Anhui Institute of Optics and Fine Mechanics, Hefei Institutes of Physical Science, Chinese Academy of Science, Hefei, 230031, China.
University of Science and Technology of China, Hefei, 230027, China.
Environ Sci Pollut Res Int. 2023 Feb;30(6):16266-16276. doi: 10.1007/s11356-022-23322-z. Epub 2022 Oct 1.
Honey bees (Apis spp.) are often used as biological indicators of environmental changes. Recently, bees have been explored to monitor air contaminants by listening to the beehive sound. The beehive sound is believed to encode information on bee responses to chemicals outside their hives. Here we conducted an experiment to address this. First, we randomly fed colonies with pure syrup (PS), acetone-laced syrup (AS), or ethyl acetate-laced syrup (ES) in front of the beehives and collect the beehive sound. Based on the audio data, we build machine learning (ML) models to identify the types of syrup. The result shows that ML models achieved over 90% accuracy for identifying syrup types, indicating that the bees inside their hives emitted the sound associated with the chemicals outside their hives. Then, we sequentially fed the colonies in the order of PS, ES, and AS (the first session) and again in the reverse order (the second session), but did not remove the accumulated ES or AS in the alternative feeding experiment. Based on the audio data, the identification accuracy of both ES and AS by the ML model built on the randomly feeding experiment was different, indicating that the accumulated chemical residuals could confuse the ML models. Therefore, the beehive sound-based environmental monitoring should simultaneously consider the responses of bees to the chemicals outside their hives and their responses to those accumulated inside their hives, which may act simultaneously.
蜜蜂(Apis spp.)常被用作环境变化的生物指标。最近,人们通过聆听蜂巢声音来探索利用蜜蜂监测空气污染物。人们认为蜂巢声音编码了蜜蜂对蜂巢外化学物质的反应信息。在此,我们进行了一项实验来解决这个问题。首先,我们在蜂巢前随机给蜂群喂食纯糖浆(PS)、丙酮味糖浆(AS)或乙酸乙酯味糖浆(ES),并收集蜂巢声音。基于音频数据,我们构建了机器学习(ML)模型来识别糖浆类型。结果表明,ML 模型在识别糖浆类型方面的准确率超过 90%,表明蜂巢内的蜜蜂发出了与蜂巢外化学物质相关的声音。然后,我们按照 PS、ES 和 AS 的顺序(第一阶段)依次给蜂群喂食,然后再按相反的顺序(第二阶段)喂食,但在交替喂食实验中没有清除积累的 ES 或 AS。基于音频数据,在随机喂食实验中构建的 ML 模型对 ES 和 AS 的识别准确率不同,表明积累的化学残留物可能会使 ML 模型混淆。因此,基于蜂巢声音的环境监测应同时考虑蜜蜂对蜂巢外化学物质的反应以及它们对蜂巢内积累的化学物质的反应,这两种反应可能同时发生。