Ismail Saba, Barakat Khaled
Faculty of Pharmacy and Pharmaceutical Sciences, University of Alberta, Canada.
Faculty of Pharmacy and Pharmaceutical Sciences, University of Alberta, Canada.
Comput Biol Med. 2025 May;190:110081. doi: 10.1016/j.compbiomed.2025.110081. Epub 2025 Apr 3.
Cancer usually evolves through the accumulation of several genetic alterations. In this context, somatic mutations create tumor-specific neoepitopes, termed neoantigens. These neoantigens are recognized by T cells as non-self, rendering them prime candidates for cancer vaccine design. Such vaccines train the human defense system to identify and eliminate cancer cells effectively Therefore, neoantigen-based vaccines can be a viable strategy for cancer immunotherapy. Their distinctive capacity to trigger a specific immune response against cancer cells highlights their importance as a promising cancer immunotherapy approach. The objective of the current study is to use various computer-aided design tools to hypothesize a multi-neoepitope vaccine construct (MNVC) to target melanoma. In building this multi-neoantigen-based vaccine, we used experimentally verified neoantigens from the cancer epitope database and analytical resources (CEDAR), ensuring the relevance of our approach. A collection of 700 neoantigens from the CEDAR database was subjected to immunoinformatics analysis, shortlisting them to 08 neoantigens. These were linked together using GPGPG linkers to create an MNVC, subsequently conjugated to a β-defensin adjuvant through an EAAAK linker to enhance immune response. The construct was predicted to be highly antigenic, with an antigenic score of 0.8335. Molecular docking revealed binding affinity with immune receptors such as MHC-I, MHC-II, and TLR-9 with estimated energy scores of -1045.5, -1517.9, and -1020.1 kcal/mol, respectively. This study suggestes that the designed vaccine candidate might exhibit potential as a treatment for melanoma cancer. Further experimental testing is essential to confirm its effectiveness and safety in elicting an immune response.
癌症通常通过多种基因改变的积累而演变。在这种情况下,体细胞突变产生肿瘤特异性新表位,即新抗原。这些新抗原被T细胞识别为非自身抗原,使其成为癌症疫苗设计的主要候选对象。此类疫苗训练人体防御系统有效识别并消除癌细胞。因此,基于新抗原的疫苗可能是一种可行的癌症免疫治疗策略。它们触发针对癌细胞的特异性免疫反应的独特能力凸显了其作为一种有前景的癌症免疫治疗方法的重要性。本研究的目的是使用各种计算机辅助设计工具来设想一种针对黑色素瘤的多新表位疫苗构建体(MNVC)。在构建这种基于多新抗原的疫苗时,我们使用了来自癌症表位数据库和分析资源(CEDAR)的经实验验证的新抗原,以确保我们方法的相关性。对来自CEDAR数据库的700种新抗原进行免疫信息学分析,将其筛选至8种新抗原。使用GPGPG接头将这些新抗原连接在一起以创建MNVC,随后通过EAAAK接头将其与β-防御素佐剂偶联以增强免疫反应。预测该构建体具有高度抗原性,抗原分数为0.8335。分子对接显示与MHC-I、MHC-II和TLR-9等免疫受体具有结合亲和力,估计能量分数分别为-1045.5、-1517.9和-1020.1千卡/摩尔。本研究表明,设计的候选疫苗可能对黑色素瘤具有治疗潜力。进一步的实验测试对于确认其引发免疫反应的有效性和安全性至关重要。