基于araz酶的融合蛋白与各种配体的比较研究,更有效地靶向癌症治疗:一种计算机分析。

IF 2.1 Q3 CHEMISTRY, MEDICINAL
Rezvan Mehrab, Hamid Sedighian, Fattah Sotoodehnejadnematalahi, Raheleh Halabian, Abbas Ali Imani Fooladi
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引用次数: 2

摘要

背景与目的:近年来,人们提出利用免疫毒素进行肿瘤靶向治疗,以寻找对肿瘤细胞高效且对正常细胞副作用最小的新型抗癌药物。我们设计并比较了几种arazyme (AraA)为基础的融合蛋白与不同的配体,以选择最佳靶向治疗白细胞介素13受体α2 (IL13Rα2)过表达的癌细胞。为此,我们选择IL13Rα2作为受体,IL13和IL13作为受体。E13K分别作为原生配体和突变配体进行评价。此外,还选择了Pep-1和A2b11作为靶向癌症治疗的肽配体。实验方法:利用多个生物信息学服务器进行结构设计和优化。通过I-TASSER、Q-Mean、ProSA、Ramachandran plot和Verify3D程序对嵌合蛋白的结构进行了预测和验证。用ProtParam、ToxinPred和VaxiJen预测其理化性质、毒性和抗原性。利用HawkDock、LigPlot+和GROMACS软件对接和分子动力学模拟配体-受体相互作用。发现/结果:在硅片上的结果表明,AraA-A2b11具有较高的置信度评分值,高分辨率晶体结构获得了Q-mean评分。所有嵌合蛋白均稳定、无毒、无抗原。AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13保留了其天然结构,基于配体-受体对接和分子动力学分析,AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13与IL13Rα2的结合能力足够强。结论与意义:基于生物信息学结果,AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13是一个稳定的具有两个独立结构域的融合蛋白,与IL13Rα2受体具有高亲和力。因此,AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13融合蛋白可能是一种新的强有力的靶向肿瘤治疗候选蛋白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A comparative study of the arazyme-based fusion proteins with various ligands for more effective targeting cancer therapy: an <i>in-silico</i> analysis.

A comparative study of the arazyme-based fusion proteins with various ligands for more effective targeting cancer therapy: an <i>in-silico</i> analysis.

A comparative study of the arazyme-based fusion proteins with various ligands for more effective targeting cancer therapy: an <i>in-silico</i> analysis.

A comparative study of the arazyme-based fusion proteins with various ligands for more effective targeting cancer therapy: an in-silico analysis.

Background and purpose: Recently, the use of immunotoxins for targeted cancer therapy has been proposed, to find new anticancer drugs with high efficacy on tumor cells with minimal side effects on normal cells. we designed and compared several arazyme (AraA)-based fusion proteins with different ligands to choose the best-targeted therapy for interleukin 13 receptor alpha 2 (IL13Rα2)-overexpressed cancer cells. For this purpose, IL13Rα2 was selected as a receptor and IL13 and IL13.E13K were evaluated as native and mutant ligands, respectively. In addition, Pep-1 and A2b11 were chosen as the peptide ligands for targeted cancer therapy.

Experimental approach: Several bioinformatics servers were used for designing constructs and optimization. The structures of the chimeric proteins were predicted and verified by I-TASSER, Q-Mean, ProSA, Ramachandran plot, and Verify3D program. Physicochemical properties, toxicity, and antigenicity were predicted by ProtParam, ToxinPred, and VaxiJen. HawkDock, LigPlot+, and GROMACS software were used for docking and molecular dynamics simulation of the ligand-receptor interaction.

Findings/results: The in silico results showed AraA-A2b11 has higher values of confidence score and Q-mean score was obtained for high-resolution crystal structures. All chimeric proteins were stable, non-toxic, and non-antigenic. AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13 retained its natural structure and based on ligand-receptor docking and molecular dynamic analysis, the binding ability of AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13 to IL13Rα2 was sufficiently strong.

Conclusion and implications: Based on the bioinformatics result AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13 was a stable fusion protein with two separate domains and high affinity with the IL13Rα2 receptor. Therefore, AraA-(A(EAAAK)4ALEA(EAAAK)4A)2-IL13 fusion protein could be a new potent candidate for target cancer therapy.

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来源期刊
Research in Pharmaceutical Sciences
Research in Pharmaceutical Sciences CHEMISTRY, MEDICINAL-
CiteScore
3.60
自引率
19.00%
发文量
50
审稿时长
34 weeks
期刊介绍: Research in Pharmaceutical Sciences (RPS) is included in Thomson Reuters ESCI Web of Science (searchable at WoS master journal list), indexed with PubMed and PubMed Central and abstracted in the Elsevier Bibliographic Databases. Databases include Scopus, EMBASE, EMCare, EMBiology and Elsevier BIOBASE. It is also indexed in several specialized databases including Scientific Information Database (SID), Google Scholar, Iran Medex, Magiran, Index Copernicus (IC) and Islamic World Science Citation Center (ISC).
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