Literature DB >> 27229456

Gaussian Process Modeling of Protein Turnover.

Mahbubur Rahman, Stephen F Previs1, Takhar Kasumov2,3, Rovshan G Sadygov.   

Abstract

We describe a stochastic model to compute in vivo protein turnover rate constants from stable-isotope labeling and high-throughput liquid chromatography-mass spectrometry experiments. We show that the often-used one- and two-compartment nonstochastic models allow explicit solutions from the corresponding stochastic differential equations. The resulting stochastic process is a Gaussian processes with Ornstein-Uhlenbeck covariance matrix. We applied the stochastic model to a large-scale data set from (15)N labeling and compared its performance metrics with those of the nonstochastic curve fitting. The comparison showed that for more than 99% of proteins, the stochastic model produced better fits to the experimental data (based on residual sum of squares). The model was used for extracting protein-decay rate constants from mouse brain (slow turnover) and liver (fast turnover) samples. We found that the most affected (compared to two-exponent curve fitting) results were those for liver proteins. The ratio of the median of degradation rate constants of liver proteins to those of brain proteins increased 4-fold in stochastic modeling compared to the two-exponent fitting. Stochastic modeling predicted stronger differences of protein turnover processes between mouse liver and brain than previously estimated. The model is independent of the labeling isotope. To show this, we also applied the model to protein turnover studied in induced heart failure in rats, in which metabolic labeling was achieved by administering heavy water. No changes in the model were necessary for adapting to heavy-water labeling. The approach has been implemented in a freely available R code.

Entities:  

Keywords:  Gaussian process; Ornstein−Uhlenbeck process; dynamic proteome; mass spectrometry; protein degradation rate constant; protein turnover rate constant; stable isotope labeling; stochastic differential equation for protein turnover rate constant

Mesh:

Substances:

Year:  2016        PMID: 27229456      PMCID: PMC5292319          DOI: 10.1021/acs.jproteome.5b00990

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  38 in total

1.  Measurement of protein turnover rates by heavy water labeling of nonessential amino acids.

Authors:  Robert Busch; Yoo-Kyeong Kim; Richard A Neese; Valerie Schade-Serin; Michelle Collins; Mohamad Awada; James L Gardner; Carine Beysen; Michael E Marino; Lisa M Misell; Marc K Hellerstein
Journal:  Biochim Biophys Acta       Date:  2006-01-24

2.  Topograph, a software platform for precursor enrichment corrected global protein turnover measurements.

Authors:  Edward J Hsieh; Nicholas J Shulman; Dao-Fu Dai; Evelyn S Vincow; Pabalu P Karunadharma; Leo Pallanck; Peter S Rabinovitch; Michael J MacCoss
Journal:  Mol Cell Proteomics       Date:  2012-08-03       Impact factor: 5.911

Review 3.  Proteome dynamics: revisiting turnover with a global perspective.

Authors:  Amy J Claydon; Robert Beynon
Journal:  Mol Cell Proteomics       Date:  2012-11-02       Impact factor: 5.911

Review 4.  Protein analysis by shotgun/bottom-up proteomics.

Authors:  Yaoyang Zhang; Bryan R Fonslow; Bing Shan; Moon-Chang Baek; John R Yates
Journal:  Chem Rev       Date:  2013-02-26       Impact factor: 60.622

5.  Systems-wide proteomic analysis in mammalian cells reveals conserved, functional protein turnover.

Authors:  Sidney B Cambridge; Florian Gnad; Chuong Nguyen; Justo Lorenzo Bermejo; Marcus Krüger; Matthias Mann
Journal:  J Proteome Res       Date:  2011-11-03       Impact factor: 4.466

Review 6.  Control of enzyme levels in animal tissues.

Authors:  R T Schimke; D Doyle
Journal:  Annu Rev Biochem       Date:  1970       Impact factor: 23.643

7.  Comparison of turnover rates of proteins of the brain, liver and kidney in mouse in vivo following long term labeling.

Authors:  A Lajtha; L Latzkovits; J Toth
Journal:  Biochim Biophys Acta       Date:  1976-04-02

8.  Proteome scale turnover analysis in live animals using stable isotope metabolic labeling.

Authors:  Yaoyang Zhang; Stefan Reckow; Christian Webhofer; Michael Boehme; Philipp Gormanns; Wolfgang M Egge-Jacobsen; Christoph W Turck
Journal:  Anal Chem       Date:  2011-02-11       Impact factor: 6.986

9.  Measuring protein synthesis using metabolic ²H labeling, high-resolution mass spectrometry, and an algorithm.

Authors:  Takhar Kasumov; Serguey Ilchenko; Ling Li; Nadia Rachdaoui; Rovshan G Sadygov; Belinda Willard; Arthur J McCullough; Stephen Previs
Journal:  Anal Biochem       Date:  2011-01-20       Impact factor: 3.365

10.  Bayesian analysis of growth curves using mixed models defined by stochastic differential equations.

Authors:  Sophie Donnet; Jean-Louis Foulley; Adeline Samson
Journal:  Biometrics       Date:  2010-09       Impact factor: 2.571

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  8 in total

1.  Proteomic Atlas of the Human Brain in Alzheimer's Disease.

Authors:  Justin McKetney; Rosalyn M Runde; Alexander S Hebert; Shahriar Salamat; Subhojit Roy; Joshua J Coon
Journal:  J Proteome Res       Date:  2019-02-20       Impact factor: 4.466

2.  Poisson Model To Generate Isotope Distribution for Biomolecules.

Authors:  Rovshan G Sadygov
Journal:  J Proteome Res       Date:  2017-12-19       Impact factor: 4.466

3.  Hepatic Mitochondrial Defects in a Nonalcoholic Fatty Liver Disease Mouse Model Are Associated with Increased Degradation of Oxidative Phosphorylation Subunits.

Authors:  Kwangwon Lee; Andrew Haddad; Abdullah Osme; Chunki Kim; Ahmad Borzou; Sergei Ilchenko; Daniela Allende; Srinivasan Dasarathy; Arthur McCullough; Rovshan G Sadygov; Takhar Kasumov
Journal:  Mol Cell Proteomics       Date:  2018-08-31       Impact factor: 5.911

4.  A mass spectrometry workflow for measuring protein turnover rates in vivo.

Authors:  Mihai Alevra; Sunit Mandad; Till Ischebeck; Henning Urlaub; Silvio O Rizzoli; Eugenio F Fornasiero
Journal:  Nat Protoc       Date:  2019-11-04       Impact factor: 13.491

5.  Protein turnover models for LC-MS data of heavy water metabolic labeling.

Authors:  Rovshan G Sadygov
Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

Review 6.  Accumulation of "Old Proteins" and the Critical Need for MS-based Protein Turnover Measurements in Aging and Longevity.

Authors:  Nathan Basisty; Anja Holtz; Birgit Schilling
Journal:  Proteomics       Date:  2019-09-10       Impact factor: 3.984

7.  Timepoint Selection Strategy for In Vivo Proteome Dynamics from Heavy Water Metabolic Labeling and LC-MS.

Authors:  Vugar R Sadygov; William Zhang; Rovshan G Sadygov
Journal:  J Proteome Res       Date:  2020-04-02       Impact factor: 4.466

Review 8.  Protein Turnover in Aging and Longevity.

Authors:  Nathan Basisty; Jesse G Meyer; Birgit Schilling
Journal:  Proteomics       Date:  2018-03       Impact factor: 3.984

  8 in total

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