Qi Liu

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Organization: Shanghai Jiao Tong University
Department: 1 School of Life Sciences & Biotechnology
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Co-reporter:Qi Liu;Guohui Ding;Tao Huang;Yejun Tan;Hongyue Dai;Lu Xie;Yixue Li
Chinese Journal of Chemistry 2010 Volume 28( Issue 7) pp:1284-1290
Publication Date(Web):
DOI:10.1002/cjoc.201090222

Abstract

Lists of differentially expressed genes (DEGs) detected often show low reproducibility even in technique replicate experiments. The reproducibility is even lower for those real cancer data with large biological variations and limited number of samples. Since existing methods for identifying differentially expressed genes treat each gene separately, they cannot circumvent the problem of low reproducibility. Considering correlation structures of genes may help to mitigate the effect of errors on individual gene estimates and thus get more reliable lists of DEGs. We borrowed information from large amount of existing microarray data to define the expression dependencies amongst genes. We use this prior knowledge of dependencies amongst genes to adjust the significance rank of DEGs. We applied our method and four popular ranking algorithms including mean fold change (FC), SAM, t-statistic and Wilcoxon rank sum-test on two cancer microarray datasets. Our method achieved higher reproducibility than other methods across a range of sample sizes. Furthermore, our method obtained higher accuracy than other methods, especially when the sample size is small. The results demonstrate that considering the dependencies amongst genes helps to adjust the significance rank of genes and find those truly differentially expressed genes.

Co-reporter:Qi Liu;Yejun Tan;Tao Huang;Guohui Ding;Zhidong Tu;Lei Liu
BMC Bioinformatics 2010 Volume 11( Issue 11 Supplement) pp:
Publication Date(Web):2010 December
DOI:10.1186/1471-2105-11-S11-S5
Inference of causal regulators responsible for gene expression changes under different conditions is of great importance but remains rather challenging. To date, most approaches use direct binding targets of transcription factors (TFs) to associate TFs with expression profiles. However, the low overlap between binding targets of a TF and the affected genes of the TF knockout limits the power of those methods.We developed a TF-centered downstream gene set enrichment analysis approach to identify potential causal regulators responsible for expression changes. We constructed hierarchical and multi-layer regulation models to derive possible downstream gene sets of a TF using not only TF-DNA interactions, but also, for the first time, post-translational modifications (PTM) information. We verified our method in one expression dataset of large-scale TF knockout and another dataset involving both TF knockout and TF overexpression. Compared with the flat model using TF-DNA interactions alone, our method correctly identified five more actual perturbed TFs in large-scale TF knockout data and six more perturbed TFs in overexpression data. Potential regulatory pathways downstream of three perturbed regulators— SNF1, AFT1 and SUT1 —were given to demonstrate the power of multilayer regulation models integrating TF-DNA interactions and PTM information. Additionally, our method successfully identified known important TFs and inferred some novel potential TFs involved in the transition from fermentative to glycerol-based respiratory growth and in the pheromone response. Downstream regulation pathways of SUT1 and AFT1 were also supported by the mRNA and/or phosphorylation changes of their mediating TFs and/or “modulator” proteins.The results suggest that in addition to direct transcription, indirect transcription and post-translational regulation are also responsible for the effects of TFs perturbation, especially for TFs overexpression. Many TFs inferred by our method are supported by literature. Multiple TF regulation models could lead to new hypotheses for future experiments. Our method provides a valuable framework for analyzing gene expression data to identify causal regulators in the context of TF-DNA interactions and PTM information.
Co-reporter:Qi Liu, Yi-Sheng Zhu, Bao-Hua Wang, Yi-Xue Li
Computational Biology and Chemistry 2003 Volume 27(Issue 1) pp:69-76
Publication Date(Web):February 2003
DOI:10.1016/S0097-8485(02)00051-7
A novel method is developed to model and predict the transmembrane regions of β-barrel membrane proteins. It is based on a Hidden Markov model (HMM) with architecture obeying those proteins’ construction principles. The HMM is trained and tested on a non-redundant set of 11 β-barrel membrane proteins known to date at atomic resolution with a jack-knife procedure. As a result, the method correctly locates 97% of 172 transmembrane β-strands. Out of the 11 proteins, the barrel size for ten proteins and the overall topology for seven proteins are correctly predicted. Additionally, it successfully assigns the entire topology for two new β-barrel membrane proteins that have no significant sequence homology to the 11 proteins. Predicted topology for two candidates for β-barrel structure of the outer mitochondrial membrane is also presented in the paper.
Protein kinase Akt
acetyl-soyasaponin A1
Soyasaponin Aa
5,6-DIFLUORO-1H-INDOLE-3-CARBALDEHYDE
SOYASAPONIN I
β-d-Glucopyranosiduronic acid, (3β,4α,16α)-17-carboxy-16-hydroxy-23-oxo-28-norolean-12-en-3-yl