Abstract Background Identification of essential genes is not only useful for our understanding of the minimal gene set required for cellular life but also aids the identification of novel drug targets in pathogens. In this work, we present a simple and effective gene essentiality prediction method using information-theoretic features that are derived exclusively from the gene sequences. Results We developed a Random Forest classifier and performed an extensive model performance evaluation among and within 15 selected bacteria. In intra-organism predictions, where training and testing sets are taken from the same organism, AUC (Area Under the Curve) scores ranging from 0.73 to 0.90, 0.84 on average, were obtained. Cross-organism predictions ...
Essential genes are critical for the growth and survival of any organism. The machine learning appro...
Essential genes are the genes required for an organism to survive in stable conditions with an abund...
Machine learning approaches to predict essential genes have gained a lot of traction in recent years...
<div><p>Genes that are indispensable for survival are essential genes. Many features have been propo...
Genes that are indispensable for survival are essential genes. Many features have been proposed for ...
BACKGROUND: The identification of genes essential for survival is of theoretical importance in the u...
The availability of whole-genome sequences and associated multi-omics data sets, combined with advan...
Accurately predicting essential genes is important in many aspects of biology, medicine and bioengin...
Abstract Background The identification of essential genes is important for the understanding of the ...
# CLassifier of Essentiality AcRoss EukaRyotes (CLEARER) -------------------------------------------...
Investigation of essential genes is significant to comprehend the minimal gene sets of cell and disc...
Theminimal subset of genes required for cellular growth, survival and viability of an organismare cl...
<div><p>Various computational models have been developed to transfer annotations of gene essentialit...
The identification of genes essential for survival is important for the understanding of the minimal...
Essential genes constitute the minimal gene set of an organism that is indispensable for its surviva...
Essential genes are critical for the growth and survival of any organism. The machine learning appro...
Essential genes are the genes required for an organism to survive in stable conditions with an abund...
Machine learning approaches to predict essential genes have gained a lot of traction in recent years...
<div><p>Genes that are indispensable for survival are essential genes. Many features have been propo...
Genes that are indispensable for survival are essential genes. Many features have been proposed for ...
BACKGROUND: The identification of genes essential for survival is of theoretical importance in the u...
The availability of whole-genome sequences and associated multi-omics data sets, combined with advan...
Accurately predicting essential genes is important in many aspects of biology, medicine and bioengin...
Abstract Background The identification of essential genes is important for the understanding of the ...
# CLassifier of Essentiality AcRoss EukaRyotes (CLEARER) -------------------------------------------...
Investigation of essential genes is significant to comprehend the minimal gene sets of cell and disc...
Theminimal subset of genes required for cellular growth, survival and viability of an organismare cl...
<div><p>Various computational models have been developed to transfer annotations of gene essentialit...
The identification of genes essential for survival is important for the understanding of the minimal...
Essential genes constitute the minimal gene set of an organism that is indispensable for its surviva...
Essential genes are critical for the growth and survival of any organism. The machine learning appro...
Essential genes are the genes required for an organism to survive in stable conditions with an abund...
Machine learning approaches to predict essential genes have gained a lot of traction in recent years...