Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.

Multiple biological processes are driven by oscillatory gene expression at different time scales. Pulsatile dynamics are thought to be widespread, and single-cell live imaging of gene expression has lead to a surge of dynamic, possibly oscillatory, data for different gene networks. However, the regu...

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Main Authors: Nick E Phillips, Cerys Manning, Nancy Papalopulu, Magnus Rattray
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-05-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1005479
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spelling doaj-b6bd7c978d8d42da9bb389c5074033d72021-04-21T15:02:11ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582017-05-01135e100547910.1371/journal.pcbi.1005479Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.Nick E PhillipsCerys ManningNancy PapalopuluMagnus RattrayMultiple biological processes are driven by oscillatory gene expression at different time scales. Pulsatile dynamics are thought to be widespread, and single-cell live imaging of gene expression has lead to a surge of dynamic, possibly oscillatory, data for different gene networks. However, the regulation of gene expression at the level of an individual cell involves reactions between finite numbers of molecules, and this can result in inherent randomness in expression dynamics, which blurs the boundaries between aperiodic fluctuations and noisy oscillators. This underlies a new challenge to the experimentalist because neither intuition nor pre-existing methods work well for identifying oscillatory activity in noisy biological time series. Thus, there is an acute need for an objective statistical method for classifying whether an experimentally derived noisy time series is periodic. Here, we present a new data analysis method that combines mechanistic stochastic modelling with the powerful methods of non-parametric regression with Gaussian processes. Our method can distinguish oscillatory gene expression from random fluctuations of non-oscillatory expression in single-cell time series, despite peak-to-peak variability in period and amplitude of single-cell oscillations. We show that our method outperforms the Lomb-Scargle periodogram in successfully classifying cells as oscillatory or non-oscillatory in data simulated from a simple genetic oscillator model and in experimental data. Analysis of bioluminescent live-cell imaging shows a significantly greater number of oscillatory cells when luciferase is driven by a Hes1 promoter (10/19), which has previously been reported to oscillate, than the constitutive MoMuLV 5' LTR (MMLV) promoter (0/25). The method can be applied to data from any gene network to both quantify the proportion of oscillating cells within a population and to measure the period and quality of oscillations. It is publicly available as a MATLAB package.https://doi.org/10.1371/journal.pcbi.1005479
collection DOAJ
language English
format Article
sources DOAJ
author Nick E Phillips
Cerys Manning
Nancy Papalopulu
Magnus Rattray
spellingShingle Nick E Phillips
Cerys Manning
Nancy Papalopulu
Magnus Rattray
Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
PLoS Computational Biology
author_facet Nick E Phillips
Cerys Manning
Nancy Papalopulu
Magnus Rattray
author_sort Nick E Phillips
title Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
title_short Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
title_full Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
title_fullStr Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
title_full_unstemmed Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.
title_sort identifying stochastic oscillations in single-cell live imaging time series using gaussian processes.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2017-05-01
description Multiple biological processes are driven by oscillatory gene expression at different time scales. Pulsatile dynamics are thought to be widespread, and single-cell live imaging of gene expression has lead to a surge of dynamic, possibly oscillatory, data for different gene networks. However, the regulation of gene expression at the level of an individual cell involves reactions between finite numbers of molecules, and this can result in inherent randomness in expression dynamics, which blurs the boundaries between aperiodic fluctuations and noisy oscillators. This underlies a new challenge to the experimentalist because neither intuition nor pre-existing methods work well for identifying oscillatory activity in noisy biological time series. Thus, there is an acute need for an objective statistical method for classifying whether an experimentally derived noisy time series is periodic. Here, we present a new data analysis method that combines mechanistic stochastic modelling with the powerful methods of non-parametric regression with Gaussian processes. Our method can distinguish oscillatory gene expression from random fluctuations of non-oscillatory expression in single-cell time series, despite peak-to-peak variability in period and amplitude of single-cell oscillations. We show that our method outperforms the Lomb-Scargle periodogram in successfully classifying cells as oscillatory or non-oscillatory in data simulated from a simple genetic oscillator model and in experimental data. Analysis of bioluminescent live-cell imaging shows a significantly greater number of oscillatory cells when luciferase is driven by a Hes1 promoter (10/19), which has previously been reported to oscillate, than the constitutive MoMuLV 5' LTR (MMLV) promoter (0/25). The method can be applied to data from any gene network to both quantify the proportion of oscillating cells within a population and to measure the period and quality of oscillations. It is publicly available as a MATLAB package.
url https://doi.org/10.1371/journal.pcbi.1005479
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