Study Explores Factors Behind Antibiotic Switch Acceptance in China
A cross-sectional study conducted in China investigated the factors influencing residents' acceptance of switching from intravenous to oral antibiotics, a practice known as IVOS. The research utilized the Health Belief Model (HBM) as its theoretical framework to understand patient perspectives. The study aimed to identify key determinants that encourage or hinder the adoption of oral antibiotic therapy after initial intravenous treatment. Understanding these factors is crucial for optimizing antibiotic stewardship and improving patient care pathways. The findings could inform healthcare providers and policymakers on strategies to promote appropriate IVOS. This practice is important for reducing healthcare costs and minimizing risks associated with prolonged intravenous access. The research provides insights into patient perceptions of medication effectiveness, safety, and convenience. It also examines the role of perceived susceptibility to infection and the severity of illness in decision-making. Ultimately, the study seeks to enhance the efficient and safe use of antibiotics within the Chinese healthcare system.
This study delves into patient perceptions regarding the transition from intravenous to oral antibiotics, employing the Health Belief Model to structure its inquiry. By examining factors such as perceived benefits, barriers, and susceptibility to illness, the research aims to illuminate patient decision-making processes. Understanding these influences is critical for optimizing antibiotic stewardship programs, particularly in a global context where antimicrobial resistance is a growing concern. The findings could inform strategies to encourage appropriate IVOS, potentially leading to reduced healthcare expenditures and improved patient convenience, while also mitigating risks associated with long-term intravenous therapy. Future research might explore how evolving healthcare technologies and patient education initiatives could further shape acceptance of such treatment switches.
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