Peptidic Compound as DNA Binding Agent: In Silico Fragment-based Design, Machine Learning, Molecular Modeling, Synthesis, and DNA Binding Evaluation

Dara Dastan, Shabnam Soleymanekhtiari, Ahmad Ebadi
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Abstract

Background:: Cancer remains a global burden, with increasing mortality rates. Current cancer treatments involve controlling the transcription of malignant DNA genes, either directly or indirectly. DNA exhibits various structural forms, including the G-quadruplex (G4), a secondary structure in guanine-rich regions. G4 plays a crucial role in cellular processes by regulating gene expression and telomerase function. Researchers have recently identified G4-stabilizing binding agents as promising anti-cancer compounds. Additionally, peptides have emerged as effective anticancer pharmaceuticals due to their ability to form multiple hydrogen bonds, electrostatic interactions, and van der Waals forces. These properties enable peptides to bind to specific areas of DNA chains selectively. However, despite these advancements, designing G4-binding peptides remains challenging due to a lack of comprehensive information. Objective:: In our present study, we employed an in silico fragment-based approach to design G4- binding peptides. This innovative method combines machine learning classification, molecular docking, and dynamics simulation Methods:: AutoDock Vina and Gromacs performed molecular docking and MD simulation, respectively. The machine learning algorithm was implemented by Scikit-learn. Peptide synthesis was performed using the SPPS method. The DNA binding affinity was measured by applying spectrophotometric titration. Results:: As a result of this approach, we identified a high-scoring peptide (p10; sequence: YWRWR). The association constant (Ka) between p10 and the ctDNA double helix chain was 4.45 × 105 M-1. Molecular modeling studies revealed that p10 could form a stable complex with the G4 surface. Conclusion:: The obtained Ka value of 4.45 × 105 M-1 indicates favorable interactions. Our findings highlight the role of machine learning and molecular modeling approaches in designing new G4-binding peptides. Further research in this field could lead to targeted treatments that exploit the unique properties of G4 structures.
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作为 DNA 结合剂的多肽化合物:基于片段的硅学设计、机器学习、分子建模、合成和 DNA 结合评估
背景癌症仍然是全球的负担,死亡率不断上升。目前的癌症治疗方法包括直接或间接控制恶性 DNA 基因的转录。DNA 具有多种结构形式,包括 G-四叠体(G4),这是一种富含鸟嘌呤区域的二级结构。G4 通过调节基因表达和端粒酶功能,在细胞过程中发挥着至关重要的作用。研究人员最近发现,G4 稳定结合剂是很有前景的抗癌化合物。此外,由于肽能形成多种氢键、静电相互作用和范德华力,它们已成为有效的抗癌药物。这些特性使肽能够选择性地与 DNA 链的特定区域结合。然而,尽管取得了这些进展,但由于缺乏全面的信息,设计 G4 结合肽仍然具有挑战性。研究目的在本研究中,我们采用了一种基于片段的硅学方法来设计 G4 结合肽。这种创新方法结合了机器学习分类、分子对接和动力学模拟:AutoDock Vina 和 Gromacs 分别进行了分子对接和 MD 模拟。机器学习算法由 Scikit-learn 实现。多肽合成采用 SPPS 方法。采用分光光度滴定法测量 DNA 结合亲和力。结果通过这种方法,我们发现了一个高分肽(p10;序列:YWRWR)。p10 与 ctDNA 双螺旋链之间的关联常数(Ka)为 4.45 × 105 M-1。分子建模研究表明,p10 能与 G4 表面形成稳定的复合物。结论4.45 × 105 M-1 的 Ka 值表明存在有利的相互作用。我们的研究结果凸显了机器学习和分子建模方法在设计新的 G4 结合肽方面的作用。在这一领域的进一步研究可能会开发出利用 G4 结构独特性质的靶向治疗方法。
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