The association between analgesic treatment beliefs and electronically monitored adherence for cancer pain Journal Article


Authors: Rosa, W. E.; Riegel, B.; Ulrich, C. M.; Chittams, J.; Quinn, R.; Meghani, S. H.
Article Title: The association between analgesic treatment beliefs and electronically monitored adherence for cancer pain
Abstract: OBJECTIVES: To determine whether clusters based on analgesic treatment beliefs among patients with cancer predict objective analgesic adherence. SAMPLE & SETTING: 207 patients with cancer in the outpatient setting who were aged 18 years or older, self-identified as White or African American, were diagnosed with solid tumor or multiple myeloma, and were prescribed at least one around-the-clock analgesic prescription for reported cancer pain. METHODS & VARIABLES: This study is a secondary analysis of an existing dataset. General linear modeling with a backward elimination approach was applied to determine whether previously identified analgesic treatment belief clusters, as well as sociodemographic, clinical, and pain variables, were associated with adherence behaviors. RESULTS: Significant explanatory factors were experiential in nature and included sociodemographic, clinical, and pain-related variables, explaining 21% of the variance in analgesic adherence. Analgesic belief clusters were not predictive of adherence. IMPLICATIONS FOR NURSING: Future research should examine sociodemographic and other clinical factors, as well as the influence of analgesic treatment beliefs, to better understand adherence behaviors among patients with cancer.
Keywords: cancer pain; opioids; analgesics; adherence; belief clusters
Journal Title: Oncology Nursing Forum
Volume: 48
Issue: 1
ISSN: 0190-535X
Publisher: Oncology Nursing Society (ONS)  
Date Published: 2021-01-01
Start Page: 45
End Page: 58
Language: English
DOI: 10.1188/21.Onf.45-58
PUBMED: 33337438
PROVIDER: scopus
PMCID: PMC8018721
DOI/URL:
Notes: Article -- Export Date: 1 February 2021 -- Source: Scopus
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  1. William   Rosa
    202 Rosa