2021
DOI: 10.3390/genes12030352
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Temporal Dynamic Methods for Bulk RNA-Seq Time Series Data

Abstract: Dynamic studies in time course experimental designs and clinical approaches have been widely used by the biomedical community. These applications are particularly relevant in stimuli-response models under environmental conditions, characterization of gradient biological processes in developmental biology, identification of therapeutic effects in clinical trials, disease progressive models, cell-cycle, and circadian periodicity. Despite their feasibility and popularity, sophisticated dynamic methods that are we… Show more

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Cited by 14 publications
(8 citation statements)
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References 153 publications
(317 reference statements)
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“…Using a time-series method may be an excellent strategy to forecast the demand for RBC transfusion with high accuracy. Time-series models have been employed in a wide variety of research fields, including public health and biomedical data aspects ( 22 ), brain studies ( 23 ), drug utilization ( 24 ), gene networks ( 25 , 26 ), and even traffic safety ( 27 ). Some studies have also examined the time-series prediction of the demand for RBCs ( 28 30 ).…”
Section: Introductionmentioning
confidence: 99%
“…Using a time-series method may be an excellent strategy to forecast the demand for RBC transfusion with high accuracy. Time-series models have been employed in a wide variety of research fields, including public health and biomedical data aspects ( 22 ), brain studies ( 23 ), drug utilization ( 24 ), gene networks ( 25 , 26 ), and even traffic safety ( 27 ). Some studies have also examined the time-series prediction of the demand for RBCs ( 28 30 ).…”
Section: Introductionmentioning
confidence: 99%
“…Gene expression profiles are highly multivariate data, composed of the expression values for all genes per pool of individuals per treatment through time (Adams & Collyer, 2009; Collyer & Adams, 2013), and can be thought of as a temporal trajectory of gene expression (phenotypic response values) over the five embryonic stages. This approach permits the analysis of hyperdimensional genome‐wide expression trajectories, whereas alternative existing approaches address gene‐by‐gene patterns in RNAseq time series (Oh & Li, 2021). First, an ANOVA was conducted to investigate how the genome‐wide transcriptomic response (means of the principal components of gene expression for all replicate RNA‐seq libraries) differed between temperatures in Chrysemys , and how they differed in Apalone by temperature, sex, and their interaction.…”
Section: Methodsmentioning
confidence: 99%
“…(phenotypic response values) over the five embryonic stages. This approach permits the analysis of hyperdimensional genome-wide expression trajectories, whereas alternative existing approaches address gene-by-gene patterns in RNAseq time series (Oh & Li, 2021).…”
Section: Trajectory Analysismentioning
confidence: 99%
“…The inference of half-life time for each peptidoform in the nonsteady state can be rather problematic due to the considerations mentioned in Section 1 (Introduction), especially for those peptidoforms carrying PTMs. Since the time-series data analysis algorithms are well-established for comparing expression of the same genes between conditions [59,[71][72][73], we reasoned that we can turn the H/L curvefitting problem into a time-series differential analysis with no prior assumption on PTM site-resolved turnover dynamics (Step 3, Figure 1). Thus, for the present PC12 dataset, after filtering out noisy signals, we performed a comparison against all H/L ratios for the paired P and NP peptidoforms.…”
Section: A Hypothesis-free Time Series Comparison Of Turnover Behavio...mentioning
confidence: 99%