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An analytical pipeline to support robust research on the ecology, evolution, and function of floral volatiles

Eisen, Katherine E. LU ; Powers, John M. ; Raguso, Robert A. and Campbell, Diane R. (2022) In Frontiers in Ecology and Evolution 10.
Abstract

Research on floral volatiles has grown substantially in the last 20 years, which has generated insights into their diversity and prevalence. These studies have paved the way for new research that explores the evolutionary origins and ecological consequences of different types of variation in floral scent, including community-level, functional, and environmentally induced variation. However, to address these types of questions, novel approaches are needed that can handle large sample sizes, provide quality control measures, and make volatile research more transparent and accessible, particularly for scientists without prior experience in this field. Drawing upon a literature review and our own experiences, we present a set of best... (More)

Research on floral volatiles has grown substantially in the last 20 years, which has generated insights into their diversity and prevalence. These studies have paved the way for new research that explores the evolutionary origins and ecological consequences of different types of variation in floral scent, including community-level, functional, and environmentally induced variation. However, to address these types of questions, novel approaches are needed that can handle large sample sizes, provide quality control measures, and make volatile research more transparent and accessible, particularly for scientists without prior experience in this field. Drawing upon a literature review and our own experiences, we present a set of best practices for next-generation research in floral scent. We outline methods for data collection (experimental designs, methods for conducting field collections, analytical chemistry, compound identification) and data analysis (statistical analysis, database integration) that will facilitate the generation and interpretation of quality data. For the intermediate step of data processing, we created the R package bouquet, which provides a data analysis pipeline. The package contains functions that enable users to convert chromatographic peak integrations to a filtered data table that can be used in subsequent statistical analyses. This package includes default settings for filtering out non-floral compounds, including background contamination, based on our best-practice guidelines, but functions and workflows can be easily customized as necessary. Next-generation research into the ecology and evolution of floral scent has the potential to generate broadly relevant insights into how complex traits evolve, their genomic architecture, and their consequences for ecological interactions. In order to fulfill this potential, the methodology of floral scent studies needs to become more transparent and reproducible. By outlining best practices throughout the lifecycle of a project, from experimental design to statistical analysis, and providing an R package that standardizes the data processing pipeline, we provide a resource for new and seasoned researchers in this field and in adjacent fields, where high-throughput and multi-dimensional datasets are common.

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author
; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
analytical chemistry, chemical ordination, data processing, floral scent, GC-MS, high-dimensional traits, reproducible research
in
Frontiers in Ecology and Evolution
volume
10
article number
1006416
publisher
Frontiers Media S. A.
external identifiers
  • scopus:85141399506
ISSN
2296-701X
DOI
10.3389/fevo.2022.1006416
language
English
LU publication?
yes
id
ac36d615-11bc-432a-aa26-78d091363445
date added to LUP
2022-12-13 14:24:10
date last changed
2022-12-13 14:24:10
@article{ac36d615-11bc-432a-aa26-78d091363445,
  abstract     = {{<p>Research on floral volatiles has grown substantially in the last 20 years, which has generated insights into their diversity and prevalence. These studies have paved the way for new research that explores the evolutionary origins and ecological consequences of different types of variation in floral scent, including community-level, functional, and environmentally induced variation. However, to address these types of questions, novel approaches are needed that can handle large sample sizes, provide quality control measures, and make volatile research more transparent and accessible, particularly for scientists without prior experience in this field. Drawing upon a literature review and our own experiences, we present a set of best practices for next-generation research in floral scent. We outline methods for data collection (experimental designs, methods for conducting field collections, analytical chemistry, compound identification) and data analysis (statistical analysis, database integration) that will facilitate the generation and interpretation of quality data. For the intermediate step of data processing, we created the R package bouquet, which provides a data analysis pipeline. The package contains functions that enable users to convert chromatographic peak integrations to a filtered data table that can be used in subsequent statistical analyses. This package includes default settings for filtering out non-floral compounds, including background contamination, based on our best-practice guidelines, but functions and workflows can be easily customized as necessary. Next-generation research into the ecology and evolution of floral scent has the potential to generate broadly relevant insights into how complex traits evolve, their genomic architecture, and their consequences for ecological interactions. In order to fulfill this potential, the methodology of floral scent studies needs to become more transparent and reproducible. By outlining best practices throughout the lifecycle of a project, from experimental design to statistical analysis, and providing an R package that standardizes the data processing pipeline, we provide a resource for new and seasoned researchers in this field and in adjacent fields, where high-throughput and multi-dimensional datasets are common.</p>}},
  author       = {{Eisen, Katherine E. and Powers, John M. and Raguso, Robert A. and Campbell, Diane R.}},
  issn         = {{2296-701X}},
  keywords     = {{analytical chemistry; chemical ordination; data processing; floral scent; GC-MS; high-dimensional traits; reproducible research}},
  language     = {{eng}},
  month        = {{10}},
  publisher    = {{Frontiers Media S. A.}},
  series       = {{Frontiers in Ecology and Evolution}},
  title        = {{An analytical pipeline to support robust research on the ecology, evolution, and function of floral volatiles}},
  url          = {{http://dx.doi.org/10.3389/fevo.2022.1006416}},
  doi          = {{10.3389/fevo.2022.1006416}},
  volume       = {{10}},
  year         = {{2022}},
}