QiSampler: Evaluation of scoring schemes for high-throughput datasets using a repetitive sampling strategy on gold standards

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Abstract

Background: High-throughput biological experiments can produce a large amount of data showing little overlap with current knowledge. This may be a problem when evaluating alternative scoring mechanisms for such data according to a gold standard dataset because standard statistical tests may not be appropriate. Findings. To address this problem we have implemented the QiSampler tool that uses a repetitive sampling strategy to evaluate several scoring schemes or experimental parameters for any type of high-throughput data given a gold standard. We provide two example applications of the tool: selection of the best scoring scheme for a high-throughput protein-protein interaction dataset by comparison to a dataset derived from the literature, and evaluation of functional enrichment in a set of tumour-related differentially expressed genes from a thyroid microarray dataset. Conclusions: QiSampler is implemented as an open source R script and a web server, which can be accessed at http://cbdm.mdc-berlin.de/tools/sampler/. © 2011 Fontaine et al; licensee BioMed Central Ltd.

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Fontaine, J. F., Suter, B., & Andrade-Navarro, M. A. (2011). QiSampler: Evaluation of scoring schemes for high-throughput datasets using a repetitive sampling strategy on gold standards. BMC Research Notes, 4. https://doi.org/10.1186/1756-0500-4-57

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