高通量筛选
计算机科学
计算生物学
酶
药物发现
生化工程
生物
生物信息学
工程类
生物化学
作者
Michal Vasina,Jan Velecký,Joan Planas-Iglesias,Sérgio M. Marques,Jana Skarupova,Jiřı́ Damborský,David Bednář,Stanislav Mazurenko,Zbyněk Prokop
标识
DOI:10.1016/j.addr.2022.114143
摘要
Therapeutic enzymes are valuable biopharmaceuticals in various biomedical applications. They have been successfully applied for fibrinolysis, cancer treatment, enzyme replacement therapies, and the treatment of rare diseases. Still, there is a permanent demand to find new or better therapeutic enzymes, which would be sufficiently soluble, stable, and active to meet specific medical needs. Here, we highlight the benefits of coupling computational approaches with high-throughput experimental technologies, which significantly accelerate the identification and engineering of catalytic therapeutic agents. New enzymes can be identified in genomic and metagenomic databases, which grow thanks to next-generation sequencing technologies exponentially. Computational design and machine learning methods are being developed to improve catalytically potent enzymes and predict their properties to guide the selection of target enzymes. High-throughput experimental pipelines, increasingly relying on microfluidics, ensure functional screening and biochemical characterization of target enzymes to reach efficient therapeutic enzymes.
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