Scientific journal paper Q1
Chemical patterns of proteasome inhibitors: lessons learned from two decades of drug design
Romina A. Guedes (Guedes, R. A.); Natália Aniceto (Aniceto, N. ); Andrade, M. A. P. (Andrade, M. A. P.); J. A. R. Salvador (Salvador, J. A. R.); Rita C. Guedes (Guedes, R. C.);
Journal Title
International Journal of Molecular Sciences
Year (definitive publication)
2019
Language
English
Country
Switzerland
More Information
Web of Science®

Times Cited: 9

(Last checked: 2024-07-05 16:58)

View record in Web of Science®


: 0.5
Scopus

Times Cited: 10

(Last checked: 2024-07-06 10:10)

View record in Scopus


: 0.4
Google Scholar

Times Cited: 11

(Last checked: 2024-07-04 01:47)

View record in Google Scholar

Abstract
Drug discovery now faces a new challenge, where the availability of experimental data is no longer the limiting step, and instead, making sense of the data has gained a new level of importance, propelled by the extensive incorporation of cheminformatics and bioinformatics methodologies into the drug discovery and development pipeline. These enable, for example, the inference of structure-activity relationships that can be useful in the discovery of new drug candidates. One of the therapeutic applications that could benefit from this type of data mining is proteasome inhibition, given that multiple compounds have been designed and tested for the last 20 years, and this collection of data is yet to be subjected to such type of assessment. This study presents a retrospective overview of two decades of proteasome inhibitors development (680 compounds), in order to gather what could be learned from them and apply this knowledge to any future drug discovery on this subject. Our analysis focused on how different chemical descriptors coupled with statistical tools can be used to extract interesting patterns of activity. Multiple instances of the structure-activity relationship were observed in this dataset, either for isolated molecular descriptors (e.g., molecular refractivity and topological polar surface area) as well as scaffold similarity or chemical space overlap. Building a decision tree allowed the identification of two meaningful decision rules that describe the chemical parameters associated with high activity. Additionally, a characterization of the prevalence of key functional groups gives insight into global patterns followed in drug discovery projects, and highlights some systematically underexplored parts of the chemical space. The various chemical patterns identified provided useful insight that can be applied in future drug discovery projects, and give an overview of what has been done so far.
Acknowledgements
--
Keywords
Proteasome,Proteasome inhibitors,Molecular descriptors,Fingerprints,Chemical space,Decision tree,Structure-activity relationship
  • Computer and Information Sciences - Natural Sciences
  • Chemical Sciences - Natural Sciences
  • Biological Sciences - Natural Sciences
  • Chemical Engineering - Engineering and Technology
  • Clinical Medicine - Medical and Health Sciences
  • Other Medical Sciences - Medical and Health Sciences
Funding Records
Funding Reference Funding Entity
LISBOA-01-0145-FEDER-016405 (SAICTPAC/0019/2015) Comissão Europeia
CENTRO-01-0247-FEDER-003269 Comissão Europeia
UID/DTP/04138/2019 Fundação para a Ciência e a Tecnologia
SFRH/BD/104441/2014 Fundação para a Ciência e a Tecnologia
PTDC/QEQ-MED/7042/2014 Fundação para a Ciência e a Tecnologia
UID/MULTI/0446/2013 Fundação para a Ciência e a Tecnologia