Literature DB >> 12369880

Reliability of logP predictions based on calculated molecular descriptors: a critical review.

D Eros1, I Kövesdi, L Orfi, K Takács-Novák, Gy Acsády, Gy Kéri.   

Abstract

Correct QSAR analysis requires reliable measured or calculated logP values, being logP the most frequently utilized and most important physico-chemical parameter in such studies. Since the publication of theoretical fundamentals of logP prediction, many commercial software solutions are available. These programs are all based on experimental data of huge databases therefore the predicted logP values are mostly acceptable - especially for known structures and their derivatives. In this study we critically reviewed the published methods and compared the predictive power of commercial softwares (CLOGP, KOWWIN, SciLogP/ULTRA) to each other and to our recently developed automatic QS(P)AR program. We have selected a very diverse set of 625 known drugs (98%) and drug-like molecules with experimentally validated logP values. We have collected 78 reported "outliers" as well, which could not be predicted by the "traditional" methods. We used these data in the model building and validation. Finally, we used an external validation set of compounds missing from public databases. We emphasized the importance of data quality, descriptor calculation and selection, and presented a general, reliable descriptor selection and validation technique for such kind of studies. Our method is based on the strictest mathematical and statistical rules, fully automatic and after the initial settings there is no option for user intervention. Three approaches were applied: multiple linear regression, partial least squares analysis and artificial neural network. LogP predictions with a multiple linear regression model showed acceptable accuracy for new compounds therefore it can be used for "in-silico-screening" and/or planning virtual/combinatorial libraries.

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Year:  2002        PMID: 12369880     DOI: 10.2174/0929867023369042

Source DB:  PubMed          Journal:  Curr Med Chem        ISSN: 0929-8673            Impact factor:   4.530


  10 in total

1.  Validation subset selections for extrapolation oriented QSPAR models.

Authors:  Csaba Szántai-Kis; István Kövesdi; György Kéri; László Orfi
Journal:  Mol Divers       Date:  2003       Impact factor: 2.943

2.  Assessing the accuracy of octanol-water partition coefficient predictions in the SAMPL6 Part II log P Challenge.

Authors:  Mehtap Işık; Teresa Danielle Bergazin; Thomas Fox; Andrea Rizzi; John D Chodera; David L Mobley
Journal:  J Comput Aided Mol Des       Date:  2020-02-27       Impact factor: 3.686

3.  QSAR studies of copper azamacrocycles and thiosemicarbazones: MM3 parameter development and prediction of biological properties.

Authors:  Peter Wolohan; Jeongsoo Yoo; Michael J Welch; David E Reichert
Journal:  J Med Chem       Date:  2005-08-25       Impact factor: 7.446

4.  Using milk fat to reduce the irritation and bitter taste of ibuprofen.

Authors:  Samantha M Bennett; Lisa Zhou; John E Hayes
Journal:  Chemosens Percept       Date:  2012-05-01       Impact factor: 1.833

Review 5.  Modeling Pharmacokinetic Natural Product-Drug Interactions for Decision-Making: A NaPDI Center Recommended Approach.

Authors:  Emily J Cox; Dan-Dan Tian; John D Clarke; Allan E Rettie; Jashvant D Unadkat; Kenneth E Thummel; Jeannine S McCune; Mary F Paine
Journal:  Pharmacol Rev       Date:  2021-04       Impact factor: 25.468

6.  Empirical prediction of peptide octanol-water partition coefficients.

Authors:  Channa K Hattotuwagama; Darren R Flower
Journal:  Bioinformation       Date:  2006-11-24

7.  Target-independent prediction of drug synergies using only drug lipophilicity.

Authors:  Kaan Yilancioglu; Zohar B Weinstein; Cem Meydan; Azat Akhmetov; Isil Toprak; Arda Durmaz; Ivan Iossifov; Hilal Kazan; Frederick P Roth; Murat Cokol
Journal:  J Chem Inf Model       Date:  2014-08-01       Impact factor: 4.956

8.  OPERA models for predicting physicochemical properties and environmental fate endpoints.

Authors:  Kamel Mansouri; Chris M Grulke; Richard S Judson; Antony J Williams
Journal:  J Cheminform       Date:  2018-03-08       Impact factor: 5.514

9.  Multiple linear regression models for predicting the n‑octanol/water partition coefficients in the SAMPL7 blind challenge.

Authors:  Kenneth Lopez; Silvana Pinheiro; William J Zamora
Journal:  J Comput Aided Mol Des       Date:  2021-07-12       Impact factor: 3.686

10.  Multitask machine learning models for predicting lipophilicity (logP) in the SAMPL7 challenge.

Authors:  Eelke B Lenselink; Pieter F W Stouten
Journal:  J Comput Aided Mol Des       Date:  2021-07-17       Impact factor: 3.686

  10 in total

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