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BIBE
2003
IEEE

An Assessment of a Metric Space Database Index to Support Sequence Homology

13 years 10 months ago
An Assessment of a Metric Space Database Index to Support Sequence Homology
Hierarchical metric-space clustering methods have been commonly used to organize proteomes into taxonomies. Consequently, it is often anticipated that hierarchical clustering can be leveraged as a basis for scalable database index structures capable of managing the hyper-exponential growth of sequence data. M-tree is one such data structure specialized for the management of large data sets on disk. We explore the application of M-trees to the storage and retrieval of peptide sequence data. Exploiting a technique first suggested by Myers, we organize the database as records of fixed length substrings. Empirical results are promising. However, metric-space indexes are subject to “the curse of dimensionality” and the ultimate performance of an index is sensitive to the quality of the initial construction of the index. We introduce new hierarchical bulk-load algorithm that alternates between top-down and bottom-up clustering to initialize the index. Using the Yeast Proteomes, the bi-d...
Rui Mao, Weijia Xu, Neha Singh, Daniel P. Miranker
Added 04 Jul 2010
Updated 04 Jul 2010
Type Conference
Year 2003
Where BIBE
Authors Rui Mao, Weijia Xu, Neha Singh, Daniel P. Miranker
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