Artificial Intelligence and Machine Learning: Will Clinical Pharmacologists Be Needed in the Next Decade? The John Henry Question.

Brian W Corrigan
Author Information
  1. Brian W Corrigan: Pfizer Global Research and Development, Groton, Connecticut, USA.

Abstract

No abstract text available.

References

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  9. Corrigan, B.W., Mayo, P. R. & Jamali, F. Application of a neural network for gentamicin concentration prediction in a general hospital population. Ther. Drug Monit. 19, 25-28 (1997).

MeSH Term

Artificial Intelligence
Humans
Machine Learning
Pharmacology, Clinical
Professional Role