Improving the Accuracy of Permeability Data to Gain Predictive Power: Assessing Sources of Variability in Assays Using Cell Monolayers.

Membranes (Basel)

Coimbra Chemistry Center-Institute of Molecular Sciences (CQC-IMS), University of Coimbra, 3004-535 Coimbra, Portugal.

Published: July 2024

AI Article Synopsis

  • Predicting how well new drugs can pass through biological membranes is crucial for understanding their effectiveness and safety.
  • Caco-2 monolayers are often used in lab tests to measure how substances permeate the intestinal barrier, leading to a wealth of permeability data that can be analyzed with artificial intelligence to identify relationships between a compound's structure and its permeability.
  • The review highlights the variability of permeability results across different studies and labs, stressing the need for consistent data collection to improve the accuracy of predictive models for drug development.

Article Abstract

The ability to predict the rate of permeation of new compounds across biological membranes is of high importance for their success as drugs, as it determines their efficacy, pharmacokinetics, and safety profile. In vitro permeability assays using Caco-2 monolayers are commonly employed to assess permeability across the intestinal epithelium, with an extensive number of apparent permeability coefficient () values available in the literature and a significant fraction collected in databases. The compilation of these values for large datasets allows for the application of artificial intelligence tools for establishing quantitative structure-permeability relationships (QSPRs) to predict the permeability of new compounds from their structural properties. One of the main challenges that hinders the development of accurate predictions is the existence of multiple values for the same compound, mostly caused by differences in the experimental protocols employed. This review addresses the magnitude of the variability within and between laboratories to interpret its impact on QSPR modelling, systematically and quantitatively assessing the most common sources of variability. This review emphasizes the importance of compiling consistent data and suggests strategies that may be used to obtain such data, contributing to the establishment of robust QSPRs with enhanced predictive power.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11278619PMC
http://dx.doi.org/10.3390/membranes14070157DOI Listing

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