Faculty of Medicine, King Mongkut's Institute of Technology Ladkrabang, Bangkok, Thailand.
Veterinary Parasitology Research Unit, Faculty of Veterinary Science, Chulalongkorn University, Bangkok, Thailand.
Sci Rep. 2023 Jun 30;13(1):10609. doi: 10.1038/s41598-023-37574-3.
Mosquito-borne diseases such as dengue fever and malaria are the top 10 leading causes of death in low-income countries. Control measure for the mosquito population plays an essential role in the fight against the disease. Currently, several intervention strategies; chemical-, biological-, mechanical- and environmental methods remain under development and need further improvement in their effectiveness. Although, a conventional entomological surveillance, required a microscope and taxonomic key for identification by professionals, is a key strategy to evaluate the population growth of these mosquitoes, these techniques are tedious, time-consuming, labor-intensive, and reliant on skillful and well-trained personnel. Here, we proposed an automatic screening, namely the deep metric learning approach and its inference under the image-retrieval process with Euclidean distance-based similarity. We aimed to develop the optimized model to find suitable miners and suggested the robustness of the proposed model by evaluating it with unseen data under a 20-returned image system. During the model development, well-trained ResNet34 are outstanding and no performance difference when comparing five data miners that showed up to 98% in its precision even after testing the model with both image sources: stereomicroscope and mobile phone cameras. The robustness of the proposed-trained model was tested with secondary unseen data which showed different environmental factors such as lighting, image scales, background colors and zoom levels. Nevertheless, our proposed neural network still has great performance with greater than 95% for sensitivity and precision, respectively. Also, the area under the ROC curve given the learning system seems to be practical and empirical with its value greater than 0.960. The results of the study may be used by public health authorities to locate mosquito vectors nearby. If used in the field, our research tool in particular is believed to accurately represent a real-world scenario.
蚊媒疾病,如登革热和疟疾,是低收入国家的十大主要死亡原因之一。控制蚊群数量对于防治疾病至关重要。目前,几种干预策略,包括化学、生物、机械和环境方法,仍在开发中,需要进一步提高其效果。尽管传统的昆虫学监测需要专业人员使用显微镜和分类学关键技术进行鉴定,但这是评估这些蚊子种群增长的关键策略,这些技术繁琐、耗时、劳动强度大,并且依赖于熟练和训练有素的人员。在这里,我们提出了一种自动筛选方法,即基于欧几里得距离相似性的图像检索过程中的深度度量学习方法及其推断。我们旨在开发优化模型,以找到合适的矿工,并通过在 20 个返回图像系统中使用未见数据评估模型来评估该模型的稳健性。在模型开发过程中,训练有素的 ResNet34 表现出色,在比较五个数据挖掘器时没有性能差异,这五个数据挖掘器的精度高达 98%,即使在使用显微镜和手机摄像头两种图像源对模型进行测试后也是如此。通过使用不同环境因素(如照明、图像比例、背景颜色和缩放级别)的二次未见数据测试所提出的训练模型的稳健性。然而,我们提出的神经网络仍然具有出色的性能,其敏感性和精度分别大于 95%。此外,学习系统给出的 ROC 曲线下的面积似乎具有实际和经验意义,其值大于 0.960。该研究的结果可被公共卫生当局用于定位附近的蚊子媒介。如果在实地使用,我们的研究工具特别被认为可以准确地代表实际情况。