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Identifying emerging phenomenon in long temporal phenotyping experiments

  • Jiajie Peng
  • , Junya Lu
  • , Donghee Hoh
  • , Ayesha S. Dina
  • , Xuequn Shang
  • , David M. Kramer
  • , Jin Chen

Producción científica: Articlerevisión exhaustiva

6 Citas (Scopus)

Resumen

The rapid improvement of phenotyping capability, accuracy and throughput have greatly increased the volume and diversity of phenomics data. A remaining challenge is an efficient way to identify phenotypic patterns to improve our understanding of the quantitative variation of complex phenotypes, and to attribute gene functions. To address this challenge, we developed a new algorithm to identify emerging phenomena from large-scale temporal plant phenotyping experiments. An emerging phenomenon is defined as a group of genotypes who exhibit a coherent phenotype pattern during a relatively short time. Emerging phenomena are highly transient and diverse, and are dependent in complex ways on both environmental conditions and development. Identifying emerging phenomena may help biologists to examine potential relationships among phenotypes and genotypes in a genetically diverse population and to associate such relationships with the change of environments or development. Results: We present an emerging phenomenon identification tool called Temporal Emerging Phenomenon Finder (TEP-Finder). Using large-scale longitudinal phenomics data as input, TEP-Finder first encodes the complicated phenotypic patterns into a dynamic phenotype network. Then, emerging phenomena in different temporal scales are identified from dynamic phenotype network using a maximal clique based approach. Meanwhile, a directed acyclic network of emerging phenomena is composed to model the relationships among the emerging phenomena. The experiment that compares TEP-Finder with two state-of-art algorithms shows that the emerging phenomena identified by TEP-Finder are more functionally specific, robust and biologically significant.

Idioma originalEnglish
Páginas (desde-hasta)568-577
Número de páginas10
PublicaciónBioinformatics
Volumen36
N.º2
DOI
EstadoPublished - ene 15 2020

Nota bibliográfica

Publisher Copyright:
© 2019 The Author(s) 2019. Published by Oxford University Press. All rights reserved.

Financiación

This work was supported by US NSF ABI [grant numbers 1458556, 1716340], US DOE BES [grant number DEFG0291ER20021] and NSFC [grant numbers 61702421, U1811262, 61772426]. China Postdoctoral Science Foundation (No. 2017M610651), Fundamental Research Funds for the Central Universities (No. 3102018zy033), Top International University Visiting Program for Outstanding Young scholars of Northwestern Polytechnical University.

FinanciadoresNúmero del financiador
DOE BES DivisionDEFG0291ER20021
US NSF ABI1458556, 1716340
National Natural Science Foundation of China (NSFC)61702421, 61772426, U1811262
Northwestern Polytechnical University
China Postdoctoral Science Foundation2017M610651
Fundamental Research Funds for the Central Universities3102018zy033

    ASJC Scopus subject areas

    • Statistics and Probability
    • Biochemistry
    • Molecular Biology
    • Computer Science Applications
    • Computational Theory and Mathematics
    • Computational Mathematics

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