Literature DB >> 25701576

Pattern recognition methods to relate time profiles of gene expression with phenotypic data: a comparative study.

Diana M Hendrickx1, Danyel G J Jennen1, Jacob J Briedé1, Rachel Cavill1, Theo M de Kok1, Jos C S Kleinjans1.   

Abstract

MOTIVATION: Comparing time courses of gene expression with time courses of phenotypic data may provide new insights in cellular mechanisms. In this study, we compared the performance of five pattern recognition methods with respect to their ability to relate genes and phenotypic data: one classical method (k-means) and four methods especially developed for time series [Short Time-series Expression Miner (STEM), Linear Mixed Model mixtures, Dynamic Time Warping for -Omics and linear modeling with R/Bioconductor limma package]. The methods were evaluated using data available from toxicological studies that had the aim to relate gene expression with phenotypic endpoints (i.e. to develop biomarkers for adverse outcomes). Additionally, technical aspects (influence of noise, number of time points and number of replicates) were evaluated on simulated data.
RESULTS: None of the methods outperforms the others in terms of biology. Linear modeling with limma is mostly influenced by noise. STEM is mostly influenced by the number of biological replicates in the dataset, whereas k-means and linear modeling with limma are mostly influenced by the number of time points. In most cases, the results of the methods complement each other. We therefore provide recommendations to integrate the five methods. AVAILABILITY: The Matlab code for the simulations performed in this research is available in the Supplementary Data (Word file). The microarray data analysed in this paper are available at ArrayExpress (E-TOXM-22 and E-TOXM-23) and Gene Expression Omnibus (GSE39291). The phenotypic data are available in the Supplementary Data (Excel file). Links to the pattern recognition tools compared in this paper are provided in the main text. CONTACT: d.hendrickx@maastrichtuniversity.nl SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
© The Author 2015. Published by Oxford University Press. All rights reserved. For Permissions, please e-mail: journals.permissions@oup.com.

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Year:  2015        PMID: 25701576     DOI: 10.1093/bioinformatics/btv108

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  4 in total

1.  Identification and Validation of Novel Biomarkers for Hepatocellular Carcinoma, Liver Fibrosis/Cirrhosis and Chronic Hepatitis B via Transcriptome Sequencing Technology.

Authors:  Dandan Zhao; Xiaoxiao Zhang; Yuhui Tang; Peilin Guo; Rong Ai; Mengmeng Hou; Yiqi Wang; Xiwei Yuan; Luyao Cui; Yuguo Zhang; Suxian Zhao; Wencong Li; Yang Wang; Xiaoye Sun; Lingdi Liu; Shiming Dong; Lu Li; Wen Zhao; Yuemin Nan
Journal:  J Hepatocell Carcinoma       Date:  2022-05-09

2.  Object Weighting: A New Clustering Approach to Deal with Outliers and Cluster Overlap in Computational Biology.

Authors:  Alexandre Gondeau; Zahia Aouabed; Mohamed Hijri; Pedro Peres-Neto; Vladimir Makarenkov
Journal:  IEEE/ACM Trans Comput Biol Bioinform       Date:  2021-04-08       Impact factor: 3.710

Review 3.  Dynamics in Transcriptomics: Advancements in RNA-seq Time Course and Downstream Analysis.

Authors:  Daniel Spies; Constance Ciaudo
Journal:  Comput Struct Biotechnol J       Date:  2015-08-24       Impact factor: 7.271

4.  DTNI: a novel toxicogenomics data analysis tool for identifying the molecular mechanisms underlying the adverse effects of toxic compounds.

Authors:  Diana M Hendrickx; Terezinha Souza; Danyel G J Jennen; Jos C S Kleinjans
Journal:  Arch Toxicol       Date:  2016-12-28       Impact factor: 5.153

  4 in total

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