Citation: Anthony, C.J.; Tan, K.C.;
Pitt, K.A.; Bentlage, B.; Ames, C.L.
Leveraging Public Data to Predict
Global Niches and Distributions of
Rhizostome Jellyfishes. Animals 2023,
13, 1591. https://doi.org/10.3390/
ani13101591
Academic Editor: Mandy Paterson
Received: 22 March 2023
Revised: 28 April 2023
Accepted: 2 May 2023
Published: 9 May 2023
Copyright: © 2023 by the authors.
Licensee MDPI, Basel, Switzerland.
This article is an open access article
distributed under the terms and
conditions of the Creative Commons
Attribution (CC BY) license (https://
creativecommons.org/licenses/by/
4.0/).
animals
Article
Leveraging Public Data to Predict Global Niches and
Distributions of Rhizostome Jellyfishes
Colin Jeffrey Anthony
1,2,
* , Kei Chloe Tan
3
, Kylie Anne Pitt
4,5
, Bastian Bentlage
1
and Cheryl Lewis Ames
2
1
Marine Laboratory, University of Guam, Mangilao, GU 96923, USA; bentlageb@triton.uog.edu
2
Graduate School of Agricultural Sciences, Tohoku University, Sendai 980-8572, Japan
3
Faculty of Agriculture, Tohoku University, Sendai 980-8572, Japan; tan.kei.chloe.p2@dc.tohoku.ac.jp
4
Coastal and Marine Research Centre, Griffith Institute for Tourism Research, School of Environment and
Science, Gold Coast Campus, Griffith University, Southport, QLD 4222, Australia; k.pitt@griffith.edu.au
5
Coastal and Marine Research Centre, Australian Rivers Institute, School of Environment and Science,
Gold Coast Campus, Griffith University, Southport, QLD 4222, Australia
* Correspondence: colin_anthonynw@outlook.com
Simple Summary: With human activities and climate change threatening biodiversity, marine re-
source managers must establish globally oriented, data-driven conservation practices. As the internet
expands and the world becomes more connected, science is more accessible than ever, requiring only
the internet to access powerful computing tools and expansive databases. Here, we demonstrate the
power of citizen science, online databases, and open-source tools by using citizen-derived jellyfish
reports from iNaturalist.org (accessed on 3 November 2022) in conjunction with publicly available
environmental data to predict the distribution of the most conspicuous and economically relevant
group of marine jellyfishes (Rhizostomeae). Online databases come with many biases, most of which
can be tied back to resolution. The integration of distribution data from the published literature
allows us to evaluate citizen-derived data quality and make a plan for improving data resolution.
Going forward, expanding collaborations and citizen participation in underrepresented regions will
decrease participation biases and improve data resolution, increasing the power of online databases
and their potential to inform marine management strategies.
Abstract: As climate change progresses rapidly, biodiversity declines, and ecosystems shift, it is
becoming increasingly difficult to document dynamic populations, track fluctuations, and predict
responses to climate change. Concurrently, publicly available databases and tools are improving
scientific accessibility, increasing collaboration, and generating more data than ever before. One of
the most successful projects is iNaturalist, an AI-driven social network doubling as a public database
designed to allow citizen scientists to report personal biodiversity reports with accuracy. iNaturalist
is especially useful for the research of rare, dangerous, and charismatic organisms, but requires better
integration into the marine system. Despite their abundance and ecological relevance, there are
few long-term, high-sample datasets for jellyfish, which makes management difficult. To provide
some high-sample datasets and demonstrate the utility of publicly collected data, we synthesized
two global datasets for ten genera of jellyfishes in the order Rhizostomeae containing 8412 curated
datapoints from both iNaturalist (n = 7807) and the published literature (n = 605). We then used these
reports in conjunction with publicly available environmental data to predict global niche partitioning
and distributions. Initial niche models inferred that only two of ten genera have distinct niche spaces;
however, the application of machine learning-based random forest models suggests genus-specific
variation in the relevance of abiotic environmental variables used to predict jellyfish occurrence.
Our approach to incorporating reports from the literature with iNaturalist data helped evaluate
the quality of the models and, more importantly, the quality of the underlying data. We find that
free, accessible online data is valuable, yet subject to biases through limited taxonomic, geographic,
and environmental resolution. To improve data resolution, and in turn its informative power, we
recommend increasing global participation through collaboration with experts, public figures, and
hobbyists in underrepresented regions capable of implementing regionally coordinated projects.
Animals 2023, 13, 1591. https://doi.org/10.3390/ani13101591 https://www.mdpi.com/journal/animals