Prescriptome analytics: an opportunity for clinical pharmacy
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Clinical pharmacists have unique opportunities to be more involved in prescriptome analytics to expand research horizon in clinical pharmacy as an academic discipline. The development of predictive analytics with machine learning algorithms could have the potential to redesign the way we care for patients in our institutions for a more personalized medication therapy.
KeywordsClinical data warehouse Clinical pharmacy Machine learning Prescriptome analytics
Conflicts of interest
The authors declare that they have no conflict of interest.
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