1.Performance Comparison of Two Gene Set Analysis Methods for Genome-wide Association Study Results: GSA-SNP vs i-GSEA4GWAS.
Ji Sun KWON ; Jihye KIM ; Dougu NAM ; Sangsoo KIM
Genomics & Informatics 2012;10(2):123-127
Gene set analysis (GSA) is useful in interpreting a genome-wide association study (GWAS) result in terms of biological mechanism. We compared the performance of two different GSA implementations that accept GWAS p-values of single nucleotide polymorphisms (SNPs) or gene-by-gene summaries thereof, GSA-SNP and i-GSEA4GWAS, under the same settings of inputs and parameters. GSA runs were made with two sets of p-values from a Korean type 2 diabetes mellitus GWAS study: 259,188 and 1,152,947 SNPs of the original and imputed genotype datasets, respectively. When Gene Ontology terms were used as gene sets, i-GSEA4GWAS produced 283 and 1,070 hits for the unimputed and imputed datasets, respectively. On the other hand, GSA-SNP reported 94 and 38 hits, respectively, for both datasets. Similar, but to a lesser degree, trends were observed with Kyoto Encyclopedia of Genes and Genomes (KEGG) gene sets as well. The huge number of hits by i-GSEA4GWAS for the imputed dataset was probably an artifact due to the scaling step in the algorithm. The decrease in hits by GSA-SNP for the imputed dataset may be due to the fact that it relies on Z-statistics, which is sensitive to variations in the background level of associations. Judicious evaluation of the GSA outcomes, perhaps based on multiple programs, is recommended.
Artifacts
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Diabetes Mellitus, Type 2
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Genome
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Genome-Wide Association Study
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Genotype
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Hand
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Polymorphism, Single Nucleotide
2.Bioinformatics services for analyzing massive genomic datasets
Gunhwan KO ; Pan-Gyu KIM ; Youngbum CHO ; Seongmun JEONG ; Jae-Yoon KIM ; Kyoung Hyoun KIM ; Ho-Yeon LEE ; Jiyeon HAN ; Namhee YU ; Seokjin HAM ; Insoon JANG ; Byunghee KANG ; Sunguk SHIN ; Lian KIM ; Seung-Won LEE ; Dougu NAM ; Jihyun F. KIM ; Namshin KIM ; Seon-Young KIM ; Sanghyuk LEE ; Tae-Young ROH ; Byungwook LEE
Genomics & Informatics 2020;18(1):e8-
The explosive growth of next-generation sequencing data has resulted in ultra-large-scale datasets and ensuing computational problems. In Korea, the amount of genomic data has been increasing rapidly in the recent years. Leveraging these big data requires researchers to use large-scale computational resources and analysis pipelines. A promising solution for addressing this computational challenge is cloud computing, where CPUs, memory, storage, and programs are accessible in the form of virtual machines. Here, we present a cloud computing-based system, Bio-Express, that provides user-friendly, cost-effective analysis of massive genomic datasets. Bio-Express is loaded with predefined multi-omics data analysis pipelines, which are divided into genome, transcriptome, epigenome, and metagenome pipelines. Users can employ predefined pipelines or create a new pipeline for analyzing their own omics data. We also developed several web-based services for facilitating downstream analysis of genome data. Bio-Express web service is freely available at https://www.bioexpress.re.kr/.
3.Bioinformatics services for analyzing massive genomic datasets
Gunhwan KO ; Pan-Gyu KIM ; Youngbum CHO ; Seongmun JEONG ; Jae-Yoon KIM ; Kyoung Hyoun KIM ; Ho-Yeon LEE ; Jiyeon HAN ; Namhee YU ; Seokjin HAM ; Insoon JANG ; Byunghee KANG ; Sunguk SHIN ; Lian KIM ; Seung-Won LEE ; Dougu NAM ; Jihyun F. KIM ; Namshin KIM ; Seon-Young KIM ; Sanghyuk LEE ; Tae-Young ROH ; Byungwook LEE
Genomics & Informatics 2020;18(1):e8-
The explosive growth of next-generation sequencing data has resulted in ultra-large-scale datasets and ensuing computational problems. In Korea, the amount of genomic data has been increasing rapidly in the recent years. Leveraging these big data requires researchers to use large-scale computational resources and analysis pipelines. A promising solution for addressing this computational challenge is cloud computing, where CPUs, memory, storage, and programs are accessible in the form of virtual machines. Here, we present a cloud computing-based system, Bio-Express, that provides user-friendly, cost-effective analysis of massive genomic datasets. Bio-Express is loaded with predefined multi-omics data analysis pipelines, which are divided into genome, transcriptome, epigenome, and metagenome pipelines. Users can employ predefined pipelines or create a new pipeline for analyzing their own omics data. We also developed several web-based services for facilitating downstream analysis of genome data. Bio-Express web service is freely available at https://www.bioexpress.re.kr/.