A systematic review OF splitting a tablet obtain an accurate dose

Niharikareddy Meenigea

Abstract


A systematic review of splitting tablets suggests that the accuracy of split doses can vary depending on various factors, including the tablet characteristics, the splitting method used, and the skills of the individual performing the splitting. However, when done correctly with appropriate guidance and tools, tablet splitting can be an effective way to obtain accurate doses and save costs. It is recommended to consult a healthcare provider or pharmacist for guidance and proper instructions on tablet splitting. Tablet splitting is a widely prevalent practice resulting from the need to alter doses into two or more parts and optimise medicine in individual patients. If a tablet is split unequally problems may arise. The aim of the study was to summarise the literature measuring the effect of tablet splitting on dose accuracy.


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