2016.2267790} }
- Mohammad Pourhomayoun
Nabil Alshurafa
Foad Dabiri
Ehsan Ardestani
Ahsan Samiee
Hassan Ghasemzadeh
Majid Sarrafzadeh
Year: 2017
Why Do We Need a Remote Health Monitoring System? A Study on Predictive Analytics for Heart Failure Patients
BODYNETS
EAI
DOI: 10.4108/eai.15-12-2016.2267790
Abstract
Body area networks and remote health monitoring systems allow for collecting physiological data from patients, and provide a platform to utilize analytics algorithms to predict medical conditions. This paper presents an effective predictive analytic approach for hospital readmission prediction for patients with Congestive Heart Failure (CHF) and based on the physiological data collected in last days of hospital stay. We examine the proposed algorithm on the Electronic Health Records (EHR) of UCLA Hospital containing over 10 million clinical measurements collected from approximately 10,000 patients hospitalized at the UCLA Medical Center. The results show that it is possible to predict medically adverse events (e.g. hospital readmissions) for CHF patients if we have access to recent physiological measurements. This study suggests that a remote health monitoring system can provide an effective platform to reduce readmission rates by early prediction of readmissions based on freshly collected data, and then applying appropriate early clinical interventions to prevent the readmission.