5 results on '"Carravieri I"'
Search Results
2. Projet TIQoJARDIN – Etude du risque lié à la présence de TIQues dans les JARDINs privés en zone urbaine et péri-urbaine
- Author
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Durand, J., Carravieri, I., Capizzi, S., Boué, F., Caillot, C., Moutailler, Sara, Galley, C., Marchand, J., Vourc’h, G., Brun-Jacob, A., Frey-Klett, P., Bournez, L., and Moutailler, Sara
- Subjects
[SDV] Life Sciences [q-bio] ,ticks - Published
- 2021
3. Understanding Ixodes ricinus occurrence in private yards: influence of yard and landscape features.
- Author
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Mazaleyrat A, Durand J, Carravieri I, Caillot C, Galley C, Capizzi S, Boué F, Frey-Klett P, and Bournez L
- Subjects
- Animals, France epidemiology, Humans, Lyme Disease epidemiology, Nymph, Citizen Science methods, Ixodes
- Abstract
Background: Lyme borreliosis is the most frequent zoonotic disease in the northern hemisphere and is transmitted by ticks of the genus Ixodes. Although many people are bitten by ticks in private yards, our understanding of the factors associated with their presence in these areas remains limited. To address this gap, we used a citizen science approach to identify the local and landscape features associated with tick presence in yards., Methods: This study was conducted near Nancy, a city in northeastern France, from 2020 to 2022. Citizen scientists collected ticks in their yard on a single event (n = 185) and measured 13 yard features. Additionally, we computed 11 features related to the landscape composition and spatial configuration surrounding these yards. Using generalized linear mixed models, we determined the yard and landscape features associated with the presence of ticks and nymphal Ixodes ricinus (hereafter nymphs), the life stage, and species that mostly bite humans., Results: Despite a low density, ticks were found in 32% of the yards, including yards in urbanized areas. At the transect level, the likelihood of finding a nymph was nearly three times higher in transects shaded by vegetation compared to those in open areas, with no relationship between nymph occurrence and transect location or grass height. At the yard level, the occurrence of ticks and nymphs was related to both yard and landscape characteristics. Nymph and tick occurrence were more than twice as high in yards with signs of deer and a wood/brush pile compared to those without these characteristics, and increased with the connectivity of vegetation areas and the percentage of forest areas in the landscape., Conclusions: Our study reveals that private yards across an urbanization gradient are locations of tick exposure with tick presence linked to both yard and landscape factors. These findings emphasize the importance of public awareness regarding tick exposure in yards and provide crucial insights for future public health prevention campaigns., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
4. Exploring convolutional neural networks with transfer learning for diagnosing Lyme disease from skin lesion images.
- Author
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Hossain SI, de Goër de Herve J, Hassan MS, Martineau D, Petrosyan E, Corbin V, Beytout J, Lebert I, Durand J, Carravieri I, Brun-Jacob A, Frey-Klett P, Baux E, Cazorla C, Eldin C, Hansmann Y, Patrat-Delon S, Prazuck T, Raffetin A, Tattevin P, Vourc'h G, Lesens O, and Nguifo EM
- Subjects
- France, Humans, Machine Learning, Neural Networks, Computer, Lyme Disease diagnosis, Skin Diseases
- Abstract
Background and Objective: Lyme disease which is one of the most common infectious vector-borne diseases manifests itself in most cases with erythema migrans (EM) skin lesions. Recent studies show that convolutional neural networks (CNNs) perform well to identify skin lesions from images. Lightweight CNN based pre-scanner applications for resource-constrained mobile devices can help users with early diagnosis of Lyme disease and prevent the transition to a severe late form thanks to appropriate antibiotic therapy. Also, resource-intensive CNN based robust computer applications can assist non-expert practitioners with an accurate diagnosis. The main objective of this study is to extensively analyze the effectiveness of CNNs for diagnosing Lyme disease from images and to find out the best CNN architectures considering resource constraints., Methods: First, we created an EM dataset with the help of expert dermatologists from Clermont-Ferrand University Hospital Center of France. Second, we benchmarked this dataset for twenty-three CNN architectures customized from VGG, ResNet, DenseNet, MobileNet, Xception, NASNet, and EfficientNet architectures in terms of predictive performance, computational complexity, and statistical significance. Third, to improve the performance of the CNNs, we used custom transfer learning from ImageNet pre-trained models as well as pre-trained the CNNs with the skin lesion dataset HAM10000. Fourth, for model explainability, we utilized Gradient-weighted Class Activation Mapping to visualize the regions of input that are significant to the CNNs for making predictions. Fifth, we provided guidelines for model selection based on predictive performance and computational complexity., Results: Customized ResNet50 architecture gave the best classification accuracy of 84.42% ±1.36, AUC of 0.9189±0.0115, precision of 83.1%±2.49, sensitivity of 87.93%±1.47, and specificity of 80.65%±3.59. A lightweight model customized from EfficientNetB0 also performed well with an accuracy of 83.13%±1.2, AUC of 0.9094±0.0129, precision of 82.83%±1.75, sensitivity of 85.21% ±3.91, and specificity of 80.89%±2.95. All the trained models are publicly available at https://dappem.limos.fr/download.html, which can be used by others for transfer learning and building pre-scanners for Lyme disease., Conclusion: Our study confirmed the effectiveness of even some lightweight CNNs for building Lyme disease pre-scanner mobile applications to assist people with an initial self-assessment and referring them to expert dermatologist for further diagnosis., Competing Interests: Declaration of Competing Interest The authors have declared no conflict of interest., (Copyright © 2022 Elsevier B.V. All rights reserved.)
- Published
- 2022
- Full Text
- View/download PDF
5. Are Orienteers Protected Enough against Tick Bites? Estimating Human Exposure to Tick Bites through a Participative Science Survey during an Orienteering Competition.
- Author
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Durand J, Bournez L, Marchand J, Schmid C, Carravieri I, Palin B, Galley C, Godard V, Brun-Jacob A, Cosson JF, and Frey-Klett P
- Subjects
- Animals, France epidemiology, Humans, Bites and Stings, Insect Repellents, Tick Bites epidemiology, Tick Bites prevention & control, Ticks
- Abstract
Mass-participation events in temperate forests are now well-established features of outdoor activities and represent high-risk activities regarding human exposition to tick bites. In this study we used a citizen science approach to quantify the space-time frequency of tick bites and undetected tick bites among orienteers that participated in a 6-day orienteering competition that took place in July 2018 in the forests of Eastern France, and we looked at the use and efficacy of different preventive behaviors. Our study confirms that orienteers are a high-risk population for tick bites, with 62.4% of orienteers bitten at least once during the competition, and 2.4 to 12.1 orienteers per 100 orienteers were bitten by ticks when walking 1 km. In addition, 16.7% of orienteers bitten by ticks had engorged ticks, meaning that they did not detect and remove their ticks immediately after the run. Further, only 8.5% of orienteers systematically used a repellent, and the use of repellent only partially reduced the probability of being bitten by ticks. These results represent the first attempt to quantify the risk of not immediately detecting a tick bite and provide rare quantitative data on the frequency of tick bites for orienteers according to walking distance and time spent in the forest. The results also provide information on the use of repellent, which will be very helpful for modeling risk assessment. The study also shows that prevention should be increased for orienteers in France.
- Published
- 2021
- Full Text
- View/download PDF
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