15 results on '"Sinka, Marianne"'
Search Results
2. Seasonal dynamics of Anopheles stephensi and its implications for mosquito detection and emergent malaria control in the Horn of Africa
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Whittaker, Charles, Hamlet, Arran, Sherrard-Smith, Ellie, Winskill, Peter, Cuomo-Dannenburg, Gina, Walker, Patrick G T, Sinka, Marianne, Pironon, Samuel, Kumar, Ashwani, Ghani, Azra, Bhatt, Samir, Churcher, Thomas S, Whittaker, Charles, Hamlet, Arran, Sherrard-Smith, Ellie, Winskill, Peter, Cuomo-Dannenburg, Gina, Walker, Patrick G T, Sinka, Marianne, Pironon, Samuel, Kumar, Ashwani, Ghani, Azra, Bhatt, Samir, and Churcher, Thomas S
- Abstract
Invasion of the malaria vector Anopheles stephensi across the Horn of Africa threatens control efforts across the continent, particularly in urban settings where the vector is able to proliferate. Malaria transmission is primarily determined by the abundance of dominant vectors, which often varies seasonally with rainfall. However, it remains unclear how An. stephensi abundance changes throughout the year, despite this being a crucial input to surveillance and control activities. We collate longitudinal catch data from across its endemic range to better understand the vector’s seasonal dynamics and explore the implications of this seasonality for malaria surveillance and control across the Horn of Africa. Our analyses reveal pronounced variation in seasonal dynamics, the timing and nature of which are poorly predicted by rainfall patterns. Instead, they are associated with temperature and patterns of land use; frequently differing between rural and urban settings. Our results show that timing entomological surveys to coincide with rainy periods is unlikely to improve the likelihood of detecting An. stephensi. Integrating these results into a malaria transmission model, we show that timing indoor residual spraying campaigns to coincide with peak rainfall offers little improvement in reducing disease burden compared to starting in a random month. Our results suggest that unlike other malaria vectors in Africa, rainfall may be a poor guide to predicting the timing of peaks in An. stephensi-driven malaria transmission. This highlights the urgent need for longitudinal entomological monitoring of the vector in its new environments given recent invasion and potential spread across the continent., Invasion of the malaria vector Anopheles stephensi across the Horn of Africa threatens control efforts across the continent, particularly in urban settings where the vector is able to proliferate. Malaria transmission is primarily determined by the abundance of dominant vectors, which often varies seasonally with rainfall. However, it remains unclear how An. stephensi abundance changes throughout the year, despite this being a crucial input to surveillance and control activities. We collate longitudinal catch data from across its endemic range to better understand the vector's seasonal dynamics and explore the implications of this seasonality for malaria surveillance and control across the Horn of Africa. Our analyses reveal pronounced variation in seasonal dynamics, the timing and nature of which are poorly predicted by rainfall patterns. Instead, they are associated with temperature and patterns of land use; frequently differing between rural and urban settings. Our results show that timing entomological surveys to coincide with rainy periods is unlikely to improve the likelihood of detecting An. stephensi. Integrating these results into a malaria transmission model, we show that timing indoor residual spraying campaigns to coincide with peak rainfall offers little improvement in reducing disease burden compared to starting in a random month. Our results suggest that unlike other malaria vectors in Africa, rainfall may be a poor guide to predicting the timing of peaks in An. stephensi-driven malaria transmission. This highlights the urgent need for longitudinal entomological monitoring of the vector in its new environments given recent invasion and potential spread across the continent.
- Published
- 2023
3. The potential impact of Anopheles stephensi establishment on the transmission of Plasmodium falciparum in Ethiopia and prospective control measures
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Hamlet, Arran, Dengela, D., Eric Tongren, J., Tadesse, F.G., Bousema, T., Sinka, Marianne, Armistead, Jennifer S., Churcher, T.S., Hamlet, Arran, Dengela, D., Eric Tongren, J., Tadesse, F.G., Bousema, T., Sinka, Marianne, Armistead, Jennifer S., and Churcher, T.S.
- Abstract
Item does not contain fulltext
- Published
- 2022
4. The ACM Multimedia 2022 Computational Paralinguistics Challenge: Vocalisations, Stuttering, Activity, & Mosquitoes
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Schuller, Björn W., Batliner, Anton, Amiriparian, Shahin, Bergler, Christian, Gerczuk, Maurice, Holz, Natalie, Larrouy-Maestri, Pauline, Bayerl, Sebastian P., Riedhammer, Korbinian, Mallol-Ragolta, Adria, Pateraki, Maria, Coppock, Harry, Kiskin, Ivan, Sinka, Marianne, Roberts, Stephen, Schuller, Björn W., Batliner, Anton, Amiriparian, Shahin, Bergler, Christian, Gerczuk, Maurice, Holz, Natalie, Larrouy-Maestri, Pauline, Bayerl, Sebastian P., Riedhammer, Korbinian, Mallol-Ragolta, Adria, Pateraki, Maria, Coppock, Harry, Kiskin, Ivan, Sinka, Marianne, and Roberts, Stephen
- Abstract
The ACM Multimedia 2022 Computational Paralinguistics Challenge addresses four different problems for the first time in a research competition under well-defined conditions: In the Vocalisations and Stuttering Sub-Challenges, a classification on human non-verbal vocalisations and speech has to be made; the Activity Sub-Challenge aims at beyond-audio human activity recognition from smartwatch sensor data; and in the Mosquitoes Sub-Challenge, mosquitoes need to be detected. We describe the Sub-Challenges, baseline feature extraction, and classifiers based on the usual ComPaRE and BoAW features, the auDeep toolkit, and deep feature extraction from pre-trained CNNs using the DeepSpectRum toolkit; in addition, we add end-to-end sequential modelling, and a log-mel-128-BNN., Comment: 5 pages, part of the ACM Multimedia 2022 Grand Challenge "The ACM Multimedia 2022 Computational Paralinguistics Challenge (ComParE 2022)"
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- 2022
5. A novel statistical framework for exploring the population dynamics and seasonality of mosquito populations
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Whittaker, Charles, Winskill, Peter, Sinka, Marianne, Pironon, Samuel, Massey, Claire, Weiss, Daniel J, Nguyen, Michele, Gething, Peter W, Kumar, Ashwani, Ghani, Azra, Bhatt, Samir, Whittaker, Charles, Winskill, Peter, Sinka, Marianne, Pironon, Samuel, Massey, Claire, Weiss, Daniel J, Nguyen, Michele, Gething, Peter W, Kumar, Ashwani, Ghani, Azra, and Bhatt, Samir
- Abstract
Understanding the temporal dynamics of mosquito populations underlying vector-borne disease transmission is key to optimizing control strategies. Many questions remain surrounding the drivers of these dynamics and how they vary between species-questions rarely answerable from individual entomological studies (that typically focus on a single location or species). We develop a novel statistical framework enabling identification and classification of time series with similar temporal properties, and use this framework to systematically explore variation in population dynamics and seasonality in anopheline mosquito time series catch data spanning seven species, 40 years and 117 locations across mainland India. Our analyses reveal pronounced variation in dynamics across locations and between species in the extent of seasonality and timing of seasonal peaks. However, we show that these diverse dynamics can be clustered into four 'dynamical archetypes', each characterized by distinct temporal properties and associated with a largely unique set of environmental factors. Our results highlight that a range of environmental factors including rainfall, temperature, proximity to static water bodies and patterns of land use (particularly urbanicity) shape the dynamics and seasonality of mosquito populations, and provide a generically applicable framework to better identify and understand patterns of seasonal variation in vectors relevant to public health.
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- 2022
6. HumBugDB: A Large-scale Acoustic Mosquito Dataset
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Kiskin, Ivan, Sinka, Marianne, Cobb, Adam D., Rafique, Waqas, Wang, Lawrence, Zilli, Davide, Gutteridge, Benjamin, Dam, Rinita, Marinos, Theodoros, Li, Yunpeng, Msaky, Dickson, Kaindoa, Emmanuel, Killeen, Gerard, Herreros-Moya, Eva, Willis, Kathy J., Roberts, Stephen J., Kiskin, Ivan, Sinka, Marianne, Cobb, Adam D., Rafique, Waqas, Wang, Lawrence, Zilli, Davide, Gutteridge, Benjamin, Dam, Rinita, Marinos, Theodoros, Li, Yunpeng, Msaky, Dickson, Kaindoa, Emmanuel, Killeen, Gerard, Herreros-Moya, Eva, Willis, Kathy J., and Roberts, Stephen J.
- Abstract
This paper presents the first large-scale multi-species dataset of acoustic recordings of mosquitoes tracked continuously in free flight. We present 20 hours of audio recordings that we have expertly labelled and tagged precisely in time. Significantly, 18 hours of recordings contain annotations from 36 different species. Mosquitoes are well-known carriers of diseases such as malaria, dengue and yellow fever. Collecting this dataset is motivated by the need to assist applications which utilise mosquito acoustics to conduct surveys to help predict outbreaks and inform intervention policy. The task of detecting mosquitoes from the sound of their wingbeats is challenging due to the difficulty in collecting recordings from realistic scenarios. To address this, as part of the HumBug project, we conducted global experiments to record mosquitoes ranging from those bred in culture cages to mosquitoes captured in the wild. Consequently, the audio recordings vary in signal-to-noise ratio and contain a broad range of indoor and outdoor background environments from Tanzania, Thailand, Kenya, the USA and the UK. In this paper we describe in detail how we collected, labelled and curated the data. The data is provided from a PostgreSQL database, which contains important metadata such as the capture method, age, feeding status and gender of the mosquitoes. Additionally, we provide code to extract features and train Bayesian convolutional neural networks for two key tasks: the identification of mosquitoes from their corresponding background environments, and the classification of detected mosquitoes into species. Our extensive dataset is both challenging to machine learning researchers focusing on acoustic identification, and critical to entomologists, geo-spatial modellers and other domain experts to understand mosquito behaviour, model their distribution, and manage the threat they pose to humans., Comment: Accepted at the 35th Conference on Neural Information Processing Systems (NeurIPS 2021) Track on Datasets and Benchmarks. 10 pages main, 39 pages including appendix. This paper accompanies the dataset found at https://zenodo.org/record/4904800 with corresponding code at https://github.com/HumBug-Mosquito/HumBugDB
- Published
- 2021
7. Going beyond personal protection against mosquito bites to eliminate malaria transmission: population suppression of malaria vectors that exploit both human and animal blood.
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Killeen, Gerry F, Killeen, Gerry F, Kiware, Samson S, Okumu, Fredros O, Sinka, Marianne E, Moyes, Catherine L, Massey, N Claire, Gething, Peter W, Marshall, John M, Chaccour, Carlos J, Tusting, Lucy S, Killeen, Gerry F, Killeen, Gerry F, Kiware, Samson S, Okumu, Fredros O, Sinka, Marianne E, Moyes, Catherine L, Massey, N Claire, Gething, Peter W, Marshall, John M, Chaccour, Carlos J, and Tusting, Lucy S
- Abstract
Protecting individuals and households against mosquito bites with long-lasting insecticidal nets (LLINs) or indoor residual spraying (IRS) can suppress entire populations of unusually efficient malaria vector species that predominantly feed indoors on humans. Mosquitoes which usually feed on animals are less reliant on human blood, so they are far less vulnerable to population suppression effects of such human-targeted insecticidal measures. Fortunately, the dozens of mosquito species which primarily feed on animals are also relatively inefficient vectors of malaria, so personal protection against mosquito bites may be sufficient to eliminate transmission. However, a handful of mosquito species are particularly problematic vectors of residual malaria transmission, because they feed readily on both humans and animals. These unusual vectors feed often enough on humans to be potent malaria vectors, but also often enough on animals to evade population control with LLINs, IRS or any other insecticidal personal protection measure targeted only to humans. Anopheles arabiensis and A. coluzzii in Africa, A. darlingi in South America and A. farauti in Oceania, as well as A. culicifacies species E, A. fluviatilis species S, A. lesteri and A. minimus in Asia, all feed readily on either humans or animals and collectively mediate residual malaria transmission across most of the tropics. Eliminating malaria transmission by vectors exhibiting such dual host preferences will require aggressive mosquito population abatement, rather than just personal protection of humans. Population suppression of even these particularly troublesome vectors is achievable with a variety of existing vector control technologies that remain underdeveloped or underexploited.
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- 2017
8. Mosquito Detection with Neural Networks: The Buzz of Deep Learning
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Kiskin, Ivan, Orozco, Bernardo Pérez, Windebank, Theo, Zilli, Davide, Sinka, Marianne, Willis, Kathy, Roberts, Stephen, Kiskin, Ivan, Orozco, Bernardo Pérez, Windebank, Theo, Zilli, Davide, Sinka, Marianne, Willis, Kathy, and Roberts, Stephen
- Abstract
Many real-world time-series analysis problems are characterised by scarce data. Solutions typically rely on hand-crafted features extracted from the time or frequency domain allied with classification or regression engines which condition on this (often low-dimensional) feature vector. The huge advances enjoyed by many application domains in recent years have been fuelled by the use of deep learning architectures trained on large data sets. This paper presents an application of deep learning for acoustic event detection in a challenging, data-scarce, real-world problem. Our candidate challenge is to accurately detect the presence of a mosquito from its acoustic signature. We develop convolutional neural networks (CNNs) operating on wavelet transformations of audio recordings. Furthermore, we interrogate the network's predictive power by visualising statistics of network-excitatory samples. These visualisations offer a deep insight into the relative informativeness of components in the detection problem. We include comparisons with conventional classifiers, conditioned on both hand-tuned and generic features, to stress the strength of automatic deep feature learning. Detection is achieved with performance metrics significantly surpassing those of existing algorithmic methods, as well as marginally exceeding those attained by individual human experts., Comment: For data and software related to this paper, see http://humbug.ac.uk/kiskin2017/. Submitted as a conference paper to ECML 2017
- Published
- 2017
9. Mosquito detection with low-cost smartphones: data acquisition for malaria research
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Li, Yunpeng, Zilli, Davide, Chan, Henry, Kiskin, Ivan, Sinka, Marianne, Roberts, Stephen, Willis, Kathy, Li, Yunpeng, Zilli, Davide, Chan, Henry, Kiskin, Ivan, Sinka, Marianne, Roberts, Stephen, and Willis, Kathy
- Abstract
Mosquitoes are a major vector for malaria, causing hundreds of thousands of deaths in the developing world each year. Not only is the prevention of mosquito bites of paramount importance to the reduction of malaria transmission cases, but understanding in more forensic detail the interplay between malaria, mosquito vectors, vegetation, standing water and human populations is crucial to the deployment of more effective interventions. Typically the presence and detection of malaria-vectoring mosquitoes is only quantified by hand-operated insect traps or signified by the diagnosis of malaria. If we are to gather timely, large-scale data to improve this situation, we need to automate the process of mosquito detection and classification as much as possible. In this paper, we present a candidate mobile sensing system that acts as both a portable early warning device and an automatic acoustic data acquisition pipeline to help fuel scientific inquiry and policy. The machine learning algorithm that powers the mobile system achieves excellent off-line multi-species detection performance while remaining computationally efficient. Further, we have conducted preliminary live mosquito detection tests using low-cost mobile phones and achieved promising results. The deployment of this system for field usage in Southeast Asia and Africa is planned in the near future. In order to accelerate processing of field recordings and labelling of collected data, we employ a citizen science platform in conjunction with automated methods, the former implemented using the Zooniverse platform, allowing crowdsourcing on a grand scale., Comment: Presented at NIPS 2017 Workshop on Machine Learning for the Developing World
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- 2017
10. Cost-sensitive detection with variational autoencoders for environmental acoustic sensing
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Li, Yunpeng, Kiskin, Ivan, Zilli, Davide, Sinka, Marianne, Chan, Henry, Willis, Kathy, Roberts, Stephen, Li, Yunpeng, Kiskin, Ivan, Zilli, Davide, Sinka, Marianne, Chan, Henry, Willis, Kathy, and Roberts, Stephen
- Abstract
Environmental acoustic sensing involves the retrieval and processing of audio signals to better understand our surroundings. While large-scale acoustic data make manual analysis infeasible, they provide a suitable playground for machine learning approaches. Most existing machine learning techniques developed for environmental acoustic sensing do not provide flexible control of the trade-off between the false positive rate and the false negative rate. This paper presents a cost-sensitive classification paradigm, in which the hyper-parameters of classifiers and the structure of variational autoencoders are selected in a principled Neyman-Pearson framework. We examine the performance of the proposed approach using a dataset from the HumBug project which aims to detect the presence of mosquitoes using sound collected by simple embedded devices., Comment: Presented at the NIPS 2017 Workshop on Machine Learning for Audio Signal Processing
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- 2017
11. Vectorial capacity and vector control: reconsidering sensitivity to parameters for malaria elimination.
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Brady, Oliver J, Brady, Oliver J, Godfray, H Charles J, Tatem, Andrew J, Gething, Peter W, Cohen, Justin M, McKenzie, F Ellis, Perkins, T Alex, Reiner, Robert C, Tusting, Lucy S, Sinka, Marianne E, Moyes, Catherine L, Eckhoff, Philip A, Scott, Thomas W, Lindsay, Steven W, Hay, Simon I, Smith, David L, Brady, Oliver J, Brady, Oliver J, Godfray, H Charles J, Tatem, Andrew J, Gething, Peter W, Cohen, Justin M, McKenzie, F Ellis, Perkins, T Alex, Reiner, Robert C, Tusting, Lucy S, Sinka, Marianne E, Moyes, Catherine L, Eckhoff, Philip A, Scott, Thomas W, Lindsay, Steven W, Hay, Simon I, and Smith, David L
- Abstract
BackgroundMajor gains have been made in reducing malaria transmission in many parts of the world, principally by scaling-up coverage with long-lasting insecticidal nets and indoor residual spraying. Historically, choice of vector control intervention has been largely guided by a parameter sensitivity analysis of George Macdonald's theory of vectorial capacity that suggested prioritizing methods that kill adult mosquitoes. While this advice has been highly successful for transmission suppression, there is a need to revisit these arguments as policymakers in certain areas consider which combinations of interventions are required to eliminate malaria.Methods and resultsUsing analytical solutions to updated equations for vectorial capacity we build on previous work to show that, while adult killing methods can be highly effective under many circumstances, other vector control methods are frequently required to fill effective coverage gaps. These can arise due to pre-existing or developing mosquito physiological and behavioral refractoriness but also due to additive changes in the relative importance of different vector species for transmission. Furthermore, the optimal combination of interventions will depend on the operational constraints and costs associated with reaching high coverage levels with each intervention.ConclusionsReaching specific policy goals, such as elimination, in defined contexts requires increasingly non-generic advice from modelling. Our results emphasize the importance of measuring baseline epidemiology, intervention coverage, vector ecology and program operational constraints in predicting expected outcomes with different combinations of interventions.
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- 2016
12. The global distribution of the arbovirus vectors Aedes aegypti and Ae. albopictus.
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Kraemer, Moritz UG, Kraemer, Moritz UG, Sinka, Marianne E, Duda, Kirsten A, Mylne, Adrian QN, Shearer, Freya M, Barker, Christopher M, Moore, Chester G, Carvalho, Roberta G, Coelho, Giovanini E, Van Bortel, Wim, Hendrickx, Guy, Schaffner, Francis, Elyazar, Iqbal RF, Teng, Hwa-Jen, Brady, Oliver J, Messina, Jane P, Pigott, David M, Scott, Thomas W, Smith, David L, Wint, GR William, Golding, Nick, Hay, Simon I, Kraemer, Moritz UG, Kraemer, Moritz UG, Sinka, Marianne E, Duda, Kirsten A, Mylne, Adrian QN, Shearer, Freya M, Barker, Christopher M, Moore, Chester G, Carvalho, Roberta G, Coelho, Giovanini E, Van Bortel, Wim, Hendrickx, Guy, Schaffner, Francis, Elyazar, Iqbal RF, Teng, Hwa-Jen, Brady, Oliver J, Messina, Jane P, Pigott, David M, Scott, Thomas W, Smith, David L, Wint, GR William, Golding, Nick, and Hay, Simon I
- Abstract
Dengue and chikungunya are increasing global public health concerns due to their rapid geographical spread and increasing disease burden. Knowledge of the contemporary distribution of their shared vectors, Aedes aegypti and Aedes albopictus remains incomplete and is complicated by an ongoing range expansion fuelled by increased global trade and travel. Mapping the global distribution of these vectors and the geographical determinants of their ranges is essential for public health planning. Here we compile the largest contemporary database for both species and pair it with relevant environmental variables predicting their global distribution. We show Aedes distributions to be the widest ever recorded; now extensive in all continents, including North America and Europe. These maps will help define the spatial limits of current autochthonous transmission of dengue and chikungunya viruses. It is only with this kind of rigorous entomological baseline that we can hope to project future health impacts of these viruses.
- Published
- 2015
13. The global compendium of Aedes aegypti and Ae. albopictus occurrence.
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Kraemer, Moritz UG, Kraemer, Moritz UG, Sinka, Marianne E, Duda, Kirsten A, Mylne, Adrian, Shearer, Freya M, Brady, Oliver J, Messina, Jane P, Barker, Christopher M, Moore, Chester G, Carvalho, Roberta G, Coelho, Giovanini E, Van Bortel, Wim, Hendrickx, Guy, Schaffner, Francis, Wint, GR William, Elyazar, Iqbal RF, Teng, Hwa-Jen, Hay, Simon I, Kraemer, Moritz UG, Kraemer, Moritz UG, Sinka, Marianne E, Duda, Kirsten A, Mylne, Adrian, Shearer, Freya M, Brady, Oliver J, Messina, Jane P, Barker, Christopher M, Moore, Chester G, Carvalho, Roberta G, Coelho, Giovanini E, Van Bortel, Wim, Hendrickx, Guy, Schaffner, Francis, Wint, GR William, Elyazar, Iqbal RF, Teng, Hwa-Jen, and Hay, Simon I
- Abstract
Aedes aegypti and Ae. albopictus are the main vectors transmitting dengue and chikungunya viruses. Despite being pathogens of global public health importance, knowledge of their vectors' global distribution remains patchy and sparse. A global geographic database of known occurrences of Ae. aegypti and Ae. albopictus between 1960 and 2014 was compiled. Herein we present the database, which comprises occurrence data linked to point or polygon locations, derived from peer-reviewed literature and unpublished studies including national entomological surveys and expert networks. We describe all data collection processes, as well as geo-positioning methods, database management and quality-control procedures. This is the first comprehensive global database of Ae. aegypti and Ae. albopictus occurrence, consisting of 19,930 and 22,137 geo-positioned occurrence records respectively. Both datasets can be used for a variety of mapping and spatial analyses of the vectors and, by inference, the diseases they transmit.
- Published
- 2015
14. Global Distribution of the Dominant Vector Species of Malaria
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Sinka, Marianne E. and Sinka, Marianne E.
- Published
- 2013
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15. Erratum: The dominant Anopheles vectors of human malaria in the Americas: Occurrence data, distribution maps and bionomic précis (Parasit Vectors (2010) 3 (72))
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Sinka, Marianne M.E., Patil, Anand Prabhakar, Temperley, William W.H., Gething, P.W., Van Boeckel, Thomas, Hay, Simon I., Rubio-Palis, Yasmin, Manguin, Sylvie, Kabaria, Caroline C.W., Harbach, Ralph R.E., Sinka, Marianne M.E., Patil, Anand Prabhakar, Temperley, William W.H., Gething, P.W., Van Boeckel, Thomas, Hay, Simon I., Rubio-Palis, Yasmin, Manguin, Sylvie, Kabaria, Caroline C.W., and Harbach, Ralph R.E.
- Abstract
SCOPUS: er.j, info:eu-repo/semantics/published
- Published
- 2011
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