通过新一代研究助手解决种子储藏过敏原问题

Adriana Rita Evangelista, C. G. Amoroso, Chiara Nitride, Giuseppe Andolfo
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引用次数: 0

摘要

为了克服与动物蛋白相关的环境问题,人们在饮食中越来越多地摄入植物蛋白,这也增加了食物引起的过敏反应的发生率。21 世纪农业科学研究的驱动力之一是开发和验证在收获前调节作物中过敏蛋白表达的具体方法。植物性食物过敏症的发病率越来越高,主要是由种子贮藏蛋白诱发的,临床医生最近发现,由于食品工业中更多地使用植物源蛋白,植物性食物过敏症的发病率也越来越高。高通量技术的日益普及产生了越来越多的 omics 数据,使我们能够更好地了解 SSP 的结构和分子特性,为过敏性评估提供依据。最新的靶向基因组工程系统没有双链 DNA 断裂,可以直接对商业植物物种进行精确修饰。人工智能正在显著改变科学研究的各个阶段,为科学家提供帮助,处理大规模数据,进行预测,实现任务自动化。在这场以人工智能与合成生物学相遇为标志的划时代变革中,下一代研究助手(NGA)正在悄然崛起。在这里,我们提出了一个新的概念愿景,以促进和加快交叉反应位点的编辑,从而获得低过敏性栽培品种,避免多基因效应。最后,我们将讨论这一新的研究构想的潜在应用。毫无疑问,NGA 可以通过预测新型表位和免疫反应机制来管理 SPP 过敏症的演变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seed storage allergens tackled via next-generation research assistant
The expanding consumption of plant proteins in the diet to overcome the environmental issues associated with animal proteins is increasing the incidence of food-induced allergic reactions. One of the 21st-century research drivers in agriculture sciences is the development and validation of concrete approaches for modulating the expression of allergenic proteins in crops before harvesting. The increasing incidence of plant food allergies is primarily induced by seed storage proteins that clinicians are experiencing recently because of the more predominant use of plant-derived proteins in the food industry. Increased availability of high-throughput technologies has generated an ever-growing number of omics data, allowing us to have better structural knowledge of SSPs and molecular properties that can inform the allergenicity assessment. The recent systems for targeted genome engineering, without double-strand DNA breaks, allow the introduction of precise modifications directly into commercial plant species. Artificial intelligence is significantly transforming scientific research across every stage, assisting scientists, processing large-scale data, making predictions, automating tasks. During this epochal change, marked by the encounter between artificial intelligence and synthetic biology, a next-generation research assistant (NGA) is coming alive. Here, we propose a new conceptual vision to facilitate and speed up the editing of cross-reactivity sites to obtain hypoallergenic cultivars and avoid pleiotropic effects. Finally, we discuss the potential applications of this new way to conceive the research. NGA may be undoubtedly capable of managing the evolution of SPP allergies through the prediction of novel epitopes, as well as the prediction of immunological response mechanisms.
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