Alizadeh Ali A, Dastmalchi Siavoush
Biotechnology Research Center, Tabriz University of Medical Sciences, Tabriz, Iran.
Curr Comput Aided Drug Des. 2021;17(2):225-234. doi: 10.2174/1573409916666200217091456.
Short bowel syndrome (SBS) is a disabling condition that occurs following the loss of substantial portions of the intestine, leading to inadequate absorption of nutrients and fluids. Teduglutide is the only drug that has been FDA-approved for long-term treatment of SBS. This medicine exerts its biological effects through binding to the GLP-2 receptor.
The current study aimed to use computational mutagenesis approaches to design novel potent analogues of teduglutide. To this end, the constructed teduglutide-GLP2R 3D model was subjected to the alanine scanning mutagenesis where ARG, PHE, ILE, LEU, ILE and LYS were identified as the key amino acids involved in ligand-receptor interaction. In order to design potent teduglutide analogues, using MAESTROweb machine learning method, the residues of teduglutide were virtually mutated into all naturally occurring amino acids and the affinity improving mutations were selected for further analysis using PDBePISA methodology which interactively investigates the interactions established at the interfaces of macromolecules.
The calculations resulted in D15I, D15L, D15M and N24M mutations, which can improve the binding ability of the ligand to the receptor. The final evaluation of identified mutations was performed by molecular dynamics simulations, indicating that D15I and D15M are the most reliable mutations to increase teduglutide affinity towards its receptor.
The findings in the current study may facilitate designing more potent teduglutide analogues leading to the development of novel treatments in short bowel syndrome.
短肠综合征(SBS)是一种致残性疾病,发生于大部分肠道丧失之后,导致营养物质和液体吸收不足。替度鲁肽是唯一已获美国食品药品监督管理局(FDA)批准用于长期治疗短肠综合征的药物。这种药物通过与胰高血糖素样肽-2(GLP-2)受体结合发挥其生物学效应。
本研究旨在使用计算诱变方法设计新型强效替度鲁肽类似物。为此,构建的替度鲁肽-GLP2R三维模型进行了丙氨酸扫描诱变,其中精氨酸(ARG)、苯丙氨酸(PHE)、异亮氨酸(ILE)、亮氨酸(LEU)、异亮氨酸(ILE)和赖氨酸(LYS)被确定为参与配体-受体相互作用的关键氨基酸。为了设计强效替度鲁肽类似物,使用MAESTROweb机器学习方法,将替度鲁肽的残基虚拟突变为所有天然存在的氨基酸,并使用PDBePISA方法选择亲和力提高的突变进行进一步分析,该方法交互式研究在大分子界面处建立的相互作用。
计算得出D15I、D15L、D15M和N24M突变,这些突变可提高配体与受体的结合能力。通过分子动力学模拟对鉴定出的突变进行最终评估,表明D15I和D15M是增加替度鲁肽对其受体亲和力的最可靠突变。
本研究的结果可能有助于设计更有效的替度鲁肽类似物,从而开发出治疗短肠综合征的新疗法。