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Navigating the complexity of p53-DNA binding: implications for cancer therapy
被引:1
作者:
Thayer, Kelly M.
[1
,2
,3
,4
]
Stetson, Sean
[2
,3
]
Caballero, Fernando
[1
,3
]
Chiu, Christopher
[3
]
Han, In Sub Mark
[4
]
机构:
[1] Wesleyan Univ, Coll Integrat Sci, Middletown, CT 06457 USA
[2] Wesleyan Univ, Dept Chem, Middletown, CT 06457 USA
[3] Wesleyan Univ, Dept Math & Comp Sci, Middletown, CT 06457 USA
[4] Wesleyan Univ, Mol Biophys Program, Middletown, CT 06457 USA
关键词:
p53;
Allostery;
Drug design;
Machine learning;
MD-MSM;
MD sector;
Graph theory;
P53;
TUMOR-SUPPRESSOR;
MOLECULAR-DYNAMICS SIMULATIONS;
DNA-BINDING;
CRYSTAL-STRUCTURE;
MUTANT P53;
SCORING FUNCTION;
STRUCTURAL BASIS;
GENE-EXPRESSION;
CORE DOMAIN;
C-TERMINUS;
D O I:
10.1007/s12551-024-01207-4
中图分类号:
Q6 [生物物理学];
学科分类号:
071011 ;
摘要:
The tumor suppressor protein p53, a transcription factor playing a key role in cancer prevention, interacts with DNA as its primary means of determining cell fate in the event of DNA damage. When it becomes mutated, it opens damaged cells to the possibility of reproducing unchecked, which can lead to formation of cancerous tumors. Despite its critical role, therapies at the molecular level to restore p53 native function remain elusive, due to its complex nature. Nevertheless, considerable information has been amassed, and new means of investigating the problem have become available. Objectives We consider structural, biophysical, and bioinformatic insights and their implications for the role of direct and indirect readout and how they contribute to binding site recognition, particularly those of low consensus. We then pivot to consider advances in computational approaches to drug discovery. Materials and methods We have conducted a review of recent literature pertinent to the p53 protein. Results Considerable literature corroborates the idea that p53 is a complex allosteric protein that discriminates its binding sites not only via consensus sequence through direct H-bond contacts, but also a complex combination of factors involving the flexibility of the binding site. New computational methods have emerged capable of capturing such information, which can then be utilized as input to machine learning algorithms towards the goal of more intelligent and efficient de novo allosteric drug design. Conclusions Recent improvements in machine learning coupled with graph theory and sector analysis hold promise for advances to more intelligently design allosteric effectors that may be able to restore native p53-DNA binding activity to mutant proteins.
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页码:479 / 496
页数:18
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