Background and objectives: In the latest years, the prediction of gene expression levels has been crucial due to its potential applications in the clinics. In this context, Xpresso and others methods based on Convolutional Neural Networks and Transformers were firstly proposed to this aim. However, all these methods embed data with a standard one-hot encoding algorithm, resulting in impressively sparse matrices. In addition, post-transcriptional regulation processes, which are of uttermost importance in the gene expression process, are not considered in the model.Methods: This paper presents Transformer DeepLncLoc, a novel method to predict the abundance of the mRNA (i.e., gene expression levels) by processing gene promoter sequences, manag...
AbstractWe describe a systematic genome-wide approach for learning the complex combinatorial code un...
High-throughput technologies for measuring gene expression made inferring of the genome-wide Gene Re...
We evaluate the feasibility of using a biological sample’s transcriptome to predict its genome-wide ...
Background and objectives: In the latest years, the prediction of gene expression levels has been cr...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Histone modifications are playing an important role in affecting gene regulation. In this thesis, a ...
Prediction algorithms for protein or gene structures, including transcription factor binding from se...
The DNA holds the recipe of all life functions. To decipher the instructions, one has to learn and u...
Gene expression is regulated at both transcriptional and post-transcriptional levels. DNA sequence a...
Prediction algorithms for protein or gene structures, including transcription factor binding from se...
Functional genomics approaches to better model genotype-phenotype relationships have important appli...
Gene expression is a critical process in a biological system that is influenced and modulated by man...
Deep learning is a powerful tool for predicting transcription factor binding sites from DNA sequence...
Background: An exponential growth of high-throughput biological information and data has occurred in...
AbstractWe describe a systematic genome-wide approach for learning the complex combinatorial code un...
High-throughput technologies for measuring gene expression made inferring of the genome-wide Gene Re...
We evaluate the feasibility of using a biological sample’s transcriptome to predict its genome-wide ...
Background and objectives: In the latest years, the prediction of gene expression levels has been cr...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Histone modifications are playing an important role in affecting gene regulation. In this thesis, a ...
Prediction algorithms for protein or gene structures, including transcription factor binding from se...
The DNA holds the recipe of all life functions. To decipher the instructions, one has to learn and u...
Gene expression is regulated at both transcriptional and post-transcriptional levels. DNA sequence a...
Prediction algorithms for protein or gene structures, including transcription factor binding from se...
Functional genomics approaches to better model genotype-phenotype relationships have important appli...
Gene expression is a critical process in a biological system that is influenced and modulated by man...
Deep learning is a powerful tool for predicting transcription factor binding sites from DNA sequence...
Background: An exponential growth of high-throughput biological information and data has occurred in...
AbstractWe describe a systematic genome-wide approach for learning the complex combinatorial code un...
High-throughput technologies for measuring gene expression made inferring of the genome-wide Gene Re...
We evaluate the feasibility of using a biological sample’s transcriptome to predict its genome-wide ...