Literature DB >> 33673721

Temporal Dynamic Methods for Bulk RNA-Seq Time Series Data.

Vera-Khlara S Oh1,2, Robert W Li1.   

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 well validated in large-scale comparative studies, in terms of statistical and computational rigor, are less benchmarked, comparing to their static counterparts. To date, a number of novel methods in bulk RNA-Seq data have been developed for the various time-dependent stimuli, circadian rhythms, cell-lineage in differentiation, and disease progression. Here, we comprehensively review a key set of representative dynamic strategies and discuss current issues associated with the detection of dynamically changing genes. We also provide recommendations for future directions for studying non-periodical, periodical time course data, and meta-dynamic datasets.

Entities:  

Keywords:  RNA-Seq; deep machine learning; differential expression analyses; disease progression; meta dynamics; temporal dynamic methods; time series; unsupervised clustering

Mesh:

Year:  2021        PMID: 33673721      PMCID: PMC7997275          DOI: 10.3390/genes12030352

Source DB:  PubMed          Journal:  Genes (Basel)        ISSN: 2073-4425            Impact factor:   4.096


  143 in total

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Journal:  Phys Biol       Date:  2017-05-11       Impact factor: 2.583

2.  Why weight? Modelling sample and observational level variability improves power in RNA-seq analyses.

Authors:  Ruijie Liu; Aliaksei Z Holik; Shian Su; Natasha Jansz; Kelan Chen; Huei San Leong; Marnie E Blewitt; Marie-Liesse Asselin-Labat; Gordon K Smyth; Matthew E Ritchie
Journal:  Nucleic Acids Res       Date:  2015-04-29       Impact factor: 16.971

3.  A high-resolution transcriptome map of cell cycle reveals novel connections between periodic genes and cancer.

Authors:  Daniel Dominguez; Yi-Hsuan Tsai; Nicholas Gomez; Deepak Kumar Jha; Ian Davis; Zefeng Wang
Journal:  Cell Res       Date:  2016-07-01       Impact factor: 25.617

Review 4.  Molecular components of the mammalian circadian clock.

Authors:  Caroline H Ko; Joseph S Takahashi
Journal:  Hum Mol Genet       Date:  2006-10-15       Impact factor: 6.150

5.  A Linear Mixed Model Spline Framework for Analysing Time Course 'Omics' Data.

Authors:  Jasmin Straube; Alain-Dominique Gorse; Bevan Emma Huang; Kim-Anh Lê Cao
Journal:  PLoS One       Date:  2015-08-27       Impact factor: 3.240

6.  Meta-analysis of RNA-seq expression data across species, tissues and studies.

Authors:  Peter H Sudmant; Maria S Alexis; Christopher B Burge
Journal:  Genome Biol       Date:  2015-12-22       Impact factor: 13.583

7.  Natural Cubic Spline Regression Modeling Followed by Dynamic Network Reconstruction for the Identification of Radiation-Sensitivity Gene Association Networks from Time-Course Transcriptome Data.

Authors:  Agata Michna; Herbert Braselmann; Martin Selmansberger; Anne Dietz; Julia Hess; Maria Gomolka; Sabine Hornhardt; Nils Blüthgen; Horst Zitzelsberger; Kristian Unger
Journal:  PLoS One       Date:  2016-08-09       Impact factor: 3.240

8.  Recurrent Neural Network for Predicting Transcription Factor Binding Sites.

Authors:  Zhen Shen; Wenzheng Bao; De-Shuang Huang
Journal:  Sci Rep       Date:  2018-10-15       Impact factor: 4.379

9.  ChromTime: modeling spatio-temporal dynamics of chromatin marks.

Authors:  Petko Fiziev; Jason Ernst
Journal:  Genome Biol       Date:  2018-08-10       Impact factor: 13.583

10.  Clustering gene expression time series data using an infinite Gaussian process mixture model.

Authors:  Ian C McDowell; Dinesh Manandhar; Christopher M Vockley; Amy K Schmid; Timothy E Reddy; Barbara E Engelhardt
Journal:  PLoS Comput Biol       Date:  2018-01-16       Impact factor: 4.475

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  2 in total

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Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

2.  Prediction of Red Blood Cell Demand for Pediatric Patients Using a Time-Series Model: A Single-Center Study in China.

Authors:  Kai Guo; Shanshan Song; Lijuan Qiu; Xiaohuan Wang; Shuxuan Ma
Journal:  Front Med (Lausanne)       Date:  2022-05-19
  2 in total

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