Genomic signal processing (GSP) is based on the use of digital signal processing methods for the analysis of genomic data. Convolutional neural networks (CNN) are the state-of-the-art machine learning classifiers that have been widely applied to solve complex problems successfully. In this paper, we present a deep learning architecture and a method for the classification of three different functional genome types: coding regions (CDS), long noncoding regions (LNC), and pseudogenes (PSD) in genomic data, based on the use of GSP methods to convert the nucleotide sequence into a graphical representation of the information contained in it. The obtained accuracy scores of 83% and 84% when classifying between CDS vs. LNC and CDS vs. PSD, respecti...
Transposable Elements (TEs) are DNA sequences that can change its location within a cell's genome. T...
Background: With the increase in the size of genomic datasets describing variability in populations,...
The two main goals of this research are to apply machine learning models in computational biology to...
DNA sequences are the basic data type that is processed to perform a generic study of biological dat...
The complexity of the genomics data is increasing in parallel with the development of this science,...
The 21st centuries were deemed to be the era of big data. Data driven research had become a necessit...
DNA sequence classification is a key task in a generic computational framework for biomedical data a...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
In metagenomic analyses the rapid and accurate identification of DNA sequences is important. This is...
Recognition of different genomic signals and regions (GSRs) in the DNA is helpful in gaining knowled...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Abstract In recent years, the widespread utilization of biological data processing technology has be...
In the era of big data, deep learning has advanced rapidly particularly in the field of computationa...
Next Generation Sequencing (NGS) or deep sequencing technology enables parallel reading of multiple ...
Transposable Elements (TEs) are DNA sequences that can change its location within a cell's genome. T...
Background: With the increase in the size of genomic datasets describing variability in populations,...
The two main goals of this research are to apply machine learning models in computational biology to...
DNA sequences are the basic data type that is processed to perform a generic study of biological dat...
The complexity of the genomics data is increasing in parallel with the development of this science,...
The 21st centuries were deemed to be the era of big data. Data driven research had become a necessit...
DNA sequence classification is a key task in a generic computational framework for biomedical data a...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
In metagenomic analyses the rapid and accurate identification of DNA sequences is important. This is...
Recognition of different genomic signals and regions (GSRs) in the DNA is helpful in gaining knowled...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Abstract In recent years, the widespread utilization of biological data processing technology has be...
In the era of big data, deep learning has advanced rapidly particularly in the field of computationa...
Next Generation Sequencing (NGS) or deep sequencing technology enables parallel reading of multiple ...
Transposable Elements (TEs) are DNA sequences that can change its location within a cell's genome. T...
Background: With the increase in the size of genomic datasets describing variability in populations,...
The two main goals of this research are to apply machine learning models in computational biology to...