Department of Poultry Science and Apiculture, Faculty of Animal Bioengineering, University of Warmia and Mazury in Olsztyn, Sloneczna 48, 10-957 Olsztyn, Poland.
The Department of Computer Science, University of Rzeszow, 35-310 Rzeszow, Poland.
Sensors (Basel). 2022 Feb 2;22(3):1148. doi: 10.3390/s22031148.
American foulbrood is a dangerous bee disease that attacks the sealed brood. It quickly leads to the death of bee colonies. Efficient diagnosis of this disease is essential. As specific odours are produced when larvae rot, it was investigated whether an electronic nose can distinguish between colonies affected by American foulbrood and healthy ones. The experiment was conducted in an apiary with 18 bee families, 9 of which showed symptoms of the disease confirmed by laboratory diagnostics. Three units of the Beesensor V.2 device based on an array of six semiconductor TGS gas sensors, manufactured by Figaro, were tested. Each copy of the device was tested in all bee colonies: sick and healthy. The measurement session per bee colony lasted 40 min and yielded results from four 10 min measurements. One 10-min measurement consisted of a 5 min regeneration phase and a 5 min object-measurement phase. For the experiments, we used both classical classification methods such as k-nearest neighbour, Naive Bayes, Support Vector Machine, discretized logistic regression, random forests, and committee of classifiers, that is, methods based on extracted representative data fragments. We also used methods based on the entire 600 s series, in this study of sequential neural networks. We considered, in this study, six options for data preparation as part of the transformation of data series into representative results. Among others, we used single stabilised sensor readings as well as average values from stable areas. For verifying the quality of the classical classifiers, we used the 25-fold train-and-test method. The effectiveness of the tested methods reached a threshold of 75 per cent, with results stable between 65 and 70 per cent. As an element to confirm the possibility of class separation using an artificial nose, we used applied visualisations of classes. It is clear from the experiments conducted that the artificial nose tested has practical potential. Our experiments show that the approach to the problem under study by sequential network learning on a sequence of data is comparable to the best classical methods based on discrete data samples. The results of the experiment showed that the Beesensor V.2 along with properly selected classification techniques can become a tool to facilitate rapid diagnosis of American foulbrood under field conditions.
美洲幼虫腐臭病是一种侵袭封盖幼虫的危险蜜蜂疾病,它会迅速导致蜂群死亡。对这种疾病进行有效的诊断至关重要。由于幼虫腐烂时会产生特定的气味,因此研究了电子鼻是否可以区分受美洲幼虫腐臭病影响的蜂群和健康蜂群。该实验在一个有 18 个蜂群的养蜂场进行,其中 9 个蜂群的症状经实验室诊断证实患有该病。使用了基于由 Figaro 制造的六个半导体 TGS 气体传感器阵列的 Beesensor V.2 设备的三个单元进行了测试。每个设备副本都在所有蜂群中进行了测试:患病和健康。每个蜂群的测量会话持续 40 分钟,从四个 10 分钟的测量中得出结果。每次 10 分钟的测量包括 5 分钟的再生阶段和 5 分钟的物体测量阶段。在实验中,我们使用了经典的分类方法,如 k-最近邻、朴素贝叶斯、支持向量机、离散化逻辑回归、随机森林和分类器委员会,即基于提取的代表性数据片段的方法。我们还使用了基于整个 600 秒序列的方法,即顺序神经网络。在这项研究中,我们考虑了数据准备的六个选项,作为将数据序列转换为代表性结果的一部分。除其他外,我们使用了单个稳定传感器读数以及稳定区域的平均值。为了验证经典分类器的质量,我们使用了 25 折训练和测试方法。所测试方法的有效性达到了 75%的阈值,结果在 65%至 70%之间稳定。作为使用人工嗅觉进行类分离可能性的确认元素,我们使用了类别的应用可视化。从进行的实验中可以清楚地看出,所测试的人工嗅觉具有实际潜力。我们的实验表明,通过对数据序列进行顺序网络学习来解决所研究问题的方法与基于离散数据样本的最佳经典方法相当。实验结果表明,Beesensor V.2 与适当选择的分类技术相结合,可以成为在现场条件下快速诊断美洲幼虫腐臭病的工具。