<div><p>The prediction of protein folding rates is a necessary step towards understanding the principles of protein folding. Due to the increasing amount of experimental data, numerous protein folding models and predictors of protein folding rates have been developed in the last decade. The problem has also attracted the attention of scientists from computational fields, which led to the publication of several machine learning-based models to predict the rate of protein folding. Some of them claim to predict the logarithm of protein folding rate with an accuracy greater than 90%. However, there are reasons to believe that such claims are exaggerated due to large fluctuations and overfitting of the estimates. When we confronted three selecte...
<div><p>We investigate the rate-length scaling law of protein folding, a key undetermined scaling la...
We investigate the rate-length scaling law of protein folding, a key undetermined scaling law in the...
Deep learning has achieved unprecedented success in predicting a protein’s crystal structure, but wh...
The prediction of protein folding rates is a necessary step towards understanding the principles of ...
Protein folding is a problem of large interest since it concerns the mechanism by which the genetic ...
Summary: Motivation Predicting the native state of a protein has long been considered a gateway pro...
We have developed a web server, FOLD-RATE, for predicting the folding rates of proteins from their a...
The ubiquitous availability of genome sequencing data explains the popularity of machine learning-ba...
Motivation: Bioinformatics tools that predict protein stability changes upon point mutations have ma...
[[abstract]]To explore the mechanism of protein folding is one of the important topics in protein re...
Predicting protein folding rate is useful for understanding protein folding process and guiding prot...
SUMMARY: K-Fold is a tool for the automatic prediction of the protein folding kinetic order and rate...
Machine learning (ML) has been an important arsenal in computational biology used to elucidate prote...
Motivation: What constitutes a baseline level of success for protein fold recognition methods? As fo...
Feed forward neural networks are compared with standard and new statistical classification procedure...
<div><p>We investigate the rate-length scaling law of protein folding, a key undetermined scaling la...
We investigate the rate-length scaling law of protein folding, a key undetermined scaling law in the...
Deep learning has achieved unprecedented success in predicting a protein’s crystal structure, but wh...
The prediction of protein folding rates is a necessary step towards understanding the principles of ...
Protein folding is a problem of large interest since it concerns the mechanism by which the genetic ...
Summary: Motivation Predicting the native state of a protein has long been considered a gateway pro...
We have developed a web server, FOLD-RATE, for predicting the folding rates of proteins from their a...
The ubiquitous availability of genome sequencing data explains the popularity of machine learning-ba...
Motivation: Bioinformatics tools that predict protein stability changes upon point mutations have ma...
[[abstract]]To explore the mechanism of protein folding is one of the important topics in protein re...
Predicting protein folding rate is useful for understanding protein folding process and guiding prot...
SUMMARY: K-Fold is a tool for the automatic prediction of the protein folding kinetic order and rate...
Machine learning (ML) has been an important arsenal in computational biology used to elucidate prote...
Motivation: What constitutes a baseline level of success for protein fold recognition methods? As fo...
Feed forward neural networks are compared with standard and new statistical classification procedure...
<div><p>We investigate the rate-length scaling law of protein folding, a key undetermined scaling la...
We investigate the rate-length scaling law of protein folding, a key undetermined scaling law in the...
Deep learning has achieved unprecedented success in predicting a protein’s crystal structure, but wh...