| Literature DB >> 31804243 |
Maxim Topaz1, Mary D Naylor, John H Holmes, Kathryn H Bowles.
Abstract
There is a lack of evidence on how to identify high-risk patients admitted to home healthcare. This study aimed (1) to identify which disease characteristics, medications, patient needs, social support characteristics, and other factors are associated with patient priority for the first home health nursing visit; and (2) to construct and validate a predictive model of patient priority for the first home health nursing visit. This was a predictive study of home health visit priority decisions made by 20 nurses for 519 older adults. The study found that nurses were more likely to prioritize patients who had wounds (odds ratio = 1.88), comorbid condition of depression (odds ratio = 1.73), limitation in current toileting status (odds ratio = 2.02), higher number of medications (increase in odds ratio for each medication = 1.04), and comorbid conditions (increase in odds ratio for each condition = 1.04). This study developed one of the first clinical decision support tools for home healthcare called "PREVENT". (PRiority home health Visit Tool). Further work is needed to increase the specificity and generalizability of the tool and to test its effects on patient outcomes.Entities:
Mesh:
Year: 2020 PMID: 31804243 PMCID: PMC8721587 DOI: 10.1097/CIN.0000000000000576
Source DB: PubMed Journal: Comput Inform Nurs ISSN: 1538-2931 Impact factor: 1.985