AbstractIdentifying the genes that cause disease is one of the most challenging issues to establish the diagnosis and treatment quickly. Several interesting methods have been introduced for disease gene identification for a decade. In general, the main differences between these methods are the type of data used as a prior-knowledge, as well as machine learning (ML) methods used for identification. The disease gene identification task has been commonly viewed by ML methods as a binary classification problem (whether any gene is disease or not). However, the nature of the data (since there is no negative data available for training or leaners) creates a major problem which affect the results. In this paper, sequence-based, one class classific...
The development of high-throughput measurement techniques resulted in rapidlyincreasing amounts of b...
Objective Predicting or prioritizing the human genes that cause disease, or “disease genes”, is one...
SNPs&GO is a machine learning method for predicting the association of single amino acid variations ...
Genes related to causing some disease are called disease-causing genes or disease genes. In wet-lab ...
Disease causing gene identification is considered as an important step towards drug design and drug ...
The discovery of human genes that contribute to the appearance and growth of hereditary diseases is ...
In recent years, researchers have become increasingly interested in disease-gene association predict...
Disease gene identification based on chromosomal localisation is sometimes difficult and often time-...
Discovering human disease-causing genes (disease genes in short) is one of the most challenging prob...
Background: Identifying disease genes from human genome is an important but challenging task in biom...
Muscular dystrophy is a rare genetic disorder that affects the muscular system which deteriorates th...
Alzheimer’s disease (AD) is considered to one of 10 key diseases leading to death in humans. A...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Disease-related protein-coding genes have been widely studied, but diseaserelated non-coding genes r...
MOTIVATION: Human single nucleotide polymorphisms (SNPs) are the most frequent type of genetic varia...
The development of high-throughput measurement techniques resulted in rapidlyincreasing amounts of b...
Objective Predicting or prioritizing the human genes that cause disease, or “disease genes”, is one...
SNPs&GO is a machine learning method for predicting the association of single amino acid variations ...
Genes related to causing some disease are called disease-causing genes or disease genes. In wet-lab ...
Disease causing gene identification is considered as an important step towards drug design and drug ...
The discovery of human genes that contribute to the appearance and growth of hereditary diseases is ...
In recent years, researchers have become increasingly interested in disease-gene association predict...
Disease gene identification based on chromosomal localisation is sometimes difficult and often time-...
Discovering human disease-causing genes (disease genes in short) is one of the most challenging prob...
Background: Identifying disease genes from human genome is an important but challenging task in biom...
Muscular dystrophy is a rare genetic disorder that affects the muscular system which deteriorates th...
Alzheimer’s disease (AD) is considered to one of 10 key diseases leading to death in humans. A...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Disease-related protein-coding genes have been widely studied, but diseaserelated non-coding genes r...
MOTIVATION: Human single nucleotide polymorphisms (SNPs) are the most frequent type of genetic varia...
The development of high-throughput measurement techniques resulted in rapidlyincreasing amounts of b...
Objective Predicting or prioritizing the human genes that cause disease, or “disease genes”, is one...
SNPs&GO is a machine learning method for predicting the association of single amino acid variations ...