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"DompeKeys": a set of novel substructure-based descriptors for efficient chemical space mapping, development and structural interpretation of machine learning models, and indexing of large databases.
Manelfi, Candida; Tazzari, Valerio; Lunghini, Filippo; Cerchia, Carmen; Fava, Anna; Pedretti, Alessandro; Stouten, Pieter F W; Vistoli, Giulio; Beccari, Andrea Rosario.
Afiliación
  • Manelfi C; EXSCALATE, Dompé Farmaceutici SpA, Via Tommaso de Amicis 95, 80123, Napoli, Italy.
  • Tazzari V; EXSCALATE, Dompé Farmaceutici SpA, Via Tommaso de Amicis 95, 80123, Napoli, Italy.
  • Lunghini F; EXSCALATE, Dompé Farmaceutici SpA, Via Tommaso de Amicis 95, 80123, Napoli, Italy.
  • Cerchia C; Department of Pharmacy, University of Naples "Federico II", Via D. Montesano 49, 80131, Napoli, Italy.
  • Fava A; EXSCALATE, Dompé Farmaceutici SpA, Via Tommaso de Amicis 95, 80123, Napoli, Italy.
  • Pedretti A; Dipartimento di Scienze Farmaceutiche, Università degli Studi di Milano, Via Mangiagalli, 25, 20133, Milano, Italy.
  • Stouten PFW; EXSCALATE, Dompé Farmaceutici SpA, Via Tommaso de Amicis 95, 80123, Napoli, Italy.
  • Vistoli G; Stouten Pharma Consultancy BV, Kempenarestraat 47, 2860, Sint-Katelijne-Waver, Belgium.
  • Beccari AR; Dipartimento di Scienze Farmaceutiche, Università degli Studi di Milano, Via Mangiagalli, 25, 20133, Milano, Italy.
J Cheminform ; 16(1): 21, 2024 Feb 23.
Article en En | MEDLINE | ID: mdl-38395961
ABSTRACT
The conversion of chemical structures into computer-readable descriptors, able to capture key structural aspects, is of pivotal importance in the field of cheminformatics and computer-aided drug design. Molecular fingerprints represent a widely employed class of descriptors; however, their generation process is time-consuming for large databases and is susceptible to bias. Therefore, descriptors able to accurately detect predefined structural fragments and devoid of lengthy generation procedures would be highly desirable. To meet additional needs, such descriptors should also be interpretable by medicinal chemists, and suitable for indexing databases with trillions of compounds. To this end, we developed-as integral part of EXSCALATE, Dompé's end-to-end drug discovery platform-the DompeKeys (DK), a new substructure-based descriptor set, which encodes the chemical features that characterize compounds of pharmaceutical interest. DK represent an exhaustive collection of curated SMARTS strings, defining chemical features at different levels of complexity, from specific functional groups and structural patterns to simpler pharmacophoric points, corresponding to a network of hierarchically interconnected substructures. Because of their extended and hierarchical structure, DK can be used, with good performance, in different kinds of applications. In particular, we demonstrate how they are very well suited for effective mapping of chemical space, as well as substructure search and virtual screening. Notably, the incorporation of DK yields highly performing machine learning models for the prediction of both compounds' activity and metabolic reaction occurrence. The protocol to generate the DK is freely available at https//dompekeys.exscalate.eu and is fully integrated with the Molecular Anatomy protocol for the generation and analysis of hierarchically interconnected molecular scaffolds and frameworks, thus providing a comprehensive and flexible tool for drug design applications.
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Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: J Cheminform Año: 2024 Tipo del documento: Article País de afiliación: Italia

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: J Cheminform Año: 2024 Tipo del documento: Article País de afiliación: Italia