| Literature DB >> 26259946 |
William J Moss, Grant Dorsey, Ivo Mueller, Miriam K Laufer, Donald J Krogstad, Joseph M Vinetz, Mitchel Guzman, Angel M Rosas-Aguirre, Socrates Herrera, Myriam Arevalo-Herrera, Laura Chery, Ashwani Kumar, Pradyumna K Mohapatra, Lalitha Ramanathapuram, H C Srivastava, Liwang Cui, Guofa Zhou, Daniel M Parker, Joaniter Nankabirwa, James W Kazura.
Abstract
Understanding the epidemiological features and metrics of malaria in endemic populations is a key component to monitoring and quantifying the impact of current and past control efforts to inform future ones. The International Centers of Excellence for Malaria Research (ICEMR) has the opportunity to evaluate the impact of malaria control interventions across endemic regions that differ in the dominant Plasmodium species, mosquito vector species, resistance to antimalarial drugs and human genetic variants thought to confer protection from infection and clinical manifestations of plasmodia infection. ICEMR programs are conducting field studies at multiple sites with the aim of generating standardized surveillance data to improve the understanding of malaria transmission and to monitor and evaluate the impact of interventions to inform malaria control and elimination programs. In addition, these epidemiological studies provide a vast source of biological samples linked to clinical and environmental "meta-data" to support translational studies of interactions between the parasite, human host, and mosquito vector. Importantly, epidemiological studies at the ICEMR field sites are integrated with entomological studies, including the measurement of the entomological inoculation rate, human biting index, and insecticide resistance, as well as studies of parasite genetic diversity and antimalarial drug resistance. © The American Society of Tropical Medicine and Hygiene.Entities:
Mesh:
Year: 2015 PMID: 26259946 PMCID: PMC4574274 DOI: 10.4269/ajtmh.15-0006
Source DB: PubMed Journal: Am J Trop Med Hyg ISSN: 0002-9637 Impact factor: 2.345
Summary of key indicators used for malaria monitoring and evaluation and surveillance
| Category | Indicators | Definitions | Primary source of data | |
|---|---|---|---|---|
| Key control interventions | ITN coverage | Proportion of households with at least one ITN | Household surveys | |
| Proportion of households with at least one ITN for every two people | ||||
| Proportion of proportion of individuals reporting ITN use in previous night | ||||
| IRS coverage | Proportion of households sprayed with IRS within the last 12 months | |||
| Proportion of population protected by IRS within the last 12 months | ||||
| Case management | Proportion of suspected malaria cases that receive a parasitological test | |||
| Proportion of confirmed malaria cases that receive first-line therapy | ||||
| IPTp coverage | Proportion of women who received at least three or more doses of IPTp during last pregnancy | |||
| Category | Indicators | Definitions | Comments | Primary source of data |
| Measures of transmission intensity | EIR | Number of infectious bites received per person per unit time | Widely considered gold standard measure of transmission | Entomology surveys |
| Infrequently measured | ||||
| Questions about precision and accuracy | ||||
| Parasite rate | Proportion of population found to carry asexual parasites | Reflection of intensity of transmission, immunity, and effectiveness of treatment | Cross-sectional surveys | |
| Dependent on age and diagnostic method | ||||
| Force of infection | Number of new infections per person per unit time | Difficult to accurately measure incident events | Cohort studies | |
| Molecular techniques have been proposed as a means of quantifying new parasite clones acquired | ||||
| Seroprevalence | Proportion of population found to have a positive antibody response to a specific antigen(s) | Have been correlated with EIR | Cross-sectional surveys | |
| Can provide “snap shot” of historical changes | ||||
| Only a limited number of antigens have been evaluated | ||||
| Lack of standardization in methods used to collect and analyze data | ||||
| Seroconversion rate | Number of new seroconversions per person per unit time. Calculated by fitting a reverse catalytic model to age-specific seroprevalence | |||
| Clinically relevant indicators | Test positivity rate | Proportion of patients with suspected malaria who are tested for infection and test positive | Efficient source of longitudinal data | Health facility-based surveillance |
| Dependent on age and diagnostic methods | ||||
| Malaria incidence | Number of confirmed malaria cases per person time of observation | Influenced by case detection methods | Cohort studies or national surveillance systems | |
| Challenging to accurately measure | ||||
| Subject to misclassification | ||||
| Dependent on age and diagnostic methods | ||||
| Prevalence of anemia | Proportion of population with hemoglobin level below various thresholds | Efficient means of estimating burden of disease | Cross-sectional surveys | |
| Multifactorial causes of anemia limits use | ||||
| Dependent on age | ||||
| All cause under 5 mortality rate | Probability (expressed as a rate per 1,000 live births) of a child born in a specified year dying before reaching the age of five | May be useful for monitoring temporal trends | National surveillance systems | |
| Limited by general lack of information on causes of death | ||||
| Malaria case fatality rate | Proportion of malaria cases that result in death | Generally limited to inpatient setting/severe disease | Health facility-based surveillance | |
| Influenced by source population and quality of care | ||||
| Death may be multifactorial | ||||
EIR = entomological inoculation rate; IPTp = intermittent preventive treatment in pregnancy; IRS = indoor residual spraying; ITN = insecticide-treated bed net.
Description of ongoing or planned at ICEMR field activities of malaria surveillance, monitoring, and evaluation
| ICMER regional centers | Field activities | |||
|---|---|---|---|---|
| Health facility-based surveillance | Cohort studies | Cross-sectional surveys | Entomology surveys | |
| Malawi | 2 district hospitals (outpatients and inpatients) | 1 high transmission site | 3 sites | Samples collected from cross-sectional surveys, case–control study and environmental surveys |
| 1 urban health center (outpatients) | Ages 1–50 years | 300 households per site | CDC light traps, household aspiration, larval collections | |
| 1 referral hospital (inpatients) | 200 participants | Twice a year | ||
| Active follow up every month | – | |||
| West Africa | 4 community health centers (outpatients) | 4 sites (3 rural, 1 urban) | 4 sites | 4 sites |
| All ages | Embedded in the cohort studies | 2 weeks before cross-sectional surveys and midseason | ||
| 700–1,500 participants per site | Twice a year (beginning and end of transmission season) | 30 houses per site | ||
| PCD and active follow-up every month | HLC, PSC | |||
| Southern Africa | 68 health centers (outpatients) | 3 rural sites | 3 sites | 3 sites |
| All ages | 150 households per site | Monthly collections | ||
| 430 participants | Every other month | 175 households per site | ||
| Active follow-up every 2 months | CDC light traps, PSC, larval collections | |||
| East Africa | 24 health centers (outpatients) | 3 sites (2 rural, 1 peri-urban) | 3 sites | 3 sites |
| 6 district hospitals (inpatients; children only) | Ages 0.5–10 years and 1 adult per house | 200 households per site | Monthly collections | |
| 100 households per site | Once a year | 100 houses per site | ||
| PCD and active follow-up every 3 months | CDC light traps (all); HLC, PSC/exit traps (subset) | |||
| Amazonia | 2 health centers (outpatients) | 2 sites | To be designed | 6 sites |
| Ages ≥ 3 years | HLC, Shannon trap, screen barriers, CDC light traps | |||
| 2,000 participants | Monthly collections (rainy season)/bimonthly (dry season) | |||
| Active follow-up every month | ||||
| Latin America | 4 outpatient clinics | 4 sites | 5 sites | 8 sites with repeated collections |
| 3 hospitals (inpatients) | All ages | 250–460 households per site | 57 sites with single collection (274 houses) | |
| 1,750 participants | CDC light traps, HLC, PSC, larval collections | |||
| Active follow-up every 6 months | ||||
| South Asia | 2 state and 1 district referral hospitals (outpatients and inpatients) | To be designed | To be designed | 4 sites |
| 6 rural clinics (outpatients) | Weekly collections | |||
| CDC light traps | ||||
| India | 3 outpatient clinic sites | 2 sites | 3 sites | 2 sites |
| Ages 1–70 years | 200–300 participants per site | Monthly collections | ||
| 200–300 participants per site | Two or three times a year | 5–20 houses; 5–18 cattle sheds depending on site | ||
| Active follow-up every 3 months and fortnightly fever surveillance | Aspiration and PSC; larval catches | |||
| Southeast Asia | 86 outpatient clinics/hospitals | 12 sites | 12 sites | 3 sites |
| All ages | ∼150 households per site | Collections twice a month | ||
| Total of ∼5,400 participants | 3–4 times a year | 30–60 houses per site | ||
| Weekly household visits | Light traps | |||
| Southwestern Pacific | 5 clinic sites (outpatients) | 3 sites | 3 sites | 5 sites |
| Ages 0.5–12 years | 2,500 participants per site | Landing catch and barrier screen methods | ||
| 450–800 participants per site | Once a year | |||
| Active follow up every month | ||||
CDC = Centers for Disease Control and Prevention; HLC = human landing catches; ICEMR = International Centers of Excellence for Malaria Research; PCD = passive case detection; PSC = pyrethrum spray catches.
Miscellaneous work includes case–control study of urban malaria (Malawi), reactive case detection (India).
Key malaria metrics at ICEMR field sites
| ICMER | Country | Site | Predominant parasites | Predominant vectors | Season | EIR | Parasite prevalence | ITN coverage (%) | IRS coverage (%) |
|---|---|---|---|---|---|---|---|---|---|
| Africa | |||||||||
| East Africa | Uganda | Jinja | Perennial | 3 | 16% (2–10 years) | 58 | 3 | ||
| Uganda | Kanungu | Perennial | 30 | 18% (2–10 years) | 51 | 0 | |||
| Uganda | Tororo | Perennial | 310 | 60% (2–10 years) | 79 | 0 | |||
| Malawi | Malawi | Blantyre | Single | NA | 9% (all ages) | 84 | 2 | ||
| Malawi | Thyolo | Single | NA | 14% (all ages) | 85 | 0 | |||
| Malawi | Chikwawa | Perennial | 100 | 30% (all ages) | 93 | 73 | |||
| Southern Africa | Zambia | Nchelenge | Perennial | 140 | 50% (all ages) | 62 | 28 | ||
| Zambia | Choma | Single | < 1 | 1% (all ages) | 83 | 0 | |||
| Zimbabwe | Mutasa | Single | 10 | 10% (all ages) | 59 | 57 | |||
| West Africa | Gambia | Gambissara | Single | 25 | 8% (all ages) | 85 | 95 | ||
| Senegal | Thiès | Single | 1 | 1% (all ages) | 20 | 0 | |||
| Mali | Dangassa | Single | 50 | 48% (all ages) | 30 | 0 | |||
| Mali | Dioro | Single | 5 | 24% (all ages) | 95% | 0 | |||
| South America | |||||||||
| Amazonia | Peru | Loreto | Perennial | 5 | 9% (all ages) | 70 | 55 | ||
| Latin America | Colombia | Tierralta | Perennial | 3 | 6% (all ages) | 88 | 0 | ||
| Colombia | Buenaventura | Perennial | < 1 | 5% (all ages) | 95 | 0 | |||
| Colombia | Tumaco | Perennial | 3 | 6% (all ages) | 97 | 0 | |||
| Peru | Sullana | Single | < 1 | 1% (all ages) | 44 | 80 | |||
| Asia and South Pacific | |||||||||
| India | India | Chennai | Perennial | NA | 5.7% | 0 | 0 | ||
| 0.4% | |||||||||
| India | Raurkela | Perennial | 7.3–127 | 1.5% | 60 | 5 | |||
| 5% | |||||||||
| India | Nadiad | Single | 0.05–0.21 | 5.7% | 1 | 9 | |||
| 2.4% | |||||||||
| South Asia | India | Goa | Perennial | 2.5 | 0.4% | 0 | 0 | ||
| India | Wardha | Perennial | NA | 0.2% | 0 | 0 | |||
| India | Ranchi | Perennial | NA | 1.4% | NA | NA | |||
| India | Assam | Perennial | 0.4 | 6% (all ages) | 79 | 40 | |||
| 0.1 | |||||||||
| Southeast Asia | China | Ying Jiang | Perennial | 0.1 | NA | 80 | 100 | ||
| Myanmar | Laiza | Perennial | 0.4 | 1% (all ages) | 96 | 100 | |||
| Thailand | Tha Song Yang | Perennial | 0.3 | 0.3% (all ages) | 90 | 72 | |||
| Southwest Pacific | PNG | East Sepik | Perennial | 14 | 7% | 96 | 0 | ||
| 4% | |||||||||
| 1% | |||||||||
| 1% | |||||||||
| (all ages) | |||||||||
| PNG | Madang | Perennial | 40 | 19% | 96 | 0 | |||
| 13% | |||||||||
| – | |||||||||
| – | |||||||||
| Solomon Islands | Central Province | Perennial | 40 | 14% | 90 | 81 | |||
| Solomon Islands | Western Province | Perennial | NA | NA | 95 | NA | |||
EIR = entomological inoculation rate (number of infectious bites per year); ICEMR = International Centers of Excellence for Malaria Research; IRS = indoor residual spraying; ITN = insecticide-treated bed net; ITN coverage = proportion of households with at least two ITNs; IRS coverage = proportion of households sprayed within insecticide within the past year; NA = not available; Parasite prevalence = proportion of individuals in specified age groups positive for malaria by RDT or microscopy; PNG = Papua New Guinea; PPY = person per year.
Figure 1.Predominant parasite species at the International Centers of Excellence for Malaria Research (ICEMR) research sites.
Figure 2.Approximate annual entomological inoculation rates at International Centers of Excellence for Malaria Research (ICEMR) research sites.
Figure 3.Seasonality of malaria transmission at the International Centers of Excellence for Malaria Research (ICEMR) research sites.
Figure 4.Approximate parasite prevalence at the International Centers of Excellence for Malaria Research (ICEMR) research sites.