Abstract Background While the genomes of hundreds of organisms have been sequenced and good approaches exist for finding protein encoding genes, an important remaining challenge is predicting the functions of the large fraction of genes for which there is no annotation. Large gene expression datasets from microarray experiments already exist and many of these can be used to help assign potential functions to these genes. We have applied Support Vector Machines (SVM), a sigmoid fitting function and a stratified cross‐validation approach to analyze a large microarray experiment dataset from Drosophila melanogaster in order to predict possible functions for previously un‐annotated genes. A total o...
Computational methods for automated genome annotation are critical to our community’s ability to mak...
The thesis starts with the examination of a dataset representing the sequences of expressed small RN...
© 2021 Tulio De Lima CamposEssential genes are those that are crucial for the development, reproduct...
Abstract Background While the genomes of hundreds of ...
Abstract Background Predictive classification on the base of gene expression profiles appeared recen...
Predicting gene functions by integrating large-scale biological data remains a challenge for systems...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Accurate gene or protein function prediction is a key challenge in the post-genome era. Most current...
Background While the genome sequences for a variety of organisms are now available, the precise numb...
Accurate gene or protein function prediction is a key challenge in the post-genome era. Most current...
In recent years, the amount of digital data that we produce has increased exponentially. This flood ...
Computational methods for automated genome annotation are critical to our community's ability to mak...
Genes are termed to be essential if their loss of function compromises viability or results in profo...
Computational methods for automated genome annotation are critical to our community’s ability to mak...
The thesis starts with the examination of a dataset representing the sequences of expressed small RN...
© 2021 Tulio De Lima CamposEssential genes are those that are crucial for the development, reproduct...
Abstract Background While the genomes of hundreds of ...
Abstract Background Predictive classification on the base of gene expression profiles appeared recen...
Predicting gene functions by integrating large-scale biological data remains a challenge for systems...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Understanding how sets of genes are coordinately regulated in space and time to generate the diversi...
Accurate gene or protein function prediction is a key challenge in the post-genome era. Most current...
Background While the genome sequences for a variety of organisms are now available, the precise numb...
Accurate gene or protein function prediction is a key challenge in the post-genome era. Most current...
In recent years, the amount of digital data that we produce has increased exponentially. This flood ...
Computational methods for automated genome annotation are critical to our community's ability to mak...
Genes are termed to be essential if their loss of function compromises viability or results in profo...
Computational methods for automated genome annotation are critical to our community’s ability to mak...
The thesis starts with the examination of a dataset representing the sequences of expressed small RN...
© 2021 Tulio De Lima CamposEssential genes are those that are crucial for the development, reproduct...