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1.
Epidemics ; 41: 100648, 2022 12.
Article in English | MEDLINE | ID: mdl-36343495

ABSTRACT

OBJECTIVES: Disease transmission models are used in impact assessment and economic evaluations of infectious disease prevention and treatment strategies, prominently so in the COVID-19 response. These models rarely consider dimensions of equity relating to the differential health burden between individuals and groups. We describe concepts and approaches which are useful when considering equity in the priority setting process, and outline the technical choices concerning model structure, outputs, and data requirements needed to use transmission models in analyses of health equity. METHODS: We reviewed the literature on equity concepts and approaches to their application in economic evaluation and undertook a technical consultation on how equity can be incorporated in priority setting for infectious disease control. The technical consultation brought together health economists with an interest in equity-informative economic evaluation, ethicists specialising in public health, mathematical modellers from various disease backgrounds, and representatives of global health funding and technical assistance organisations, to formulate key areas of consensus and recommendations. RESULTS: We provide a series of recommendations for applying the Reference Case for Economic Evaluation in Global Health to infectious disease interventions, comprising guidance on 1) the specification of equity concepts; 2) choice of evaluation framework; 3) model structure; and 4) data needs. We present available conceptual and analytical choices, for example how correlation between different equity- and disease-relevant strata should be considered dependent on available data, and outline how assumptions and data limitations can be reported transparently by noting key factors for consideration. CONCLUSIONS: Current developments in economic evaluations in global health provide a wide range of methodologies to incorporate equity into economic evaluations. Those employing infectious disease models need to use these frameworks more in priority setting to accurately represent health inequities. We provide guidance on the technical approaches to support this goal and ultimately, to achieve more equitable health policies.


Subject(s)
COVID-19 , Humans , COVID-19/epidemiology , Health Policy , Public Health , Cost-Benefit Analysis
2.
Clin Infect Dis ; 72(Suppl 3): S152-S157, 2021 06 14.
Article in English | MEDLINE | ID: mdl-33905475

ABSTRACT

Vector control is widely considered an important tool for lymphatic filariasis (LF) elimination but is not usually included in program budgets and has often been secondary to other policy questions in modelling studies. Evidence from the field demonstrates that vector control can have a large impact on program outcomes and even halt transmission entirely, but implementation is expensive. Models of LF have the potential to inform where and when resources should be focused, but often simplify vector dynamics and focus on capturing human prevalence trends, making them comparatively ill-designed for direct analysis of vector control measures. We review the recent modelling literature and present additional results using a well-established model, highlighting areas of agreement between model predictions and field evidence, and discussing the possible determinants of existing disagreements. We conclude that there are likely to be long-term benefits of vector control, both on accelerating programs and preventing resurgence.


Subject(s)
Elephantiasis, Filarial , Humans , Prevalence
4.
Adv Parasitol ; 94: 343-392, 2016.
Article in English | MEDLINE | ID: mdl-27756457

ABSTRACT

Diagnostics play a crucial role in determining treatment protocols and evaluating success of mass drug administration (MDA) programmes used to control soil-transmitted helminths (STHs). The current diagnostic, Kato-Katz, relies on inexpensive, reusable materials and can be used in the field, but only trained microscopists can read slides. This diagnostic always underestimates the true prevalence of infection, and the accuracy worsens as the true prevalence falls. We investigate how more sensitive diagnostics would impact on the management and life cycle of MDA programmes, including number of mass treatment rounds, health impact, number of unnecessary treatments and probability of elimination. We use an individual-based model of STH transmission within the current World Health Organization (WHO) treatment guidelines which records individual disability-adjusted life years (DALY) lost. We focus on Ascaris lumbricoides due to the availability of high-quality data on existing diagnostics. We show that the effect of improving the sensitivity of diagnostics is principally determined by the precontrol prevalence in the community. Communities at low true prevalence (<30%) and high true prevalence (>70%) do not benefit greatly from improved diagnostics. Communities with intermediate prevalence benefit greatly from increased chemotherapy application, both in terms of reduced DALY loss and increased probability of elimination. Our results suggest that programmes should be extended beyond school-age children, especially in high prevalence communities. Finally, we argue against using apparent or measured prevalence as an uncorrected proxy for true prevalence.


Subject(s)
Anthelmintics/administration & dosage , Ascariasis/diagnosis , Ascaris lumbricoides/isolation & purification , Helminthiasis/diagnosis , Helminths/isolation & purification , Models, Theoretical , Animals , Ascariasis/drug therapy , Ascariasis/epidemiology , Ascariasis/prevention & control , Ascaris lumbricoides/drug effects , Disease Eradication , Feces/parasitology , Helminthiasis/drug therapy , Helminthiasis/epidemiology , Helminthiasis/prevention & control , Helminths/drug effects , Humans , Prevalence , Sensitivity and Specificity , Soil/parasitology
5.
Parasit Vectors ; 8: 547, 2015 Oct 22.
Article in English | MEDLINE | ID: mdl-26489753

ABSTRACT

BACKGROUND: With ambitious targets to eliminate lymphatic filariasis over the coming years, there is a need to identify optimal strategies to achieve them in areas with different baseline prevalence and stages of control. Modelling can assist in identifying what data should be collected and what strategies are best for which scenarios. METHODS: We develop a new individual-based, stochastic mathematical model of the transmission of lymphatic filariasis. We validate the model by fitting to a first time point and predicting future timepoints from surveillance data in Kenya and Sri Lanka, which have different vectors and different stages of the control programme. We then simulate different treatment scenarios in low, medium and high transmission settings, comparing once yearly mass drug administration (MDA) with more frequent MDA and higher coverage. We investigate the potential impact that vector control, systematic non-compliance and different levels of aggregation have on the dynamics of transmission and control. RESULTS: In all settings, increasing coverage from 65 to 80 % has a similar impact on control to treating twice a year at 65 % coverage, for fewer drug treatments being distributed. Vector control has a large impact, even at moderate levels. The extent of aggregation of parasite loads amongst a small portion of the population, which has been estimated to be highly variable in different settings, can undermine the success of a programme, particularly if high risk sub-communities are not accessing interventions. CONCLUSION: Even moderate levels of vector control have a large impact both on the reduction in prevalence and the maintenance of gains made during MDA, even when parasite loads are highly aggregated, and use of vector control is at moderate levels. For the same prevalence, differences in aggregation and adherence can result in very different dynamics. The novel analysis of a small amount of surveillance data and resulting simulations highlight the need for more individual level data to be analysed to effectively tailor programmes in the drive for elimination.


Subject(s)
Disease Transmission, Infectious/prevention & control , Elephantiasis, Filarial/drug therapy , Elephantiasis, Filarial/transmission , Filaricides/administration & dosage , Insect Control/methods , Models, Theoretical , Elephantiasis, Filarial/epidemiology , Kenya/epidemiology , Prevalence , Sri Lanka/epidemiology
6.
Epidemics ; 10: 11-5, 2015 Mar.
Article in English | MEDLINE | ID: mdl-25843375

ABSTRACT

Vaccination has been one of the most successful public health measures since the introduction of basic sanitation. Substantial mortality and morbidity reductions have been achieved via vaccination against many infections, and the list of diseases that are potentially controllable by vaccines is growing steadily. We introduce key challenges for modeling in shaping our understanding and guiding policy decisions related to vaccine preventable diseases.


Subject(s)
Communicable Disease Control/methods , Vaccines/therapeutic use , Communicable Disease Control/economics , Communicable Disease Control/statistics & numerical data , Communicable Diseases/immunology , Health Policy , Humans , Immunity, Innate , Models, Statistical , Vaccines/economics
7.
Epidemics ; 10: 78-82, 2015 Mar.
Article in English | MEDLINE | ID: mdl-25843389

ABSTRACT

Infectious disease models are both concise statements of hypotheses and powerful techniques for creating tools from hypotheses and theories. As such, they have tremendous potential for guiding data collection in experimental and observational studies, leading to more efficient testing of hypotheses and more robust study designs. In numerous instances, infectious disease models have played a key role in informing data collection, including the Garki project studying malaria, the response to the 2009 pandemic of H1N1 influenza in the United Kingdom and studies of T-cell immunodynamics in mammals. However, such synergies remain the exception rather than the rule; and a close marriage of dynamic modeling and empirical data collection is far from the norm in infectious disease research. Overcoming the challenges to using models to inform data collection has the potential to accelerate innovation and to improve practice in how we deal with infectious disease threats.


Subject(s)
Communicable Diseases/epidemiology , Data Collection/methods , Observational Studies as Topic/methods , Communicable Diseases/transmission , Epidemiologic Research Design , Humans , Models, Statistical
8.
J Theor Biol ; 258(4): 591-602, 2009 Jun 21.
Article in English | MEDLINE | ID: mdl-19268475

ABSTRACT

Mathematical modelling is playing an increasing role in developing an understanding of the dynamics of communicable disease and assisting the construction and implementation of intervention strategies. The threat of novel emergent pathogens in human and animal hosts implies the requirement for methods that can robustly estimate epidemiological parameters and provide forecasts. Here, a technique called variational data assimilation is introduced as a means of optimally melding dynamic epidemic models with epidemiological observations and data to provide forecasts and parameter estimates. Using data from a simulated epidemic process the method is used to estimate the start time of an epidemic, to provide a forecast of future epidemic behaviour and estimate the basic reproductive ratio. A feature of the method is that it uses a basic continuous-time SIR model, which is often the first point of departure for epidemiological modelling during the early stages of an outbreak. The method is illustrated by application to data gathered during an outbreak of influenza in a school environment.


Subject(s)
Communicable Diseases/epidemiology , Models, Statistical , Adolescent , Animals , Child , Disease Outbreaks , Forecasting , Humans , Influenza, Human/epidemiology , Models, Biological , Schools
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