Merging two eDNA metabarcoding approaches and citizen-science based
sampling to facilitate fish community monitoring along vast Sub-Saharan
coastlines
Abstract
The coastline of Sub-Saharan Africa hosts highly diverse fish
communities of high conservation value, which are also key resources for
local livelihoods. However, many costal ecosystems are threatened by
overexploitation and their conservation state is frequently unknown due
to limited monitoring budgets and challenges associated with their vast
spatial extents. Here, we evaluated the potential of citizen
science-based eDNA surveys to alleviate such chronic data deficiencies
and assessed fish communities in Mozambique using two 12S metabarcoding
primer sets. Samples were either collected by scientific personnel or
trained local community members and results from the two metabarcoding
primer sets were combined using a newly created data merging approach.
Irrespective of the background of sampling personnel, a high average
fish species richness was recorded (38±20 OTUs sample-1). Individual
sections of the coastline largely differed in the occurrence of
threatened and commercially important species, highlighting the need for
regionally differentiated management strategies. A detailed comparison
of the two applied primer sets revealed an important trade-off in primer
choice with MiFish primers amplifying a higher number of species but
Riaz primers performing better in the detection of threatened fish
species. This trade-off could be partly resolved by applying our
data-merging approach, which has the potential to provide a more robust
baseline-data for decision-making processes. Overall, our study provides
encouraging results but also highlights that eDNA-based monitoring will
require further improvements of e.g., reference databases and local
analytical infrastructure to facilitate routine applications in
Sub-Saharan Africa.