Institute for Tropical Biology and Conservation, Universiti Malaysia Sabah, Jalan UMS, Kota Kinabalu, Sabah Malaysia.
Household & Structural Urban Entomology Laboratory, Vector Control Research Unit, School of Biological Sciences, Universiti Sains Malaysia, 11800 Penang, Malaysia.
Bull Entomol Res. 2024 Apr;114(2):302-307. doi: 10.1017/S000748532400018X. Epub 2024 Apr 1.
Mosquito-borne diseases have emerged in North Borneo in Malaysia due to rapid changes in the forest landscape, and mosquito surveillance is key to understanding disease transmission. However, surveillance programmes involving sampling and taxonomic identification require well-trained personnel, are time-consuming and labour-intensive. In this study, we aim to use a deep leaning model (DL) to develop an application capable of automatically detecting mosquito vectors collected from urban and suburban areas in North Borneo, Malaysia. Specifically, a DL model called MobileNetV2 was developed using a total of 4880 images of , and mosquitoes, which are widely distributed in Malaysia. More importantly, the model was deployed as an application that can be used in the field. The model was fine-tuned with hyperparameters of learning rate 0.0001, 0.0005, 0.001, 0.01 and the performance of the model was tested for accuracy, precision, recall and F1 score. Inference time was also considered during development to assess the feasibility of the model as an app in the real world. The model showed an accuracy of at least 97%, a precision of 96% and a recall of 97% on the test set. When used as an app in the field to detect mosquitoes with the elements of different background environments, the model was able to achieve an accuracy of 76% with an inference time of 47.33 ms. Our result demonstrates the practicality of computer vision and DL in the real world of vector and pest surveillance programmes. In the future, more image data and robust DL architecture can be explored to improve the prediction result.
马来西亚北婆罗洲由于森林景观的快速变化而出现了蚊媒传染病,因此蚊虫监测对于了解疾病传播至关重要。然而,涉及采样和分类鉴定的监测计划需要经过良好培训的人员,既费时又费力。在这项研究中,我们旨在使用深度学习模型(DL)来开发一种能够自动检测从马来西亚北婆罗洲城市和郊区收集的蚊虫的应用程序。具体来说,我们使用总共 4880 张 、 和 蚊子的图像开发了一种名为 MobileNetV2 的 DL 模型,这些蚊子广泛分布在马来西亚。更重要的是,该模型被部署为一种可在现场使用的应用程序。该模型使用学习率为 0.0001、0.0005、0.001、0.01 的超参数进行了微调,并对模型的准确性、精度、召回率和 F1 分数进行了测试。在开发过程中还考虑了推断时间,以评估该模型作为实际应用程序的可行性。该模型在测试集上的准确率至少为 97%,精度为 96%,召回率为 97%。当作为应用程序在野外用于检测具有不同背景环境元素的蚊子时,该模型的准确率为 76%,推断时间为 47.33 毫秒。我们的结果证明了计算机视觉和 DL 在实际的蚊虫和害虫监测计划中的实用性。未来,可以探索更多的图像数据和稳健的 DL 架构来提高预测结果。