Classifying Drugs by their Arrhythmogenic Risk Using Machine Learning.

Biophys J

Department of Mechanical Engineering, Stanford University, Stanford, California; Department of Bioengineering, Stanford University, Stanford, California. Electronic address:

Published: March 2020

AI Article Synopsis

  • All medications have side effects, with serious ones like cardiac arrhythmias being a major concern; current drug safety evaluation methods are slow and expensive, hindering drug development.
  • The study combines advanced techniques, including high-performance computing and machine learning, to create a risk estimator that assesses the proarrhythmic potential of drugs by analyzing interactions between critical ionic currents.
  • A new classifier was developed that accurately categorizes 22 common drugs based on their risk for arrhythmias, ultimately aiming to enhance drug safety evaluations and streamline the development of safer medication options to prevent heart rhythm issues.

Article Abstract

All medications have adverse effects. Among the most serious of these are cardiac arrhythmias. Current paradigms for drug safety evaluation are costly, lengthy, conservative, and impede efficient drug development. Here, we combine multiscale experiment and simulation, high-performance computing, and machine learning to create a risk estimator to stratify new and existing drugs according to their proarrhythmic potential. We capitalize on recent developments in machine learning and integrate information across 10 orders of magnitude in space and time to provide a holistic picture of the effects of drugs, either individually or in combination with other drugs. We show, both experimentally and computationally, that drug-induced arrhythmias are dominated by the interplay between two currents with opposing effects: the rapid delayed rectifier potassium current and the L-type calcium current. Using Gaussian process classification, we create a classifier that stratifies drugs into safe and arrhythmic domains for any combinations of these two currents. We demonstrate that our classifier correctly identifies the risk categories of 22 common drugs exclusively on the basis of their concentrations at 50% current block. Our new risk assessment tool explains under which conditions blocking the L-type calcium current can delay or even entirely suppress arrhythmogenic events. Using machine learning in drug safety evaluation can provide a more accurate and comprehensive mechanistic assessment of the proarrhythmic potential of new drugs. Our study paves the way toward establishing science-based criteria to accelerate drug development, design safer drugs, and reduce heart rhythm disorders.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7063479PMC
http://dx.doi.org/10.1016/j.bpj.2020.01.012DOI Listing

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