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ugengma's library [90 articles]

最近录入 ugengma's 文献库:按阅读优先等级排序.
  • A structural mixed model for variances in differential gene expression studies.
    Genetical research, Vol. 89, No. 1. (February 2007), pp. 19-25.
    by F Jaffrézic, G Marot, S Degrelle, I Hue, JL Foulley
    posted to smvar by ugengma on 2008-08-28 14:06:09 as *****
  • When should one subtract background fluorescence in two color microarrays?
    Biostatistics (12 December 2006)
    by Robert B B Scharpf, Christine A A Iacobuzio-Donahue, Julie B B Sneddon, Giovanni Parmigiani
    posted to background by ugengma on 2007-09-25 11:57:42 as **** along with 3 people jfr rdiaz shigepong
  • Fisher's combined p-value for detecting differentially expressed genes using Affymetrix expression arrays
    BMC Genomics, Vol. 8 (09 April 2007), 96.
    by Ann M Hess, Hari K Iyer
    posted to combinpvalhess by ugengma on 2007-05-31 18:25:23 as **** along with 1 person jfr
  • Combining dependent P-values
    Statistics & Probability Letters, Vol. 60, No. 2. (15 November 2002), pp. 183-190.
    by James T Kost, Michael P Mcdermott
    posted to metapval2002 by ugengma on 2007-12-14 13:40:55 as ***
  • Statistical tests for identifying differentially expressed genes in time-course microarray experiments.
    Bioinformatics, Vol. 19, No. 6. (12 April 2003), pp. 694-703.
    by T Park, SG Yi, S Lee, SY Lee, DH Yoo, JI Ahn, YS Lee
    posted to tcpark by ugengma on 2007-10-11 10:07:03 as *** along with 1 person textoris
  • maSigPro: a method to identify significantly differential expression profiles in time-course microarray experiments
    Bioinformatics, Vol. 22, No. 9. (1 May 2006), pp. 1096-1102.
    by Ana Conesa, Maria J Nueda, Manuel Talon
    posted to masigpro by ugengma on 2007-10-11 10:00:00 as *** along with 2 people sgoetz talponer
  • Translational repression by RNA-binding protein TIAR.
    Mol Cell Biol, Vol. 26, No. 7. (April 2006), pp. 2716-2727.
    posted to gse1440 by ugengma on 2007-10-03 12:11:23 as ***
  • Discovering gene expression patterns in Time Course Microarray Experiments by ANOVA-SCA.
    Bioinformatics (22 May 2007)
    by María José J Nueda, Ana Conesa, Johan A A Westerhuis, Huub C J C Hoefsloot, Age K K Smilde, Manuel Talón, Alberto Ferrer
  • GEOquery: a bridge between the Gene Expression Omnibus (GEO) and BioConductor.
    Bioinformatics (12 May 2007)
    by Sean Davis, Paul S S Meltzer
    posted to geoquery by ugengma on 2007-08-08 12:53:05 as *** along with 6 people bertelsen ablejec zhouyu giovenko jyuh jfr
  • Combining multiple microarray studies and modeling interstudy variation.
    Bioinformatics, Vol. 19 Suppl 1 (2003)
    by JK Choi, U Yu, S Kim, OJ Yoo
    posted to metachoi by ugengma on 2007-06-01 09:01:59 as ***
  • Comparative microarray analysis.
    OMICS, Vol. 10, No. 3. (2006), pp. 381-397.
    posted to metalarsson by ugengma on 2007-05-29 18:43:19 as *** along with 1 person jfr
  • Improving false discovery rate estimation.
    Bioinformatics, Vol. 20, No. 11. (22 July 2004), pp. 1737-1745.
    by S Pounds, C Cheng
    posted to splosh by ugengma on 2007-05-18 11:34:51 as *** along with 1 person shigepong
  • Applications of beta-mixture models in bioinformatics
    Bioinformatics, Vol. 21, No. 9. (1 May 2005), pp. 2118-2122.
    by Yuan Ji, Chunlei Wu, Ping Liu, Jing Wang, Kevin R Coombes
    posted to betamixt by ugengma on 2007-05-11 10:14:40 as ***
  • A systematic comparison of methods for combining p-values from independent tests
    Computational Statistics & Data Analysis, Vol. 47, No. 3. (1 October 2004), pp. 467-485.
    by Thomas M Loughin
    posted to metaloughin by ugengma on 2007-12-12 10:56:21 as **
  • Comparing the continuous representation of time-series expression profiles to identify differentially expressed genes.
    Proc Natl Acad Sci U S A, Vol. 100, No. 18. (2 September 2003), pp. 10146-10151.
    posted to tcbarjoseph by ugengma on 2007-10-11 12:23:08 as **
  • Linear models and empirical bayes methods for assessing differential expression in microarray experiments.
    Stat Appl Genet Mol Biol, Vol. 3, No. 1. (2004)
    by GK Smyth
  • A simple method for assessing sample sizes in microarray experiments.
    BMC Bioinformatics, Vol. 7 (2006)
  • Molecular Classification of Cancer: Class Discovery and Class Prediction by Gene Expression Monitoring
    Science, Vol. 286, No. 5439. (15 October 1999), pp. 531-537.
  • False discovery rate, sensitivity and sample size for microarray studies
    Bioinformatics, Vol. 21, No. 13. (1 July 2005), pp. 3017-3024.
    by Yudi Pawitan, Stefan Michiels, Serge Koscielny, Arief Gusnanto, Alexander Ploner
    posted to fdrsenspawitan by ugengma on 2007-06-06 16:58:09 as ** along with 2 people shikin wirawan
  • Large-scale meta-analysis of cancer microarray data identifies common transcriptional profiles of neoplastic transformation and progression
    PNAS, Vol. 101, No. 25. (22 June 2004), pp. 9309-9314.
    by Daniel R Rhodes, Jianjun Yu, K Shanker, Nandan Deshpande, Radhika Varambally, Debashis Ghosh, Terrence Barrette, Akhilesh Pandey, Arul M Chinnaiyan
  • Meta-Analysis of Microarrays: Interstudy Validation of Gene Expression Profiles Reveals Pathway Dysregulation in Prostate Cancer
    Cancer Res, Vol. 62, No. 15. (1 August 2002), pp. 4427-4433.
    by Daniel R Rhodes, Terrence R Barrette, Mark A Rubin, Debashis Ghosh, Arul M Chinnaiyan
  • A mixture model approach for the analysis of microarray gene expression data
    Computational Statistics & Data Analysis, Vol. 39, No. 1. (28 March 2002), pp. 1-20.
    by David B Allison, Gary L Gadbury, Moonseong Heo, Jose R Fernandez, Cheol-Koo Lee, Tomas A Prolla, Richard Weindruch
    posted to allisonbeta by ugengma on 2007-05-29 17:53:51 as **
  • Meta-analysis of several gene lists for distinct types of cancer: A simple way to reveal common prognostic markers
    BMC Bioinformatics, Vol. 8 (06 April 2007), 118.
    by Xinan Yang, Xiao Sun
  • The optimal discovery procedure for large-scale significance testing, with applications to comparative microarray experiments
    Biostatistics, Vol. 8, No. 2. (April 2007), pp. 414-432.
    posted to odp by ugengma on 2007-05-01 12:20:03 as ** along with 1 person shigepong
  • Power and sample size for DNA microarray studies
    Statistics in Medicine, Vol. 21, No. 23. (2002), pp. 3543-3570.
    by Mei-Ling T Lee, GA Whitmore
    posted to powerlee by ugengma on 2007-04-18 13:23:39 as **
  • Bayesian meta-analysis models for microarray data: a comparative study
    BMC Bioinformatics, Vol. 8 (07 March 2007), 80.
    by Erin M Conlon, Joon J Song, Anna Liu
    posted to baymeta by ugengma on 2007-04-17 11:25:13 as ** along with 4 people daforerog jyuh jfr shigepong
  • Software package for automatic microarray image analysis (MAIA)
    Bioinformatics, Vol. 23, No. 5. (March 2007), pp. 639-640.
    posted to no-tag by ugengma on 2007-04-04 14:41:29 as ** along with 1 person mayercd
  • Pooling mRNA in microarray experiments and its effect on power
    Bioinformatics, Vol. 23, No. 10. (15 May 2007), pp. 1217-1224.
    by Wuyan Zhang, Alicia Carriquiry, Dan Nettleton, Jack C Dekkers
    posted to pooling by ugengma on 2007-05-28 11:29:05 as * along with 4 people jyuh jfr rmk ptrobajo
  • A mixture model approach to the tests of concordance and discordance between two large-scale experiments with two-sample groups
    Bioinformatics, Vol. 23, No. 10. (15 May 2007), pp. 1243-1250.
    by Yinglei Lai, Bao-Ling Adam, Robert Podolsky, Jin-Xiong She
    posted to concordance by ugengma on 2007-05-28 11:28:06 as * along with 1 person jfr
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