Humans are responsible for over a quarter of all wildlife mortality events across the globe. The
pressure this puts on wildlife populations contributes to the decline of many at-risk species. To
minimize human-caused mortality and reverse population declines in species across the world, we
frst need to know where these events are happening or likely to occur since managers and public
agencies often have limited resources to devote to a problem. As such, our objective was to
develop a modeling approach to delineate human-caused wildlife mortality hotspots in regions
with limited data. We used internet search engines and national media to collect data on brown
bear (Ursus arctos) mortality events in Iran from 2004 to 2019. We then developed a spatiallyexplicit Maximum Entropy (MaxEnt) model using anthropogenic and environmental variables
to predict the probability of human-caused brown bear mortality. We were able to delineate 7000
km2 as human-caused mortality hotspots, along with the geographical locations of those hotspots.
This provides information that can help identify where critical conflict mitigation efforts need to
be implemented to reduce the potential for human-caused wildlife mortality. However, more
targeted studies such as surveys of local people will be needed inside hotspots identifed with this
methodology to assess the attitudes of humans toward different wildlife species, informing the
specifc mitigation actions that will need to be made. Finally, we suggest that media data can be
used to identify these hotspots in regions where systematic data is lacking