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Open AccessJournal ArticleDOI

Large scale comparison of global gene expression patterns in human and mouse

TLDR
The results indicate that the global patterns of tissue-specific expression of orthologous genes are conserved in human and mouse.
Abstract
It is widely accepted that orthologous genes between species are conserved at the sequence level and perform similar functions in different organisms. However, the level of conservation of gene expression patterns of the orthologous genes in different species has been unclear. To address the issue, we compared gene expression of orthologous genes based on 2,557 human and 1,267 mouse samples with high quality gene expression data, selected from experiments stored in the public microarray repository ArrayExpress. In a principal component analysis (PCA) of combined data from human and mouse samples merged on orthologous probesets, samples largely form distinctive clusters based on their tissue sources when projected onto the top principal components. The most prominent groups are the nervous system, muscle/heart tissues, liver and cell lines. Despite the great differences in sample characteristics and experiment conditions, the overall patterns of these prominent clusters are strikingly similar for human and mouse. We further analyzed data for each tissue separately and found that the most variable genes in each tissue are highly enriched with human-mouse tissue-specific orthologs and the least variable genes in each tissue are enriched with human-mouse housekeeping orthologs. The results indicate that the global patterns of tissue-specific expression of orthologous genes are conserved in human and mouse. The expression of groups of orthologous genes co-varies in the two species, both for the most variable genes and the most ubiquitously expressed genes.

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Citations
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Journal ArticleDOI

Fully scalable online-preprocessing algorithm for short oligonucleotide microarray atlases

TL;DR: This work introduces a fully scalable online-learning algorithm that can learn probe-level parameters based on sequential hyperparameter updates at small consecutive batches of data, circumventing the extensive memory requirements of the standard approaches and opening up novel opportunities to take full advantage of contemporary microarray collections.
Journal ArticleDOI

Computational tools for comparative phenomics; the role and promise of ontologies

TL;DR: Recent computational approaches that facilitate the integration of experimental data from model organisms with clinical observations in humans are reviewed, thereby enabling comparative phenomics and leading to the potential of translating basic discoveries from the model systems into diagnostic and therapeutic advances at the clinical level.
Journal ArticleDOI

Bridging the gap between transcriptome and proteome measurements identifies post-translationally regulated genes

TL;DR: A data-driven machine learning approach to bridging the gap between these two levels of high-throughput omic measurements on Saccharomyces cerevisiae is developed and the model is deployed in a novel way to uncover mRNA-protein pairs that are candidates for post-translational regulation.
Journal ArticleDOI

The similarity of gene expression between human and mouse tissues

TL;DR: Meta-analysis of human and mouse microarray data reveals conservation of patterns of gene expression that will help to better characterize the evolution of geneexpression.
Journal ArticleDOI

CellMapper: rapid and accurate inference of gene expression in difficult-to-isolate cell types.

TL;DR: A sensitive approach to predict genes expressed selectively in specific cell types, by searching publicly available expression data for genes with a similar expression profile to known cell-specific markers, which demonstrates a clinically relevant application to prioritize candidate genes in disease susceptibility loci identified by GWAS.
References
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Journal ArticleDOI

Exploration, normalization, and summaries of high density oligonucleotide array probe level data

TL;DR: There is no obvious downside to using RMA and attaching a standard error (SE) to this quantity using a linear model which removes probe-specific affinities, and the exploratory data analyses of the probe level data motivate a new summary measure that is a robust multi-array average (RMA) of background-adjusted, normalized, and log-transformed PM values.
Journal ArticleDOI

A gene atlas of the mouse and human protein-encoding transcriptomes

TL;DR: In this paper, high-density oligonucleotide arrays offer the opportunity to examine patterns of gene expression on a genome scale, and the authors have designed custom arrays that interrogate the expression of the vast majority of proteinencoding human and mouse genes and have used them to profile a panel of 79 human and 61 mouse tissues.
Journal ArticleDOI

Classification and diagnostic prediction of cancers using gene expression profiling and artificial neural networks

TL;DR: The ability of the trained ANN models to recognize SRBCTs is demonstrated, and the potential applications of these methods for tumor diagnosis and the identification of candidate targets for therapy are demonstrated.
Book

Bioinformatics and Computational Biology Solutions Using R and Bioconductor

TL;DR: In this article, the authors present a detailed case study of R algorithms with publicly available data, and a major section of the book is devoted to fully worked case studies, with a companion website where readers can reproduce every number, figure and table on their own computers.
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