Miranda Vinícius L, Oliveira-Correia João P S, Galvão Cleber, Obara Marcos T, Peterson A Townsend, Gurgel-Gonçalves Rodrigo
Laboratório de Parasitologia Médica e Biologia de Vetores, Faculdade de Medicina, Universidade de Brasília, Brasília, Brazil.
Laboratório Nacional e Internacional de Referência em Taxonomia de Triatomíneos, Instituto Oswaldo Cruz, Rio de Janeiro, Brazil.
Med Vet Entomol. 2025 Jun;39(2):291-300. doi: 10.1111/mve.12780. Epub 2024 Dec 13.
The 158 bug species that make up the subfamily Triatominae are the potential vectors of Trypanosoma cruzi, the etiological agent of Chagas disease. Despite recent progress in developing a picture-based automated system for identification of triatomines, an extensive and diverse image database is required for a broadly useful automated application for identifying these vectors. We evaluated performance of a deep-learning network (AlexNet) for identifying triatomine species from a database of dorsal images of adult insects. We used a sample of photos of 6397 triatomines belonging to seven genera and 65 species from 27 countries. AlexNet had an accuracy of ~0.93 (95% confidence interval [CI], 0.91-0.94) for identifying triatomine species from pictures of varying resolutions. Highest specific accuracy was observed for 21 species in the genera Rhodnius and Panstrongylus. AlexNet performance improved to ~0.95 (95% CI, 0.93-0.96) when only the species with highest vectorial capacity were considered. These results show that AlexNet, when trained with a large, diverse, and well-structured picture set, exhibits excellent performance for identifying triatomine species. This study contributed to the development of an automated Chagas disease vector identification system.
构成锥蝽亚科的158种臭虫是克氏锥虫的潜在传播媒介,克氏锥虫是恰加斯病的病原体。尽管最近在开发基于图片的锥蝽自动识别系统方面取得了进展,但要实现广泛适用的锥蝽自动识别应用,仍需要一个广泛且多样的图像数据库。我们评估了一个深度学习网络(AlexNet)从成年昆虫背部图像数据库中识别锥蝽种类的性能。我们使用了来自27个国家的属于7个属65个物种的6397只锥蝽的照片样本。AlexNet从不同分辨率的图片中识别锥蝽种类的准确率约为0.93(95%置信区间[CI],0.91 - 0.94)。在红猎蝽属和强喙蝽属的21个物种中观察到了最高的特异性准确率。当仅考虑具有最高传播能力的物种时,AlexNet的性能提高到约0.95(95% CI,0.93 - 0.96)。这些结果表明,当使用一个大型、多样且结构良好的图片集进行训练时,AlexNet在识别锥蝽种类方面表现出优异的性能。这项研究为恰加斯病传播媒介自动识别系统的开发做出了贡献。