000778513 000__ 05789cam\a2200493Ii\4500 000778513 001__ 778513 000778513 005__ 20230306142839.0 000778513 006__ m\\\\\o\\d\\\\\\\\ 000778513 007__ cr\nn\nnnunnun 000778513 008__ 161219s2017\\\\sz\\\\\\o\\\\\000\0\eng\d 000778513 019__ $$a974650355 000778513 020__ $$a9783319458090$$q(electronic book) 000778513 020__ $$a3319458094$$q(electronic book) 000778513 020__ $$z9783319458076 000778513 0247_ $$a10.1007/978-3-319-45809-0$$2doi 000778513 035__ $$aSP(OCoLC)ocn966429277 000778513 035__ $$aSP(OCoLC)966429277$$z(OCoLC)974650355 000778513 040__ $$aN$T$$beng$$erda$$epn$$cN$T$$dGW5XE$$dIDEBK$$dYDX$$dN$T$$dAZU$$dUAB$$dCOO$$dMERUC$$dUPM$$dSTF$$dOCLCF$$dOCLCO$$dIOG$$dOCLCO 000778513 049__ $$aISEA 000778513 050_4 $$aQP519.9.M3 000778513 08204 $$a543/.65$$223 000778513 24500 $$aStatistical analysis of proteomics, metabolomics, and lipidomics data using mass spectrometry /$$cSusmita Datta, Bart J. A. Mertens, editors. 000778513 264_1 $$aCham, Switzerland :$$bSpringer,$$c2017. 000778513 300__ $$a1 online resource. 000778513 336__ $$atext$$btxt$$2rdacontent 000778513 337__ $$acomputer$$bc$$2rdamedia 000778513 338__ $$aonline resource$$bcr$$2rdacarrier 000778513 347__ $$atext file$$bPDF$$2rda 000778513 4901_ $$aFrontiers in probability and the statistical sciences 000778513 5050_ $$aTransformation, normalization and batch effect in the analysis of mass spectrometry data for omics studies -- Automated Alignment of Mass Spectrometry Data Using Functional Geometry -- The analysis of peptide-centric mass spectrometry data utilizing information about the expected isotope distribution -- Probabilistic and likelihood-based methods for protein identification from MS/MS data -- An MCMC-MRF Algorithm for Incorporating Spatial Information in IMS Data Processing -- Mass Spectrometry Analysis Using MALDIquant -- Model-based analysis of quantitative proteomics data with data independent acquisition mass spectrometry -- The analysis of human serum albumin proteoforms using compositional framework -- Variability Assessment of Label-Free LC-MS Experiments for Difference Detection -- Statistical approach for biomarker discovery using label-free LC-MS data -- an overview -- Bayesian posterior integration for classification of mass spectrometry data -- Logistic regression modeling on mass spectrometry data in proteomics case-control discriminant studies -- Robust and confident predictor selection in metabolomics -- On the combination of omics data for prediction of binary Outcomes -- Statistical analysis of lipidomics data in a case-control study. 000778513 506__ $$aAccess limited to authorized users. 000778513 520__ $$aThis book presents an overview of computational and statistical design and analysis of mass spectrometry-based proteomics, metabolomics, and lipidomics data. This contributed volume provides an introduction to the special aspects of statistical design and analysis with mass spectrometry data for the new omic sciences. The text discusses common aspects of design and analysis between and across all (or most) forms of mass spectrometry, while also providing special examples of application with the most common forms of mass spectrometry. Also covered are applications of computational mass spectrometry not only in clinical study but also in the interpretation of omics data in plant biology studies. Omics research fields are expected to revolutionize biomolecular research by the ability to simultaneously profile many compounds within either patient blood, urine, tissue, or other biological samples. Mass spectrometry is one of the key analytical techniques used in these new omic sciences. Liquid chromatography mass spectrometry, time-of-flight data, and Fourier transform mass spectrometry are but a selection of the measurement platforms available to the modern analyst. Thus in practical proteomics or metabolomics, researchers will not only be confronted with new high dimensional data types--as opposed to the familiar data structures in more classical genomics--but also with great variation between distinct types of mass spectral measurements derived from different platforms, which may complicate analyses, comparison, and interpretation of results. Susmita Datta received her PhD in statistics from the University of Georgia. She is a tenured professor in the Department of Biostatistics at the University of Florida. Before joining the University of Florida she was a professor and a distinguished university scholar at the University of Louisville. She is a Fellow of the American Association for the Advancement of Science, American Statistical Association, and an elected member of the International Statistical Institute. She is past president of the Caucus for Women in Statistics, and she actively supports research and education for women in STEM fields. Bart Mertens received his PhD in statistical sciences from University College London, Department of Statistical Sciences, on statistical analysis methods for spectrometry data. He is currently Associate Professor at the Department of Medical Statistics and Bioinformatics of the Leiden University Medical Centre, where he has been working in both research and consulting for statistical analysis methodology with mass spectrometry proteomic data for more than 10 years. 000778513 588__ $$aOnline resource; title from PDF title page (SpringerLink, viewed December 22, 2016). 000778513 650_0 $$aMass spectrometry. 000778513 650_0 $$aProteomics$$xStatistical methods. 000778513 650_0 $$aLipids$$xStatistical methods. 000778513 7001_ $$aDatta, Susmita,$$eeditor. 000778513 7001_ $$aMertens, Bart J. A.,$$eeditor. 000778513 77608 $$iPrint version:$$z9783319458076 000778513 830_0 $$aFrontiers in probability and the statistical sciences. 000778513 852__ $$bebk 000778513 85640 $$3SpringerLink$$uhttps://univsouthin.idm.oclc.org/login?url=http://link.springer.com/10.1007/978-3-319-45809-0$$zOnline Access$$91397441.1 000778513 909CO $$ooai:library.usi.edu:778513$$pGLOBAL_SET 000778513 980__ $$aEBOOK 000778513 980__ $$aBIB 000778513 982__ $$aEbook 000778513 983__ $$aOnline 000778513 994__ $$a92$$bISE