BEACON Center of Evolution in Action, Michigan State University, East Lansing, MI, USA.
Department of Computer Science and Engineering, Michigan State University, East Lansing, MI, USA.
J Comput Aided Mol Des. 2024 Apr 3;38(1):17. doi: 10.1007/s10822-024-00558-0.
The development of peptides for therapeutic targets or biomarkers for disease diagnosis is a challenging task in protein engineering. Current approaches are tedious, often time-consuming and require complex laboratory data due to the vast search spaces that need to be considered. In silico methods can accelerate research and substantially reduce costs. Evolutionary algorithms are a promising approach for exploring large search spaces and can facilitate the discovery of new peptides. This study presents the development and use of a new variant of the genetic-programming-based POET algorithm, called POET , where individuals are represented by a list of regular expressions. This algorithm was trained on a small curated dataset and employed to generate new peptides improving the sensitivity of peptides in magnetic resonance imaging with chemical exchange saturation transfer (CEST). The resulting model achieves a performance gain of 20% over the initial POET models and is able to predict a candidate peptide with a 58% performance increase compared to the gold-standard peptide. By combining the power of genetic programming with the flexibility of regular expressions, new peptide targets were identified that improve the sensitivity of detection by CEST. This approach provides a promising research direction for the efficient identification of peptides with therapeutic or diagnostic potential.
针对治疗靶点或疾病诊断生物标志物的肽类药物的开发是蛋白质工程领域中的一项艰巨任务。目前的方法繁琐,通常耗时较长,并且由于需要考虑的搜索空间很大,因此需要复杂的实验室数据。计算方法可以加速研究并大大降低成本。进化算法是探索大型搜索空间的一种很有前途的方法,可促进新肽的发现。本研究提出了一种基于遗传编程的 POET 算法(称为 POET )的新型变体的开发和应用,其中个体由正则表达式列表表示。该算法在经过精心编辑的小型数据集上进行了训练,并用于生成可提高磁共振成像中化学交换饱和转移(CEST)的肽灵敏度的新肽。与初始 POET 模型相比,所得模型的性能提高了 20%,并且能够预测候选肽的性能提高了 58%,优于金标准肽。通过将遗传编程的强大功能与正则表达式的灵活性相结合,确定了新的肽靶标,可提高 CEST 的检测灵敏度。该方法为有效鉴定具有治疗或诊断潜力的肽提供了一个很有前途的研究方向。