P.0606 Identification of key genes involved in antipsychotic-induced metabolic dysregulation based on integrative bioinformatics analysis of multi-tissue gene expression data

2021 ◽  
Vol 53 ◽  
pp. S445
Author(s):  
P. Gassó ◽  
A. Martínez-Pinteño ◽  
L. Prohens ◽  
À.G. Segura ◽  
M. Parellada ◽  
...  
PLoS ONE ◽  
2008 ◽  
Vol 3 (6) ◽  
pp. e2439 ◽  
Author(s):  
Laura Miozzi ◽  
Rosario Michael Piro ◽  
Fabio Rosa ◽  
Ugo Ala ◽  
Lorenzo Silengo ◽  
...  

2017 ◽  
Vol 13 (5) ◽  
pp. 1832-1840 ◽  
Author(s):  
Huang Zhang ◽  
Xiong Zhang ◽  
Jie Huang ◽  
Xusheng Fan

2016 ◽  
Vol 37 (3) ◽  
pp. e254-e262 ◽  
Author(s):  
Zhihong Li ◽  
Qihong Wang ◽  
Haifeng Yu ◽  
Kun Zou ◽  
Yong Xi ◽  
...  

Author(s):  
Pau Erola ◽  
Johan L M Björkegren ◽  
Tom Michoel

Abstract Motivation Recently, it has become feasible to generate large-scale, multi-tissue gene expression data, where expression profiles are obtained from multiple tissues or organs sampled from dozens to hundreds of individuals. When traditional clustering methods are applied to this type of data, important information is lost, because they either require all tissues to be analyzed independently, ignoring dependencies and similarities between tissues, or to merge tissues in a single, monolithic dataset, ignoring individual characteristics of tissues. Results We developed a Bayesian model-based multi-tissue clustering algorithm, revamp, which can incorporate prior information on physiological tissue similarity, and which results in a set of clusters, each consisting of a core set of genes conserved across tissues as well as differential sets of genes specific to one or more subsets of tissues. Using data from seven vascular and metabolic tissues from over 100 individuals in the STockholm Atherosclerosis Gene Expression (STAGE) study, we demonstrate that multi-tissue clusters inferred by revamp are more enriched for tissue-dependent protein-protein interactions compared to alternative approaches. We further demonstrate that revamp results in easily interpretable multi-tissue gene expression associations to key coronary artery disease processes and clinical phenotypes in the STAGE individuals. Availability and implementation Revamp is implemented in the Lemon-Tree software, available at https://github.com/eb00/lemon-tree Supplementary information Supplementary data are available at Bioinformatics online.


2016 ◽  
Vol 32 (14) ◽  
pp. 2193-2195 ◽  
Author(s):  
Anestis Touloumis ◽  
John C. Marioni ◽  
Simon Tavaré

PLoS ONE ◽  
2021 ◽  
Vol 16 (10) ◽  
pp. e0230164
Author(s):  
Md Nazmul Haque ◽  
Sadia Sharmin ◽  
Amin Ahsan Ali ◽  
Abu Ashfaqur Sajib ◽  
Mohammad Shoyaib

With the advent of high-throughput technologies, life sciences are generating a huge amount of varied biomolecular data. Global gene expression profiles provide a snapshot of all the genes that are transcribed in a cell or in a tissue under a particular condition. The high-dimensionality of such gene expression data (i.e., very large number of features/genes analyzed with relatively much less number of samples) makes it difficult to identify the key genes (biomarkers) that are truly attributing to a particular phenotype or condition, (such as cancer), de novo. For identifying the key genes from gene expression data, among the existing literature, mutual information (MI) is one of the most successful criteria. However, the correction of MI for finite sample is not taken into account in this regard. It is also important to incorporate dynamic discretization of genes for more relevant gene selection, although this is not considered in the available methods. Besides, it is usually suggested in current studies to remove redundant genes which is particularly inappropriate for biological data, as a group of genes may connect to each other for downstreaming proteins. Thus, despite being redundant, it is needed to add the genes which provide additional useful information for the disease. Addressing these issues, we proposed Mutual information based Gene Selection method (MGS) for selecting informative genes. Moreover, to rank these selected genes, we extended MGS and propose two ranking methods on the selected genes, such as MGSf—based on frequency and MGSrf—based on Random Forest. The proposed method not only obtained better classification rates on gene expression datasets derived from different gene expression studies compared to recently reported methods but also detected the key genes relevant to pathways with a causal relationship to the disease, which indicate that it will also able to find the responsible genes for an unknown disease data.


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