Charité-Universitätsmedizin Berlin, Campus Virchow-Klinikum, Department of Hepatology and Gastroenterology and Molecular Cancer Research Center (MKFZ), Tumor Targeting Lab, Berlin, Germany.
PLoS One. 2012;7(5):e36948. doi: 10.1371/journal.pone.0036948. Epub 2012 May 14.
Peptide ligands of G protein-coupled receptors constitute valuable natural lead structures for the development of highly selective drugs and high-affinity tools to probe ligand-receptor interaction. Currently, pharmacological and metabolic modification of natural peptides involves either an iterative trial-and-error process based on structure-activity relationships or screening of peptide libraries that contain many structural variants of the native molecule. Here, we present a novel neural network architecture for the improvement of metabolic stability without loss of bioactivity. In this approach the peptide sequence determines the topology of the neural network and each cell corresponds one-to-one to a single amino acid of the peptide chain. Using a training set, the learning algorithm calculated weights for each cell. The resulting network calculated the fitness function in a genetic algorithm to explore the virtual space of all possible peptides. The network training was based on gradient descent techniques which rely on the efficient calculation of the gradient by back-propagation. After three consecutive cycles of sequence design by the neural network, peptide synthesis and bioassay this new approach yielded a ligand with 70fold higher metabolic stability compared to the wild type peptide without loss of the subnanomolar activity in the biological assay. Combining specialized neural networks with an exploration of the combinatorial amino acid sequence space by genetic algorithms represents a novel rational strategy for peptide design and optimization.
G 蛋白偶联受体的肽配体是开发高选择性药物和高亲和力工具来探测配体-受体相互作用的宝贵天然先导结构。目前,天然肽的药理学和代谢修饰要么基于构效关系的迭代试错过程,要么筛选包含天然分子许多结构变体的肽文库。在这里,我们提出了一种新的神经网络架构,用于在不损失生物活性的情况下提高代谢稳定性。在这种方法中,肽序列决定神经网络的拓扑结构,每个细胞与肽链上的单个氨基酸一一对应。使用训练集,学习算法为每个细胞计算权重。生成的网络在遗传算法中计算适应度函数,以探索所有可能肽的虚拟空间。网络训练基于梯度下降技术,该技术依赖于通过反向传播有效地计算梯度。经过神经网络连续三轮的序列设计、肽合成和生物测定,与野生型肽相比,这种新方法得到的配体的代谢稳定性提高了 70 倍,而在生物测定中的亚纳摩尔活性没有损失。将专门的神经网络与遗传算法对组合氨基酸序列空间的探索相结合,代表了一种用于肽设计和优化的新理性策略。