2019
DOI: 10.1371/journal.pcbi.1006674
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Dynamical differential expression (DyDE) reveals the period control mechanisms of the Arabidopsis circadian oscillator

Abstract: The circadian oscillator, an internal time-keeping device found in most organisms, enables timely regulation of daily biological activities by maintaining synchrony with the external environment. The mechanistic basis underlying the adjustment of circadian rhythms to changing external conditions, however, has yet to be clearly elucidated. We explored the mechanism of action of nicotinamide in Arabidopsis thaliana , a metabolite that lengthens the period of circadian rhythms, to understan… Show more

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Cited by 15 publications
(31 citation statements)
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References 64 publications
(87 reference statements)
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“…We used simple dynamical models to capture gene regulatory dynamics without making a priori assumptions on the structure of the network. These dynamical models have been successfully used in the past to describe circadian processes of Arabidopsis under conditions that are similar to those of our dataset (Dalchau et al, 2012; Herrero et al, 2012; Banos et al, 2015; Mombaerts et al, 2016 and Mombaerts et al, 2019). It is also important to stress that our approach could only model genes with circadian expression oscillations, while it is well known that posttranscriptional regulation and the rate of protein degradation and activity is an essential constituent of the clock mechanism in Arabidopsis (Kim et al, 2003, Más et al, 2003).…”
Section: Discussionsupporting
confidence: 52%
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“…We used simple dynamical models to capture gene regulatory dynamics without making a priori assumptions on the structure of the network. These dynamical models have been successfully used in the past to describe circadian processes of Arabidopsis under conditions that are similar to those of our dataset (Dalchau et al, 2012; Herrero et al, 2012; Banos et al, 2015; Mombaerts et al, 2016 and Mombaerts et al, 2019). It is also important to stress that our approach could only model genes with circadian expression oscillations, while it is well known that posttranscriptional regulation and the rate of protein degradation and activity is an essential constituent of the clock mechanism in Arabidopsis (Kim et al, 2003, Más et al, 2003).…”
Section: Discussionsupporting
confidence: 52%
“…We followed an approach that searches the dynamic dependencies of Hv ELF3 and Hv LUX1 expression on other transcripts. We used Linear Time Invariant (LTI) models, for interpreting expression data without relying on a priori knowledge of the transcriptional network (Dalchau et al ., 2010; Herrero et al ., 2012; Mombaerts et al. , 2019; Supplemental Information).…”
Section: Resultsmentioning
confidence: 99%
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“…The network inference methods included in the comparison represent the function f at various levels of complexity. They are All-to-all (ATA) (Mombaerts et al, 2019), Gaussian Process Dynamical Models (GPDM) (Aalto et al, 2018), dynamical GEne Network Inference with Ensemble of trees (dynGENIE3) (Huynh-Thu and Geurts, 2018), Algorithm for Revealing Network Interactions (ARNI) (Casadiego et al, 2017) and Improved Chemical Model Averaging (iCheMA) (Aderhold et al, 2017). For details, we refer to publications presenting the methods.…”
Section: Network Inference Methodsmentioning
confidence: 99%
“…A fitness score is computed for each pair, which is regarded as a confidence level on the existence of the corresponding regulation. Here, the methodology presented by Mombaerts et al (2019) has been extended to deal with multiexperiment datasets. The datasets are merged together so that the dynamics to be identified are identical through all experimental conditions, assuming that the signal-to-noise ratios are similar in different experiments.…”
Section: Network Inference Methodsmentioning
confidence: 99%