QSAR-Co-X: an open source toolkit for multitarget QSAR modelling
Quantitative structure activity relationships (QSAR) modelling is a well-known computational tool, often used in a wide variety of applications. Yet one of the major drawbacks of conventional QSAR modelling is that models are set up based on a limited number of experimental and/or theoretical condit...
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Veröffentlicht in: | Journal of cheminformatics 2021-04, Vol.13 (1), p.29-29, Article 29 |
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Sprache: | eng |
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Zusammenfassung: | Quantitative structure activity relationships (QSAR) modelling is a well-known computational tool, often used in a wide variety of applications. Yet one of the major drawbacks of conventional QSAR modelling is that models are set up based on a limited number of experimental and/or theoretical conditions. To overcome this, the so-called multitasking or multitarget QSAR (mt-QSAR) approaches have emerged as new computational tools able to integrate diverse chemical and biological data into a
single
model equation, thus extending and improving the reliability of this type of modelling. We have developed
QSAR-Co-X
, an open source python–based toolkit (available to download at
https://github.com/ncordeirfcup/QSAR-Co-X
) for supporting mt-QSAR modelling following the Box-Jenkins moving average approach. The new toolkit embodies several functionalities for dataset selection and curation plus computation of descriptors, for setting up linear and non-linear models, as well as for a comprehensive results analysis. The workflow within this toolkit is guided by a cohort of multiple statistical parameters and graphical outputs onwards assessing both the predictivity and the robustness of the derived mt-QSAR models. To monitor and demonstrate the functionalities of the designed toolkit, four case-studies pertaining to previously reported datasets are examined here. We believe that this new toolkit, along with our previously launched
QSAR-Co
code, will significantly contribute to make mt-QSAR modelling widely and routinely applicable. |
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ISSN: | 1758-2946 1758-2946 |
DOI: | 10.1186/s13321-021-00508-0 |