Improving Dialysis Adherence for High Risk Patients Using Automated Messaging: Proof of Concept

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作者
A. Som
J. Groenendyk
T. An
K. Patel
R. Peters
G. Polites
W. R. Ross
机构
[1] Washington University School of Medicine,Epharmix Research Center
[2] Saint Louis University School of Medicine,Division of Emergency Medicine
[3] Washington University School of Medicine,Renal Division
[4] Washington University School of Medicine,undefined
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Comorbidities and socioeconomic barriers often limit patient adherence and self-management with hemodialysis. Missed sessions, often associated with communication barriers, can result in emergency dialysis and avoidable hospitalizations. This proof of concept study explored using a novel digital-messaging platform, EpxDialysis, to improve patient-to-dialysis center communication via widely available text messaging and telephone technology. A randomized controlled trial was conducted through Washington University-affiliated hemodialysis centers involving ESRD patients with poor attendance, defined as missing 2–6 sessions over the preceding 12 weeks. A cross-over study design evaluated appointment adherence between intervention and control groups. Comparing nonadherence rates eight weeks prior to enrollment, median appointment adherence after using the system increased by 75%, and median number of unintended hospitalization days fell by 31%. A conservative cost-benefit analysis of EpxDialysis demonstrates a 1:36 savings ratio from appointment adherence. EpxDialysis is a low-risk, cost-effective, intervention for increasing hemodialysis adherence in high-risk patients, especially at centers caring for vulnerable and low-income patients.
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