Potential occurrence of Zika from subtropical to temperate Argentina considering the basic reproduction number (R0)

Posible ocurrencia de zika en las zonas subtropical a templada de Argentina considerando el número de reproducción básico (R0)

Potencial de ocorrência de zika em Argentina subtropical e temperada considerando o número de reprodução básico (R0 )

Pablo Orellano Darío Vezzani Nancy Quaranta Rodolfo Cionco Julieta Reynoso Oscar Salomon About the authors

ABSTRACT

Objective

To assess the potential occurrence of Zika transmission throughout Argentina by the mosquito Aedes aegypti considering the basic reproduction number (R0).

Methods

A model originally developed for dengue was adapted for Zika. R0 was estimated as a function of seven parameters, three of them were considered temperature-dependent. Seasonal Zika occurrence was evaluated in 9 locations representing different climatic suitability for the vector. Data of diary temperatures were extracted and included in the model. A threshold of R0 = 1 was fixed for Zika occurrence. Sensitivity analyses were performed to evaluate the uncertainty around the results.

Results

Zika transmission has the potential to occur in all studied locations at least in some moment of the year. In the northern region, transmission might be possible throughout the whole year or with an interruption in winter. The maximum R0 was estimated in 6.9, which means an average of 7 secondary cases from a primary case. The probabilistic sensitivity analysis showed that during winter the transmission can only be excluded in the southern fringe of geographic distribution of the vector and in part of central Argentina.

Conclusion

Zika virus has the potential to be transmitted in Argentina throughout the current geographic range of the mosquito vector. Although the transmission would be mainly seasonal, the possibility of winter transmission cannot be excluded in northern and central Argentina, meaning that there is a potential endemic maintenance of the disease.

Keywords
Zika virus infection; Aedes; disease vectors; epidemiologic models; Argentina

RESUMEN

Objetivo

Evaluar la posibilidad de transmisión de zika en la Argentina por el mosquito Aedes aegypti considerando el número de reproducción básica (R0).

Métodos

Se adaptó para el zika un modelo desarrollado originalmente para el dengue. Se estimó R0 en función de siete parámetros, tres de los cuales se consideraron dependientes de la temperatura. Se evaluó la ocurrencia estacional de zika en nueve localidades que representan diferente aptitud climática para el vector. Se obtuvieron los datos de las temperaturas diarias y se incluyeron en el modelo. Se fijó un umbral de R0 = 1 para la ocurrencia de zika. Se realizaron análisis de sensibilidad para evaluar la incertidumbre de los resultados.

Resultados

En todos los lugares estudiados es posible la transmisión de zika al menos en algún momento del año. En la región norte, la transmisión podría ser posible durante todo el año o con una interrupción en invierno. Se estimó el R0 máximo en 6,9, lo que significa un promedio de siete casos secundarios a partir de un caso primario. El análisis de sensibilidad probabilística demostró que durante el invierno la transmisión sólo puede ser excluida en la franja sur de distribución geográfica del vector y en parte de la región central de Argentina.

Conclusión

El virus del Zika puede ser transmitido en Argentina en todo el rango geográfico actual del mosquito vector. Aunque la transmisión sería principalmente estacional, no es posible descartar la posibilidad de transmisión invernal en el norte y centro de la Argentina, lo que significa que la enfermedad puede mantenerse de manera endémica.

Palabras clave
Infección por el virus Zika; Aedes; vectores de enfermedades; modelos epidemiológicos; Argentina

RESUMO

Objetivo

Avaliar a ocorrência potencial de transmissão de zika em Argentina pelo mosquito Aedes aegypti considerando o número de reprodução básico (R0).

Métodos

Foi adaptado para zika um modelo originalmente desenvolvido para dengue. R0 foi estimado como uma função de sete parâmetros, três deles considerados dependentes da temperatura. A ocorrência de zika sazonal foi avaliada em nove locais que representam diferentes adequações climáticas para o vetor. Os dados das temperaturas diárias foram extraídos e incluídos no modelo. Um limite de R0 = 1 foi fixado para a ocorrência de zika, e foram realizadas análises de sensibilidade para avaliar a incerteza em torno dos resultados.

Resultados

A transmissão de zika pode ocorrer em todos os locais estudados pelo menos em algum momento do ano. Na região norte, a transmissão pode ser possível durante todo o ano ou com uma interrupção no inverno. O R0 máximo foi estimado em 6.9, o que significa uma média de 7 casos secundários a partir de um caso primário. A análise de sensibilidade probabilística mostrou que durante o inverno a transmissão só pode ser excluída na franja sul da distribuição geográfica do vetor e em parte da Argentina central.

Conclusão

O vírus Zika tem o potencial de ser transmitido na Argentina ao longo da atual faixa geográfica do vetor. Embora a transmissão seja principalmente sazonal, a possibilidade de transmissão no inverno não pode ser excluída no norte e centro da Argentina, o que significa que existe uma potencial manutenção endêmica da doença.

Palavras-chave
Infecção pelo Zika virus; Aedes; vetores de doenças; modelos epidemiológicos; Argentina

A bulk of viruses transmitted by mosquitoes are emerging or reemerging globally as consequence of global warming, urbanization and modern transport networks. Among these viruses, Zika was first isolated in a forest area in Uganda, Africa (11 Dick GW. Zika virus. II. Pathogenicity and physical properties. Trans R Soc Trop Med Hyg. 1952; 46(5):521–34.), and was historically restricted to Asia and Africa for more than 50 years (22 Torres JR, Murillo J, Bofill L. The ever changing landscape of Zika virus infection. Learning on the fly. Int J Infect Dis. 2016; pii: S1201-9712(16)31156-0. doi: 10.1016/j.ijid.2016.09.001.
https://doi.org/10.1016/j.ijid.2016.09.0...
), but recently spread to Micronesia in 2007and Brazil in 2014–2015 (33 Pierson TC, Graham BS. Zika Virus: Immunity and Vaccine Development. Cell. 2016; pii: S0092-8674(16)31253-3. doi: 10.1016/j.cell.2016.09.020.
https://doi.org/10.1016/j.cell.2016.09.0...
,44 Zanluca C, Melo VC, Mosimann AL, Santos GI, Santos CN, Luz K. First report of autochthonous transmission of Zika virus in Brazil. Mem Inst Oswaldo Cruz. 2015; 110(4):569–72. doi: 10.1590/0074-02760150192.
https://doi.org/10.1590/0074-02760150192...
), continuing its expansion through South, Central and North America (22 Torres JR, Murillo J, Bofill L. The ever changing landscape of Zika virus infection. Learning on the fly. Int J Infect Dis. 2016; pii: S1201-9712(16)31156-0. doi: 10.1016/j.ijid.2016.09.001.
https://doi.org/10.1016/j.ijid.2016.09.0...
). By 2016, more than 45 countries and territories throughout the Americas have reported more than 577 000 locally-acquired cases, with estimates of several million real cases (22 Torres JR, Murillo J, Bofill L. The ever changing landscape of Zika virus infection. Learning on the fly. Int J Infect Dis. 2016; pii: S1201-9712(16)31156-0. doi: 10.1016/j.ijid.2016.09.001.
https://doi.org/10.1016/j.ijid.2016.09.0...
), and 165 932 cases reported only in Brazil (55 de Magalhães-Barbosa MC, Prata-Barbosa A, Robaina JR, Raymundo CE, Lima-Setta F, da Cunha AJ. Trends of the microcephaly and Zika virus outbreak in Brazil, January-July 2016. Travel Med Infect Dis. 2016; pii: S1477-8939(16)30124-7. doi: 10.1016/j.tmaid.2016.09.006.
https://doi.org/10.1016/j.tmaid.2016.09....
). The potential burden associated with this disease is still to be determined, but reports of Guillain-Barre syndrome and other neurologic complications in adults (66 Goodman AB, Dziuban EJ, Powell K, Bitsko RH, Langley G, Lindsey N, et al. Characteristics of Children Aged <18 Years with Zika Virus Disease Acquired Postnatally - U.S. States, January 2015-July 2016. MMWR Morb Mortal Wkly Rep. 2016; 65(39):1082–1085. doi: 10.15585/mmwr.mm6539e2.
https://doi.org/10.15585/mmwr.mm6539e2...
), in addition to microcephaly and other serious brain abnormalities in newborns (55 de Magalhães-Barbosa MC, Prata-Barbosa A, Robaina JR, Raymundo CE, Lima-Setta F, da Cunha AJ. Trends of the microcephaly and Zika virus outbreak in Brazil, January-July 2016. Travel Med Infect Dis. 2016; pii: S1477-8939(16)30124-7. doi: 10.1016/j.tmaid.2016.09.006.
https://doi.org/10.1016/j.tmaid.2016.09....
), have positioned the Zika infections as a severe threat to public health. The high proportion of asymptomatic patients (77 Carlson CJ, Dougherty ER, Getz W. An Ecological Assessment of the Pandemic Threat of Zika Virus. PLoS Negl Trop Dis. 2016;10(8):e0004968. doi: 10.1371/journal.pntd.0004968.
https://doi.org/10.1371/journal.pntd.000...
) makes difficult the rapid detection of the autochthonous transmission, facilitating the spread of this disease. In addition, the main vectors of Zika have currently a broad range of global distribution, meaning that a large portion of the world population is at risk of this arbovirus infection.

Although Zika virus was detected in semen with high viral load (88 Mansuy JM, Dutertre M, Mengelle C, Fourcade C, Marchou B, Delobel P, et al. Zika virus: high infectious viral load in semen, a new sexually transmitted pathogen? Lancet Infect Dis. 2016;16(4):405. doi: 10.1016/S1473-3099(16)00138-9.
https://doi.org/10.1016/S1473-3099(16)00...
), and sexual and donor transmission has been documented (99 D’Ortenzio E, Matheron S, Yazdanpanah Y, de Lamballerie X, Hubert B, Piorkowski G, et al. Evidence of Sexual Transmission of Zika Virus. N Engl J Med. 2016; 374(22): 2195–8. doi: 10.1056/NEJMc1604449.
https://doi.org/10.1056/NEJMc1604449...
), the main transmission route is through vector bite (1010 Yakob L, Kucharski A, Hue S, Edmunds WJ. Low risk of a sexually-transmitted Zika virus outbreak. Lancet Infect Dis. 2016;16(10):1100–2. doi: 10.1016/S1473-3099(16)30324-3.
https://doi.org/10.1016/S1473-3099(16)30...
). The primary vector is Aedes aegypti, while Ae. albopictus has proved to be less competent (1111 Di Luca M, Severini F, Toma L, Boccolini D, Romi R, Remoli ME, et al. Experimental studies of susceptibility of Italian Aedes albopictus to Zika virus. Euro Surveill. 2016; 21(18). doi: 10.2807/1560-7917.ES.2016.21.18.30223.
https://doi.org/10.2807/1560-7917.ES.201...
,1212 Chouin-Carneiro T, Vega-Rua A, Vazeille M, Yebakima A, Girod R, Goindin D, et al. Differential Susceptibilities of Aedes aegypti and Aedes albopictus from the Americas to Zika Virus. PLoS Negl Trop Dis. 2016; 10(3):e0004543. doi: 10.1371/journal.pntd.0004543.
https://doi.org/10.1371/journal.pntd.000...
) and the common mosquitoes Culex pipiens and Cx. quinquefasciatus were discarded as Zika vector (1313 Fernandes RS, Campos SS, Ferreira-de-Brito A, Miranda RM, Barbosa da Silva KA, Castro MG, et al. Culex quinquefasciatus from Rio de Janeiro Is Not Competent to Transmit the Local Zika Virus. PLoS Negl Trop Dis. 2016; 10(9):e0004993. doi: 10.1371/journal.pntd.0004993.
https://doi.org/10.1371/journal.pntd.000...
,1414 Amraoui F, Atyame-Nten C, Vega-Rúa A, Lourenço-de-Oliveira R, Vazeille M, Failloux AB. Culex mosquitoes are experimentally unable to transmit Zika virus. Euro Surveill. 2016; 21(35). doi: 10.2807/1560-7917.ES.2016.21.35.30333.
https://doi.org/10.2807/1560-7917.ES.201...
). Therefore, the geographic distribution of Ae. aegypti determines a priori the risk of epidemics. Under the current disease expansion, epidemiologic models could be useful tools to assess the potential boundaries of different risk areas, the environmental suitability for seasonal and endemic transmission cycles, and the potential future burden of the Zika infections. In addition, simple models that can be applied using spreadsheets and available meteorological data may help national and local epidemiologists to evaluate the transmission risks and the course of future interventions.

Argentina exhibits the boundary of vector’s southern distribution in the Americas. Considering the current vector distribution, the epidemiologic Zika situation in South America, and the recent first outbreak in the country (1515 Ministerio de Salud de la Nación, Argentina. Boletín integrado de vigilancia. 329 – SE 39 – 2016 [Internet site]. Available from: http://www.msal.gob.ar/images/stories/boletines/Boletin-Integrado-De-Vigilancia-N329-SE39.pdf. Accessed 21 October 2016.
http://www.msal.gob.ar/images/stories/bo...
), it is imperative to assess the potential occurrence of Zika transmission throughout Argentina by the mosquito Ae. aegypti. With this aim, a simple model considering the basic reproduction number based on daily ambient temperatures was used to evaluate the potential transmission in different regions representing a wide range of temperatures.

MATERIALS AND METHODS

Settings

The study area comprised the current known distribution of Ae. aegypti in Argentina. Three sub-areas were defined according to autochthonous dengue records as a proxy for the risk of virus transmission by Ae. aegypti: 1) a high risk area in the northeast and northwest of the country (latitude above -28.00°), where outbreaks occurs almost annually; 2) a medium risk area in central Argentina (between -28.00° and -35.00°), where large and small outbreaks occur sporadically; and 3) a low risk area in the southern distribution limit of the vector (latitude below -35.00°), where autochthonous dengue transmission was never recorded or only a few isolated cases were notified. Within each area, three meteorological stations were selected (Table 1). The station from Tucumán province (S3) was specifically included because its proximity to San Miguel de Tucumán, where the first outbreak of Zika in the country was recently confirmed with 25 autochthonous cases (1515 Ministerio de Salud de la Nación, Argentina. Boletín integrado de vigilancia. 329 – SE 39 – 2016 [Internet site]. Available from: http://www.msal.gob.ar/images/stories/boletines/Boletin-Integrado-De-Vigilancia-N329-SE39.pdf. Accessed 21 October 2016.
http://www.msal.gob.ar/images/stories/bo...
).

TABLE 1
Geographic location and potential risk of virus transmission of the selected meteorological stations

Daily temperatures were obtained from the automatic meteorological stations net of the Instituto Nacional de Tecnología Agraria (INTA) (1616 Instituto Nacional de Tecnología Agopecuaria, Argentina. Sistema de información y gestión agrometeorológico. http://siga2.inta.gov.ar/. Accessed 4 October 2016.
http://siga2.inta.gov.ar/...
). Records from years 2012 to 2016 were used, and daily means were calculated to obtain a representative dynamic of mean ambient temperatures throughout a typical recent year.

Model Overview

The basic reproduction number (R0) was used to estimate the potential of Ae. aegypti to transmit Zika virus through a wide range of temperatures in Argentina. For a vector-borne disease, R0 is defined as the number of persons who would be infected from a single person initially infected by a mosquito (1717 Massad E, Coutinho FA, Burattini MN, Amaku M. Estimation of R0 from the initial phase of an outbreak of a vector-borne infection. Trop Med Int Health. 2010; 15(1):120–6. doi: 10.1111/j.1365-3156.2009.02413.x.
https://doi.org/10.1111/j.1365-3156.2009...
). Following the model developed by Liu-Helmersson et al. for the potential transmission of dengue (1818 Liu-Helmersson J, Stenlund H, Wilder-Smith A, Rocklöv J. Vectorial capacity of Aedes aegypti: effects of temperature and implications for global dengue epidemic potential. PLoS One. 2014; 9(3):e89783. doi: 10.1371/journal.pone.0089783.
https://doi.org/10.1371/journal.pone.008...
,1919 Liu-Helmersson J, Quam M, Wilder-Smith A, Stenlund H, Ebi K, Massad E, Rocklöv J. Climate Change and Aedes Vectors: 21st Century Projections for Dengue Transmission in Europe. EBioMedicine. 2016; 7:267–77. doi: 10.1016/j.ebiom.2016.03.046.
https://doi.org/10.1016/j.ebiom.2016.03....
), the R0 was calculated using the vectorial capacity (Vc) and the duration of the infected period (Th) [equation 1].

R0=ThVc [1]

Similar to the R0, the Vc is defined as the number of secondary cases of the disease generated by a primary case, but on a daily basis. As in the previously mentioned model, the Vc was estimated using an equation of six parameters. These parameters represent the vector biting rate, the human-to-vector infection, the vector mortality rate, vector-to-human population ratio, the probability of vector-to-human transmission, and the duration of the extrinsic incubation period. Only the first 3 parameters were considered temperature dependent. The outcome variable (R0) was calculated on a daily basis for each locality. A selection criterion was assumed to estimate the daily potential occurrence of Zika transmission, allowing the assessment of seasonal patterns.

Outcome variable, input parameters and criteria

Vc was estimated through the following equation [2]:

Vc=ma2bhbmexp(-μmn)/μm [2]

where m represents the vector-to-human population ratio, a is the average daily vector biting rate, bh is the probability of vector-to-human transmission per bite, bm is the probability of human-to-vector infection per bite, µm is the vector mortality rate, and n is the duration of the extrinsic incubation period. Equations [1] and [2] can be combined to obtain a single equation for the R0 [Equation 3], including the duration of the infectious period (Th):

R0=Thma2bhbmexp(-μmn)/μm [3]

Parameters a and µm were not modified from the original model because they are specific for Ae. aegypti, the vector for both dengue and Zika viruses in America. The value of bh was previously estimated for different flavivirus, including West Nile virus, Murray Valley encephalitis virus, and St. Louis encephalitis virus (2020 Lambrechts L, Paaijmans KP, Fansiri T, Carrington LB, Kramer LD, Thomas MB, Scott TW. Impact of daily temperature fluctuations on dengue virus transmission by Aedes aegypti. Proc Natl Acad Sci U S A. 2011; 108(18):7460–5. doi: 10.1073/pnas.1101377108.
https://doi.org/10.1073/pnas.1101377108...
). Accordingly, we have used the same unmodified equations. The vector-to-human population ratio (m) was assumed to be 1.5, as in the referenced paper (1919 Liu-Helmersson J, Quam M, Wilder-Smith A, Stenlund H, Ebi K, Massad E, Rocklöv J. Climate Change and Aedes Vectors: 21st Century Projections for Dengue Transmission in Europe. EBioMedicine. 2016; 7:267–77. doi: 10.1016/j.ebiom.2016.03.046.
https://doi.org/10.1016/j.ebiom.2016.03....
), because in this model we are searching for a threshold value for Zika transmission, and accordingly the maximum potential transmission was assumed independent from other variables. More detailed models allow reduction of this parameter, i.e. by reducing the vector density through larval control measures. The extrinsic incubation period (n) and the probability of human to vector infection per bite (bm) were estimated according to data from laboratory experiments with Ae. aegypti and Zika virus (2121 Boorman JP, Porterfield JS. A simple technique for infection of mosquitoes with viruses; transmission of Zika virus. Trans R Soc Trop Med Hyg. 1956; 50(3):238–42.,2222 Li MI, Wong PS, Ng LC, Tan CH. Oral susceptibility of Singapore Aedes (Stegomyia) aegypti (Linnaeus) to Zika virus. PLoS Negl Trop Dis. 2012; 6(8):e1792. doi: 10.1371/journal.pntd.0001792.
https://doi.org/10.1371/journal.pntd.000...
). The duration of the infectious period (Th) was assumed to be 5 days (2323 Plourde AR, Bloch EM. A Literature Review of Zika Virus. Emerg Infect Dis. 2016; 22(7):1185–92. doi: 10.3201/eid2207.151990.
https://doi.org/10.3201/eid2207.151990...
). These four parameters were considered independent from the temperature effect. All parameters and values can be seen in Table 2.

TABLE 2
Equations and references for model parameters

A threshold value of R0 = 1 was fixed for the occurrence of Zika transmission. If the value of the R0 was above this cut-off point, the transmission was assumed as possible in a certain day of the year (2424 Dietz K. The estimation of the basic reproduction number for infectious diseases. Stat Methods Med Res. 1993; 2(1):23–41.).

Sensitivity analysis

We performed deterministic and probabilistic sensitivity analyses based on five parameters that contributed with uncertainty to the model, i.e. temperature, m, bm, n and Th. Two-way deterministic sensitivity analyses was used to evaluate the variation of the R0 in a range of +/- 20% around central values of bm and n, in a range from 1 to 2 for m, in a range from 1 to 10 days for Th, and finally in a range of temperatures from 20°C to 30°C.

A probabilistic sensitivity analysis was also performed through the Monte Carlo method, that allowed the simultaneous variation of m, bm, n, Th and temperature within the previously considered ranges. The mean and standard deviation of the temperature were calculated for each meteorological station during January and June, the warmest and the coldest months, respectively. The m, bm, n, Th were assumed to follow a triangular distribution, because little is known about the real distribution and boundaries of these parameters. The temperature was assumed to follow a normal distribution. This variable also influenced to a, bh and µm, which means that all parameters within the model were subject to variations. However, the variation of parameters m, bm, n, Th accounted for the lack of knowledge around them (also called epistemic uncertainty), while the variation in the temperature accounted for the natural variability (also called aleatory uncertainty) in each station and month (2626 Mirams GR, Pathmanathan P, Gray RA, Challenor P, Clayton RH. White paper: Uncertainty and variability in computational and mathematical models of cardiac physiology. J Physiol. 2016. doi: 10.1113/JP271671. Ahead of print.
https://doi.org/10.1113/JP271671...
). Accordingly, this sensitivity analysis only took into account the lack of knowledge around the specific Zika transmission parameters, and not around the Ae. aegypti and general flavivirus parameters. For each station, 10 000 simulations were run and the 95% CI of the R0 during the warmest and coldest months were calculated assuming a normal distribution of the outcome variable.

All calculations, sensitivity analyses and graphics were performed using the “lattice” package (2727 Sarkar D. Package ‘lattice’ [Internet site]. Available from: https://cran.r-project.org/web/packages/lattice/lattice.pdf. Accessed 4 October 2016.
https://cran.r-project.org/web/packages/...
,2828 Dalgaard P. Lattice - Multivariate Data Visualization with R. New York: Springer-Verlag; 2008.) and the “mc2d” package (2929 Pouillot R, Delignette-Muller ML, Denis JB. Package ‘mc2d’ [Internet site]. Available from: https://cran.r-project.org/web/packages/mc2d/mc2d.pdf. Accessed 17 October 2016.
https://cran.r-project.org/web/packages/...
) in the statistical software R, version 3.2.2 (https://www.r-project.org/).

RESULTS

R0 dynamics

According to the model, Zika transmission has the potential to occur throughout all climatic regions of the country where Ae. aegypti is present, at least in some moment of the year (Figure 1). The highest values of R0 were observed in high risk areas (bottom plots), whereas a shorter period could be identified in medium risk areas (middle plots), and finally, a more variable R0 dynamics was restricted to summer period in low risk areas (upper plots).

FIGURE 1
Potential transmission of Zika in 9 locations, Argentina

S = Station

In the northern region of the country, two different scenarios were identified. One with transmission throughout the whole year (Misiones province), and other with the interruption in winter during one or three months (Salta and Tucumán province, respectively). In these settings, the maximum R0 would be 6.9, which means an average of 7 secondary cases from a primary case. The maximum number of potential transmission days was estimated to be 316 for Misiones province. In central Argentina, the potential transmission was restricted to October-April (Córdoba and northern Buenos Aires), or July-April (Entre Ríos), but always with several interruptions, i.e. days with R0 < 1. The maximum number of potential transmission days was estimated in 173 for Entre Ríos province, meaning that Zika transmission may occur only during the half part of the year. However, the maximum R0 observed in the region (i.e. 6.7 in Entre Ríos) was next to those of the Northern provinces. Finally, in the Southern distribution limit of the vector, the maximum R0 was estimated to be 6.6 (southern Buenos Aires), but nevertheless Zika transmission can occur only during a maximum of 132 days (La Pampa), and restricted to spring and summer months.

Sensitivity analyses

According to the two-way deterministic sensitivity analysis, all parameters showed a value of R0 > 1 within the temperature range of 20–30°C, thereby allowing for Zika transmission (Figure 2). However, n, bm and m showed weak influence on the R0 below 28°C. By contrast, Th showed a strong influence on R0 within the whole range evaluated.

FIGURE 2
Two-way deterministic sensitivity analysis

The probabilistic sensitivity analysis (Table 3) showed that during the warmest month Misiones province can be considered of significant potential for Zika transmission, due to the exclusion of the 1 value from its confidence interval. In all other stations from northern, central and southern regions the 1 threshold is included within the confidence interval of the R0, and thus the Zika potential transmission cannot be either confirmed or ruled out. During the coldest month, the transmission of Zika cannot be excluded in Entre Ríos and in northern Argentina. On contrary, the transmission can be excluded in the three stations encompassing the southern fringe of geographic distribution of the vector and in two out of three stations from central Argentina (Córdoba and north Buenos Aires), given that the upper values of the R0 confidence interval are below 1.

TABLE 3
Temperatures registered during the warmest and coldest months (January and June, respectively), and results of the probabilistic sensitivity analysis for the basic reproduction number (R0); 95% confidence intervals were estimated through 10Ê000 Monte Carlo simulations

DISCUSSION

Our assessment suggests that the Zika virus has the potential to be transmitted in Argentina throughout the entire geographic range of the mosquito Ae. aegypti. Although the transmission would be mainly seasonal, the possibility of winter transmission cannot be excluded in northern and central Argentina, meaning that there is a potential endemic maintenance of the disease. In this sense, the first cases of dengue transmission during winter were recently reported in the Northeast of the country (1515 Ministerio de Salud de la Nación, Argentina. Boletín integrado de vigilancia. 329 – SE 39 – 2016 [Internet site]. Available from: http://www.msal.gob.ar/images/stories/boletines/Boletin-Integrado-De-Vigilancia-N329-SE39.pdf. Accessed 21 October 2016.
http://www.msal.gob.ar/images/stories/bo...
), since the first dengue outbreaks in 1998 (3030 Vezzani D, Carbajo AE. Aedes aegypti, Aedes albopictus, and dengue in Argentina: current knowledge and future directions. Mem Inst Oswaldo Cruz. 2008; 103(1):66–74.). Considering the similarities of both Aedes-borne diseases, it could be expected a similar spread pattern. On the other hand, the Zika virus has proved to be capable of being vertically transmitted in Ae. aegypti (3131 Thangamani S, Huang J, Hart CE, Guzman H, Tesh RB. Vertical Transmission of Zika Virus in Aedes aegypti Mosquitoes. Am J Trop Med Hyg. 2016; 29. pii: 16–0448.), allowing the survival of the virus in adverse conditions, and thus increasing the probability of an endemic cycle in these latitudes. Globally, an increasing number of data is showing that Zika virus transmission by Ae. aegypti mosquitoes would be endemic in tropical, subtropical and even temperate latitudes (3232 Gyawali N, Bradbury RS, Taylor-Robinson AW. The global spread of Zika virus: is public and media concern justified in regions currently unaffected? Infect Dis Poverty. 2016; 5:37. doi: 10.1186/s40249-016-0132-y.
https://doi.org/10.1186/s40249-016-0132-...
,3333 Attaway DF, Waters NM, Geraghty EM, Jacobsen KH. Zika virus: Endemic and epidemic ranges of Aedes mosquito transmission. J Infect Public Health. 2016; pii: S1876-0341(16)30147-2. doi: 10.1016/j.jiph.2016.09.008.
https://doi.org/10.1016/j.jiph.2016.09.0...
).

Our model, based on that of Liu-Helmersson et al. (1818 Liu-Helmersson J, Stenlund H, Wilder-Smith A, Rocklöv J. Vectorial capacity of Aedes aegypti: effects of temperature and implications for global dengue epidemic potential. PLoS One. 2014; 9(3):e89783. doi: 10.1371/journal.pone.0089783.
https://doi.org/10.1371/journal.pone.008...
,1919 Liu-Helmersson J, Quam M, Wilder-Smith A, Stenlund H, Ebi K, Massad E, Rocklöv J. Climate Change and Aedes Vectors: 21st Century Projections for Dengue Transmission in Europe. EBioMedicine. 2016; 7:267–77. doi: 10.1016/j.ebiom.2016.03.046.
https://doi.org/10.1016/j.ebiom.2016.03....
), suggests a Zika transmission boundary up to the latitude of 39° south. The same model adapted by Rocklov et al. for Zika in Europe and Asia (3434 Rocklöv J, Quam MB, Sudre B, German M, Kraemer MU, Brady O6, Bogoch II, et al. Assessing Seasonal Risks for the Introduction and Mosquito-borne Spread of Zika Virus in Europe. EBioMedicine. 2016; 9:250–6. doi: 10.1016/j.ebiom.2016.06.009.
https://doi.org/10.1016/j.ebiom.2016.06....
) identified the potential spread of the virus during summer up to the latitude of nearly 50° north. But it is worth noting that our estimations were restricted to the southern distribution limits of Ae. aegyptiin America, and therefore, it is probably a Zika spreading to the south if vector distribution increase. Another model performed to predict global Zika spread (3535 Samy AM, Thomas SM, Wahed AA, Cohoon KP, Peterson AT. Mapping the global geographic potential of Zika virus spread. Mem Inst Oswaldo Cruz. 2016; 111(9):559–60. doi: 10.1590/0074-02760160149.
https://doi.org/10.1590/0074-02760160149...
) match with our estimations for northern and central Argentina. However, that model used land cover, human population density and other non-meteorological factors, in addition to ambient temperature. Remarkably, when the mentioned model only considers environmental factors, Zika occurs up to Tierra del Fuego, a very cold location far away from the current distribution of Aedesvectors. For Africa and Asia, another model (3636 Bogoch II, Brady OJ, Kraemer MU, German M, Creatore MI, Brent S, et al. Potential for Zika virus introduction and transmission in resource-limited countries in Africa and the Asia-Pacific region: a modelling study. Lancet Infect Dis. 2016; pii: S1473-3099(16)30270-5. doi: 10.1016/S1473-3099(16)30270-5.
https://doi.org/10.1016/S1473-3099(16)30...
) projected the potential for Zika transmission considering dengue parameters, data of vector presence, and estimations of possible travelers from the Americas within the viremic period. The geographical area of Zika spread was estimated to reach the latitude of 34° south, coincident with the region of central Argentina classified as medium risk in our study.

Regarding R0 calculation, theoretical models have estimated central values in the range of 2.1 – 4.8 for Ae. aegypti and Ae. albopictus (3434 Rocklöv J, Quam MB, Sudre B, German M, Kraemer MU, Brady O6, Bogoch II, et al. Assessing Seasonal Risks for the Introduction and Mosquito-borne Spread of Zika Virus in Europe. EBioMedicine. 2016; 9:250–6. doi: 10.1016/j.ebiom.2016.06.009.
https://doi.org/10.1016/j.ebiom.2016.06....
,3737 Guzzetta G, Poletti P, Montarsi F, Baldacchino F, Capelli G, Rizzoli A, et al. Assessing the potential risk of Zika virus epidemics in temperate areas with established Aedes albopictus populations. Euro Surveill. 2016; 21(15). doi: 10.2807/1560-7917.ES.2016.21.15.30199.
https://doi.org/10.2807/1560-7917.ES.201...
3939 Gao D, Lou Y, He D, Porco TC, Kuang Y, Chowell G, Ruan S. Prevention and Control of Zika as a Mosquito-Borne and Sexually Transmitted Disease: A Mathematical Modeling Analysis. Sci Rep. 2016; 6:28070. doi: 10.1038/srep28070.
https://doi.org/10.1038/srep28070...
). Empirical estimations based on the epidemics from Colombia in several cities yielded a wider range of 1.4 – 6.6 (4040 Rojas DP, Dean NE, Yang Y, Kenah E, Quintero J, Tomasi S, et al. The epidemiology and transmissibility of Zika virus in Girardot and San Andres island, Colombia, September 2015 to January 2016. Euro Surveill. 2016; 21(28). doi: 10.2807/1560-7917.ES.2016.21.28.30283.
https://doi.org/10.2807/1560-7917.ES.201...
4242 Majumder MS, Santillana M, Mekaru SR, McGinnis DP, Khan K, Brownstein JS. Utilizing Nontraditional Data Sources for Near Real-Time Estimation of Transmission Dynamics During the 2015–2016 Colombian Zika Virus Disease Outbreak. JMIR Public Health Surveill. 2016; 2(1):e30. doi: 10.2196/publichealth.5814.
https://doi.org/10.2196/publichealth.581...
). The unique study using Big Data analysis to estimate the R0 found a value of 2.6, within the range of both theoretical and empirical approaches (4242 Majumder MS, Santillana M, Mekaru SR, McGinnis DP, Khan K, Brownstein JS. Utilizing Nontraditional Data Sources for Near Real-Time Estimation of Transmission Dynamics During the 2015–2016 Colombian Zika Virus Disease Outbreak. JMIR Public Health Surveill. 2016; 2(1):e30. doi: 10.2196/publichealth.5814.
https://doi.org/10.2196/publichealth.581...
). It should be observed that theoretical and semi-empirical models were parameterized for the use in America, Africa and Europe for both vector species, and the poor ability of Ae. albopictus as Zika vector was already established in several studies (1212 Chouin-Carneiro T, Vega-Rua A, Vazeille M, Yebakima A, Girod R, Goindin D, et al. Differential Susceptibilities of Aedes aegypti and Aedes albopictus from the Americas to Zika Virus. PLoS Negl Trop Dis. 2016; 10(3):e0004543. doi: 10.1371/journal.pntd.0004543.
https://doi.org/10.1371/journal.pntd.000...
,4343 Di Luca M, Severini F, Toma L, Boccolini D, Romi R, Remoli ME, et al. Experimental studies of susceptibility of Italian Aedes albopictus to Zika virus. Euro Surveill. 2016; 21(18). doi: 10.2807/1560-7917.ES.2016.21.18.30223.
https://doi.org/10.2807/1560-7917.ES.201...
). This could partially explain the higher values of R0 estimated in our study. The maximum value of R0 = 6.6 obtained by Nishiura and colleagues in Colombia (4141 Nishiura H, Mizumoto K, Villamil-Gómez WE, Rodríguez-Morales AJ. Preliminary estimation of the basic reproduction number of Zika virus infection during Colombia epidemic, 2015–2016. Travel Med Infect Dis. 2016; 14(3):274–6. doi: 10.1016/j.tmaid.2016.03.016.
https://doi.org/10.1016/j.tmaid.2016.03....
) was similar to our maximum value of R0 in northern and central Argentina. Moreover, when considering the uncertainty around maximum likelihood estimates in their model, the maximum R0 was estimated to be 14.8, similar to our R0 for Misiones during January (i.e. 11.4). This consistence with the observed values could be useful as external validation for our model. Another undesired opportunity to validate our results was the recent Zika outbreak in Tucumán province (1515 Ministerio de Salud de la Nación, Argentina. Boletín integrado de vigilancia. 329 – SE 39 – 2016 [Internet site]. Available from: http://www.msal.gob.ar/images/stories/boletines/Boletin-Integrado-De-Vigilancia-N329-SE39.pdf. Accessed 21 October 2016.
http://www.msal.gob.ar/images/stories/bo...
). This outbreak, the first in the country, with 25 confirmed cases was small, but occurred during May, almost at the end of the potential period calculated. R0 estimations from transmission dynamic models have suggested that Zika epidemics is not containable, large-scale outbreaks will occur with an interval of years, and the virus will eventually become endemic in Latin America (4444 Ferguson NM, Cucunubá ZM, Dorigatti I, Nedjati-Gilani GL, Donnelly CA, Basáñez MG, et al. Epidemiology. Countering the Zika epidemic in Latin America. Science. 2016; 353(6297):353–4. doi: 10.1126/science.aag0219.
https://doi.org/10.1126/science.aag0219...
).

Sensitivity analysis showed a strong dependence of R0 on the ambient temperature, whereas all others parameters demonstrated a weak association. Only for temperatures above 28°C, the parameters n, bm and m had a moderate influence on R0. On contrary, Th showed a stronger influence on R0 in the whole range of temperatures. This means that within the considered ranges, parameters associated with the cycle of the virus in the mosquito, the susceptibility to Zika virus and the vector-to-human population ratio have less importance than the duration of the infectious period. These results may have consequences regarding the control measures, given that the dynamic of the disease depends more on intrinsic host parameters and environment temperatures than on mosquito densities. A similar dependence of R0 on temperature and diurnal temperature range was previously described by Liu-Helmersson et al. (1818 Liu-Helmersson J, Stenlund H, Wilder-Smith A, Rocklöv J. Vectorial capacity of Aedes aegypti: effects of temperature and implications for global dengue epidemic potential. PLoS One. 2014; 9(3):e89783. doi: 10.1371/journal.pone.0089783.
https://doi.org/10.1371/journal.pone.008...
) in the original model for dengue. In this sense, our study used observed daily temperature data instead of projections, and thus the diurnal variation of temperatures has been implicit in calculations. The high dependency of R0 on ambient temperatures highlights the fact that Zika transmission would have a seasonal behavior in subtropical and temperate Argentina, due to the marked difference of temperature between summer and winter. In tropical settings like Central America, the Zika virus might show a different transmission dynamic, with no seasonality or a stronger dependence on other environmental factor like the precipitation.

Our approach was subject to some limitations. First, research on Zika susceptibility by mosquitoes and humans are ongoing, and thus our parameters may be modified as more studies are published. Even though our sensitivity analyses showed a weak dependence of R0 on these parameters, future research could change the main results. Other parameters regarding the transmission dynamic also need to be confirmed, particularly, the duration of the infectious period in humans has demonstrate a strong influence on the R0. Second, a significant amount of uncertainty was considered for all these parameters, and this was reflected in the wide range of the confidence intervals around the R0 obtained by the probabilistic sensitivity analysis. Finally, our estimations of the R0 are based almost exclusively on ambient temperature, while the vector-to-human population ratio was fixed and actions to control vector populations were not considered. In this regard, this model should be visualized as a tool to understand the climatic favorability for the seasonal or endemic transmission of the disease, and not as a model to analyze other environmental, anthropic or interventional influences on the transmission. Further development is needed to serve as a tool for the analysis of different strategies for public health interventions, e.g. larval control interventions and fumigations. However, interventions related to human behavior (both vector control and prevention) should be similar to those for dengue, excluding the sexual transmission that, as previously stated, seems not to play a major role in the transmission dynamic. Other important weather variable that was not considered in our model was precipitation. This variable has a major influence on water availability in artificial containers used by Ae. aegypti as breeding sites, affecting mosquito densities. As we have previously stated, our model was aimed to predict climatic favorability and not mosquito density, which was assumed to be sufficient for the maximum potential transmission, independently of other variables. More detailed models, as the DENSiM developed by Focks et al. for dengue (4545 Focks DA, Daniels E, Haile DG, Keesling JE. A simulation model of the epidemiology of urban dengue fever: literature analysis, model development, preliminary validation, and samples of simulation results. Am J Trop Med Hyg. 1995; 53(5):489–506.), consider mosquito density by person and other variables, and goes beyond only weather variables as predictors. In the case of Zika, more information is needed about the biology of the virus to develop more complex models.

In brief, we used a simple temperature-dependent model developed for dengue (1818 Liu-Helmersson J, Stenlund H, Wilder-Smith A, Rocklöv J. Vectorial capacity of Aedes aegypti: effects of temperature and implications for global dengue epidemic potential. PLoS One. 2014; 9(3):e89783. doi: 10.1371/journal.pone.0089783.
https://doi.org/10.1371/journal.pone.008...
), and by means of changing a number of parameters we were able to apply the same procedure for the estimation of the favorability for the Zika virus circulation in Argentina, the risk of seasonal transmission, and the possibility of the endemic establishment in the region. This simple procedure can be reproduced by public health professionals and health decision makers to evaluate the risk of Zika transmission at a national or local level.

Conflicts of interest

None declared.

Disclaimer

Authors hold sole responsibility for the views expressed in the manuscript, which may not necessarily reflect the opinion or policy of the RPSP/PAJPH or PAHO.

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Publication Dates

  • Publication in this collection
    19 Feb 2018

History

  • Received
    25 Oct 2016
  • Accepted
    20 Dec 2016
Organización Panamericana de la Salud Washington - Washington - United States
E-mail: contacto_rpsp@paho.org