THE APPLICATION OF IN SILICO TOOLS IN THE DEVELOPMENT OF CHEMOTHERAPEUTIC AGENTS

Authors

  • Marcia Helena Rodrigues Velloso Author

DOI:

https://doi.org/10.51473/rcmos.v1i2.2024.692

Keywords:

Chemotherapeutics. In Silico Methods. Molecular Docking. Molecular Dynamics. QSAR.

Abstract

This article explores the use of in silico tools in the development of chemotherapeutics, highlighting their ability to accelerate the discovery and optimization of new cancer treatments. Through techniques such as molecular docking, molecular dynamics, QSAR, and machine learning, researchers can simulate molecular interactions, enabling the identification and refinement of selective kinase inhibitors and other molecules with therapeutic potential. The studies cited demonstrate how these approaches contribute to more effective and personalized treatments, reducing both the costs and the time of drug development. Moreover, the integration of these techniques promises to revolutionize anticancer therapies, moving the field of oncology into an era of precision medicine.

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References

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Published

2024-10-24

How to Cite

VELLOSO, Marcia Helena Rodrigues. THE APPLICATION OF IN SILICO TOOLS IN THE DEVELOPMENT OF CHEMOTHERAPEUTIC AGENTS. Multidisciplinary Scientific Journal The Knowledge, Brasil, v. 1, n. 2, 2024. DOI: 10.51473/rcmos.v1i2.2024.692. Disponível em: https://submissoesrevistacientificaosaber.com/index.php/rcmos/article/view/692.. Acesso em: 6 nov. 2024.

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