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R-group template CoMFA combines benefits of “ad hoc” and topomer alignments using 3D-QSAR for lead optimization

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Abstract

Template CoMFA methodologies extend topomer CoMFA by allowing user-designated templates, for example the experimental receptor-bound conformation of a prototypical ligand, to help determine the alignment of training and test set structures for 3D-QSAR. The algorithms that generate its new structural modality, template-constrained topomers, are described. Template CoMFA’s resolution of certain topomer CoMFA concerns, by providing user control of topological consistency and structural acceptability, is demonstrated for sixteen 3D-QSAR training sets, in particular the Selwood dataset.

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Notes

  1. Lead optimization costs, per new drug introduction, are the highest of all, exceeding those of Phase II and III development because, being earlier, they generate more dead-ends and tie up capital for longer. More specifically, lead optimization accounts for 17 % of total R&D cost and around 50 % of discovery cost, and may be the 3rd largest opportunity area for overall R&D cost reduction.

  2. Challenges for its chief competitor in practice, binding free energy calculation, are most recently discussed by Stouch [4]

  3. Patents are pending on template-constrained topomers and their applications.

  4. Large “# component” values may raise concerns about over-fitting, especially when accompanied by unreasonably low “SDEP” values. However, from PLS over-fitted and unstable models are much less of a practical risk than from other common algorithms such as multiple regression, because PLS operates on blocks of descriptors rather than individual columns. The usual effects of additional components on a PLS model are increasingly minor refinements, seldom having any effect on overall “statistical significance”. Therefore, in the standard topomer CoMFA implementation as used in these studies, during leave-one-out cross-validation, component extraction ends only when the resulting SDEP value first increases. Of course the analyst may then truncate the “#components” to a smaller value, but in these studies, such a necessarily subjective decision seemed inappropriate.

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Acknowledgment

It is a great pleasure to thank Bernd Wendt for calling attention to the didactic features of the Selwood data set.

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Correspondence to Richard D. Cramer.

Electronic supplementary material

All templates and training sets referenced in the Results section.

Below is the link to the electronic supplementary material.

All templates and training sets referenced in the Results section (SDF 82 kb)

Supplementary material 2 (SDF 7 kb)

Supplementary material 3 (SDF 6 kb)

Supplementary material 4 (SDF 6 kb)

Supplementary material 5 (SDF 45 kb)

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Supplementary material 18 (SDF 74 kb)

Supplementary material 19 (SDF 190 kb)

Supplementary material 20 (SDF 54 kb)

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Cramer, R.D. R-group template CoMFA combines benefits of “ad hoc” and topomer alignments using 3D-QSAR for lead optimization. J Comput Aided Mol Des 26, 805–819 (2012). https://doi.org/10.1007/s10822-012-9583-9

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  • DOI: https://doi.org/10.1007/s10822-012-9583-9

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