Protein engineering through machine-learning-guided directed evolution enables the optimization of protein functions. Machine-learning approaches predict how sequence maps to function in a data-driven manner without requiring a detailed model of the underlying physics or biological pathways. Such methods accelerate directed evolution by learning from the properties of characterized variants and using that information to select sequences that are likely to exhibit improved properties. Here we introduce the steps required to build machine-learning sequence–function models and to use those models to guide engineering, making recommendations at each stage. This review covers basic concepts relevant to the use of machine learning for protein eng...
Protein engineering has been the most attractive strategy for biologists to redesign enzymes. As the...
A new approach to the process of Directed Evolution is proposed, which utilizes different machine le...
The rapid growth of sequence databases over the past two decades means that protein engineers faced ...
Protein engineering through machine-learning-guided directed evolution enables the optimization of p...
Directed evolution has enabled the adaptation of natural protein sequences for an endless variety of...
Proteins perform critical roles in a growing list of human-devised applications, and as demands for ...
Directed Evolution is one of the most powerful tools for protein engineering, which functions throug...
Machine learning-guided protein engineering is a new paradigm that enables the optimization of compl...
Protein engineering seeks to identify protein sequences with optimized properties. When guided by ma...
Directed evolution circumvents our profound ignorance of how a protein's sequence encodes its functi...
Due to screening limitations, in directed evolution (DE) of proteins it is rarely feasible to fully ...
The emergence of machine learning methods for expediting directed evolution via protein fitness pred...
To reduce experimental effort associated with directed protein evolution and to explore the sequence...
Molecular evolution based on mutagenesis is widely used in protein engineering. However, optimal pro...
Directed evolution has proven a successful strategy for protein engineering. To accelerate the disco...
Protein engineering has been the most attractive strategy for biologists to redesign enzymes. As the...
A new approach to the process of Directed Evolution is proposed, which utilizes different machine le...
The rapid growth of sequence databases over the past two decades means that protein engineers faced ...
Protein engineering through machine-learning-guided directed evolution enables the optimization of p...
Directed evolution has enabled the adaptation of natural protein sequences for an endless variety of...
Proteins perform critical roles in a growing list of human-devised applications, and as demands for ...
Directed Evolution is one of the most powerful tools for protein engineering, which functions throug...
Machine learning-guided protein engineering is a new paradigm that enables the optimization of compl...
Protein engineering seeks to identify protein sequences with optimized properties. When guided by ma...
Directed evolution circumvents our profound ignorance of how a protein's sequence encodes its functi...
Due to screening limitations, in directed evolution (DE) of proteins it is rarely feasible to fully ...
The emergence of machine learning methods for expediting directed evolution via protein fitness pred...
To reduce experimental effort associated with directed protein evolution and to explore the sequence...
Molecular evolution based on mutagenesis is widely used in protein engineering. However, optimal pro...
Directed evolution has proven a successful strategy for protein engineering. To accelerate the disco...
Protein engineering has been the most attractive strategy for biologists to redesign enzymes. As the...
A new approach to the process of Directed Evolution is proposed, which utilizes different machine le...
The rapid growth of sequence databases over the past two decades means that protein engineers faced ...