Being able to assess the phenotypic effects of mutations is a much required capability in precision medicine. However, most of the currently available structure-based methods actually predict stability changes caused by mutations rather than their pathogenic potential. There are also no dedicated methods to predict damaging mutations specifically in transmembrane proteins. In this study we developed and applied a machine-learning approach to discriminate between disease-associated and benign point mutations in the transmembrane regions of proteins with known 3D structure. The method, called BorodaTM (BOosted RegressiOn trees for Disease-Associated mutations in TransMembrane proteins), was trained on sequence-, structure-, and energy-derived...
Proteins are a group of naturally occurring, highly versatile organic macromolecules which can perfo...
International audienceBackground: Transmembrane beta-barrel proteins are a special class of transmem...
Recent developments in Deep Learning have enabled new approaches to important prediction problems in...
The massive amount of data generated from genome sequencing brings tons of newly identified mutation...
The massive amount of data generated from genome sequencing brings tons of newly identified mutation...
Significant efforts have been invested into understanding and predicting the molecular consequences ...
Next-generation sequencing methods have not only allowed an understanding of genome sequence variati...
Advances in sequencing have led to a rapid accumulation of mutations, some of which are associated w...
In order to understand the protein functions that are related to disease, it is important to detect ...
Background: Single Nucleotide Polymorphisms (SNPs) are an important source of human genome variabili...
<div><p>Advances in sequencing have led to a rapid accumulation of mutations, some of which are asso...
Predicting how a point mutation alters a protein’s stability can guide pharmaceutical drug design in...
The classification of human genetic variants into deleterious and neutral is a challenging issue, wh...
Feature-based multiple models improve classification of mutation-induced stability changes Lukas Fol...
The field of machine learning, which aims to develop computer algorithms that improve with experienc...
Proteins are a group of naturally occurring, highly versatile organic macromolecules which can perfo...
International audienceBackground: Transmembrane beta-barrel proteins are a special class of transmem...
Recent developments in Deep Learning have enabled new approaches to important prediction problems in...
The massive amount of data generated from genome sequencing brings tons of newly identified mutation...
The massive amount of data generated from genome sequencing brings tons of newly identified mutation...
Significant efforts have been invested into understanding and predicting the molecular consequences ...
Next-generation sequencing methods have not only allowed an understanding of genome sequence variati...
Advances in sequencing have led to a rapid accumulation of mutations, some of which are associated w...
In order to understand the protein functions that are related to disease, it is important to detect ...
Background: Single Nucleotide Polymorphisms (SNPs) are an important source of human genome variabili...
<div><p>Advances in sequencing have led to a rapid accumulation of mutations, some of which are asso...
Predicting how a point mutation alters a protein’s stability can guide pharmaceutical drug design in...
The classification of human genetic variants into deleterious and neutral is a challenging issue, wh...
Feature-based multiple models improve classification of mutation-induced stability changes Lukas Fol...
The field of machine learning, which aims to develop computer algorithms that improve with experienc...
Proteins are a group of naturally occurring, highly versatile organic macromolecules which can perfo...
International audienceBackground: Transmembrane beta-barrel proteins are a special class of transmem...
Recent developments in Deep Learning have enabled new approaches to important prediction problems in...