Using the Software DeepWings© to Classify Honey Bees across Europe through Wing Geometric Morphometrics.
Carlos Ariel Yadró GarcíaPedro João RodriguesAdam TofilskiDylan ElenGrace Patricia McCormackAndrzej OleksaDora HenriquesRustem A IlyasovAnatoly KartashevChristian BargainBalser FriedMaria Alice PintoPublished in: Insects (2022)
DeepWings© is a software that uses machine learning to automatically classify honey bee subspecies by wing geometric morphometrics. Here, we tested the five subspecies classifier ( A. m. carnica , Apis mellifera caucasia , A. m. iberiensis , Apis mellifera ligustica, and A. m. mellifera ) of DeepWings© on 14,816 wing images with variable quality and acquired by different beekeepers and researchers. These images represented 2601 colonies from the native ranges of the M-lineage A. m. iberiensis and A. m. mellifera , and the C-lineage A. m. carnica . In the A. m. iberiensis range, 92.6% of the colonies matched this subspecies, with a high median probability (0.919). In the Azores, where the Iberian subspecies was historically introduced, a lower proportion (85.7%) and probability (0.842) were observed. In the A. m mellifera range, only 41.1 % of the colonies matched this subspecies, which is compatible with a history of C-derived introgression. Yet, these colonies were classified with the highest probability (0.994) of the three subspecies. In the A. m. carnica range, 88.3% of the colonies matched this subspecies, with a probability of 0.984. The association between wing and molecular markers, assessed for 1214 colonies from the M-lineage range, was highly significant but not strong (r = 0.31, p < 0.0001). The agreement between the markers was influenced by C-derived introgression, with the best results obtained for colonies with high genetic integrity. This study indicates the good performance of DeepWings© on a realistic wing image dataset.