A graph theoretic approach to the analysis of DNA sequencing data.

Author:

Berno A J

Abstract

The analysis of data from automated DNA sequencing instruments has been a limiting factor in the development of new sequencing technology. A new base-calling algorithm that is intended to be independent of any particular sequencing technology has been developed and shown to be effective with data from the Applied Biosystems 373 sequencing system. This algorithm makes use of a nonlinear deconvolution filter to detect likely oligomer events and a graph theoretic editing strategy to find the subset of those events that is most likely to correspond to the correct sequence. Metrics evaluating the quality and accuracy of the resulting sequence are also generated and have been shown to be predictive of measured error rates. Compared to the Applied Biosystems Analysis software, this algorithm generates 18% fewer insertion errors, 80% more deletion errors, and 4% fewer mismatches. The tradeoff between different types of errors can be controlled through a secondary editing step that inserts or deletes base calls depending on their associated confidence values.

Publisher

Cold Spring Harbor Laboratory

Subject

Genetics (clinical),Genetics

Reference8 articles.

1. Cormen, T.H., C.E. Leiserson and R.L. Rivest. 1992. Single-source shortest paths. In Introduction to algorithms, pp. 514–550. The MIT Press, Cambridge, MA.

2. An adaptive, object oriented strategy for base calling in DNA sequence analysis

3. Golden, J.B. III, D. Torgersen, and C. Tibbetts. 1993. Pattern recognition for automated DNA sequencing I: On-line signal conditioning and feature extraction for basecalling. In First International Conference on Intelligent Systems for Molecular Biology (ed. Hunter, Searls, and Shavlik). AAAI Press, Washington, D.C.

4. Large-Scale and Automated DNA Sequence Determination

5. Masters, T. 1993. Practical neural network recipes in C++. Academic Press, San Diego, CA.

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