Complex, distributed, and dynamic sets of clinical biomedical data are collectively referred to as multimodal clinical data. In order to accommodate the volume and heterogeneity of such diverse data types and aid in their interpretation when they are combined with a multi-scale predictive model, machine learning is a useful tool that can be wielded to deconstruct biological complexity and extract relevant outputs. Additionally, genome-scale metabolic models (GSMMs) are one of the main frameworks striving to bridge the gap between genotype and phenotype by incorporating prior biological knowledge into mechanistic models. Consequently, the utilization of GSMMs as a foundation for the integration of multi-omic data originating from different d...
[Abstract] Nowadays biomedical research is generating huge amounts of omic data, covering all leve...
Metabolic modelling has entered a mature phase with dozens of methods and software implementations a...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...
Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. ...
Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. ...
Genome-scale metabolic models are valuable tools for assessing the metabolic potential of living org...
Dissertação de mestrado em BioinformáticaIn this work we have analyzed published cancer genome-scale...
The uncovering of genes linked to human diseases is a pressing challenge in molecular biology, towar...
Constraint-based (CB) metabolic models provide a mathematical framework and scaffold for in silico c...
Modern high-throughput techniques offer immense opportunities to investigate whole-systems behavior,...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Background: Recently, multi-omic machine learning architectures have been proposed for the early det...
Genome-scale metabolic modeling has emerged as a promising way to study the metabolic alterations un...
Genome-scale metabolic modeling has emerged as a promising way to study the metabolic alterations un...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
[Abstract] Nowadays biomedical research is generating huge amounts of omic data, covering all leve...
Metabolic modelling has entered a mature phase with dozens of methods and software implementations a...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...
Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. ...
Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. ...
Genome-scale metabolic models are valuable tools for assessing the metabolic potential of living org...
Dissertação de mestrado em BioinformáticaIn this work we have analyzed published cancer genome-scale...
The uncovering of genes linked to human diseases is a pressing challenge in molecular biology, towar...
Constraint-based (CB) metabolic models provide a mathematical framework and scaffold for in silico c...
Modern high-throughput techniques offer immense opportunities to investigate whole-systems behavior,...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Background: Recently, multi-omic machine learning architectures have been proposed for the early det...
Genome-scale metabolic modeling has emerged as a promising way to study the metabolic alterations un...
Genome-scale metabolic modeling has emerged as a promising way to study the metabolic alterations un...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
[Abstract] Nowadays biomedical research is generating huge amounts of omic data, covering all leve...
Metabolic modelling has entered a mature phase with dozens of methods and software implementations a...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...