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Autori principali: Formanek, Andrs, Vincze, Anna, Bicsak, Richrd, Moreau, Yves, Balogh, Gyorgy T., Arany, Adam
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.00508
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author Formanek, Andrs
Vincze, Anna
Bicsak, Richrd
Moreau, Yves
Balogh, Gyorgy T.
Arany, Adam
author_facet Formanek, Andrs
Vincze, Anna
Bicsak, Richrd
Moreau, Yves
Balogh, Gyorgy T.
Arany, Adam
contents We present a unique, multitask dataset comprising 143 drug and drug candidate molecules, each evaluated on in vitro, parallel artificial-membrane permeability assays (PAMPA) using six different model membranes. Using this resource, we systematically assess the effectiveness of various molecular descriptors and regression models in predicting passive membrane permeability. The studied models range from simple linear regression to a modern pre-trained transformer architecture. Particular attention is given to the trade-off between predictive performance and model interpretability, highlighting the challenges introduced by machine learning approaches. To our knowledge, this is the most comprehensive study on simultaneous modeling of multiple organ-specific PAMPA membranes to date, offering novel insights into membrane-specific permeability profiles. We found that expert-designed physico-chemical property descriptors are more fitting for a limited sample size permeabilty study than deep learning based representations.
format Preprint
id arxiv_https___arxiv_org_abs_2605_00508
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Comparative Study of QSPR Methods on a Unique Multitask PAMPA dataset
Formanek, Andrs
Vincze, Anna
Bicsak, Richrd
Moreau, Yves
Balogh, Gyorgy T.
Arany, Adam
Machine Learning
We present a unique, multitask dataset comprising 143 drug and drug candidate molecules, each evaluated on in vitro, parallel artificial-membrane permeability assays (PAMPA) using six different model membranes. Using this resource, we systematically assess the effectiveness of various molecular descriptors and regression models in predicting passive membrane permeability. The studied models range from simple linear regression to a modern pre-trained transformer architecture. Particular attention is given to the trade-off between predictive performance and model interpretability, highlighting the challenges introduced by machine learning approaches. To our knowledge, this is the most comprehensive study on simultaneous modeling of multiple organ-specific PAMPA membranes to date, offering novel insights into membrane-specific permeability profiles. We found that expert-designed physico-chemical property descriptors are more fitting for a limited sample size permeabilty study than deep learning based representations.
title A Comparative Study of QSPR Methods on a Unique Multitask PAMPA dataset
topic Machine Learning
url https://arxiv.org/abs/2605.00508