| Literature DB >> 30071877 |
Nick Scott1,2, Ricardo Ataide1, David P Wilson1,2, Margaret Hellard1,2,3, Ric N Price4,5, Julie A Simpson6, Freya J I Fowkes7,8,9,10.
Abstract
BACKGROUND: Artemisinin-resistant Plasmodium falciparum has emerged in the Greater Mekong Subregion, an area of relatively low transmission, but has yet to be reported in Africa. A population-based mathematical model was used to investigate the relationship between P. falciparum prevalence, exposure-acquired immunity and time-to-emergence of artemisinin resistance. The possible implication for the emergence of resistance across Africa was assessed.Entities:
Keywords: Africa; Artemisinin; Drug resistance; Immunity; Malaria; Mathematical model
Mesh:
Substances:
Year: 2018 PMID: 30071877 PMCID: PMC6071336 DOI: 10.1186/s12936-018-2418-y
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Model schematic. Individuals are either susceptible; infected with disease in the latent stage (approximating liver-stage infection); or infectious to mosquitoes (approximating gametocyte/blood-stage). Infection can occur with wild-type or mutant strains, and people with wild-type infections can become classified as having mutant infections either by being bitten by mutant-carrying mosquitoes (limited by strain competition) or by undergoing a within-host mutation process (limited by strain competition and enhanced by drug pressure). Exposure and recovery increases immunity level—lowering the risk of transmission from mosquito to human and from human to mosquito—and in the absence of re-infection immunity level reduces over time. Recovery and immunity are not modelled for mosquitoes
For various P. falciparum prevalence settings in the Greater Mekong Subregion, estimates of the time between artemisinin-based combination therapy (ACT) introduction and the setting being classified by the WHO as having confirmed partial resistance
| Country | Year ACT introduced (estimated uncertainty)a | Year when classified as area of confirmed partial resistance | Observed time to confirmed partial resistance (estimated uncertainty)a | Average number of ACTs administered per person per yearc | |
|---|---|---|---|---|---|
| Vietnam | 1995 (1994–1996) [ | 4% (3–5%) [ | 2009 [ | 14 years (13–15 years) | 0.192 |
| Thailand | 1994 (1993–1995) [ | 7% (5–9%) [ | 2008 [ | 14 years (13–15 years) | 0.031 |
| Cambodia | 2000 1999–2001) [ | 6% (5–7%) [ | 2006 [ | 6 years (5–7 years) | 0.996 |
| Myanmar | 2002 (2001–2003) [ | 9% (8–10%) [ | 2008 [ | 6 years (5–7 years) | 0.681 |
| Lao PDR | 2002 (2001–2003) [ | 20% (17–22%) [ | 2013 [ | 11 years (10–12 years) | 1.588 |
Lao PDR Lao People’s Democratic Republic
a The precise year that ACT was introduced at scale is unclear, and so a ±1 year margin was used to capture this uncertainty
b Prevalence was estimated by calculating the average of the results of all studies from the Malaria Atlas Project in the relevant years, with 95% confidence intervals estimated as two standard errors of the mean. Details are provided in Additional file 1: Table S4
c Calculated from World Malaria Reports (treatment numbers) and UN Population Division data (population sizes). Details in Additional file 1: Table S3
d The year the World Health Organization recommended the use of ACT in these settings
Fig. 2Time to confirmed partial artemisinin resistance (as measured by the time from mutant strain introduction until ≥ 5% of individuals carry parasites with K13 mutations and a slow clearing phenotype) in different P. falciparum prevalence settings, defined by the prevalence of wild-type P. falciparum infections in the human population in the year ACT was introduced. Using mean parameter estimates, the model predicts a longer time to detect drug resistant strains in areas with higher prevalence (solid black line). The results of the Monte Carlo uncertainty analysis are consistent with this finding (each dot represents a simulation using randomly drawn parameters). Calibration data points and their uncertainties (95% CIs) for Cambodia, Lao PDR, Myanmar, Thailand and Vietnam were obtained from the literature (MAP [29], WHO [34])
Fig. 3The effects of varying the relative fitness of the mutant strain and the mutation rate in the mosquito population on the time to confirmed partial resistance (as measured by the time from mutant strain introduction until ≥ 5% of patients carry parasites with K13 mutation and a slow-clearing phenotype). The relationship between prevalence and time to resistance classification as the relative fitness of the mutant strain is varied in 5% relative increments (left), and as the mutation rate is varied among the mosquito population in 5% relative increments (right)
Fig. 4The effects of differing immunity on time to confirmed partial resistance (as measured by the time from mutant strain introduction until ≥ 5% of patients carry parasites with K13 mutation and a slow-clearing phenotype). The relationship between prevalence and time to confirmed partial resistance classification as the effects of immunity are increased/decreased in 1% relative increments for: wild-type transmission from mosquitoes to humans (top-left, from base values of 25%/50% for individuals with low/high immunity [42, 43]); mutant transmission from mosquitoes to humans (top-right, from base values of 25%/50% for individuals with low/high immunity [42, 43]); wild-type transmission from humans to mosquitoes (bottom-left, from base values of 40%/80% for individuals with low/high immunity [44]); and mutant transmission from humans to mosquitoes (bottom-right, from base values of 40%/80% for individuals with low/high immunity [44])
Fig. 5Projected emergence of artemisinin resistance in Africa. The estimated percentage of P. falciparum infections in African countries that contain ‘mutants’ (K13 mutations conferring the slow clearing phenotypes) as the most prevalent within-host strain; 2020, 2025 and 2030. Estimates are based on the prevalence of malaria reported in the Malaria Atlas Project [28, 29] in 2007 before the large scale-up of artemisinin-based combination therapy across Africa [38, 39]