Seasonal variations of serotonin in the visual system of an ant revealed by immunofluorescence and a machine learning approach

R Soc Open Sci. 2022 Feb 9;9(2):210932. doi: 10.1098/rsos.210932. eCollection 2022 Feb.

Abstract

Hibernation, as an adaptation to seasonal environmental changes in temperate or boreal regions, has profound effects on mammalian brains. Social insects of temperate regions hibernate as well, but despite abundant knowledge on structural and functional plasticity in insect brains, the question of how seasonal activity variations affect insect central nervous systems has not yet been thoroughly addressed. Here, we studied potential variations of serotonin-immunoreactivity in visual information processing centres in the brain of the long-lived ant species Lasius niger. Quantitative immunofluorescence analysis revealed stronger serotonergic signals in the lamina and medulla of the optic lobes of wild or active laboratory workers than in hibernating animals. Instead of statistical inference by testing, differentiability of seasonal serotonin-immunoreactivity was confirmed by a machine learning analysis using convolutional artificial neuronal networks (ANNs) with the digital immunofluorescence images as input information. Machine learning models revealed additional differences in the third visual processing centre, the lobula. We further investigated these results by gradient-weighted class activation mapping. We conclude that seasonal activity variations are represented in the ant brain, and that machine learning by ANNs can contribute to the discovery of such variations.

Keywords: Lasius niger; convolutional artificial neuronal network; hibernation; insect brain; machine learning; serotonin.

Associated data

  • figshare/10.6084/m9.figshare.c.5831117
  • Dryad/10.5061/dryad.cjsxksn5z