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RESULTS: The rate of medication dispensing error resulting in treatment error was 0.04%.
The initially reported dispensing error rate was the result of data recording and data management errors and not true medication dispensing errors.
Sensitivity simulations in the overall trial population showed no meaningful effect of medication dispensing error on the main efficacy and safety outcomes.
Nine options with tick boxes were offered for recording the type of the event: a recognised side effect, drug interaction, contraindication, allergy, drug sensitivity, overdose, dispensing error, don't know and other.
Internationally, estimates of dispensing error rates in community pharmacies vary from 0.04%1to24%24% 5 of dispensed items, the wide variation at least partly due to differences in methods and definitions.
Event date, birth date of patient, gender, practice, event category (prescribing error (wrong prescription, wrong administration; wrong dose; other), adverse reaction (adverse reaction; allergic reaction; overdose; interaction; contra-indication; other), dispensing error (too late; wrong medicine; wrong dose; other)), and additional remarks or context were recorded.
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Ward-level medication preparation and dispensing errors were included, whilst prescribing and pharmacy dispensing errors were not.
To assess the actions taken to manage dispensing errors, to investigate pharmacists' perceptions of ideal methods for managing dispensing errors, and to evaluate the reliability of in-house dispensing error reporting systems.
Independent pharmacies have demonstrated a positive effect on patient satisfaction, dispensing errors, and patient consultation/counseling.
We further examined the reproducibility (confirmation test) of the hit compounds identified in the primary screening to eliminate false-positives due, for example, to dispensing errors, leaving 917 hit compounds (Supplementary Fig. S6).
To evaluate the differences in medication dispensing errors between remote telepharmacy sites (pharmacist not physically present) and standard community pharmacy sites (pharmacist physically present and no telepharmacy technology; comparison group).
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