# Automated identification of spotted‐fever tick vectors using convolutional neural networks

**Authors:** Isadora R. C. Gomes, Vinícius L. Miranda, José Fabrício C. Leal, Igor P. Oliveira, Paula J. Silva, Karla Bitencourth, Claudio M. Rodrigues, Liege R. Siqueira, Marcelo B. Labruna, Gilberto S. Gazeta, Marinete Amorim, Rodrigo Gurgel‐Gonçalves

PMC · DOI: 10.1111/mve.12822 · Medical and Veterinary Entomology · 2025-07-04

## TL;DR

This study shows that AI can accurately identify ticks that spread spotted fever in South America, helping with public health efforts.

## Contribution

The novel use of CNNs for automated identification of South American spotted fever tick vectors is demonstrated.

## Key findings

- CNNs achieved ~90% accuracy in identifying tick species associated with spotted fever.
- AlexNet and MobileNetV2 showed the best sensitivity and specificity for identifying SF vectors.
- Grad-CAM highlighted varying image regions as important for classification depending on the algorithm.

## Abstract

Ticks are key ectoparasites for the One Health approach, as they are vectors of pathogens that infect humans, domestic and wild animals. The bacteria Rickettsia rickettsii and R. parkeri are the aetiological agents of tick‐borne spotted fever (SF) in South America, where Amblyomma sculptum, A. aureolatum, A. ovale and A. triste are the main vectors. Studies in the medical and biological fields show that artificial intelligence, through machine learning, has great potential to assist researchers and health professionals in image identification practices. The aim of this study was to evaluate the performance of the Convolutional Neural Networks (CNN) AlexNet, ResNet‐50 and MobileNetV2 for identifying tick species transmitting SF bioagents. We organised an image database with the following groups: females (368), males (458), dorsal (423), ventral (403), low resolution (328), high resolution (498) and all together (sex+position+resolution = 826), to identify the three main vectors of SF bioagents (Amblyomma aureolatum, A. ovale and A. sculptum), two other possible vectors (A. triste and A. dubitatum) and the species A. cajennense sensu stricto (s.s.), which has similar morphology to A. sculptum but no known vectorial capacity. To evaluate the network's performance, we measured accuracy, sensitivity and specificity. We used Grad‐CAM to highlight the regions of the images most relevant to the predictions. CNNs achieved accuracy rates of ~90% in identifying ticks and showed sensitivities of 59%–100% according to species, sex, position or image resolution. When considering all images, both AlexNet and MobileNetV2 recorded the best sensitivity and specificity values in identifying SF vectors. The most relevant areas for classifying species varied according to algorithms. Our results support the idea of using CNNs for the automated identification of tick species transmitting SF bioagents in South America. Our database could support the development of tick identification apps to aid public health surveillance and contribute to citizen science.

We evaluate the performance of convolutional neural networks (CNN) AlexNet, ResNet‐50 and MobileNetV2 for the automated identification of tick species capable of transmitting spotted fever.CNNs achieved accuracy rates of ~90% in identifying ticks and showed sensitivities of 59%–100% according to species, sex, position or image resolution.Our results support the idea of using CNNs for the automated identification of tick species transmitting SF bioagents in South America.

We evaluate the performance of convolutional neural networks (CNN) AlexNet, ResNet‐50 and MobileNetV2 for the automated identification of tick species capable of transmitting spotted fever.

CNNs achieved accuracy rates of ~90% in identifying ticks and showed sensitivities of 59%–100% according to species, sex, position or image resolution.

Our results support the idea of using CNNs for the automated identification of tick species transmitting SF bioagents in South America.

## Linked entities

- **Diseases:** spotted fever (MONDO:0001195)
- **Species:** Amblyomma sculptum (taxon 1581419), Amblyomma aureolatum (taxon 187763), Amblyomma ovale (taxon 208206), Amblyomma triste (taxon 251400), Amblyomma dubitatum (taxon 321419)

## Full-text entities

- **Diseases:** spotted-fever (MESH:D000073605)
- **Species:** Rickettsia rickettsii (species) [taxon 783], Homo sapiens (human, species) [taxon 9606], Ixodida (ticks, order) [taxon 6935]

## Full text

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## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12586270/full.md

## References

54 references — full list in the complete paper: https://tomesphere.com/paper/PMC12586270/full.md

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Source: https://tomesphere.com/paper/PMC12586270