计算机科学
计算生物学
利用
亲和力成熟
生化工程
合理设计
机器学习
人工智能
生物
抗体
工程类
遗传学
计算机安全
作者
Jiaqi Li,Guangbo Kang,Jiewen Wang,Haibin Yuan,Yili Wu,Shuxian Meng,Ping Wang,Miao Zhang,Yuli Wang,Yuanhang Feng,He Huang,Ario de Marco
标识
DOI:10.1016/j.ijbiomac.2023.125733
摘要
Routinely screened antibody fragments usually require further in vitro maturation to achieve the desired biophysical properties. Blind in vitro strategies can produce improved ligands by introducing random mutations into the original sequences and selecting the resulting clones under more and more stringent conditions. Rational approaches exploit an alternative perspective that aims first at identifying the specific residues potentially involved in the control of biophysical mechanisms, such as affinity or stability, and then to evaluate what mutations could improve those characteristics. The understanding of the antigen-antibody interactions is instrumental to develop this process the reliability of which, consequently, strongly depends on the quality and completeness of the structural information. Recently, methods based on deep learning approaches critically improved the speed and accuracy of model building and are promising tools for accelerating the docking step. Here, we review the features of the available bioinformatic instruments and analyze the reports illustrating the result obtained with their application to optimize antibody fragments, and nanobodies in particular. Finally, the emerging trends and open questions are summarized.
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