Knowledge-guided multi-scale independent component analysis for biomarker identification.

Abstract:

BACKGROUND:Many statistical methods have been proposed to identify disease biomarkers from gene expression profiles. However, from gene expression profile data alone, statistical methods often fail to identify biologically meaningful biomarkers related to a specific disease under study. In this paper, we develop a novel strategy, namely knowledge-guided multi-scale independent component analysis (ICA), to first infer regulatory signals and then identify biologically relevant biomarkers from microarray data. RESULTS:Since gene expression levels reflect the joint effect of several underlying biological functions, disease-specific biomarkers may be involved in several distinct biological functions. To identify disease-specific biomarkers that provide unique mechanistic insights, a meta-data "knowledge gene pool" (KGP) is first constructed from multiple data sources to provide important information on the likely functions (such as gene ontology information) and regulatory events (such as promoter responsive elements) associated with potential genes of interest. The gene expression and biological meta data associated with the members of the KGP can then be used to guide subsequent analysis. ICA is then applied to multi-scale gene clusters to reveal regulatory modes reflecting the underlying biological mechanisms. Finally disease-specific biomarkers are extracted by their weighted connectivity scores associated with the extracted regulatory modes. A statistical significance test is used to evaluate the significance of transcription factor enrichment for the extracted gene set based on motif information. We applied the proposed method to yeast cell cycle microarray data and Rsf-1-induced ovarian cancer microarray data. The results show that our knowledge-guided ICA approach can extract biologically meaningful regulatory modes and outperform several baseline methods for biomarker identification. CONCLUSION:We have proposed a novel method, namely knowledge-guided multi-scale ICA, to identify disease-specific biomarkers. The goal is to infer knowledge-relevant regulatory signals and then identify corresponding biomarkers through a multi-scale strategy. The approach has been successfully applied to two expression profiling experiments to demonstrate its improved performance in extracting biologically meaningful and disease-related biomarkers. More importantly, the proposed approach shows promising results to infer novel biomarkers for ovarian cancer and extend current knowledge.

journal_name

BMC Bioinformatics

journal_title

BMC bioinformatics

authors

Chen L,Xuan J,Wang C,Shih IeM,Wang Y,Zhang Z,Hoffman E,Clarke R

doi

10.1186/1471-2105-9-416

subject

Has Abstract

pub_date

2008-10-06 00:00:00

pages

416

issn

1471-2105

pii

1471-2105-9-416

journal_volume

9

pub_type

杂志文章
  • Characterization and sequence prediction of structural variations in α-helix.

    abstract:BACKGROUND:The structure conservation in various α-helix subclasses reveals the sequence and context dependent factors causing distortions in the α-helix. The sequence-structure relationship in these subclasses can be used to predict structural variations in α-helix purely based on its sequence. We train support vector...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-12-S1-S20

    authors: Tendulkar AV,Wangikar PP

    更新日期:2011-02-15 00:00:00

  • PIGS: improved estimates of identity-by-descent probabilities by probabilistic IBD graph sampling.

    abstract::Identifying segments in the genome of different individuals that are identical-by-descent (IBD) is a fundamental element of genetics. IBD data is used for numerous applications including demographic inference, heritability estimation, and mapping disease loci. Simultaneous detection of IBD over multiple haplotypes has...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-16-S5-S9

    authors: Park DS,Baran Y,Hormozdiari F,Eng C,Torgerson DG,Burchard EG,Zaitlen N

    更新日期:2015-01-01 00:00:00

  • ImiRP: a computational approach to microRNA target site mutation.

    abstract:BACKGROUND:MicroRNAs (miRNAs) are small ~22 nucleotide non-coding RNAs that function as post-transcriptional regulators of messenger RNA (mRNA) through base-pairing to 6-8 nucleotide long target sites, usually located within the mRNA 3' untranslated region. A common approach to validate and probe microRNA-mRNA interact...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-016-1057-y

    authors: Ryan BC,Werner TS,Howard PL,Chow RL

    更新日期:2016-04-27 00:00:00

  • Modeling genomic data with type attributes, balancing stability and maintainability.

    abstract:BACKGROUND:Molecular biology (MB) is a dynamic research domain that benefits greatly from the use of modern software technology in preparing experiments, analyzing acquired data, and even performing "in-silico" analyses. As ever new findings change the face of this domain, software for MB has to be sufficiently flexibl...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-10-97

    authors: Busch N,Wedemann G

    更新日期:2009-03-27 00:00:00

  • SBML-SAT: a systems biology markup language (SBML) based sensitivity analysis tool.

    abstract:BACKGROUND:It has long been recognized that sensitivity analysis plays a key role in modeling and analyzing cellular and biochemical processes. Systems biology markup language (SBML) has become a well-known platform for coding and sharing mathematical models of such processes. However, current SBML compatible software ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-9-342

    authors: Zi Z,Zheng Y,Rundell AE,Klipp E

    更新日期:2008-08-15 00:00:00

  • The INTERPRET Decision-Support System version 3.0 for evaluation of Magnetic Resonance Spectroscopy data from human brain tumours and other abnormal brain masses.

    abstract:BACKGROUND:Proton Magnetic Resonance (MR) Spectroscopy (MRS) is a widely available technique for those clinical centres equipped with MR scanners. Unlike the rest of MR-based techniques, MRS yields not images but spectra of metabolites in the tissues. In pathological situations, the MRS profile changes and this has bee...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-11-581

    authors: Pérez-Ruiz A,Julià-Sapé M,Mercadal G,Olier I,Majós C,Arús C

    更新日期:2010-11-29 00:00:00

  • BCDForest: a boosting cascade deep forest model towards the classification of cancer subtypes based on gene expression data.

    abstract:BACKGROUND:The classification of cancer subtypes is of great importance to cancer disease diagnosis and therapy. Many supervised learning approaches have been applied to cancer subtype classification in the past few years, especially of deep learning based approaches. Recently, the deep forest model has been proposed a...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-018-2095-4

    authors: Guo Y,Liu S,Li Z,Shang X

    更新日期:2018-04-11 00:00:00

  • A computational analysis of SARS cysteine proteinase-octapeptide substrate interaction: implication for structure and active site binding mechanism.

    abstract:BACKGROUND:SARS coronavirus main proteinase (SARS CoVMpro) is an important enzyme for the replication of Severe Acute Respiratory Syndrome virus. The active site region of SARS CoVMpro is divided into 8 subsites. Understanding the binding mode of SARS CoVMpro with a specific substrate is useful and contributes to struc...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-10-S1-S48

    authors: Phakthanakanok K,Ratanakhanokchai K,Kyu KL,Sompornpisut P,Watts A,Pinitglang S

    更新日期:2009-01-30 00:00:00

  • MGOGP: a gene module-based heuristic algorithm for cancer-related gene prioritization.

    abstract:BACKGROUND:Prioritizing genes according to their associations with a cancer allows researchers to explore genes in more informed ways. By far, Gene-centric or network-centric gene prioritization methods are predominated. Genes and their protein products carry out cellular processes in the context of functional modules....

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-018-2216-0

    authors: Su L,Liu G,Bai T,Meng X,Ma Q

    更新日期:2018-06-05 00:00:00

  • ChemEx: information extraction system for chemical data curation.

    abstract:BACKGROUND:Manual chemical data curation from publications is error-prone, time consuming, and hard to maintain up-to-date data sets. Automatic information extraction can be used as a tool to reduce these problems. Since chemical structures usually described in images, information extraction needs to combine structure ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-13-S17-S9

    authors: Tharatipyakul A,Numnark S,Wichadakul D,Ingsriswang S

    更新日期:2012-01-01 00:00:00

  • The EnzymeTracker: an open-source laboratory information management system for sample tracking.

    abstract:BACKGROUND:In many laboratories, researchers store experimental data on their own workstation using spreadsheets. However, this approach poses a number of problems, ranging from sharing issues to inefficient data-mining. Standard spreadsheets are also error-prone, as data do not undergo any validation process. To overc...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-13-15

    authors: Triplet T,Butler G

    更新日期:2012-01-26 00:00:00

  • Reverse engineering gene regulatory networks: coupling an optimization algorithm with a parameter identification technique.

    abstract:BACKGROUND:To infer gene regulatory networks from time series gene profiles, two important tasks that are related to biological systems must be undertaken. One task is to determine a valid network structure that has topological properties that can influence the network dynamics profoundly. The other task is to optimize...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-15-S15-S8

    authors: Hsiao YT,Lee WP

    更新日期:2014-01-01 00:00:00

  • Effective automated pipeline for 3D reconstruction of synapses based on deep learning.

    abstract:BACKGROUND:The locations and shapes of synapses are important in reconstructing connectomes and analyzing synaptic plasticity. However, current synapse detection and segmentation methods are still not adequate for accurately acquiring the synaptic connectivity, and they cannot effectively alleviate the burden of synaps...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-018-2232-0

    authors: Xiao C,Li W,Deng H,Chen X,Yang Y,Xie Q,Han H

    更新日期:2018-07-13 00:00:00

  • OscoNet: inferring oscillatory gene networks.

    abstract:BACKGROUND:Oscillatory genes, with periodic expression at the mRNA and/or protein level, have been shown to play a pivotal role in many biological contexts. However, with the exception of the circadian clock and cell cycle, only a few such genes are known. Detecting oscillatory genes from snapshot single-cell experimen...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-020-03561-y

    authors: Cutillo L,Boukouvalas A,Marinopoulou E,Papalopulu N,Rattray M

    更新日期:2020-08-21 00:00:00

  • Principal components analysis based methodology to identify differentially expressed genes in time-course microarray data.

    abstract:BACKGROUND:Time-course microarray experiments are being increasingly used to characterize dynamic biological processes. In these experiments, the goal is to identify genes differentially expressed in time-course data, measured between different biological conditions. These differentially expressed genes can reveal the ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-9-267

    authors: Jonnalagadda S,Srinivasan R

    更新日期:2008-06-06 00:00:00

  • Learning by aggregating experts and filtering novices: a solution to crowdsourcing problems in bioinformatics.

    abstract:BACKGROUND:In many biomedical applications, there is a need for developing classification models based on noisy annotations. Recently, various methods addressed this scenario by relaying on unreliable annotations obtained from multiple sources. RESULTS:We proposed a probabilistic classification algorithm based on labe...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-14-S12-S5

    authors: Zhang P,Cao W,Obradovic Z

    更新日期:2013-01-01 00:00:00

  • DeepCryoPicker: fully automated deep neural network for single protein particle picking in cryo-EM.

    abstract:BACKGROUND:Cryo-electron microscopy (Cryo-EM) is widely used in the determination of the three-dimensional (3D) structures of macromolecules. Particle picking from 2D micrographs remains a challenging early step in the Cryo-EM pipeline due to the diversity of particle shapes and the extremely low signal-to-noise ratio ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-020-03809-7

    authors: Al-Azzawi A,Ouadou A,Max H,Duan Y,Tanner JJ,Cheng J

    更新日期:2020-11-09 00:00:00

  • Gene ontology based transfer learning for protein subcellular localization.

    abstract:BACKGROUND:Prediction of protein subcellular localization generally involves many complex factors, and using only one or two aspects of data information may not tell the true story. For this reason, some recent predictive models are deliberately designed to integrate multiple heterogeneous data sources for exploiting m...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-12-44

    authors: Mei S,Fei W,Zhou S

    更新日期:2011-02-02 00:00:00

  • ICEKAT: an interactive online tool for calculating initial rates from continuous enzyme kinetic traces.

    abstract:BACKGROUND:Continuous enzyme kinetic assays are often used in high-throughput applications, as they allow rapid acquisition of large amounts of kinetic data and increased confidence compared to discontinuous assays. However, data analysis is often rate-limiting in high-throughput enzyme assays, as manual inspection and...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-020-3513-y

    authors: Olp MD,Kalous KS,Smith BC

    更新日期:2020-05-14 00:00:00

  • STSE: Spatio-Temporal Simulation Environment Dedicated to Biology.

    abstract:BACKGROUND:Recently, the availability of high-resolution microscopy together with the advancements in the development of biomarkers as reporters of biomolecular interactions increased the importance of imaging methods in molecular cell biology. These techniques enable the investigation of cellular characteristics like ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-12-126

    authors: Stoma S,Fröhlich M,Gerber S,Klipp E

    更新日期:2011-04-28 00:00:00

  • imputeqc: an R package for assessing imputation quality of genotypes and optimizing imputation parameters.

    abstract:BACKGROUND:The imputation of genotypes increases the power of genome-wide association studies. However, the imputation quality should be assessed in each particular case. Nevertheless, not all imputation softwares control the error of output, e.g., the last release of fastPHASE program (1.4.8) lacks such an option. In ...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-020-03589-0

    authors: Khvorykh GV,Khrunin AV

    更新日期:2020-07-24 00:00:00

  • Robust pathway sampling in phenotype prediction. Application to triple negative breast cancer.

    abstract:BACKGROUND:Phenotype prediction problems are usually considered ill-posed, as the amount of samples is very limited with respect to the scrutinized genetic probes. This fact complicates the sampling of the defective genetic pathways due to the high number of possible discriminatory genetic networks involved. In this re...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-020-3356-6

    authors: Cernea A,Fernández-Martínez JL,deAndrés-Galiana EJ,Fernández-Ovies FJ,Alvarez-Machancoses O,Fernández-Muñiz Z,Saligan LN,Sonis ST

    更新日期:2020-03-11 00:00:00

  • Construction of phylogenetic trees by kernel-based comparative analysis of metabolic networks.

    abstract:BACKGROUND:To infer the tree of life requires knowledge of the common characteristics of each species descended from a common ancestor as the measuring criteria and a method to calculate the distance between the resulting values of each measure. Conventional phylogenetic analysis based on genomic sequences provides inf...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-7-284

    authors: Oh SJ,Joung JG,Chang JH,Zhang BT

    更新日期:2006-06-06 00:00:00

  • Improving interoperability between microbial information and sequence databases.

    abstract:BACKGROUND:Biological resources are essential tools for biomedical research. Their availability is promoted through on-line catalogues. Common Access to Biological Resources and Information (CABRI) is a service for distribution of biological resources and related data collected by 28 European culture collections. Linki...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-6-S4-S23

    authors: Romano P,Dawyndt P,Piersigilli F,Swings J

    更新日期:2005-12-01 00:00:00

  • 3DScapeCS: application of three dimensional, parallel, dynamic network visualization in Cytoscape.

    abstract:BACKGROUND:The exponential growth of gigantic biological data from various sources, such as protein-protein interaction (PPI), genome sequences scaffolding, Mass spectrometry (MS) molecular networking and metabolic flux, demands an efficient way for better visualization and interpretation beyond the conventional, two-d...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-14-322

    authors: Wang Q,Tang B,Song L,Ren B,Liang Q,Xie F,Zhuo Y,Liu X,Zhang L

    更新日期:2013-11-14 00:00:00

  • Unsupervised deep learning reveals prognostically relevant subtypes of glioblastoma.

    abstract:BACKGROUND:One approach to improving the personalized treatment of cancer is to understand the cellular signaling transduction pathways that cause cancer at the level of the individual patient. In this study, we used unsupervised deep learning to learn the hierarchical structure within cancer gene expression data. Deep...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-017-1798-2

    authors: Young JD,Cai C,Lu X

    更新日期:2017-10-03 00:00:00

  • svapls: an R package to correct for hidden factors of variability in gene expression studies.

    abstract:BACKGROUND:Hidden variability is a fundamentally important issue in the context of gene expression studies. Collected tissue samples may have a wide variety of hidden effects that may alter their transcriptional landscape significantly. As a result their actual differential expression pattern can be potentially distort...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-14-236

    authors: Chakraborty S,Datta S,Datta S

    更新日期:2013-07-24 00:00:00

  • IPRStats: visualization of the functional potential of an InterProScan run.

    abstract:BACKGROUND:InterPro is a collection of protein signatures for the classification and automated annotation of proteins. Interproscan is a software tool that scans protein sequences against Interpro member databases using a variety of profile-based, hidden markov model and positional specific score matrix methods. It not...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-11-S12-S13

    authors: Kelly RJ,Vincent DE,Friedberg I

    更新日期:2010-12-21 00:00:00

  • SDA: a semi-parametric differential abundance analysis method for metabolomics and proteomics data.

    abstract:BACKGROUND:Identifying differentially abundant features between different experimental groups is a common goal for many metabolomics and proteomics studies. However, analyzing data from mass spectrometry (MS) is difficult because the data may not be normally distributed and there is often a large fraction of zero value...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/s12859-019-3067-z

    authors: Li Y,Fan TWM,Lane AN,Kang WY,Arnold SM,Stromberg AJ,Wang C,Chen L

    更新日期:2019-10-17 00:00:00

  • MiRFinder: an improved approach and software implementation for genome-wide fast microRNA precursor scans.

    abstract:BACKGROUND:MicroRNAs (miRNAs) are recognized as one of the most important families of non-coding RNAs that serve as important sequence-specific post-transcriptional regulators of gene expression. Identification of miRNAs is an important requirement for understanding the mechanisms of post-transcriptional regulation. Hu...

    journal_title:BMC bioinformatics

    pub_type: 杂志文章

    doi:10.1186/1471-2105-8-341

    authors: Huang TH,Fan B,Rothschild MF,Hu ZL,Li K,Zhao SH

    更新日期:2007-09-17 00:00:00