YuGene: a simple approach to scale gene expression data derived from different platforms for integrated analyses

Cao, K.-A. L., Rohart, F., McHugh, L., Korn, O. and Wells, C. A. (2014) YuGene: a simple approach to scale gene expression data derived from different platforms for integrated analyses. Genomics, 103(4), pp. 239-251. (doi: 10.1016/j.ygeno.2014.03.001)

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Abstract

Gene expression databases contain invaluable information about a range of cell states, but the question “Where is my gene of interest expressed?” remains one of the most difficult to systematically assess when relevant data is derived on different platforms. Barriers to integrating this data include disparities in data formats and scale, a lack of common identifiers, and the disproportionate contribution of a platform to the ‘batch effect’. There are few purpose-built cross-platform normalization strategies, and most of these fit data to an idealized data structure, which in turn may compromise gene expression comparisons between different platforms. YuGene addresses this gap by providing a simple transform that assigns a modified cumulative proportion value to each measurement, without losing essential underlying information on data distributions or experimental correlates. The Yugene transform is applied to individual samples and is suitable to apply to data with different distributions. Yugene is robust to combining datasets of different sizes, does not require global renormalization as new data is added, and does not require a common identifier. YuGene was benchmarked against commonly used normalization approaches, performing favorably in comparison to quantile (RMA), Z-score or rank methods. Implementation in the www.stemformatics.org resource provides users with expression queries across stem cell related datasets. Probe performance statistics including poorly performing (never expressed) probes, and examples of probes/genes expressed in a sample-restricted manner are provided. The YuGene software is implemented as an R package available from CRAN.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Wells, Dr Christine
Authors: Cao, K.-A. L., Rohart, F., McHugh, L., Korn, O., and Wells, C. A.
Subjects:Q Science > QH Natural history > QH426 Genetics
College/School:College of Medical Veterinary and Life Sciences > School of Infection & Immunity
Journal Name:Genomics
Publisher:Elsevier
ISSN:0888-7543
ISSN (Online):1480-3321

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