Capasso Cristian, Magarkar Aniket, Cervera-Carrascon Victor, Fusciello Manlio, Feola Sara, Muller Martin, Garofalo Mariangela, Kuryk Lukasz, Tähtinen Siri, Pastore Lucio, Bunker Alex, Cerullo Vincenzo
Laboratory of Immunovirotherapy, Drug Research Program, University of Helsinki, Helsinki, Finland.
Centre for Drug Research at the Division of Pharmaceutical Biosciences, Faculty of Pharmacy, University of Helsinki, Helsinki, Finland.
Oncoimmunology. 2017 May 11;6(9):e1319028. doi: 10.1080/2162402X.2017.1319028. eCollection 2017.
Tolerance toward tumor antigens, which are shared by normal tissues, have often limited the efficacy of cancer vaccines. However, wild type epitopes can be tweaked to activate cross-reactive T-cell clones, resulting in antitumor activity. The design of these analogs (i.e., heteroclitic peptides) can be difficult and time-consuming since no automated tools are available. Hereby we describe the development of an framework to improve the selection of heteroclitic peptides. The Epitope Discovery and Improvement System (EDIS) was first validated by studying the model antigen SIINFEKL. Based on artificial neural network (ANN) predictions, we selected two mutant analogs that are characterized by an increased MHC-I binding affinity (SIINFKL) or increased TCR stimulation (SIIFEKL). Therapeutic vaccination using optimized peptides resulted in enhanced antitumor activity and against B16.OVA melanomas . The translational potential of the EDIS platform was further demonstrated by studying the melanoma-associated antigen tyrosinase related protein 2 (TRP2). Following therapeutic immunization with the EDIS-derived epitope SVYDFFWL, a significant reduction in the growth of established B16.F10 tumors was observed, suggesting a break in the tolerance toward the wild type epitope. Finally, we tested a multi vaccine approach, demonstrating that combination of wild type and mutant epitopes targeting both TRP2 and OVA antigens increases the antitumor response. In conclusion, by taking advantage of available prediction servers and molecular dynamics simulations, we generated an innovative platform for studying the initial sequences and selecting lead candidates with improved immunological features. Taken together, EDIS is the first automated algorithm-driven platform to speed up the design of heteroclitic peptides that can be publicly queried online.
对肿瘤抗原(正常组织也具有)的耐受性常常限制了癌症疫苗的疗效。然而,野生型表位可以进行调整以激活交叉反应性T细胞克隆,从而产生抗肿瘤活性。由于没有可用的自动化工具,这些类似物(即异源性肽)的设计可能既困难又耗时。在此,我们描述了一个用于改进异源性肽选择的框架的开发。表位发现与改进系统(EDIS)首先通过研究模型抗原SIINFEKL进行了验证。基于人工神经网络(ANN)预测,我们选择了两种突变类似物,其特征分别为MHC-I结合亲和力增加(SIINFKL)或TCR刺激增加(SIIFEKL)。使用优化后的肽进行治疗性疫苗接种可增强抗肿瘤活性,并对抗B16.OVA黑色素瘤。通过研究黑色素瘤相关抗原酪氨酸酶相关蛋白2(TRP2),进一步证明了EDIS平台的转化潜力。在用EDIS衍生的表位SVYDFFWL进行治疗性免疫后,观察到已建立的B16.F10肿瘤生长显著减少,这表明对野生型表位的耐受性被打破。最后,我们测试了一种多疫苗方法,证明靶向TRP2和OVA抗原的野生型和突变表位组合可增强抗肿瘤反应。总之,通过利用现有的预测服务器和分子动力学模拟,我们生成了一个创新平台,用于研究初始序列并选择具有改善免疫特征的先导候选物。综上所述,EDIS是第一个由自动化算法驱动的平台,可加速异源性肽的设计,且可在线公开查询。