Disease Prediction Using Ranks of Gene Expressions
Genomics & Informatics
; : 136-141, 2008.
Article
in English
| WPRIM (Western Pacific)
| ID: wpr-22935
Responsible library:
WPRO
ABSTRACT
A large number of studies have been performed to identify biomarkers that will allow efficient detection and determination of the precise status of a patient's disease. The use of microarrays to assess biomarker status is expected to improve prediction accuracies, because a whole-genome approach is used. Despite their potential, however, patient samples can differ with respect to biomarker status when analyzed on different platforms, making it more difficult to make accurate predictions, because bias may exist between any two different experimental conditions. Because of this difficulty in experimental standardization of microarray data, it is currently difficult to utilize microarray-based gene sets in the clinic. To address this problem, we propose a method that predicts disease status using gene expression data that are transformed by their ranks, a concept that is easily applied to two datasets that are obtained using different experimental platforms. NCI and colon cancer datasets, which were assessed using both Affymetrix and cDNA microarray platforms, were used for method validation. Our results demonstrate that the proposed method is able to achieve good predictive performance for datasets that are obtained under different experimental conditions.
Full text:
Available
Database:
WPRIM (Western Pacific)
Main subject:
Biomarkers
/
Bias
/
Gene Expression
/
Colonic Neoplasms
/
Oligonucleotide Array Sequence Analysis
Type of study:
Prognostic study
Limits:
Humans
Language:
English
Journal:
Genomics & Informatics
Year:
2008
Document type:
Article