IRTA, Centre de Recerca en Sanitat Animal (CReSA, IRTA-UAB), Campus de la Universitat Autònoma de Barcelona, Bellaterra, Cerdanyola del Vallès, Spain.
Irideon SL, Barcelona, Spain.
Parasit Vectors. 2022 Jun 6;15(1):190. doi: 10.1186/s13071-022-05324-5.
Every year, more than 700,000 people die from vector-borne diseases, mainly transmitted by mosquitoes. Vector surveillance plays a major role in the control of these diseases and requires accurate and rapid taxonomical identification. New approaches to mosquito surveillance include the use of acoustic and optical sensors in combination with machine learning techniques to provide an automatic classification of mosquitoes based on their flight characteristics, including wingbeat frequency. The development and application of these methods could enable the remote monitoring of mosquito populations in the field, which could lead to significant improvements in vector surveillance.
A novel optical sensor prototype coupled to a commercial mosquito trap was tested in laboratory conditions for the automatic classification of mosquitoes by genus and sex. Recordings of > 4300 laboratory-reared mosquitoes of Aedes and Culex genera were made using the sensor. The chosen genera include mosquito species that have a major impact on public health in many parts of the world. Five features were extracted from each recording to form balanced datasets and used for the training and evaluation of five different machine learning algorithms to achieve the best model for mosquito classification.
The best accuracy results achieved using machine learning were: 94.2% for genus classification, 99.4% for sex classification of Aedes, and 100% for sex classification of Culex. The best algorithms and features were deep neural network with spectrogram for genus classification and gradient boosting with Mel Frequency Cepstrum Coefficients among others for sex classification of either genus.
To our knowledge, this is the first time that a sensor coupled to a standard mosquito suction trap has provided automatic classification of mosquito genus and sex with high accuracy using a large number of unique samples with class balance. This system represents an improvement of the state of the art in mosquito surveillance and encourages future use of the sensor for remote, real-time characterization of mosquito populations.
每年有超过 70 万人死于由蚊子传播的病媒传播疾病。病媒监测在这些疾病的控制中起着重要作用,需要进行准确和快速的分类鉴定。新的蚊子监测方法包括使用声学和光学传感器结合机器学习技术,根据蚊子的飞行特征(包括振翅频率)提供自动分类。这些方法的开发和应用可以实现蚊子种群的远程监测,从而显著改善病媒监测。
在实验室条件下,对一种新型光学传感器原型与商业蚊子诱捕器进行了测试,以自动对按属和性别分类的蚊子进行分类。使用该传感器对 >4300 只实验室饲养的伊蚊和库蚊属蚊子进行了记录。所选的属包括在世界许多地区对公共卫生有重大影响的蚊子物种。从每个记录中提取了 5 个特征,形成平衡数据集,并用于训练和评估 5 种不同的机器学习算法,以获得最佳的蚊子分类模型。
使用机器学习取得的最佳准确度结果为:属分类准确率为 94.2%,伊蚊性别分类准确率为 99.4%,库蚊性别分类准确率为 100%。最佳算法和特征是用于属分类的声谱图深度学习神经网络和用于两种属的性别分类的梯度提升与梅尔频率倒谱系数等。
据我们所知,这是首次使用标准的蚊子抽吸诱捕器与传感器相结合,使用大量具有平衡类别的独特样本实现了高准确度的蚊子属和性别自动分类。该系统代表了蚊子监测领域的技术进步,并鼓励未来在远程实时描述蚊子种群方面使用该传感器。