Department of Pharmaceutical Sciences, University of Milan, Via Mangiagalli 25, 20133 Milan, Italy.
Department of Food and Drug, University of Parma, Parco Area delle Scienze 27/A, 43124 Parma, Italy.
Food Res Int. 2021 Dec;150(Pt A):110753. doi: 10.1016/j.foodres.2021.110753. Epub 2021 Oct 13.
Bioactive peptides are short peptides (3-20 amino acid residues in length) endowed of specific biological activities. The identification and characterization of bioactive peptides of food origin are crucial to better understand the physiological consequences of food, as well as to design novel foods, ingredients, supplements, and diets to counteract mild metabolic disorders. For this reason, the identification of bioactive peptides is also relevant from a pharmaceutical standpoint. Nevertheless, the systematic identification of bioactive sequences of food origin is still challenging and relies mainly on the so defined "bottom-up" approaches, which rarely results in the total identification of most active sequences. Conversely, "top-down" approaches aim at identifying bioactive sequences with certain features and may be more suitable for the precise identification of very potent bioactive peptides. In this context, this work presents a top-down, computer-assisted and hypothesis-driven identification of potent angiotensin I converting enzyme inhibitory tripeptides, as a proof of principle. A virtual library of 6840 tripeptides was screened in silico to identify potential highly potent inhibitory peptides. Then, computational results were confirmed experimentally and a very potent novel sequence, LMP was identified. LMP showed an IC of 15.8 and 6.8 µM in cell-free and cell-based assays, respectively. In addition, a bioinformatics approach was used to search potential food sources of LMP. Yolk proteins were identified as a possible relevant source to analyze in further experiments. Overall, the method presented may represent a powerful and versatile framework for a systematic, high-throughput and top-down identification of bioactive peptides.
生物活性肽是具有特定生物学活性的短肽(3-20 个氨基酸残基)。鉴定和表征食品来源的生物活性肽对于更好地理解食物的生理后果以及设计新型食品、成分、补充剂和饮食以对抗轻度代谢紊乱至关重要。出于这个原因,从药学角度来看,鉴定生物活性肽也是相关的。然而,食品来源的生物活性序列的系统鉴定仍然具有挑战性,主要依赖于所谓的“自上而下”方法,这些方法很少能完全鉴定出大多数最活跃的序列。相反,“自上而下”的方法旨在鉴定具有某些特征的生物活性序列,并且可能更适合精确鉴定非常有效的生物活性肽。在这种情况下,这项工作提出了一种自上而下、计算机辅助和基于假设的方法,用于鉴定有效的血管紧张素 I 转换酶抑制三肽,作为一个原理验证。在计算机上筛选了 6840 种三肽的虚拟文库,以鉴定潜在的高活性抑制肽。然后,通过实验验证了计算结果,并鉴定出一种非常有效的新型序列 LMP。LMP 在无细胞和基于细胞的测定中分别显示出 15.8 和 6.8µM 的 IC。此外,还使用生物信息学方法搜索 LMP 的潜在食物来源。蛋黄蛋白被确定为可能的相关来源,以在进一步的实验中进行分析。总的来说,所提出的方法可能代表了一种强大而通用的框架,用于系统、高通量和自上而下的生物活性肽鉴定。