AI Article Synopsis

  • Leaf senescence, or the aging of leaves, is shaped by their life history and involves complex interactions between genetics and the environment.
  • Researchers have developed a new tool called the phenome high-throughput investigator (PHI) to analyze leaf lifespan and senescence at a single-leaf level, which has shown promising results in measuring responses to aging factors and genetic mutations.
  • The integration of data from PHI with other biological studies (like transcriptomics and proteomics) aims to deepen our understanding of the mechanisms behind leaf senescence, moving from molecular details to insights about the organism as a whole.

Article Abstract

Leaf senescence is influenced by its life history, comprising a series of developmental and physiological experiences. Exploration of the biological principles underlying leaf lifespan and senescence requires a schema to trace leaf phenotypes, based on the interaction of genetic and environmental factors. We developed a new approach and concept that will facilitate systemic biological understanding of leaf lifespan and senescence, utilizing the phenome high-throughput investigator (PHI) with a single-leaf-basis phenotyping platform. Our pilot tests showed empirical evidence for the feasibility of PHI for quantitative measurement of leaf senescence responses and improved performance in order to dissect the progression of senescence triggered by different senescence-inducing factors as well as genetic mutations. Such an establishment enables new perspectives to be proposed, which will be challenged for enhancing our fundamental understanding on the complex process of leaf senescence. We further envision that integration of phenomic data with other multi-omics data obtained from transcriptomic, proteomic, and metabolic studies will enable us to address the underlying principles of senescence, passing through different layers of information from molecule to organism.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5322180PMC
http://dx.doi.org/10.3389/fpls.2017.00250DOI Listing

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