Predicting adherence to use of remote health monitoring systems in a cohort of patients with chronic heart failure.

BACKGROUND It is unclear whether subgroups of patients may benefit from remote monitoring systems (RMS) and what user characteristics and contextual factors determine effective use of RMS in patients with heart failure (HF). OBJECTIVE The study was conducted to determine whether certain user characteristics (i.e. personal and clinical variables) predict use of RMS using advanced machine learning software algorithms in patients with HF. METHODS This pilot study was a single-arm experimental study with a pre- (baseline) and post- (3 months) design; data from the baseline measures were used for the current data analyses. Sixteen patients provided consent; only 7 patients (mean age 65.8 ± 6.1, range 58-83) accessed the RMS and transmitted daily data (e.g. weight, blood pressure) as instructed during the 12 week study duration. RESULTS Baseline demographic and clinical characteristics of users and non-users were comparable for a majority of factors. However, users were more likely to have no HF specialty based care or an automatic internal cardioverter defibrillator. The precision accuracy of decision tree, multilayer perceptron (MLP) and k-Nearest Neighbor (k-NN) classifiers for predicting access to RMS was 87.5%, 90.3%, and 94.5% respectively. CONCLUSION Our preliminary data show that a small set of baseline attributes is sufficient to predict subgroups of patients who had a higher likelihood of using RMS. While our findings shed light on potential end-users more likely to benefit from RMS-based interventions, additional research in a larger sample is warranted to explicate the impact of user characteristics on actual use of these technologies.

[1]  Francine Schneider,et al.  The Influence of User Characteristics and a Periodic Email Prompt on Exposure to an Internet-Delivered Computer-Tailored Lifestyle Program , 2012, Journal of medical Internet research.

[2]  Akshay S. Desai,et al.  Home Monitoring Heart Failure Care Does Not Improve Patient Outcomes: Looking Beyond Telephone-Based Disease Management , 2012, Circulation.

[3]  Majid Sarrafzadeh,et al.  A Remote Patient Monitoring System for Congestive Heart Failure , 2011, Journal of Medical Systems.

[4]  Renato Pietro Ricci,et al.  Effectiveness of remote monitoring of CIEDs in detection and treatment of clinical and device-related cardiovascular events in daily practice: the HomeGuide Registry , 2013, Europace : European pacing, arrhythmias, and cardiac electrophysiology : journal of the working groups on cardiac pacing, arrhythmias, and cardiac cellular electrophysiology of the European Society of Cardiology.

[5]  B. Wakefield,et al.  Outcomes of a home telehealth intervention for patients with heart failure , 2009, Journal of telemedicine and telecare.

[6]  R. Schweikert,et al.  Efficacy and Safety of Automatic Remote Monitoring for Implantable Cardioverter-Defibrillator Follow-Up: The Lumos-T Safely Reduces Routine Office Device Follow-Up (TRUST) Trial , 2010, Circulation.

[7]  A. Boyle,et al.  The CONNECT (Clinical Evaluation of Remote Notification to Reduce Time to Clinical Decision) trial: the value of wireless remote monitoring with automatic clinician alerts. , 2011, Journal of the American College of Cardiology.

[8]  Seth Lloyd,et al.  Information measures, effective complexity, and total information , 1996, Complex..

[9]  S. Cossette,et al.  The Efficacy of a Motivational Nursing Intervention Based on the Stages of Change on Self-care in Heart Failure Patients , 2010, The Journal of cardiovascular nursing.

[10]  Majid Sarrafzadeh,et al.  Remote health monitoring: Predicting outcome success based on contextual features for cardiovascular disease , 2014, 2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[11]  J. Kent Information gain and a general measure of correlation , 1983 .

[12]  L. Appel,et al.  State of the science: promoting self-care in persons with heart failure: a scientific statement from the American Heart Association. , 2009, Circulation.

[13]  Hassan Ghasemzadeh,et al.  Examining the Effects of Remote Monitoring Systems on Activation, Self-care, and Quality of Life in Older Patients With Chronic Heart Failure , 2015, The Journal of cardiovascular nursing.

[14]  M. Sarrafzadeh,et al.  Title A remote patient monitoring system for congestive heart failure Permalink , 2011 .

[15]  E. Keeler,et al.  Differences in education, knowledge, self-management activities, and health outcomes for patients with heart failure cared for under the chronic disease model: the improving chronic illness care evaluation. , 2005, Journal of cardiac failure.

[16]  Majid Sarrafzadeh,et al.  WANDA B.: Weight and activity with blood pressure monitoring system for heart failure patients , 2010, 2010 IEEE International Symposium on "A World of Wireless, Mobile and Multimedia Networks" (WoWMoM).

[17]  Yuqing Guo,et al.  Attitudes and Preferences on the Use of Mobile Health Technology and Health Games for Self-Management: Interviews With Older Adults on Anticoagulation Therapy , 2014, JMIR mHealth and uHealth.

[18]  G. Fonarow,et al.  Compliance Behaviors of Elderly Patients With Advanced Heart Failure , 2003, The Journal of cardiovascular nursing.

[19]  Ying LU,et al.  Decision tree methods: applications for classification and prediction , 2015, Shanghai archives of psychiatry.