Rocha Luiz Gustavo do Nascimento, Guimarães Paul Anderson Souza, Carvalho Maria Gabriela Reis, Ruiz Jeronimo Conceição
Biologia Computacional e Sistemas (BCS), Instituto Oswaldo Cruz (IOC), Fundação Oswaldo Cruz, Rio de Janeiro 21040-900, Brazil.
Grupo Informática de Biossistemas e Genômica, Instituto René Rachou, Fundação Oswaldo Cruz, Belo Horizonte 30190-002, Brazil.
Vaccines (Basel). 2024 Jul 24;12(8):836. doi: 10.3390/vaccines12080836.
Therapeutic cancer vaccines have been considered in recent decades as important immunotherapeutic strategies capable of leading to tumor regression. In the development of these vaccines, the identification of neoepitopes plays a critical role, and different computational methods have been proposed and employed to direct and accelerate this process. In this context, this review identified and systematically analyzed the most recent studies published in the literature on the computational prediction of epitopes for the development of therapeutic vaccines, outlining critical steps, along with the associated program's strengths and limitations. A scoping review was conducted following the PRISMA extension (PRISMA-ScR). Searches were performed in databases (Scopus, PubMed, Web of Science, Science Direct) using the keywords: neoepitope, epitope, vaccine, prediction, algorithm, cancer, and tumor. Forty-nine articles published from 2012 to 2024 were synthesized and analyzed. Most of the identified studies focus on the prediction of epitopes with an affinity for MHC I molecules in solid tumors, such as lung carcinoma. Predicting epitopes with class II MHC affinity has been relatively underexplored. Besides neoepitope prediction from high-throughput sequencing data, additional steps were identified, such as the prioritization of neoepitopes and validation. Mutect2 is the most used tool for variant calling, while NetMHCpan is favored for neoepitope prediction. Artificial/convolutional neural networks are the preferred methods for neoepitope prediction. For prioritizing immunogenic epitopes, the random forest algorithm is the most used for classification. The performance values related to the computational models for the prediction and prioritization of neoepitopes are high; however, a large part of the studies still use microbiome databases for training. The in vitro/in vivo validations of the predicted neoepitopes were verified in 55% of the analyzed studies. Clinical trials that led to successful tumor remission were identified, highlighting that this immunotherapeutic approach can benefit these patients. Integrating high-throughput sequencing, sophisticated bioinformatics tools, and rigorous validation methods through in vitro/in vivo assays as well as clinical trials, the tumor neoepitope-based vaccine approach holds promise for developing personalized therapeutic vaccines that target specific tumor cancers.
近几十年来,治疗性癌症疫苗一直被视为能够导致肿瘤消退的重要免疫治疗策略。在这些疫苗的研发过程中,新抗原表位的识别起着关键作用,人们已经提出并采用了不同的计算方法来指导和加速这一过程。在此背景下,本综述识别并系统分析了文献中发表的关于治疗性疫苗表位计算预测的最新研究,概述了关键步骤以及相关程序的优缺点。本综述遵循PRISMA扩展版(PRISMA-ScR)进行范围综述。使用关键词“新抗原表位”“表位”“疫苗”“预测”“算法”“癌症”和“肿瘤”在数据库(Scopus、PubMed、Web of Science、ScienceDirect)中进行检索。对2012年至2024年发表的49篇文章进行了综合分析。大多数已识别的研究集中于预测实体瘤(如肺癌)中与MHC I分子具有亲和力的表位。对具有II类MHC亲和力的表位的预测相对较少受到关注。除了从高通量测序数据中预测新抗原表位外,还确定了其他步骤,如新抗原表位的优先级排序和验证。Mutect2是最常用的变异检测工具,而NetMHCpan则更适合用于新抗原表位预测。人工/卷积神经网络是新抗原表位预测的首选方法。对于免疫原性表位的优先级排序,随机森林算法是最常用的分类方法。与新抗原表位预测和优先级排序的计算模型相关的性能值很高;然而,很大一部分研究仍使用微生物组数据库进行训练。在55%的分析研究中验证了预测的新抗原表位的体外/体内验证。确定了导致肿瘤成功缓解的临床试验,突出表明这种免疫治疗方法可以使这些患者受益。通过体外/体内试验以及临床试验整合高通量测序、复杂的生物信息学工具和严格的验证方法,基于肿瘤新抗原表位的疫苗方法有望开发出针对特定肿瘤癌症的个性化治疗疫苗。