The package ‘SSDM’ offers a user-friendly interface built with the web application framework for R Shiny. The graphical user interface is launched with the function gui
.
The interface has three tabs on the left, appearring successively: Load
to load datasets or previous models and preview the data, Modelling
to specify, train/test and save models, and Results
to view the results and compare the performances.
The Load
tab allows to load a new dataset or a previously saved model. Pop-up windows for data selection contains a link toward example raw data in the drop down menu.
Top-left panel allows to load environmental variables through rasters. Don’t forget to specify which variable should be considered as a categorical variable.
Second panel allows to load occurrences through csv or txt files. Don’t forget to specify raw data formatting.
The Modelling
tab proposes three types of models: individual species distribution model (SDM), ensemble species distribution model (ESDM), or stacked species distribution model (SSDM). The Modelling
tab contains three sub-tabs offering different levels of parameterization according to the user’s level of expertise: (1) Basic
to select the model algorithm(s), the number of runs per model algorithm, the model evaluation metric(s), and the methods to be used to map diversity and endemism; (2) Intermediate
to set pseudo-absence selection (number and strategy), the cross-validation method, the metric used to estimate the relative contribution of environmental variables, the ESDM consensus method, and the SSDM stacking method; and (3) Advanced
to set algorithm parameters.
The Results
tab gives maps and graphs summurizing the results at stack and species levels: model maps (species habitat suitability, species richness and endemism), relative contribution of environmental variables, model accuracy assessment, and between-algorithms correlation.
The interface includes a panel to save result maps in GeoTIFF format (.tif) compatible with most GIS softwares, and other numerical results as comma separated values (.csv) files.