Client's Understanding of Instructions for Small Animals in a Veterinary Neurological Referral Center.
Journal of Veterinary Internal Medicine(2024)
摘要
BackgroundIt is not known how much information clients retrieve from discharge instructions.ObjectiveTo investigate client's understanding of discharge instructions and influencing factors.AnimalsDogs and cats being hospitalized for neurological diseases.MethodsClients were presented questionnaires regarding their pet's disease, diagnostics, treatments, prognosis and discharge instructions at time of discharge and 2 weeks later. The same questions were answered by discharging veterinarians at time of discharge. Clients answered additional questions regarding the subjective feelings during discharge conversation. Data collected included: data describing discharging veterinarian (age, gender, years of clinical experience, specialist status), data describing the client (age, gender, educational status). Raw percentage of agreement (RPA) between answers of clinicians and clients as well as factors potentially influencing the RPA were evaluated.ResultsOf 230 clients being approached 151 (65.7%) and 70 (30.4%) clients responded to the first and second questionnaire, respectively (130 dog and 30 cat owners). The general RPA between clinician's and client's responses over all questions together was 68.9% and 66.8% at the 2 time points. Questions regarding adverse effects of medication (29.0%), residual clinical signs (35.8%), and confinement instructions (36.8%) had the lowest RPAs at the first time point. The age of clients (P = .008) negatively influenced RPAs, with clients older than 50 years having lower RPA.Conclusions and Clinical ImportanceClients can only partially reproduce information provided at discharge. Only clients' increasing age influenced recall of information. Instructions deemed to be important should be specifically stressed during discharge.
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关键词
agreement rate,client communication,client conversation,communication,discharge instruction,questionnaire,reproducibility
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