拓扑异构酶
基质(水族馆)
底物特异性
化学
组合化学
计算生物学
生物物理学
立体化学
DNA
酶
生物
纳米技术
生物化学
材料科学
生态学
作者
Yasir Mamun,Ally Aguado,Ana M Preza,Abhilasha Kadel,Anjani Mogallur,Bernardo González,José Cesar Rosa Neto,Daniel Diaz,Polina Evdokimova,Ukesh Karki,Yuk‐Ching Tse‐Dinh,Prem P. Chapagain
标识
DOI:10.1016/j.csbj.2025.03.041
摘要
Advancements in biophysical techniques such as X-ray crystallography and Cryo-EM have allowed the determination of three-dimensional structures of many proteins and nucleic acids. There, however, is still a lack of 3D structures of proteins that are difficult to crystallize or proteins in complex with other macromolecules. With the advent of deep learning applications such as AlphaFold and RoseTTAFold, it is becoming possible to obtain 3D structures of proteins from their 1D sequences while also generating models of protein-nucleic acid complexes that have been difficult to capture through traditional methods. In this project, we utilized AlphaFold3 (AF3) to create a large number of predicted complexes of two type IA topoisomerases: human topoisomerase 3 beta (hTOP3B) and Mycobacterium tuberculosis topoisomerase I bound to a single-stranded DNA (ssDNA). Topoisomerases are enzymes responsible for resolving topological barriers that arise during regular cellular activity. Obtaining structures of topoisomerase complexed with a ssDNA will allow us to discover possible sequence preferences of this enzyme and obtain structures that can be used to screen potential inhibitors. Our analysis showed that AF3 can predict the structure of the enzymes, especially the N-terminal domain, with high confidence. However, predicted protein-DNA complexes, especially with longer (> 25-mer) oligos, are unreliable. The models generated with shorter (9-mer) oligos are obtained with improved confidence and the substrates are placed similarly to crystal structures, but they do not reliably replicate the sequence specificity of the DNA binding of topoisomerase observed in biochemical assays and crystal structures.
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