Recent developments in deep learning, coupled with an increasing number of sequenced proteins, have led to a breakthrough in life science applications, in particular in protein property prediction. There is hope that deep learning can close the gap between the number of sequenced proteins and proteins with known properties based on lab experiments. Language models from the field of natural language processing have gained popularity for protein property predictions and have led to a new computational revolution in biology, where old prediction results are being improved regularly. Such models can learn useful multipurpose representations of proteins from large open repositories of protein sequences and can be used, for instance, to predict p...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
Protein function prediction is a crucial part of genome annotation. Prediction methods have recently...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...
Recent developments in deep learning, coupled with an increasing number of sequenced proteins, have ...
© 2022 The Author(s)Deep learning technologies have been adopted to predict the functions of newly i...
International audienceThe rapid progress in the field of deep learning has had a significant impact ...
While most approaches individually exploit unstructured data from the biomedical literature or struc...
Recent developments in Deep Learning have enabled new approaches to important prediction problems in...
International audienceThe potential of deep learning has been recognized in structural bioinformatic...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
Deep-learning language models have shown promise in various biotechnological applications, including...
The recent breakthroughs of Large Language Models (LLMs) in the context of natural language processi...
Protein Structure Prediction is a central topic in Structural Bioinformatics. Since the ’60s statist...
Life is orchestrated via an interplay of many biomolecules. Any understanding of biomolecular functi...
The ubiquitous availability of genome sequencing data explains the popularity of machine learning-ba...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
Protein function prediction is a crucial part of genome annotation. Prediction methods have recently...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...
Recent developments in deep learning, coupled with an increasing number of sequenced proteins, have ...
© 2022 The Author(s)Deep learning technologies have been adopted to predict the functions of newly i...
International audienceThe rapid progress in the field of deep learning has had a significant impact ...
While most approaches individually exploit unstructured data from the biomedical literature or struc...
Recent developments in Deep Learning have enabled new approaches to important prediction problems in...
International audienceThe potential of deep learning has been recognized in structural bioinformatic...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
Deep-learning language models have shown promise in various biotechnological applications, including...
The recent breakthroughs of Large Language Models (LLMs) in the context of natural language processi...
Protein Structure Prediction is a central topic in Structural Bioinformatics. Since the ’60s statist...
Life is orchestrated via an interplay of many biomolecules. Any understanding of biomolecular functi...
The ubiquitous availability of genome sequencing data explains the popularity of machine learning-ba...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
Protein function prediction is a crucial part of genome annotation. Prediction methods have recently...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...