NeoHunter:从测序数据中系统检测新抗原的灵活软件

Tianxing Ma, Zetong Zhao, Haochen Li, Lei Wei, Xuegong Zhang
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引用次数: 1

摘要

肿瘤中复杂的分子变化会产生各种突变肽。其中一些突变肽可以呈现在细胞表面,然后引起免疫反应,这种突变肽被称为新抗原。准确检测新抗原有助于设计个性化的癌症疫苗。虽然已经提出了一些新抗原检测计算框架,但它们大多只能检测SNV和indel衍生的新抗原。此外,目前的框架采用了过于简化的新抗原优先排序策略。这些因素阻碍了新抗原的全面有效检测。我们开发的 NeoHunter 是一款灵活的软件,可从不同格式的测序数据中系统地检测新抗原并进行优先排序。NeoHunter 不仅能检测 SNV 和 indel 衍生的新抗原,还能检测基因融合和剪接异常衍生的新抗原。NeoHunter 支持直接和间接免疫原性评估策略,以确定候选新抗原的优先次序。这些策略利用结合特征、现有生物大数据和T细胞受体特异性来确保准确检测和优先排序。我们将 NeoHunter 应用于 TESLA 数据集、黑色素瘤和非小细胞肺癌患者队列。NeoHunter 在 TESLA 癌症患者中取得了很高的性能,总共检测出了 79% 的验证新抗原(34 个中的 27 个)。在前100个候选新抗原中,SNV和indel衍生的新抗原占90%,而剪接异常衍生的新抗原占9%。在一名患者中检测到了基因融合衍生的新抗原。NeoHunter是 "捕捉 "所有新抗原的强大工具,可在Github(XuegongLab/NeoHunter)上免费供学术界使用。
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NeoHunter: Flexible software for systematically detecting neoantigens from sequencing data
Complicated molecular alterations in tumors generate various mutant peptides. Some of these mutant peptides can be presented to the cell surface and then elicit immune responses, and such mutant peptides are called neoantigens. Accurate detection of neoantigens could help to design personalized cancer vaccines. Although some computational frameworks for neoantigen detection have been proposed, most of them can only detect SNV‐ and indel‐derived neoantigens. In addition, current frameworks adopt oversimplified neoantigen prioritization strategies. These factors hinder the comprehensive and effective detection of neoantigens. We developed NeoHunter, flexible software to systematically detect and prioritize neoantigens from sequencing data in different formats. NeoHunter can detect not only SNV‐ and indel‐derived neoantigens but also gene fusion‐ and aberrant splicing‐derived neoantigens. NeoHunter supports both direct and indirect immunogenicity evaluation strategies to prioritize candidate neoantigens. These strategies utilize binding characteristics, existing biological big data, and T‐cell receptor specificity to ensure accurate detection and prioritization. We applied NeoHunter to the TESLA dataset, cohorts of melanoma and non‐small cell lung cancer patients. NeoHunter achieved high performance across the TESLA cancer patients and detected 79% (27 out of 34) of validated neoantigens in total. SNV‐ and indel‐derived neoantigens accounted for 90% of the top 100 candidate neoantigens while neoantigens from aberrant splicing accounted for 9%. Gene fusion‐derived neoantigens were detected in one patient. NeoHunter is a powerful tool to ‘catch all’ neoantigens and is available for free academic use on Github (XuegongLab/NeoHunter).
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