Hostname: page-component-586b7cd67f-2brh9 Total loading time: 0 Render date: 2024-11-24T01:59:31.400Z Has data issue: false hasContentIssue false

Predictive modelling of Ross River virus using climate data in the Darling Downs

Published online by Cambridge University Press:  14 March 2023

Julia Meadows
Affiliation:
School of Geography, Earth and Atmospheric Sciences, Faculty of Science, The University of Melbourne, 221 Bouverie St, Carlton, VIC 3053, Australia
Celia McMichael
Affiliation:
School of Geography, Earth and Atmospheric Sciences, Faculty of Science, The University of Melbourne, 221 Bouverie St, Carlton, VIC 3053, Australia
Patricia T. Campbell*
Affiliation:
Department of Infectious Diseases, Melbourne Medical School, University of Melbourne at the Peter Doherty Institute for Infection and Immunity, Melbourne, VIC 3000, Australia Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, The University of Melbourne, Melbourne, VIC 3010, Australia
*
Author for correspondence: Patricia T. Campbell, E-mail: patricia.campbell@unimelb.edu.au
Rights & Permissions [Opens in a new window]

Abstract

Ross River virus (RRV) is the most common mosquito-borne infection in Australia. RRV disease is characterised by joint pain and lethargy, placing a substantial burden on individual patients, the healthcare system and economy. This burden is compounded by a lack of effective treatment or vaccine for the disease. The complex RRV disease ecology cycle includes a number of reservoirs and vectors that inhabit a range of environments and climates across Australia. Climate is known to influence humans, animals and the environment and has previously been shown to be useful to RRV prediction models. We developed a negative binomial regression model to predict monthly RRV case numbers and outbreaks in the Darling Downs region of Queensland, Australia. Human RRV notifications and climate data for the period July 2001 – June 2014 were used for model training. Model predictions were tested using data for July 2014 – June 2019. The final model was moderately effective at predicting RRV case numbers (Pearson's r = 0.427) and RRV outbreaks (accuracy = 65%, sensitivity = 59%, specificity = 73%). Our findings show that readily available climate data can provide timely prediction of RRV outbreaks.

Type
Original Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press

Introduction

Ross River virus (RRV) disease is the most commonly reported arboviral disease in Australia with approximately 5000 cases notified annually [Reference Barber, Denholm and Spelman1, 2]. This is likely an underestimate of the true disease burden due to mild and non-specific disease symptoms. It is endemic to Australia and Papua New Guinea with known outbreaks occurring in the Pacific and potential for expansion into new geographic areas [Reference Walton, Reisen and Singh3Reference Russell6]. Approximately 25–45% of human RRV infections lead to symptomatic disease characterised by fever, rash, lethargy and polyarthritis [Reference Harley, Sleigh and Ritchie7] with the remaining 55–75% of infections resulting in asymptomatic responses. Managing RRV involves significant healthcare costs and economic burden – including healthcare, mosquito management and lost productivity – estimated to be AUD$ 15 million annually [Reference Harley, Sleigh and Ritchie7]. Current RRV treatment is limited to management of symptoms.

The enzootic cycle of RRV alternates through largely macropod reservoir hosts and mosquito vectors, with human infection and disease occurring through spillover events [Reference Russell6, Reference Harley, Sleigh and Ritchie7]. A range of environmental, social and political factors such as urbanisation, income level and recreational activities are linked to RRV disease ecology via their influence on behaviours, biology and proximity of humans, reservoir hosts and vectors [Reference Mavian8, Reference Franklinos9]. Environmental factors such as vegetation, water sources, topography and built environments also affect the density and distribution of reservoir hosts and mosquito vectors involved in the transmission cycle [Reference Tong5, Reference Russell6, Reference Gatton, Kay and Ryan10].

Climatic factors including temperature, rainfall and humidity play a key role in shaping environments and thereby the RRV transmission cycle [Reference Woodruff and Bambrick4, Reference Tong5, Reference Geoghegan11]. Climate is a key determinant of mosquito biology, affecting aspects such as lifespan, reproduction rates, blood feeding and extrinsic viral incubation periods [Reference Ciota and Keyel12, Reference Mordecai13].

Climate has been a major focus of RRV research, particularly for predicting disease outbreaks and cases [Reference Koolhof14Reference Liu19]. The delay between climate and mosquito biological and behavioural responses can be exploited to develop predictive models. Early warning systems for climate-sensitive diseases, such as RRV, are identified as a key climate change adaptation strategy [Reference Liu19]. The delay built into predictive models allows time for relevant public health action to reduce the size and impact of the outbreak [Reference Imai20]. These public health actions could include public health messaging to encourage mosquito avoidance behaviour such as use of insect repellents and protective clothing as well as staying indoors [Reference Barber, Denholm and Spelman1]. Mosquito control programs using larvicide in mosquito habitats could also be used to reduce the impact of predicted outbreaks [Reference Dale and Breitfuss21].

In this study, we focused on the effect of climate and environment on RRV because of their strong influence on mosquito vectors. We excluded entomological and human socioeconomic data to examine the predictive capacity of readily available, open-access climate data alone. While most Australian research on the relationship between climate and RRV has occurred in coastal regions [Reference Koolhof, Bettiol and Carver16Reference Liu19, Reference Tong22], we focused on an inland region. We investigated the predictive power of climatic and environmental data for RRV disease in the Darling Downs, Queensland.

Methods

Study area

The Darling Downs (Fig. 1) is located in south-eastern Queensland with a population of 300 000 people [23]. The mostly agricultural region is characterised by a temperate climate with hot summers and cool winters [24]. It was chosen due to high case numbers inland location and small geographic area. High case numbers ensure that investigating the disease in the area will have a useful public health impact. Moreover, most studies predicting RRV have occurred in coastal regions [Reference Koolhof14]. Inland areas are likely to experience different dynamics of RRV due to different mosquito species and environments. Finally, the small area of the Darling Downs meant that climate was likely to be consistent across the region and a single weather station could be used to collect climate data.

Fig. 1. Map of the Darling Downs region.

Statistical methods

We implemented a modified version of the statistical methods of Cutcher et al. [Reference Cutcher15] and Koolhof et al. [Reference Koolhof14]. This included, as outlined in Figure 2, the use of data transformations to normalise the distribution of climate variables, the variable selection process using climate groups, inspection of different time lags, use of negative binomial regression and testing the model performance using outbreak thresholds and Pearson's correlation. Ethics approval was not required because only publicly accessible, aggregated data were used in the analysis.

Fig. 2. Flowchart of methods.

Aggregated monthly case notification data (RRV data) were obtained from the Queensland Department of Health from July 2001 to June 2019 for the Darling Downs Hospital and Health Services area. Years were defined from July to June to capture a single mosquito breeding season per year [Reference Cutcher15]. The proportion of infections and subsequent disease notified to government databases has remained consistently low overtime due to high proportions of mild and/or non-specific symptoms. However, there have been slight alterations to RRV disease case definitions over the study period. In 2013, more specific notification criteria were developed to clearly distinguish cases of RRV disease from Barmah Forest virus. Further, in 2016, the use of a single IgM to diagnose RRV was removed and the case definition was expanded to include both confirmed and probable cases. In order to account for changes in population size overtime, mid-year population data were sourced from the Australian Bureau of Statistics (2001–2011) and the Health of Queenslanders (2014, 2016, 2018), with derived averages used for years with no population data available.

All climate and weather data were publicly available Australian Bureau of Meteorology data (listed in Supplementary Table 1) obtained from the Toowoomba Airport (041529) weather station as the station nearest to the largest population centre in the Darling Downs with the most complete dataset. Monthly and daily climate data were obtained from January 2001 to June 2019. Daily climate data were used to derive other monthly climate variables such as number of days per month above or below a certain level of precipitation or temperature. Climate data were included up to six months before notification data to account for the delayed effects that climatic conditions can have on the RRV disease ecology cycle through incubation periods (extrinsic and intrinsic), delays between infection and symptom onset and indirect biological delays on the mosquito lifecycle.

A negative binomial regression model was chosen because it is well suited to the positive skew and overdispersion of RRV data [Reference Koolhof14, Reference Cutcher15, Reference Imai20, Reference Hilbe25]. The model used lagged monthly climate data as independent variables, monthly notified RRV data as the dependent variable and yearly population data from the Darling Downs as an offset value to account for variations in population size [Reference Hilbe25Reference Koolhof28]. A flowchart of methods is shown in Figure 2.

First, the RRV data and all climate variables were examined using summary statistics and plotting distributions. Where possible, climate variables with non-normal distributions were transformed so that they resembled an approximately normal distribution [Reference Koolhof14] (Supplementary Table 1). Approximately normal distributions are useful for analysis of seasonally driven variables because they allow for seasonal variables to be treated with stationarity [Reference Koolhof14, Reference Cutcher15].

The transformed climate data were merged with the RRV data and separated into a 13-year ‘training dataset’ (July 2001–June 2014) and a 5-year ‘testing dataset’ (July 2014–June 2019). The training dataset was used to develop the predictive negative binomial model. Climate and population data from the testing dataset were used to run the predictive model and observed RRV data were compared to the predicted RRV cases.

Spearman's rank correlation (r s) was used to determine climate variables strongly associated with RRV cases occurring one to six months later and identify the time lag at which the strongest association occurred [Reference Koolhof14Reference Koolhof, Bettiol and Carver16]. These correlations were useful for model development: they identify variables which were most useful for prediction, but also reveal potentially important associations between climate and RRV [Reference Koolhof14Reference Koolhof, Bettiol and Carver16].

Potential predictors were sorted into nine groups measuring similar climatic aspects (henceforth referred to as ‘climate groups’): temperature, precipitation, relative humidity, vapour pressure, evaporation, evapotranspiration, solar radiation, mean sea level pressure and Southern Oscillation Index (Supplementary Table 1). The variable/lag combination with the strongest association with RRV data was selected from each climate group [Reference Koolhof14, Reference Cutcher15]. To ensure minimal correlation between predictor variables, a requirement of negative binomial regression [Reference Hilbe25], Spearman's rank correlation matrix was used to control and check for collinearity between the variables selected from each climate group [Reference Koolhof14Reference Koolhof, Bettiol and Carver16]. When correlation was strong (defined as |r s| > 0.8) between any two variables, the variable with the strongest association with RRV was retained [Reference Koolhof14, Reference Cutcher15]. This occurred progressively until a set of variables with the strongest association with RRV data and low correlation to each other remained for use in model development. Backward-stepwise selection was used to develop the predictive negative binomial model with a threshold P-value of 0.2 [Reference Koolhof14, Reference Cutcher15, Reference Chowdhury and Turin29].

The model fit was inspected using Pearson's correlation (r) and a scatterplot of model-fitted and observed values. Diagnostic plots of scaled residuals (difference between observed and model-predicted values) were run to check that model assumptions (such as distribution and dispersion) were met [Reference Cutcher15, Reference Cameron and Trivedi30, Reference Hartig31] (Supplementary Figures 1a & 1b).

Model performance was tested by comparing model-predicted RRV cases with observed RRV cases from the testing dataset using Pearson's correlation [Reference Koolhof14, Reference Cutcher15]. The ability of the model to predict monthly outbreaks was determined through the creation of a moving outbreak threshold to which observed and predicted case numbers were compared [Reference Koolhof14, Reference Cutcher15]. We defined an outbreak month as a month with RRV cases exceeding the 5-year rolling mean plus one standard deviation for that month, with known outbreak years excluded from the calculation [Reference Koolhof14, Reference Cutcher15]. This definition captures the epidemiological definition of outbreaks which refers to an increase in disease in excess of what is normally expected in a given time, population and area [Reference Cutcher15, Reference Reintjes, Zanuzdana, Krämer, Kretzschmar and Krickeberg32]. The purpose of the threshold was to determine if the model could predict the occurrence and timing of outbreaks. Capturing the magnitude of outbreaks is unlikely given the large variation between baseline and outbreak case numbers used to train the model and because climate variables only act as indirect predictors of disease transmission [Reference Cutcher15]. A moving threshold was chosen to account for the impact of seasonal variations and long-term climate change on disease transmission [Reference Koolhof14, Reference Cutcher15]. The threshold was calculated using RRV case notification data for the entire study period. RRV data for outbreak years were substituted with RRV data from the previous year. For the first five years of the dataset, the outbreak threshold was calculated using cumulative means and standard deviations.

This threshold was used to identify the number of true positives, true negatives, false positives and false negatives based on comparing model predicted outbreaks and non-outbreaks with observed outbreaks and non-outbreaks. We evaluated the overall model effectiveness and model accuracy (% of months correctly identified), specificity (% of non-outbreak months correctly identified) and sensitivity (% of outbreak months correctly identified). High specificity and sensitivity help avoid adverse consequences from not taking action when needed (low sensitivity) or financial costs from unnecessary action (low specificity).

Results

There were 2071 RRV notifications over the study period in the Darling Downs. Outbreak years were experienced in 2003/2004, 2005/2006 and 2014/2015 with 283, 257 and 247 cases respectively. Cases were notified year-round, but March had the highest monthly average RRV notifications while August had the lowest.

Monthly RRV data were most strongly correlated with climate at a one-, two- or three-month lag (Supplementary Table 2). Seven climate variables had strong correlations (|r s| > 0.50) with RRV data: vapour pressure (mean and maximum), temperature (minimum, mean minimum and numbers of days with minimum temperature below 15 °C) and sea level pressure (maximum and mean). RRV was weakly to moderately correlated (0.20 ⩽ |r s| ⩽ 0.50) with 48 of the 59 climate variables examined. Only five variables had very weak or negligible correlation with RRV at all lags. Despite the large number of variables strongly correlated with monthly RRV data, the correlation matrix (Fig. 3) showed that many of these climate variables were strongly correlated with each other. This resulted in the removal of five variables from the pool of variables considered in the predictive model.

Fig. 3. Spearman's correlation matrix: RRV and climate data. min temp, minimum temperature; mean vp, mean vapour pressure; max radiation, maximum solar radiation; max evaporation, maximum Morton's shallow lake evaporation; max evapotranspiration, maximum Morton's areal actual evapotranspiration; max mslp, maximum mean sea level pressure; mean relative humidity, mean relative humidity at maximum daily temperature; rain less one, number of days with less than 1 mm of precipitation; mean relative humidity, mean relative humidity at maximum daily temperature and soi, Southern Oscillation Index.

The final model consisted of the Southern Oscillation Index (1-month lag), number of days per month with less than 1 mm of rainfall (2-month lag), mean vapour pressure (2-month lag) and mean relative humidity at maximum daily temperature (1-month lag) as well as a population offset term (log of the population size) (Table 1). Diagnostic plots of the final model (Supplementary Figures 1a & 1b) indicate that there were significant deviations from the uniformity and dispersion assumptions of the negative binomial regression.

Table 1. Negative binomial regression model

Coefficients, incidence rate ratios (IRR) and corresponding 95% confidence intervals and P-values for independent variables included in final negative binomial regression model.

Overall, the model was moderately effective at predicting RRV case numbers, with a Pearson's correlation (r = 0.427, 95% CI 0.195–0.615, P-value <0.001) between predicted and observed monthly RRV case numbers for the period of July 2014 to June 2019 (Fig. 4). In addition, the model was also moderately effective at predicting the occurrence (not magnitude) of monthly RRV outbreaks and non-outbreaks. The observed and predicted monthly RRV case numbers as well as the calculated outbreak threshold are shown in Figure 5. In 39 of 60 test months (accuracy of 65%), the predicted outcome (outbreak or non-outbreak month) matched the observed outcome (outbreak or non-outbreak month). The model had 59% sensitivity and 73% specificity (see Table 2).

Fig. 4. Scatterplot of observed vs predicted monthly RRV case numbers.

Observed and model-predicted monthly RRV case numbers from July 2014 to June 2019. The plot illustrates a moderate correlation between observed and model-predicted case numbers. The Pearson's correlation line (r = 0.427) is orange and dashed; the black line shows the theoretical line of 100% correlation (predicted = observed).

Fig. 5. Time-series plot of observed and predicted monthly RRV case numbers.

Time series plot showing model fitted (training period) and predicted (testing period) (purple) and observed (training and testing period) (grey) monthly Ross River virus case numbers as well as the moving outbreak threshold (orange). The black vertical line represents the division between training and testing periods. The plot highlights the seasonality of Ross River virus and three large outbreaks which occurred in 2003/2004, 2005/2006 and 2014/2015.

Table 2. Confusion matrix values

True positives, false negatives, false positives and true negatives displayed in the table are used to calculate accuracy, sensitivity and specificity. Accuracy = (TP + TN)/ (TP + TN + FP + FN). Sensitivity rate = TP/(TP + FN). Specificity rate = TN/(TN + FP).

Discussion

This study is one of only a few to investigate whether climatic and environmental variables are useful predictors of RRV cases and outbreaks in an inland region [Reference Cutcher15, Reference Ng26, Reference Tong and Hu27]. The model was moderately effective at predicting monthly RRV case numbers and outbreaks in the Darling Downs, consistent with the role that climate and environment play in the disease ecology cycle and transmission of RRV. In the final model, which included the Southern Oscillation index and variables measuring precipitation, vapour pressure and relative humidity, predicted cases moderately correlated with observed case numbers over the testing period (r = 0.427). In addition, the model was moderately successful at predicting outbreak and non-outbreak months with an accuracy of 65%, sensitivity of 59% and specificity of 73%. This means the model is slightly skewed towards false positives instead of false negatives and may sometimes indicate that public health action is needed when it is not. Direct inclusion of factors such as reservoir and vector population dynamics may improve model efficacy if such data were available.

All of the climate variables included in the final negative binomial regression model are similar to those included in previous RRV research [Reference Gatton, Kay and Ryan10, Reference Koolhof14Reference Koolhof, Bettiol and Carver16, Reference Tong and Hu18, Reference Liu19, Reference Ng26, Reference Tong and Hu27, Reference Woodruff33Reference Woodruff35]. For example, many variables related to vapour pressure were strongly associated with RRV cases and monthly mean vapour pressure was present in the final predictive model. In particular, higher mean vapour pressure was strongly associated with, and used to predict, higher RRV case numbers occurring two months later. This result is supported by previous research including Cutcher et al. [Reference Cutcher15] which also included vapour pressure as a key predictor of RRV cases in the inland Victorian region of Mildura. Vapour pressure was also present in models from Woodruff et al. [Reference Woodruff35] and Koolhof et al. [Reference Koolhof14]. The importance of vapour pressure, as it measures atmospheric water content, is linked to humidity which greatly influences mosquito biology and behaviour [Reference Koolhof14, Reference Cutcher15]. Increased humidity leads to increased blood-feeding frequency and longevity, increasing the chance of RRV transmission between mosquitos, humans and reservoir hosts [Reference Walton, Reisen and Singh3, Reference Ciota and Keyel12].

Despite the link between vapour pressure and humidity, both mean vapour pressure and mean relative humidity at maximum daily temperature were included in the final model because the collinearity was not sufficient to need to drop one of variables (ρ s = 0.427, P-value <0.001). This may be due to the different optimal time lags selected for each variable (2 months for mean vapour pressure and 1 month for relative humidity). However, it is also probable that the key difference between the two measures may explain the relevance and inclusion of both within the final RRV model. Vapour pressure is an absolute measure of atmospheric water content while relative humidity takes temperature into account due to its impact on the maximum atmospheric water vapour capacity [Reference Wei36]. Therefore, vapour pressure and relative humidity may have different interactions with RRV disease ecology [Reference Walton, Reisen and Singh3, Reference Ciota and Keyel12]. The inclusion of both variables in the final model differs to previous RRV research which has considered both vapour pressure and relative humidity and included only one in the final model [Reference Koolhof14, Reference Cutcher15, Reference Woodruff35].

Precipitation has also been widely highlighted as a key predictor of RRV incidence and outbreaks [Reference Koolhof14Reference Koolhof, Bettiol and Carver16, Reference Liu19, Reference Ng26, Reference Werner37]. In our study, less than 1 mm of total monthly rainfall was associated with low RRV case numbers two months later and was included in the final model for the Darling Downs. This reaffirms the importance of precipitation to RRV transmission via the mosquito lifecycle and has been supported consistently by previous RRV research and modelling in other regions of Australia [Reference Geoghegan11]. For example, a precipitation-related variable was included in six of the eleven models developed to predict RRV cases and outbreaks in a number of Victorian local government areas [Reference Koolhof14].

The Southern Oscillation Index (SOI) was the final variable included in the negative binomial regression model. SOI was positively associated with RRV occurring one month later in the Darling Downs. This variable is a measure of the El Niño Southern Oscillation (ENSO), the regional coupling of atmospheric and oceanic circulation affecting temperature and precipitation in the region [Reference Tong22, Reference Maelzer34, Reference Kelly-Hope, Purdie and Kay38]. In Australia, El Niño conditions (negative SOI) lead to cold and dry weather while La Niña (positive SOI) leads to warm and wet weather conditions [Reference Tong22, Reference Maelzer34, Reference Kelly-Hope, Purdie and Kay38]. Despite this link between ENSO, precipitation and temperature, SOI was not strongly correlated with temperature or precipitation within the Darling Downs. This may be due to the broad and complex influence of ENSO on the Australian climate and subsequently on RRV transmission, which is yet to be fully researched and understood. Nevertheless, previous studies in Australia have also associated La Niña conditions, or positive SOI values, with RRV outbreaks and incidence and used SOI as a predictor variable in modelling [Reference Cutcher15, Reference Tong22, Reference Maelzer34, Reference Kelly-Hope, Purdie and Kay38, Reference Bi39].

Many other predictive models for RRV have included measures of temperature, evaporation and evapotranspiration [Reference Koolhof14, Reference Koolhof, Bettiol and Carver16, Reference Ng26, Reference Werner37]. The absence of these variables in our final model may reflect their reduced importance in RRV transmission in the Darling Downs. However, it is more likely that their absence is due to the high level of multicollinearity amongst climate variables, meaning only one variable can be chosen. In fact, variables measuring temperature, evaporation, evapotranspiration and sea level pressure were strongly correlated with RRV in the Darling Downs despite their exclusion from the model.

Temperature, particularly minimum temperature, has been present in a great number of RRV models [Reference Koolhof, Bettiol and Carver16, Reference Liu19, Reference Tong and Hu27, Reference Woodruff35, Reference Bi39]. Temperature is crucial to mosquito survival with temperatures below or above thermal thresholds leading to mosquito death curtailing RRV transmission [Reference Walton, Reisen and Singh3, Reference Ciota and Keyel12, Reference Mordecai13]. Despite the exclusion of temperature from the final model for the Darling Downs, most temperature variables were strongly correlated with RRV cases. Similarly, temperature is also related to relative humidity and the SOI, both of which were included in our model for the Darling Downs [Reference Walton, Reisen and Singh3].

Another climate group which was strongly negatively associated with RRV in the Darling Downs but excluded from the final model was mean sea level pressure. Prior studies have associated low sea level pressure and low sea surface temperature with high RRV case numbers [Reference Koolhof14, Reference Cutcher15, Reference Woodruff33, Reference Woodruff35]. In particular, Koolhof et al. [Reference Koolhof14] were the first to include sea level pressure as a variable within RRV predictive models. Though it is unclear how these oceanic variables affect the disease dynamics of an inland region, it is hypothesised that sea level pressure and sea surface temperature are indicators of the broader ENSO phenomenon [Reference Maelzer34, Reference Kelly-Hope, Purdie and Kay38], included in our model through the SOI.

Solar radiation is the only climate data type investigated in this study which has not previously been reported as associated with RRV cases. Our study found that maximum solar radiation in the Darling Downs was moderately correlated with RRV cases. However, maximum solar radiation was also strongly correlated with measures of temperature, evaporation and evapotranspiration. Therefore, the association with RRV cases may reflect its indirect relationship with other climate variables which directly affect RRV, rather than solar radiation having a direct effect on RRV ecology and transmission.

Models developed for other regions of Australia have provided greater accuracy using a variety of methods including negative binomial regression, linear regression, logistic regression and (seasonal) autoregression moving average models [Reference Koolhof14, Reference Liu19, Reference Woodruff33]. While alternate methods may provide a better predictive model, our findings may indicate a greater complexity of predicting RRV in inland areas. However, our methodological decisions were based on previous research methods, informed by existing RRV research and evaluated after their employment through model testing and diagnostic plots [Reference Koolhof14Reference Koolhof, Bettiol and Carver16, Reference Hartig31, Reference Werner37]. The greatest strength of this model is that it was developed based solely on open-access climate data which is less resource and cost intensive data to collect and analyse. In addition, the Darling Downs, Queensland was selected due to its high case numbers. In choosing an area with high case numbers the final model was more likely to be statistically and practically important. A weakness is that it is difficult for statistical models to capture the magnitude of variability present in the number of RRV cases notified year-to-year and month-to-month. Moreover, the slight changes to the RRV case definition over the study period, may have influenced the consistency and accuracy of the model. Finally, there is potential for outbreak years to have strongly influenced model development.

This research demonstrates that a moderately effective predictive model for RRV case numbers and outbreaks can be developed for an inland region using solely climate data and confirms the importance of climate to RRV prediction. Future research should include a wider array of variables (e.g. sea surface temperature, sea level, river flow, river height) and compare a broad range of analytical methods. In particular, machine learning and artificial intelligence could be used to automate more robust prediction models [Reference Pillai, Ramkumar and Nanduri40]. Moreover, this research did not examine interactions between climate variables (e.g. optimal rain and temperature conditions) which may be important for mosquito population and RRV disease ecology. Future research should include a pre-planned, disciplined and rigorous exploration of which climate and environment interactions may be useful for predictive modelling. The development of predictive models – that make use of available climatic, environmental, demographic and entomological data – is important in monitoring and managing vector-borne diseases such as RRV in which a capacity to predict outbreaks can support timely population action.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0950268823000365.

Acknowledgements

Thank you to the Queensland Department of Health for the provision of the Ross River virus disease notification data and the Bureau of Meteorology for the climate and environment data. Thank you to Chandra Jayasuriya, Honorary Fellow at The University of Melbourne, for provision of the map of the Darling Downs region.

Conflict of interest

The authors declare no conflicts of interest.

Data availability statements

Ross River virus disease notification data was obtained for the Darling Downs HHS area through submitting a data request form to the Queensland Department of Health. Available at: https://www.health.qld.gov.au/clinical-practice/guidelines-procedures/diseases-infection/surveillance/reports/notifiable/data-request. Climate and environment data were obtained from the Bureau of Meteorology for Toowoomba Airport weather station (041529) using publicly available historical climate data available at: http://www.bom.gov.au/climate/data/. Darling Downs population data was obtained from the Health of Queenslanders reports (available at: https://www.publications.qld.gov.au/dataset/chief-health-officer-reports) and from the Australian Bureau of Statistics (available at: https://www.qgso.qld.gov.au/statistics/theme/population/population-estimates/regions).

References

Barber, B, Denholm, JT and Spelman, D (2009) Ross river virus. Australian Family Physician 38, 586589.Google ScholarPubMed
Walton, WE and Reisen, WK (2013) Influence of climate change on mosquito development and blood-feeding patterns. In Singh, SK (ed.), Viral Infections and Global Change, 1st Edn. Hoboken, NJ: John Wiley & Sons, Inc. pp. 3556. doi: 10.1002/9781118297469.ch3.CrossRefGoogle Scholar
Woodruff, RE and Bambrick, H (2008) Climate change impacts on the burden of Ross river virus disease. Garnaut Climate Change Review.Google Scholar
Tong, S et al. (2008) Climate variability, social and environmental factors, and Ross river virus transmission: research development and future research needs. Environmental Health Perspectives 116, 15911597.CrossRefGoogle ScholarPubMed
Russell, RC (2002) Ross river virus: ecology and distribution. Annual Review of Entolomology 47, 131.CrossRefGoogle ScholarPubMed
Harley, DO, Sleigh, A and Ritchie, SA (2001) Ross river virus transmission, infection, and disease: a cross-disciplinary review. Clinical Microbiology Reviews 14, 909932.CrossRefGoogle ScholarPubMed
Mavian, C et al. (2019) Islands as hotspots for emerging mosquito-borne viruses: a one-health perspective. Viruses 11, 11.CrossRefGoogle Scholar
Franklinos, LHV et al. (2019) The effect of global change on mosquito-borne disease. The Lancet Infectious Diseases 19, e302e312.CrossRefGoogle ScholarPubMed
Gatton, ML, Kay, BH and Ryan, PA (2005) Environmental predictors of Ross river virus disease outbreaks in Queensland, Australia. American Journal of Tropical Medicine and Hygiene 72, 792799.CrossRefGoogle ScholarPubMed
Geoghegan, JL et al. (2014) Seasonal drivers of the epidemiology of arthropod-borne viruses in Australia. PLoS Neglected Tropical Diseases 8, e3325.CrossRefGoogle ScholarPubMed
Ciota, AT and Keyel, AC (2019) The role of temperature in transmission of zoonotic arboviruses. Viruses 11, 1013.CrossRefGoogle ScholarPubMed
Mordecai, EA et al. (2019) Thermal biology of mosquito-borne disease. Ecology Letters 22, 16901708.CrossRefGoogle ScholarPubMed
Koolhof, IS et al. (2020) The forecasting of dynamical Ross river virus outbreaks: Victoria, Australia. Epidemics 30, 100377.CrossRefGoogle ScholarPubMed
Cutcher, Z et al. (2017) Predictive modelling of Ross river virus notifications in Southeastern Australia. Epidemiology and Infection 145, 440450.CrossRefGoogle ScholarPubMed
Koolhof, IS, Bettiol, S and Carver, S (2017) Fine-temporal forecasting of outbreak probability and severity: Ross river virus in Western Australia. Epidemiology and Infection 145, 29492960.CrossRefGoogle ScholarPubMed
Tong, S, Hu, W and McMichael, AJ (2004) Climate variability and Ross river virus transmission in Townsville region, Australia, 1985–1996. Tropical Medicine and International Health 9, 298304.CrossRefGoogle ScholarPubMed
Tong, S and Hu, W (2001) Climate variation and incidence of Ross river virus in Cairns, Australia: a time-series analysis. Environmental Health Perspectives 109, 12711273.CrossRefGoogle Scholar
Liu, J et al. (2021) Using ecological variables to predict Ross river virus disease incidence in South Australia. Transactions of The Royal Society of Tropical Medicine and Hygiene 115, 10451053.CrossRefGoogle ScholarPubMed
Imai, C et al. (2015) Time series regression model for infectious disease and weather. Environmental Research 142, 319327.CrossRefGoogle ScholarPubMed
Dale, PER and Breitfuss, M (2009) Ecology and management of mosquitoes. In Saintilan N (ed.), Australian Saltmarsh Ecology. Australia: CSIRO Publishing, pp. 175176.Google Scholar
Tong, S et al. (2005) Climatic, high tide and vector variables and the transmission of Ross river virus. Internal Medicine Journal 35, 677680.CrossRefGoogle ScholarPubMed
Darling Downs Hospital and Health Service (2019) Annual report 2018-2019. Available at https://www.health.qld.gov.au/darlingdowns/about/publications/annual-report.Google Scholar
State of Queensland (2019) Climate change in the eastern downs region. Available at https://www.qld.gov.au/environment/climate/climate-change/resources/science.Google Scholar
Hilbe, JM (2011) Negative Binomial Regression. New York: Cambridge University Press.CrossRefGoogle Scholar
Ng, V et al. (2014) Analysis and prediction of Ross river virus transmission in New South Wales, Australia. Vector-Borne and Zoonotic Diseases 14, 422438.CrossRefGoogle ScholarPubMed
Tong, S and Hu, W (2002) Different responses of Ross river virus to climate variability between coastline and inland cities in Queensland, Australia. Occupational and Environmental Medicine 59, 739744.CrossRefGoogle ScholarPubMed
Koolhof, IS et al. (2021) Optimising predictive modelling of Ross river virus using meteorological variables. PLoS Neglected Tropical Diseases 15, e0009252.CrossRefGoogle ScholarPubMed
Chowdhury, MZI and Turin, TC (2020) Variable selection strategies and its importance in clinical prediction modelling. Family Medicine and Community Health 8, e000262.CrossRefGoogle ScholarPubMed
Cameron, AC and Trivedi, PK (2013) Regression Analysis of Count Data. Cambridge: Cambridge University Press. doi: 10.1017/CBO9781139013567.CrossRefGoogle Scholar
Hartig, F (2018) DHARMa: residual diagnostics for hierarchical (multi-level/mixed) regression models. Available at https://cran.r-project.org/web/packages/DHARMa/index.html package version 0.2.0.Google Scholar
Reintjes, R and Zanuzdana, A (2009) Outbreak investigations. In Krämer, A, Kretzschmar, M and Krickeberg, K (eds), Modern Infectious Disease Epidemiology: Concepts, Methods, Mathematical Models, and Public Health. New York: Springer, pp. 159176. doi: 10.1093/med/9780198719830.003.0003.CrossRefGoogle Scholar
Woodruff, RE et al. (2006) Early warning of Ross river virus epidemics: combining surveillance data on climate and mosquitoes. Epidemiology (Cambridge, Mass.) 17, 569575.CrossRefGoogle ScholarPubMed
Maelzer, D et al. (1999) El nino and arboviral disease prediction. Environmental Health Perspectives 107, 817818.Google ScholarPubMed
Woodruff, RE et al. (2002) Predicting Ross river virus epidemics from regional weather data. Epidemiology (Cambridge, Mass.) 13, 384393.CrossRefGoogle ScholarPubMed
Wei, Q et al. (2021) Indicators for evaluating trends of air humidification in arid regions under circumstance of climate change: relative humidity (rh) vs. actual water vapour pressure (ea). Ecological Indicators 121, 107043.CrossRefGoogle Scholar
Werner, AK et al. (2012) Environmental drivers of Ross river virus in Southeastern Tasmania, Australia: towards strengthening public health interventions. Epidemiology and Infection 140, 359371. Environmental.CrossRefGoogle ScholarPubMed
Kelly-Hope, LA, Purdie, DM and Kay, BH (2004) El niño southern oscillation and Ross river virus outbreaks in Australia. Vector-Borne and Zoonotic Diseases 4, 210213.CrossRefGoogle ScholarPubMed
Bi, P et al. (2009) Climate variability and Ross river virus infections in Riverland, South Australia, 1992–2004. Epidemiology and Infection 137, 14861493.CrossRefGoogle ScholarPubMed
Pillai, N, Ramkumar, M and Nanduri, B (2022) Mathematical and artificial intelligence models for zoonotic foodborne pathogens: a survey. Microorganisms 10, 1911.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1. Map of the Darling Downs region.

Figure 1

Fig. 2. Flowchart of methods.

Figure 2

Fig. 3. Spearman's correlation matrix: RRV and climate data. min temp, minimum temperature; mean vp, mean vapour pressure; max radiation, maximum solar radiation; max evaporation, maximum Morton's shallow lake evaporation; max evapotranspiration, maximum Morton's areal actual evapotranspiration; max mslp, maximum mean sea level pressure; mean relative humidity, mean relative humidity at maximum daily temperature; rain less one, number of days with less than 1 mm of precipitation; mean relative humidity, mean relative humidity at maximum daily temperature and soi, Southern Oscillation Index.

Figure 3

Table 1. Negative binomial regression model

Figure 4

Fig. 4. Scatterplot of observed vs predicted monthly RRV case numbers.Observed and model-predicted monthly RRV case numbers from July 2014 to June 2019. The plot illustrates a moderate correlation between observed and model-predicted case numbers. The Pearson's correlation line (r = 0.427) is orange and dashed; the black line shows the theoretical line of 100% correlation (predicted = observed).

Figure 5

Fig. 5. Time-series plot of observed and predicted monthly RRV case numbers.Time series plot showing model fitted (training period) and predicted (testing period) (purple) and observed (training and testing period) (grey) monthly Ross River virus case numbers as well as the moving outbreak threshold (orange). The black vertical line represents the division between training and testing periods. The plot highlights the seasonality of Ross River virus and three large outbreaks which occurred in 2003/2004, 2005/2006 and 2014/2015.

Figure 6

Table 2. Confusion matrix values

Supplementary material: File

Meadows et al. supplementary material

Meadows et al. supplementary material 1

Download Meadows et al. supplementary material(File)
File 147.5 KB
Supplementary material: Image

Meadows et al. supplementary material

Meadows et al. supplementary material 2

Download Meadows et al. supplementary material(Image)
Image 466.5 KB