Fu Jinglin, Larini Luca, Cooper Anthony J, Whittaker John W, Ahmed Azka, Dong Junhao, Lee Minyoung, Zhang Ting
Department of Chemistry, Rutgers University-Camden, Camden, New Jersey, United States of America.
Center for Computational and Integrative Biology, Rutgers University-Camden, Camden, New Jersey, United States of America.
PLoS One. 2017 Aug 15;12(8):e0182847. doi: 10.1371/journal.pone.0182847. eCollection 2017.
The metabolism of living systems involves many enzymes that play key roles as catalysts and are essential to biological function. Searching ligands with the ability to modulate enzyme activities is central to diagnosis and therapeutics. Peptides represent a promising class of potential enzyme modulators due to the large chemical diversity, and well-established methods for library synthesis. Peptides and their derivatives are found to play critical roles in modulating enzymes and mediating cellular uptakes, which are increasingly valuable in therapeutics. We present a methodology that uses molecular dynamics (MD) and point-variant screening to identify short peptide motifs that are critical for inhibiting β-galactosidase (β-Gal). MD was used to simulate the conformations of peptides and to suggest short motifs that were most populated in simulated conformations. The function of the simulated motifs was further validated by the experimental point-variant screening as critical segments for inhibiting the enzyme. Based on the validated motifs, we eventually identified a 7-mer short peptide for inhibiting an enzyme with low μM IC50. The advantage of our methodology is the relatively simplified simulation that is informative enough to identify the critical sequence of a peptide inhibitor, with a precision comparable to truncation and alanine scanning experiments. Our combined experimental and computational approach does not rely on a detailed understanding of mechanistic and structural details. The MD simulation suggests the populated motifs that are consistent with the results of the experimental alanine and truncation scanning. This approach appears to be applicable to both natural and artificial peptides. With more discovered short motifs in the future, they could be exploited for modulating biocatalysis, and developing new medicine.
生命系统的新陈代谢涉及许多酶,这些酶作为催化剂发挥关键作用,对生物功能至关重要。寻找具有调节酶活性能力的配体是诊断和治疗的核心。由于化学多样性大以及文库合成方法成熟,肽代表了一类有前景的潜在酶调节剂。肽及其衍生物在调节酶和介导细胞摄取方面发挥着关键作用,在治疗中越来越有价值。我们提出了一种方法,使用分子动力学(MD)和点变体筛选来识别抑制β-半乳糖苷酶(β-Gal)至关重要的短肽基序。MD用于模拟肽的构象,并提出在模拟构象中最常见的短基序。通过实验点变体筛选进一步验证了模拟基序作为抑制该酶的关键片段的功能。基于经过验证的基序,我们最终鉴定出一种7聚体短肽,其对该酶的抑制IC50为低 microM。我们方法的优点是相对简化的模拟,其信息量足以识别肽抑制剂的关键序列,精度与截短和丙氨酸扫描实验相当。我们结合实验和计算的方法不依赖于对机制和结构细节的详细了解。MD模拟表明了与实验性丙氨酸和截短扫描结果一致的常见基序。这种方法似乎适用于天然和人工肽。随着未来发现更多的短基序,它们可用于调节生物催化和开发新药。