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Estimation of missing values for gene interaction data coming from high throughput technologies
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Journal of Computer Science & Systems Biology

ISSN: 0974-7230

Open Access

Estimation of missing values for gene interaction data coming from high throughput technologies


6th International Conference on Bioinformatics & Systems Biology

August 22-23, 2016 Philadelphia, USA

Gashaw Mekuria

University of Tampere, Finland

Posters & Accepted Abstracts: J Comput Sci Syst Biol

Abstract :

Advancements in high-throughput genetic screening technologies have enabled us to systematically study how gene interactions between pairs of genes can affect phenotypes of certain traits. However, these advancements also pose other challenges to researchers in the management and analysis of the vast amount of data being produced. One of the problems related with this is the significant amount of missing interaction scores that cannot be scanned by the screening technologies or were filtered out from the datasets for technical reasons. This will significantly affect and bias downstream analysis. Therefore, there is an immediate need to impute those missing data more precisely. This study evaluates existing missing value imputation techniques on large-scale quantitative data matrices from synthetic genetic array (SGA) and epistatic miniarray profiling (E-MAP) screening technologies. Different existing methods that are usually applied for imputation purposes were evaluated against various conditions and performance accuracies. This best performing imputation approach, based on weighted correlation between nearest-neighbors�, is now modified and can be used in any gene interaction data. Hereby, this study removed the limitation of a method already developed for this purpose and gives a more flexible, optimized, and best performing method. This method can now be effectively used in the pre-processing of gene interaction scores by researchers towards a genome-wide analysis such as identification of global functional networks, gene clustering, etc. for a more accurate and less biased results and biological interpretations.

Biography :

Email: gashawbk@yahoo.com

Google Scholar citation report
Citations: 2279

Journal of Computer Science & Systems Biology received 2279 citations as per Google Scholar report

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