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Molecular Insights into the Impact of Mutations on the Binding Affinity of Targeted Covalent Inhibitors of BTK. | LitMetric

AI Article Synopsis

  • Targeted covalent inhibitors (TCIs) have gained renewed focus in kinase drug discovery, particularly for B-cell cancers, with ibrutinib being a notable example.
  • Challenges such as selectivity and resistance mutations hinder clinical effectiveness, prompting the need for computational methods to predict how mutations affect drug binding.
  • The study employs in silico physics-based methods to analyze how specific TCIs, including FDA-approved drugs like acalabrutinib and zanubrutinib, interact with mutated BTK, providing insights into their binding dynamics and structural impacts.

Article Abstract

Targeted covalent inhibitors (TCIs) have witnessed a significant resurgence in recent years, particularly in the kinase drug discovery field for treating diverse clinical indications. The inhibition of Bruton's tyrosine kinase (BTK) for treating B-cell cancers is a classic example where TCIs such as ibrutinib have had breakthroughs in targeted therapy. However, selectivity remains challenging, and the emergence of resistance mutations is a critical concern for clinical efficacy. Computational methods that can accurately predict the impact of mutations on inhibitor binding affinity could prove helpful in informing targeted approaches─providing insights into drug resistance mechanisms. In addition, such systems could help guide the systematic evaluation and impact of mutations in disease models for optimal experimental design. Here, we have employed in silico physics-based methods to understand the effects of mutations on the binding affinity and conformational dynamics of select TCIs of BTK. The TCIs studied include ibrutinib, acalabrutinib, and zanubrutinib─all of which are FDA-approved drugs for treating multiple forms of leukemia and lymphoma. Our results offer useful molecular insights into the structural determinants, thermodynamics, and conformational energies that impact ligand binding for this biological target of clinical relevance.

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Source
http://dx.doi.org/10.1021/acs.jpcb.4c00310DOI Listing

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