libfbi

Marc Kirchner, Buote Xu,Hanno Steen, Judith A. J. Steen

Periodicals(2011)

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摘要
Abstract Motivation: Algorithms for sparse data require fast search and subset selection capabilities for the determination of point neighborhoods. A natural data representation for such cases are space partitioning data structures. However, the associated range queries assume noise-free observations and cannot take into account observation-specific uncertainty estimates that are present in e.g. modern mass spectrometry data. In order to accommodate the inhomogeneous noise characteristics of sparse real-world datasets, point queries need to be reformulated in terms of box intersection queries, where box sizes correspond to uncertainty regions for each observation. Results: This contribution introduces libfbi , a standard C++, header-only template implementation for fast box intersection in an arbitrary number of dimensions, with arbitrary data types in each dimension. The implementation is applied to a data aggregation task on state-of-the-art liquid chromatography/mass spectrometry data, where it shows excellent run time properties. Availability: The library is available under an MIT license and can be downloaded from http://software.steenlab.org/libfbi. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.
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关键词
box intersection query,sparse data,arbitrary data type,supplementary data,box size,modern mass spectrometry data,data aggregation task,data structure,natural data representation,mass spectrometry data
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