The genetic code is textbook scientific knowledge that was soundly established without resorting to Artificial Intelligence (AI). The goal of our study was to check whether a neural network could re-discover, on its own, the mapping links between codons and amino acids and build the complete deciphering dictionary upon presentation of transcripts proteins data training pairs. We compared different Deep Learning neural network architectures and estimated quantitatively the size of the required human transcriptomic training set to achieve the best possible accuracy in the codon-to-amino-acid mapping. We also investigated the effect of a codon embedding layer assessing the semantic similarity between codons on the rate of increase of the train...
The current deluge of newly identified RNA transcripts presents a singular opportunity for improved ...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN's ability to pr...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
Many biological experiments require a protein sequence to be translated to the nucleic acid sequence...
Background The number of applications of deep learning algorithms in bioinformatics is increasing as...
The four nitrogenous bases of DNA spell out the recipes from which proteins are made. A gene typical...
Deep learning is playing a vital role in every field which involves data. It has emerged as a strong...
Background Appropriate definition of neural network architecture prior to data analysis is crucial f...
The classification of amino acids and their sequence analysis plays a vital role in life sciences an...
Deep neural networks (DNNs) have been applied to a variety of regulatory genomics tasks. For interpr...
Advancements in genomic research such as high-throughput sequencing techniques have driven modern ge...
We envision the molecular evolution process as an information transfer process and provide a quantit...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
The current deluge of newly identified RNA transcripts presents a singular opportunity for improved ...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN's ability to pr...
A neural network (NN) was trained on amino and nucleic acid sequences to test the NN’s ability to pr...
Many biological experiments require a protein sequence to be translated to the nucleic acid sequence...
Background The number of applications of deep learning algorithms in bioinformatics is increasing as...
The four nitrogenous bases of DNA spell out the recipes from which proteins are made. A gene typical...
Deep learning is playing a vital role in every field which involves data. It has emerged as a strong...
Background Appropriate definition of neural network architecture prior to data analysis is crucial f...
The classification of amino acids and their sequence analysis plays a vital role in life sciences an...
Deep neural networks (DNNs) have been applied to a variety of regulatory genomics tasks. For interpr...
Advancements in genomic research such as high-throughput sequencing techniques have driven modern ge...
We envision the molecular evolution process as an information transfer process and provide a quantit...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
The current deluge of newly identified RNA transcripts presents a singular opportunity for improved ...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
Deep Learning networks are a new type of neural network that discovers important object features. Th...