scholarly journals Work efficiency: A new criterion for comprehensive comparison and evaluation of statistical methods in large-scale identification of differentially expressed genes

Genomics ◽  
2011 ◽  
Vol 98 (5) ◽  
pp. 390-399 ◽  
Author(s):  
Yuan-De Tan
2008 ◽  
Vol 2 ◽  
pp. BBI.S431 ◽  
Author(s):  
Angelica Lindlöf ◽  
Marcus Bräutigam ◽  
Aakash Chawade ◽  
Olof Olsson ◽  
Björn Olsson

The detection of differentially expressed genes from EST data is of importance for the discovery of potential biological or pharmaceutical targets, especially when studying biological processes in less characterized organisms and where large-scale microarrays are not an option. We present a comparison of five different statistical methods for identifying up-regulated genes through pairwise comparison of EST sets, where one of the sets is generated from a treatment and the other one serves as a control. In addition, we specifically address situations where the sets are relatively small (~2,000– 10,000 ESTs) and may differ in size. The methods were tested on both simulated and experimentally derived data, and compared to a collection of cold stress induced genes identified by microarrays. We found that combining the method proposed by Audic and Claverie with Fisher's exact test and a method based on calculating the difference in relative frequency was the best combination for maximizing the detection of up-regulated genes. We also introduced the use of a flexible cutoff, which takes the size of the EST sets into consideration. This could be considered as an alternative to a static cutoff. Finally, the detected genes showed a low overlap with those identified by microarrays, which indicates, as in previous studies, low overall concordance between the two platforms.


2020 ◽  
Author(s):  
Ayyappa Kumar Sista Kameshwar ◽  
Julang Li

Abstract Background : Litter size is a very important production index in the livestock industry, which is controlled by various complex physiological processes. To understand and reveal the common gene expression patterns involved in controlling prolificacy, we have performed a large-scale metadata analysis of five genome-wide transcriptome datasets of pig and sheep ovary samples obtained from high and low litter groups, respectively. We analyzed separately each transcriptome dataset using GeneSpring v14.8 software by implementing standard, generic analysis pipelines and further compared the list of most significant and differentially expressed genes obtained from each dataset to identify genes that are found to be common and significant across all the studies. Results : We have observed a total of 62 differentially expressed genes common among more than two gene expression datasets. The KEGG pathway analysis of most significant genes has shown that they are involved in metabolism, the biosynthesis of lipids, cholesterol and steroid hormones, immune system, cell growth and death, cancer-related pathways and signal transduction pathways. Of these 62 genes, we further narrowed the list to the 25 most significant genes by focusing on the ones with fold change >1.5 and p<0.05. These genes are CYP11A1, HSD17B2, STAR, SCARB1, IGSF8, MSMB, SERPINA1 , FAM46C, HEXA, PTTG1, TIMP1, FAM167B, CCNG1, FAXDC2, HMGCS1, L2HGDH, Lipin1, MME, MSMO1, PARM1, PTGFR, SLC22A4, SLC35F5, CCNA2, CENPU, CEP55, RASSF2, and SLC16A3 . Conclusions : Interestingly, comparing the list of genes with the list of genes obtained from our literature search analysis, we found only three genes in common. These genes are HEXA, PTTG1, and TIMP1. Our finding points to the potential of a few genes that may be important for ovarian follicular development and oocyte quality. Future studies revealing the function of these genes will further our understanding of how litter size is controlled in the ovary while also providing insight on genetic selection of high litter gilts.


BMC Genomics ◽  
2013 ◽  
Vol 14 (S2) ◽  
Author(s):  
Koki Tsuyuzaki ◽  
Daisuke Tominaga ◽  
Yeondae Kwon ◽  
Satoru Miyazaki

2017 ◽  
Vol 3 (1) ◽  
pp. 31
Author(s):  
Ahmed Hossain ◽  
Gias Uddin Ahsan ◽  
Hayatun Nabi

<p>Treatment with chemotherapy is important in limiting the intensity of serous epithelial ovarian cancer. However, not all patients are sensitive to platinum chemotherapy corresponding to longer progression-free survival (PFS &gt;8 months). Koti <em>et al.</em>[1] revealed a set of 204 discriminating genes possessing expression levels, which could influence differential chemotherapy response between the platinum-resistant and platinum-sensitive group of patients. They considered Welch two-sample <em>t</em>-test and non-parametric Mann-Whitney U test to identify the differentially expressed genes. However, both the statistical methods turned out to be unsuitable for microarray data. In this paper, we used three alternative statistical methods to select a combined list of genes and compared the genes that were proposed by Koti <em>et al.</em>[1]. Subsequently, we recommended using sparse principal component analysis (sparse PCA) to identify a final list of genes. Sparse PCA incorporates correlation into account among the genes and helps to draw a biologically important gene discovery. We identified 77 differentially expressed genes, which include 11 new genes that can separate the groups of patients who are platinum-resistant and platinum-sensitive to the chemotherapy. The integrative approach can also be effective in another high dimensional dataset to compare between two groups.</p>


2011 ◽  
Vol 5 (Suppl 3) ◽  
pp. S1 ◽  
Author(s):  
Zhongxue Chen ◽  
Jianzhong Liu ◽  
Hon Ng ◽  
Saralees Nadarajah ◽  
Howard L Kaufman ◽  
...  

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