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Erratum for Gangal and Sharma, Nucl. Acids Res. 33 (4) 1332-1336.
Nucleic Acids Research 2005 33(5):1739; doi:10.1093/nar/gki320
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Published online 24 March 2005

© The Author 2005. Published by Oxford University Press. All rights reserved

Erratum

Human pol II promoter prediction: time series descriptors and machine learning

Rajeev Gangal and Pankaj Sharma


 

Human pol II promoter prediction: time series descriptors and machine learning

Rajeev Gangal and Pankaj Sharma*

SciNova Technologies Pvt. Ltd 528/43 Vishwashobha, Adjacent to Modi Ganpati, Narayan Peth, Pune 411030, Maharashtra, India

*To whom correspondence should be addressed. Tel: +91 20 4450282; Fax: +91 20 4450282; Email: pankaj.sharma{at}scinovaindia.com

Received September 9, 2004. Revised February 8, 2005. Accepted February 8, 2005.

Although several in silico promoter prediction methods have been developed to date, they are still limited in predictive performance. The limitations are due to the challenge of selecting appropriate features of promoters that distinguish them from non-promoters and the generalization or predictive ability of the machine-learning algorithms. In this paper we attempt to define a novel approach by using unique descriptors and machine-learning methods for the recognition of eukaryotic polymerase II promoters. In this study, non-linear time series descriptors along with non-linear machine-learning algorithms, such as support vector machine (SVM), are used to discriminate between promoter and non-promoter regions. The basic idea here is to use descriptors that do not depend on the primary DNA sequence and provide a clear distinction between promoter and non-promoter regions. The classification model built on a set of 1000 promoter and 1500 non-promoter sequences, showed a 10-fold cross-validation accuracy of 87% and an independent test set had an accuracy >85% in both promoter and non-promoter identification. This approach correctly identified all 20 experimentally verified promoters of human chromosome 22. The high sensitivity and selectivity indicates that n-mer frequencies along with non-linear time series descriptors, such as Lyapunov component stability and Tsallis entropy, and supervised machine-learning methods, such as SVMs, can be useful in the identification of pol II promoters.


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