%A Cecino,Giorgia %A Valavi,Roozbeh %A Treml,Eric A. %D 2021 %J Frontiers in Marine Science %C %F %G English %K Centrality measures,Fragmented habitat,graph theory,machine learning,predictive model,Seascape connectivity %Q %R 10.3389/fmars.2021.766915 %W %L %M %P %7 %8 2021-December-14 %9 Original Research %# %! Marine SDMs and connectivity %* %< %T Testing the Influence of Seascape Connectivity on Marine-Based Species Distribution Models %U https://www.frontiersin.org/articles/10.3389/fmars.2021.766915 %V 8 %0 JOURNAL ARTICLE %@ 2296-7745 %X Species distribution models (SDMs) are commonly used in ecology to predict species occurrence probability and how species are geographically distributed. Here, we propose innovative predictive factors to efficiently integrate information on connectivity into SDMs, a key element of population dynamics strongly influencing how species are distributed across seascapes. We also quantify the influence of species-specific connectivity estimates (i.e., larval dispersal vs. adult movement) on the marine-based SDMs outcomes. For illustration, seascape connectivity was modeled for two common, yet contrasting, marine species occurring in southeast Australian waters, the purple sea urchin, Heliocidaris erythrogramma, and the Australasian snapper, Chrysophrys auratus. Our models illustrate how different species-specific larval dispersal and adult movement can be efficiently accommodated. We used network-based centrality metrics to compute patch-level importance values and include these metrics in the group of predictors of correlative SDMs. We employed boosted regression trees (BRT) to fit our models, calculating the predictive performance, comparing spatial predictions and evaluating the relative influence of connectivity-based metrics among other predictors. Network-based metrics provide a flexible tool to quantify seascape connectivity that can be efficiently incorporated into SDMs. Connectivity across larval and adult stages was found to contribute to SDMs predictions and model performance was not negatively influenced from including these connectivity measures. Degree centrality, quantifying incoming and outgoing connections with habitat patches, was the most influential centrality metric. Pairwise interactions between predictors revealed that the species were predominantly found around hubs of connectivity and in warm, high-oxygenated, shallow waters. Additional research is needed to quantify the complex role that habitat network structure and temporal dynamics may have on SDM spatial predictions and explanatory power.