Driving success in personalized medicine through AI-enabled computational modeling.

Journal: Drug discovery today
Published Date:

Abstract

The development of successful drugs is expensive and time-consuming because of high clinical attrition rates. This is caused partially by the rupture seen in the translatability of the drug from the bench to the clinic in the context of personalized medicine. Artificial intelligence (AI)-driven platforms integrated with mechanistic modeling have become instrumental in accelerating the drug development process by leveraging data ubiquitously across the various phases. AI can counter the deficiencies and ambiguities that arise during the classical drug development process while reducing human intervention and bridging the translational gap in discovering the connections between drugs and diseases.

Authors

  • Kaushik Chakravarty
    VeriSIM Life Inc., 1 Sansome St. Suite 3500, San Francisco, CA 94104, USA.
  • Victor Antontsev
    VeriSIM Life Inc., 1 Sansome St. Suite 3500, San Francisco, CA 94104, USA.
  • Yogesh Bundey
    VeriSIM Life Inc., 1 Sansome St. Suite 3500, San Francisco, CA 94104, USA.
  • Jyotika Varshney
    VeriSIM Life Inc., 1 Sansome St. Suite 3500, San Francisco, CA 94104, USA. Electronic address: jo.varshney@verisimlife.com.