Impacts of a health literacy-informed intervention in people with chronic obstructive pulmonary disease (COPD) on hospitalization, health literacy, self-management, quality of life, and health costs– A randomized controlled trial

Christine R. Borge,Marie H. Larsen,Richard H Osborne,Eline Aas, Ingrid Tryland Kolle, Rikke Reinertsen, Martha P. Lein, Maria Thörn, Ragnhild Mørch Lind, Marie Groth, Oda Strand,Marit Helen Andersen,Torbjørn Moum,Eivind Engebretsen,Astrid K. Wahl

Patient Education and Counseling(2024)

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摘要
Objective To compare the effect of motivational interviewing (MI) and tailored health literacy (HL) follow-up with usual care on hospitalization, costs, HL, self-management, Quality of life (QOL), and psychological stress in people with chronic obstructive pulmonary disease (COPD). Methods A RCT was undertaken in Norway between March 2018-December 2020 (n=127). The control group (CG, n=63) received usual care. The intervention group (IG, n=64) received tailored HL follow-up from MI-trained COPD nurses with home visits for eight weeks and phone calls for four months after hospitalization. Primary outcomes were hospitalization at eight weeks, six months, and one year from baseline. The trial was registered with ClinicalTrials.gov (NCT0321660) and analysed per protocol. Results Compared with the IG, the CG had 2.8 higher odds (95% CI [1.3 to 5.8]) of hospitalization and higher hospital health costs (MD=€ -6230, 95% CI [-6510 to -5951]) and lower QALYs (MD=0.1, 95% CI [0.10 to 0.11]) that gives an ICER =-62300. The IG reported higher QOL, self-management, and HL (p=0.02- to <0.01). Conclusion MI-trained COPD nurses using tailored HL follow-up is cost-effective, reduces hospitalization, and increases QOL, HL, and self-care in COPD. Practice Implication Tailored HL follow-up is beneficial for individuals with COPD and the healthcare system.
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关键词
health literacy,self-management, tailored follow-up,COPD, chronic diseases,Quality,of Life,health literacy intervention,community health care service
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