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Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules.

Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Research Abstract Details 

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  • Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Abstract Text:

    dong wangDong Wang,yingli lvYingli Lv,zheng guoZheng Guo,xia liXia Li,yanhui liYanhui Li,jing zhuJing Zhu,da yangDa Yang,jianzhen xuJianzhen Xu,chenguang wangChenguang Wang,shaoqi raoShaoqi Rao,baofeng yangBaofeng Yang,

    MOTIVATION: Microarrays datasets frequently contain a large number of missing values (MVs), which need to be estimated and replaced for subsequent data mining. The focus of the paper is to study the effects of different MV treatments for cDNA microarray data on disease classification analysis. RESULTS: By analyzing five datasets, we demonstrate that among three kinds of classifiers evaluated in this study, support vector machine (SVM) classifiers are robust to varied MV imputation methods [e.g. replacing MVs by zero, K nearest-neighbor (KNN) imputation algorithm, local least square imputation and Bayesian principal component analysis], while the classification and regression tree classifiers are sensitive in terms of classification accuracy. The KNNclassifiers built on differentially expressed genes (DEGs) are robust to the varied MV treatments, but the performances of the KNN classifiers based on all measured genes can be significantly deteriorated when imputing MVs for genes with larger missing rate (MR) (e.g. MR > 5%). Generally, while replacing MVs by zero performs relatively poor, the other imputation algorithms have little difference in affecting classification performances of the SVM or KNN classifiers. We further demonstrate the power and feasibility of our recently proposed functional expression profile (FEP) approach as means to handle microarray data with MVs. The FEPs, which are derived from the functional modules that are enriched with sets of DEGs and thus can be consistently identified under varied MV treatments, achieve precise disease classification with better biological interpretation. We conclude that the choice of MV treatments should be determined in context of the later approaches used for disease classification. The suggested exclusion criterion of ignoring the genes with larger MR (e.g. >5%), while justifiable for some classifiers such as KNN classifiers, might not be considered as a general rule for all classifiers.

    Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Publishing Authors By Initials

    d wangD Wang,y lvY Lv,z guoZ Guo,x liX Li,y liY Li,j zhuJ Zhu,d yangD Yang,j xuJ Xu,c wangC Wang,s raoS Rao,b yangB Yang,

    For similar biological factors: biological markers: tumor markers, biological research abstracts see: biological factors: biological markers: tumor markers, biological research

    PUBMED ID PMID:

    MEDLINE DATE:

    Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Journal Published:

    PUBLICATION TYPE: Research Support, Non-U.S. Gov

    Journal: Bioinformatics (Oxford, England)

    VOLUME: 22

    Page Numbers: 2883-9

    Journal Abbreviation: Bioinformatics

    ISSN: 1460-2059

    DAY: 29

    MONTH: 06

    YEAR: 2006

    Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Information

    Number of References:

    LANGUAGE: eng

    NlmUniqueID: 9808944

    Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Keywords Mesh Terms:

    KEYWORDS: Tumor Markers, Biological

    MESH TERMS: genetics

    Chemical & Substance for Abstract: Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules. Information

    Substance Name: Tumor Markers, Biological

    Registry Number: 0

    Grant and Affiliation Information for Effects of replacing the unreliable cDNA microarray measurements on the disease classification based on gene expression profiles and functional modules.

    AFFILIATION: Department of Bioinformatics and Bio-pharmaceutical Key Laboratory of Heilongjiang Province and State, Harbin Medical University Harbin 150086, China.

    Country: England

    England Research PublicationEngland Research Publication

    AGENCY: United States NHLBI

    GRANT: P50 HL077101-01

    ACRONYM: HL

    MEDLINETA: Bioinformatics

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