Abstract:- The conversion of symbolic sequences into complex genomic signals allows using signal processing methods for the handling and analysis of nucleotide sequences. This methodology reveals surprizing regularities, both locally and at a global scale, allowing us to predict nucleotides in a sequence, when knowing the preceding ones. Such experiments have a major biologic significance, as they explore the possibility and the efficiency of error correction in processes like replication, transcription and translation
The four nitrogenous bases of DNA spell out the recipes from which proteins are made. A gene typical...
Symbolic nucleotide sequences are converted into digital genomic signals by using a complex represen...
Next Generation Sequencing (NGS) or deep sequencing technology enables parallel reading of multiple ...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
AbstractArtificial neural networks (ANN) to predict terminator sequences, based on a feed-forward ar...
In spite of the recent development of computational methods for human promoter prediction, the predi...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
Artificial neural networks (ANN) to predict terminator sequences, based on a feed-forward architectu...
DNA sequences are the basic data type that is processed to perform a generic study of biological dat...
We have developed a new method for the identification of signal peptides and their cleavage sites ba...
Recently biological sequence databases have grown much faster than the ability of researchers to ann...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
The genetic information of organisms is conserved in DNA/RNA sequences. The one-dimensional DNA/RNA ...
Protein sequences are composed of 20 amino acids . The twenty amino acid letters are: A, C, D, E, F,...
Promoters are DNA sequences located upstream of the gene region and play a central role in gene expr...
The four nitrogenous bases of DNA spell out the recipes from which proteins are made. A gene typical...
Symbolic nucleotide sequences are converted into digital genomic signals by using a complex represen...
Next Generation Sequencing (NGS) or deep sequencing technology enables parallel reading of multiple ...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
AbstractArtificial neural networks (ANN) to predict terminator sequences, based on a feed-forward ar...
In spite of the recent development of computational methods for human promoter prediction, the predi...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
Artificial neural networks (ANN) to predict terminator sequences, based on a feed-forward architectu...
DNA sequences are the basic data type that is processed to perform a generic study of biological dat...
We have developed a new method for the identification of signal peptides and their cleavage sites ba...
Recently biological sequence databases have grown much faster than the ability of researchers to ann...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
The genetic information of organisms is conserved in DNA/RNA sequences. The one-dimensional DNA/RNA ...
Protein sequences are composed of 20 amino acids . The twenty amino acid letters are: A, C, D, E, F,...
Promoters are DNA sequences located upstream of the gene region and play a central role in gene expr...
The four nitrogenous bases of DNA spell out the recipes from which proteins are made. A gene typical...
Symbolic nucleotide sequences are converted into digital genomic signals by using a complex represen...
Next Generation Sequencing (NGS) or deep sequencing technology enables parallel reading of multiple ...