Cannet Arnaud, Chane Camille Simon, Histace Aymeric, Akhoundi Mohammad, Romain Olivier, Jacob Pierre, Sereno Darian, Souchaud Marc, Bousses Philippe, Sereno Denis
Direction Générale de la Santé, Paris, France.
ETIS UMR 8051, ENSEA, CNRS, CY Cergy Paris University, 95000, Cergy, France.
Sci Rep. 2025 Jul 1;15(1):21548. doi: 10.1038/s41598-025-08667-y.
In this paper, we test the possibility of using Wing Interference Patterns (WIPs) and deep learning (DL) for the identification of Culex mosquitoes species to evaluate the extent to which a generic method could be developed for surveying Dipteran insects of major importance to human health. Previous applications of WIPs and DL have successfully demonstrated their utility in identifying Anopheles, Aedes, sandflies, and tsetse flies, providing the rationale for extending this approach to Culex. Accurate identification of these mosquitoes is crucial for vector-borne disease control, yet traditional methods remain labor-intensive and are often hindered by cryptic species or damaged samples. To address these challenges, we applied WIPs, generated by thin-film interference on wing membranes, in combination with convolutional neural networks (CNNs) for species classification. Our results achieved over [Formula: see text] genus-level accuracy and up to [Formula: see text] species-level accuracy. Nonetheless, challenges with underrepresented species emphasize the need for larger datasets and complementary techniques such as molecular barcoding. This study highlights the potential of WIPs and DL to enhance mosquito identification and contribute to scalable tools for broader surveys of health-relevant Dipteran insects.
在本文中,我们测试了利用翅干涉图案(WIPs)和深度学习(DL)来鉴定库蚊种类的可能性,以评估能在多大程度上开发出一种通用方法来调查对人类健康至关重要的双翅目昆虫。WIPs和DL此前的应用已成功证明了它们在鉴定按蚊、伊蚊、白蛉和采采蝇方面的效用,为将这种方法扩展到库蚊提供了理论依据。准确鉴定这些蚊子对于病媒传播疾病的控制至关重要,但传统方法仍然劳动强度大,并且常常受到隐存种或受损样本的阻碍。为应对这些挑战,我们将通过翅膜上的薄膜干涉产生的WIPs与卷积神经网络(CNNs)相结合用于种类分类。我们的结果实现了超过[公式:见正文]的属级准确率和高达[公式:见正文]的种级准确率。尽管如此,稀有物种带来的挑战凸显了对更大数据集以及诸如分子条形码等补充技术的需求。本研究突出了WIPs和DL在增强蚊子鉴定方面的潜力,并有助于开发可扩展工具以更广泛地调查与健康相关的双翅目昆虫。