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Machine learning-based analysis of electronic properties as predictors of anticholinesterase activity in chalcone derivatives

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Author(s):
Buzelli, Thiago ; Ipaves, Bruno ; Gollino, Felipe ; Almeida, Wanda Pereira ; Galvao, Douglas Soares ; Autreto, Pedro Alves da Silva
Total Authors: 6
Document type: Journal article
Source: COMPUTATIONAL AND THEORETICAL CHEMISTRY; v. 1249, p. 7-pg., 2025-05-14.
Abstract

In this study, we investigated the correlation between the electronic properties of anticholinesterase compounds and their biological activity. While this correlation has been effectively explored in previous studies, we employed a more advanced approach: machine learning. We analyzed a set of 22 molecules sharing a similar chalcone skeleton, categorizing them into two groups based on their IC50 indices: high and low activity. Using the open-source software Orca, we calculated the geometries and electronic structures of these molecules. Over a hundred parameters were extracted, including Mulliken and Lowdin electronic populations, molecular orbital energies, and Mayer's free valences, forming the foundation for machine learning features. Through our analysis, we developed models capable of distinguishing between the two groups. Notably, the most informative descriptor relied solely on electronic populations and orbital energies. Identifying computationally relevant properties for biological activity enhances drug development efficiency, saving time and resources. (AU)

FAPESP's process: 24/11016-0 - Exploration of Unique Bi-Dimensional Architectures: Unveiling Structural, Mechanical, and Transport Characteristics Beyond the Scope of van der Waals solids
Grantee:Bruno Bueno Ipaves Nascimento
Support Opportunities: Scholarships in Brazil - Support Program for Fixating Young Doctors
FAPESP's process: 13/08293-7 - CCES - Center for Computational Engineering and Sciences
Grantee:Munir Salomao Skaf
Support Opportunities: Research Grants - Research, Innovation and Dissemination Centers - RIDC