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Advances in Computational Approaches for Estimating Passive Permeability in Drug Discovery. | LitMetric

AI Article Synopsis

  • Passive permeability through cellular membranes is essential for drug effectiveness and is relevant across all biological systems.
  • Various computational techniques, including lipophilicity relations, molecular dynamics simulations, and machine learning, are used to study passive permeability, each offering different levels of accuracy and cost.
  • The review highlights key theories like the inhomogeneous solubility diffusion model and the promising role of machine learning in efficiently predicting permeability, especially with advancements in computing technology.

Article Abstract

Passive permeation of cellular membranes is a key feature of many therapeutics. The relevance of passive permeability spans all biological systems as they all employ biomembranes for compartmentalization. A variety of computational techniques are currently utilized and under active development to facilitate the characterization of passive permeability. These methods include lipophilicity relations, molecular dynamics simulations, and machine learning, which vary in accuracy, complexity, and computational cost. This review briefly introduces the underlying theories, such as the prominent inhomogeneous solubility diffusion model, and covers a number of recent applications. Various machine-learning applications, which have demonstrated good potential for high-volume, data-driven permeability predictions, are also discussed. Due to the confluence of novel computational methods and next-generation exascale computers, we anticipate an exciting future for computationally driven permeability predictions.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10673305PMC
http://dx.doi.org/10.3390/membranes13110851DOI Listing

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