4.7 Article

Classification of a large microarray data set: Algorithm comparison and analysis of drug signatures

Journal

GENOME RESEARCH
Volume 15, Issue 5, Pages 724-736

Publisher

COLD SPRING HARBOR LAB PRESS, PUBLICATIONS DEPT
DOI: 10.1101/gr.2807605

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A large gene expression database has been produced that characterizes the gene expression and physiological effects of hundreds of approved and withdrawn drugs, toxicants, and biochemical standards in various organs of live rats. Ill order to derive useful biological knowledge from this large database, a variety Of Supervised classification algorithms were compared using a 597-microarray Subset of the data. Our Studies show that several types of linear classifiers based Oil Support Vector Machines (SVMs) and Logistic Regression can be used to derive readily interpretable drug signatures with high classification performance. Both methods can be tuned to produce classifiers of drug treatments in the form of short, weighted gene lists which upon analysis reveal that some of the signature genes have a positive contribution (act as rewards for the class-of-interest) while others have a negative contribution (act as penalties) to the classification decision. The combination of reward and penalty genes enhances performance by keeping the number of false positive treatments low. The results of these algorithms are combined with feature selection techniques that further reduce the length of the drug signatures, an important step towards the development of useful diagnostic biomarkers and low-cost assays. Multiple signatures with no genes in common can be generated for the same classification end-point. Comparison of these gene lists identifies biological processes characteristic of a given class.

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