Time-Based Systems Biology Approaches to Capture and Model Dynamic Gene Regulatory Networks
Fecha
2021-07-19Autor
Alvarez, Jose M.
Brooks, Matthew D.
Swift, Joseph
Coruzzi, Gloria M.
Alhafez, Iyad Alabd [Univ Mayor, Fac Ciencias, Ctr Genom & Bioinformat, Chile]
Ubicación geográfica
Notas
HERRAMIENTAS
Resumen
All aspects of transcription and its regulation involve dynamic events. However, capturing these dynamic events in gene regulatory networks (GRNs) offers both a promise and a challenge. The promise is that capturing and modeling the dynamic changes in GRNs will allow us to understand how organisms adapt to a changing environment. The ability to mount a rapid transcriptional response to environmental changes is especially important in nonmotile organisms such as plants. The challenge is to capture these dynamic, genome-wide events and model them in GRNs. In this review, we cover recent progress in capturing dynamic interactions of transcription factors with their targets-at both the local and genome-wide levels-and how they are used to learn how GRNs operate as a function of time. We also discuss recent advances that employ time-based machine learning approaches to forecast gene expression at future time points, a key goal of systems biology.
URI
https://repositorio.umayor.cl/xmlui/handle/sibum/9058https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9312366/pdf/nihms-1823116.pdf
https://doi.org/10.1146%2Fannurev-arplant-081320-090914
https://www-annualreviews-org.bibliotecadigital.umayor.cl:2443/doi/pdf/10.1146/annurev-arplant-081320-090914
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