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Ongoing changes in the distribution and abundance of several tick species of medical relevance in Canada have prompted the development of the eTick platform-an image-based crowd-sourcing public surveillance tool for Canada enabling rapid tick species identification by trained personnel, and public health guidance based on tick species and province of residence of the submitter. Considering that more than 100,000 images from over 73,500 identified records representing 25 tick species have been submitted to eTick since the public launch in 2018, a partial automation of the image processing workflow could save substantial human resources, especially as submission numbers have been steadily increasing since 2021. In this study, we evaluate an end-to-end artificial intelligence (AI) pipeline to support tick identification from eTick user-submitted images, characterized by heterogeneous quality and uncontrolled acquisition conditions. Our framework integrates (i) tick localization using a fine-tuned YOLOv7 object detection model, (ii) resolution enhancement of cropped images via super-resolution Generative Adversarial Networks (RealESRGAN and SwinIR), and (iii) image classification using deep convolutional (ResNet-50) and transformer-based (ViT) architectures across three datasets (12, 6, and 3 classes) of decreasing granularities in terms of taxonomic resolution, tick life stage, and specimen viewing angle. ViT consistently outperformed ResNet-50, especially in complex classification settings. The configuration yielding the best performance-relying on object detection without incorporating super-resolution-achieved a macro-averaged F1-score exceeding 86% in the 3-class model ( sp., other species, bad images), with minimal critical misclassifications (0.7% of "other species" misclassified as ). Given that ticks represent more than 60% of tick volume submitted on the eTick platform, the integration of a low granularity model in the processing workflow could save significant time while maintaining very high standards of identification accuracy. Our findings highlight the potential of combining modern AI methods to facilitate efficient and accurate tick image processing in community science platforms, while emphasizing the need to adapt model complexity and class resolution to task-specific constraints.
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http://dx.doi.org/10.3390/insects16080813 | DOI Listing |
J R Soc Interface
September 2025
UK Centre for Ecology & Hydrology, Wallingford, Oxfordshire, UK.
Severe fever with thrombocytopaenia syndrome virus (SFTSV) was identified by the World Health Organization as a priority pathogen due to its high case-fatality rate in humans and rapid spread. It is maintained in nature through three transmission pathways: systemic, non-systemic and transovarial. Understanding the relative contributions of these transmission pathways is crucial for developing evidence-informed public health interventions to reduce its spillover risks to humans.
View Article and Find Full Text PDFAm J Trop Med Hyg
September 2025
Rickettsial Zoonoses Branch, Centers for Disease Control and Prevention, Atlanta, Georgia.
Haemaphysalis leporispalustris (the rabbit tick) is one of the most broadly distributed hard tick species in the Americas. In 2018, investigators amplified DNA from a spotted fever group Rickettsia (SFGR) species found in host-seeking larvae and nymphs of H. leporispalustris collected in northern California and proposed the name Candidatus "Rickettsia lanei" using results obtained via multilocus sequence typing.
View Article and Find Full Text PDFActa Trop
September 2025
Instituto de Ciências Biomédicas, Universidade de São Paulo - ICB5/USP, Monte Negro, RO, Brazil; Instituto Nacional de Epidemiologia da Amazônia Ocidental - INCT-EpiAmO, Porto Velho, RO, Brazil; Centro de Pesquisas em Medicina Tropical - CEPEM, Porto Velho, RO, Brazil; Laboratório de Medicina T
This study evaluated the richness and abundance of ticks collected during two years in forest fragments of the state of Acre, western Brazilian Amazon. Considering all the environmental and host collections, the following 15 tick species were collected: Amblyomma coelebs, Amblyomma crassum, Amblyomma humerale, Amblyomma latepunctatum, Amblyomma longirostre, Amblyomma naponense, Amblyomma nodosum, Amblyomma oblongoguttatum, Amblyomma ovale, Amblyomma pacae, Amblyomma rotundatum, Amblyomma scalpturatum, Haemaphysalis juxtakochi, Ixodes luciae and Rhipicephalus microplus. Data from the most two abundant tick species, A.
View Article and Find Full Text PDFJ Virol
September 2025
Department of Microbiology, Immunology and Molecular Genetics, College of Medicine, University of Kentucky, Lexington, Kentucky, USA.
Arthropod-borne viruses (arboviruses) pose a major threat to global public health, impacting both human and animal health. Genomic characterization is important for arboviruses because it allows for an understanding of their evolution and improves timely outbreak and epidemic response. In this study, we used high-throughput sequencing and computational analyses to characterize the genomes and evolution of 46 previously unsequenced or partially sequenced arbovirus isolates collected across 23 countries between 1954 and 1984.
View Article and Find Full Text PDFTicks Tick Borne Dis
September 2025
Department of Parasitology and Zoology, University of Veterinary Medicine, Budapest, Hungary; HUN-REN-UVMB Climate Change: New Blood-sucking Parasites and Vector-borne Pathogens Research Group, Budapest, Hungary.
The aim of this study was to assess the viability of an opportunistic population of Hyalomma rufipes, as evidence of reproduction had been documented in the southern part of Central Europe, specifically Hungary, in 2022. To assess the current situation, tick collections targeting various mammalian species were organized with the assistance of local veterinarians between September 2022 and May 2024. Over the study period, 1502 ticks were collected; however, none belonged to the Hyalomma genus.
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