Abstract

Simple SummaryThe number of honey bee, Apis mellifera L., colonies has reduced around the globe, and one potential cause is their unintended exposure to sublethal stressors such as agricultural pesticides. The quantification of such effects at colony level is a very complex task due to the innumerable collective activities done by the individual within colonies. Here, we present a Bayesian and computational approach capable of tracking the movements of bees within colonies, which allows the comparison of the collective activities of colonies that received bees previously exposed to uncontaminated diets or to diets containing sublethal concentrations of an agricultural pesticide (a commercial formulation containing the synthetic fungicides thiophanate-methyl and chlorothalonil). Our Bayesian tracking technique proved successful and superior to comparable algorithms, allowing the estimation of dynamical parameters such as entropy and kinetic energy. Our efforts demonstrated that fungicide-contaminated colonies behaved differently from uncontaminated colonies, as the former exhibited anticipated collective activities in peripheral hive areas and had reduced swarm entropy and kinetic energies. Such findings may facilitate the electronic monitoring of potential unintended effects in social pollinators, at colony level, mediated by environmental stressors (e.g., pesticides, electromagnetic fields, noise, and light intensities) alone or in combination.Interactive movements of bees facilitate the division and organization of collective tasks, notably when they need to face internal or external environmental challenges. Here, we present a Bayesian and computational approach to track the movement of several honey bee, Apis mellifera, workers at colony level. We applied algorithms that combined tracking and Kernel Density Estimation (KDE), allowing measurements of entropy and Probability Distribution Function (PDF) of the motion of tracked organisms. We placed approximately 200 recently emerged and labeled bees inside an experimental colony, which consists of a mated queen, approximately 1000 bees, and a naturally occurring beehive background. Before release, labeled bees were fed for one hour with uncontaminated diets or diets containing a commercial mixture of synthetic fungicides (thiophanate-methyl and chlorothalonil). The colonies were filmed (12 min) at the 1st hour, 5th and 10th days after the bees’ release. Our results revealed that the algorithm tracked the labeled bees with great accuracy. Pesticide-contaminated colonies showed anticipated collective activities in peripheral hive areas, far from the brood area, and exhibited reduced swarm entropy and energy values when compared to uncontaminated colonies. Collectively, our approach opens novel possibilities to quantify and predict potential alterations mediated by pollutants (e.g., pesticides) at the bee colony-level.

Highlights

  • Emerged (

  • Based on the Probability Distribution Function (PDF) values of each bee, there was a notable reduction in the entropy values over time for hives that received fungicide-contaminated labeled bees when compared to those hives that had only uncontaminated bees (Figure 3B)

  • We present a Bayesian strategy capable of simultaneously tracking the movement of several A. mellifera individuals at the colony level, allowing determination of the entropy and probability distribution function (PDF) of tracked organisms. Such approaches facilitated the quantification of unintended effects mediated by agricultural pesticides in A. mellifera colonies

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Summary

Introduction

Bees play relevant roles in the pollination of innumerable wild plants and crop fields, which have been estimated to generate 153 billion euros globally [1]. The pesticide-mediated problems go beyond the direct lethality of these compounds, as the potential sublethal contamination of the hive individuals has been shown to alter the visual perceptions, learning, locomotion, and foraging activities of individuals [5,6,10,11]. How this sublethal contamination affects colony dynamics has not received adequate attention, possibly due to the challenges associated with such measures [10,12,13]. A powerful tool for analyzing collective dynamics of animal behaviors is the utilization of video tracking [14–17] This technique is under constant development as it has applicability in a wide range of fields [18]. Recent approaches to object tracking (e.g., hierarchical learned features for tracking and cognitive vision) present similar difficulties as algorithms and are limited to tracking only a few objects at the same time [27,28]

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