We address the problem of learning a predictive model for growth inhibition from the NCI DTP human tumor cell line screening data. Extending the classical Quantitative Structure Activity Relationship paradigm, we investigate whether including gene expression data leads to a statistically significant improvement of prediction quality. Our analysis shows that the straightforward approach of including individual gene expression as features does not necessarily improve, but on the contrary, may degrade performance significantly. When gene expression information is aggregated, for instance by features representing the correlation with reference cell lines, performance can be improved significantly. Further improvements may be expected if the lea...
Cancer diagnosis and prognosis has been significantly impacted by understandings of gene expression ...
This archive holds trained models and associated data for the manuscript: "Single-cell gene expressi...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...
We address the problem of learning a predictive model for growth inhibition from the NCI DTP human t...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
Cancer can develop through a series of genetic events in combination with external influential facto...
Cancer can develop through a series of genetic events in combination with external influential facto...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
The NCI60 human tumor cell line screen is a public resource for studying selective and nonselective ...
Genome-scale transcription profile is known to be a good reporter of the state of the cell. Much of ...
International audienceMotivation: Recent large-scale omics initiatives have catalogued the somatic a...
<p>A) Gene expression values. B) Gene expression values predicted from miRNA expression. C) Correlat...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Background: A key problem in bioinformatics is that of predicting gene expression levels. There are ...
Cancer diagnosis and prognosis has been significantly impacted by understandings of gene expression ...
This archive holds trained models and associated data for the manuscript: "Single-cell gene expressi...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...
We address the problem of learning a predictive model for growth inhibition from the NCI DTP human t...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
Cancer can develop through a series of genetic events in combination with external influential facto...
Cancer can develop through a series of genetic events in combination with external influential facto...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
The NCI60 human tumor cell line screen is a public resource for studying selective and nonselective ...
Genome-scale transcription profile is known to be a good reporter of the state of the cell. Much of ...
International audienceMotivation: Recent large-scale omics initiatives have catalogued the somatic a...
<p>A) Gene expression values. B) Gene expression values predicted from miRNA expression. C) Correlat...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Background: A key problem in bioinformatics is that of predicting gene expression levels. There are ...
Cancer diagnosis and prognosis has been significantly impacted by understandings of gene expression ...
This archive holds trained models and associated data for the manuscript: "Single-cell gene expressi...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...