Compromising the immunogenicity of diphtheria toxin-based immunotoxins through epitope engineering: An in silico approach

IF 1.3 4区 医学 Q4 PHARMACOLOGY & PHARMACY Journal of pharmacological and toxicological methods Pub Date : 2025-02-01 DOI:10.1016/j.vascn.2024.107571
Behrouz Golichenari , Mohammad Heiat , Ehsan Rezaei , Amirreza Ramshini , Amirhossein Sahebkar , Nazila Gholipour
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Abstract

Immunotoxins are genetically engineered recombinant proteins consisting of a targeting moiety, such as an antibody, and a cytotoxic toxin moiety of microbial origin. Pseudomonas exotoxin A and diphtheria toxin (DT) have been abundantly used in immunotoxins, with the latter applied as the toxin moiety of the FDA-approved drug Denileukin diftitox (ONTAK®). However, the use of immunotoxins provokes an adverse immune response in the host body against the toxin moiety, limiting their efficacy. In silico approaches have received increasing attention in protein engineering. In this study, the epitopes responsible for immunogenicity were identified through multiple platforms. By subtracting conserved and ligand-binding residues, K33, T111, and E112 were identified as common epitopes across all platforms. Substitution analysis evaluated alternative residues regarding their impact on protein stability, considering 19 different amino acid substitutions. Among the mutants explored, the T111A-E112G mutant exhibited the most destabilizing substitution for DT, thereby reducing immunogenicity. Finally, a 3D model of the mutant was generated and verified. The model was then docked with its native ligand NADH, and the complex's molecular behavior was simulated using molecular dynamics.
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通过表位工程降低白喉毒素免疫毒素的免疫原性:一种计算机方法。
免疫毒素是由靶向片段(如抗体)和微生物来源的细胞毒素片段组成的基因工程重组蛋白。假单胞菌外毒素A和白喉毒素(DT)已被广泛用于免疫毒素中,后者被用作fda批准的药物Denileukin diftitox (ONTAK®)的毒素部分。然而,免疫毒素的使用引起宿主体内对毒素部分的不良免疫反应,限制了它们的功效。计算机方法在蛋白质工程中受到越来越多的关注。在本研究中,通过多种平台鉴定了负责免疫原性的表位。通过减去保守残基和配体结合残基,K33、T111和E112被鉴定为所有平台上的共同表位。取代分析评估了替代残基对蛋白质稳定性的影响,考虑了19种不同的氨基酸取代。在所研究的突变体中,T111A-E112G突变体表现出最不稳定的DT替代,从而降低了免疫原性。最后,生成突变体的三维模型并进行验证。然后将该模型与其天然配体NADH对接,利用分子动力学模拟该配合物的分子行为。
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来源期刊
Journal of pharmacological and toxicological methods
Journal of pharmacological and toxicological methods PHARMACOLOGY & PHARMACY-TOXICOLOGY
CiteScore
3.60
自引率
10.50%
发文量
56
审稿时长
26 days
期刊介绍: Journal of Pharmacological and Toxicological Methods publishes original articles on current methods of investigation used in pharmacology and toxicology. Pharmacology and toxicology are defined in the broadest sense, referring to actions of drugs and chemicals on all living systems. With its international editorial board and noted contributors, Journal of Pharmacological and Toxicological Methods is the leading journal devoted exclusively to experimental procedures used by pharmacologists and toxicologists.
期刊最新文献
Editorial Board Predicting clinical outcomes from off-target receptor interactions using Secondary Intelligence™ Demonstrating the statistical and pharmacological sensitivity of nonclinical QTc analysis using a dofetilide dose–response in nonhuman primates Compromising the immunogenicity of diphtheria toxin-based immunotoxins through epitope engineering: An in silico approach Ligand-binding assays validated for quantitative bioanalysis of a novel antibody-drug conjugate in monkey serum and related application in a nonclinical study
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