| Literature DB >> 27628125 |
Maxim Topaz1,2, Kavita Radhakrishnan3, Suzanne Blackley2, Victor Lei2, Kenneth Lai4, Li Zhou1,2,4.
Abstract
This study developed an innovative natural language processing algorithm to automatically identify heart failure (HF) patients with ineffective self-management status (in the domains of diet, physical activity, medication adherence, and adherence to clinician appointments) from narrative discharge summary notes. We also analyzed the association between self-management status and preventable 30-day hospital readmissions. Our natural language system achieved relatively high accuracy ( F-measure = 86.3%; precision = 95%; recall = 79.2%) on a testing sample of 300 notes annotated by two human reviewers. In a sample of 8,901 HF patients admitted to our healthcare system, 14.4% ( n = 1,282) had documentation of ineffective HF self-management. Adjusted regression analyses indicated that presence of any skill-related self-management deficit (odds ratio [OR] = 1.3, 95% confidence interval [CI] = [1.1, 1.6]) and non-specific ineffective self-management (OR = 1.5, 95% CI = [1.2, 2]) was significantly associated with readmissions. We have demonstrated the feasibility of identifying ineffective HF self-management from electronic discharge summaries with natural language processing.Entities:
Keywords: cardiovascular; clinical focus; diet; health behavior/symptom focus; health screening behaviors; heart failure; medication adherence; natural language processing; patient compliance; self-care; sodium restricted; therapeutic medications
Year: 2016 PMID: 27628125 DOI: 10.1177/0193945916668493
Source DB: PubMed Journal: West J Nurs Res ISSN: 0193-9459 Impact factor: 1.967