Taking Sharper Pictures of Malaria with CAMERAs: Combined Antibodies to Measure Exposure Recency Assays

Bryan Greenhouse Department of Medicine, University of California, San Francisco, San Francisco, California;
Chan Zuckerberg Biohub, San Francisco, California;

Search for other papers by Bryan Greenhouse in
Current site
Google Scholar
PubMed
Close
,
David L. Smith Institute for Health Metrics and Evaluation, University of Washington, Seattle, Washington;

Search for other papers by David L. Smith in
Current site
Google Scholar
PubMed
Close
,
Isabel Rodríguez-Barraquer Department of Medicine, University of California, San Francisco, San Francisco, California;

Search for other papers by Isabel Rodríguez-Barraquer in
Current site
Google Scholar
PubMed
Close
,
Ivo Mueller Walter and Eliza Hall Institute of Medical Research, Parkville, Australia;
Institute Pasteur, Paris, France;

Search for other papers by Ivo Mueller in
Current site
Google Scholar
PubMed
Close
, and
Chris J. Drakeley London School of Hygiene & Tropical Medicine, London, United Kingdom

Search for other papers by Chris J. Drakeley in
Current site
Google Scholar
PubMed
Close

Antibodies directed against malaria parasites are easy and inexpensive to measure but remain an underused surveillance tool because of a lack of consensus on what to measure and how to interpret results. High-throughput screening of antibodies from well-characterized cohorts offers a means to substantially improve existing assays by rationally choosing the most informative sets of responses and analytical methods. Recent data suggest that high-resolution information on malaria exposure can be obtained from a small number of samples by measuring a handful of properly chosen antibody responses. In this review, we discuss how standardized multi-antibody assays can be developed and efficiently integrated into existing surveillance activities, with potential to greatly augment the breadth and quality of information available to direct and monitor malaria control and elimination efforts.

EFFECTIVE MALARIA STRATEGIES REQUIRE GOOD DATA

Elimination of malaria or effective and sustainable control requires deployment of interventions updated using surveillance data. Contemporary, accurate information on malaria transmission is required to determine which interventions should be deployed where to reduce transmission effectively given resource constraints. The ability to detect changes in transmission is an integral part of evaluating program activities by providing evidence for the effectiveness of interventions and identifying when and where changes are needed. Given the central role of surveillance data in guiding strategy, any tools that could provide data more accurately or cost-effectively would be of great value; the next generation of antibody assays for measuring malaria transmission holds promise for doing both.

THE CURRENT FOCUS OF MALARIA SURVEILLANCE

One would be hard-pressed to find a malaria program officer, epidemiologist, or funder of interventions who would not prefer a clearer picture of malaria in their target population. Some types of surveillance data, such as detailed entomological measurements or cohort studies, are not feasible for routine surveillance of transmission because they are too resource intensive to be performed extensively. These high-resolution snapshots are extremely valuable for answering research questions in small geographic areas at particular times but are too sparse to provide a contemporary picture of malaria transmission complete enough for programmatic use. The rest of the picture is filled in primarily from two other sources of data—routine passive surveillance and cross-sectional surveys. Passive surveillance data are widely and continuously collected as health systems provide care to those with malaria. The utility of these data depend heavily on the quality of diagnosis, completeness of reporting, and ability to account for important factors regarding catchment populations, care seeking, and clinical immunity.1 Thus, although the quality of and access to these data are improving, limitations remain, particularly in settings where a small minority of infections get reported through standard surveillance.2

The most widely collected, standardized data currently available are based on surveys that collect blood from a cross-sectional sample of individuals in a population. The primary metric collected in most surveys to date has been the prevalence of parasites or parasite rate (PR), based on light microscopy, rapid diagnostic test, or nucleic acid detection (e.g., polymerase chain reaction [PCR]). Data from such surveys form the basis of global maps of malaria.3 Prevalence data, although useful, are limited in the ability to detect changes in malaria transmission where transmission is so high that PR remains high even if exposure decreases considerably, or where it is so low that infeasibly large sample sizes are required to accurately measure changes over time or at fine enough spatial scales to be programmatically useful.4

Prevalence data are an important mainstay of surveillance, but each sample provides a single piece of information—whether a person has detectable blood-stage infection or not. This is a particular challenge in seasonal transmission environments or with Plasmodium vivax, where people can harbor dormant liver-stage infection without having a concurrent blood-stage infection. It is possible to learn more about malaria exposure from the same blood sample by additionally measuring antibody responses to parasite antigens. This holds the promise that a single sample could add substantially more information to population-level measures of transmission because each antibody response measured provides information about past exposure in addition to current infection status. Obtaining antibody data is quite practical: enzyme-linked immunosorbent assay (ELISA) and some multiplexed assays are inexpensive and can be performed on material extracted from dried blood spots which are simple to collect and transport; point-of-contact tests such as lateral flow and microfluidic assays are also options. The result promises to be a more resolved picture of malaria transmission.

USING ANTIBODIES TO SHARPEN SURVEILLANCE DATA

There is growing interest in using serosurveys to gain understanding of disease transmission and inform control interventions across a broad set of pathogens.5 Antibodies have been used to estimate exposure to pathogens, including malaria parasites for over 70 years, but the approach has become more accessible and standardized because of availability of purified recombinant antigens and development of appropriate analytical methods. A commonly used strategy to estimate transmission intensity from serological surveys has been used to analyze seropositivity by age to compute a force of infection or seroconversion rate (SCR), which takes advantage of the fact that individuals in more highly endemic areas are more likely to have been exposed to malaria parasites and thus to have detectable antibody responses. These methods were initially developed for permanently immunizing infections such as measles and yellow fever,6,7 but adapted for malaria in the last decade.8,9 By translating age-stratified antibody prevalence data into a metric which reflects overall transmission in a community, the SCR extracts meaningful population information from individuals’ binary, typically long-lived responses to immunogenic Plasmodium proteins (Figure 1A). This strategy has been validated across a wide range of epidemiologic settings, and clearly demonstrates the value of collecting antibody data in surveys (Figure 1B).

Figure 1.
Figure 1.

Established and next-generation methods for evaluating malaria transmission via antibodies provide higher resolution than parasite prevalence. (A) The seroconversion rate (SCR) for a population can be calculated from age-stratified prevalence of antibody responses, often with a long half-life. Data shown here are responses to apical membrane antigen 1 from three cross-sectional surveys in Uganda.34 (B) Paired SCR and parasite rate (PR) data from multiple sites10,3443 demonstrate that SCR (using merozoite surface protein 1, MSP-1) has a tighter association with transmission, as measured by the annual entomologic inoculation rate (EIR). (C) Using six antibodies identified as informative about recent exposure, predictions of P. falciparum exposure in a community can be obtained from relatively small surveys, in contrast to PR data obtained from the same surveys.19 (D) A simulation of a small village (N = 100) with seasonal, low transmission illustrates how ongoing transmission can be detected consistently from an antibody test measuring recent exposure, but less reliably from rapid diagnostic test (RDT).44

Citation: The American Journal of Tropical Medicine and Hygiene 99, 5; 10.4269/ajtmh.18-0303

The SCR provides a useful metric for stable, community-level transmission, but with recent successes in decreasing malaria transmission, it is frequently of interest to measure changes in exposure over time. Signals of abrupt changes in exposure have been detected in the age-stratified antibody prevalence profile by estimating a change in SCR, reflecting a change transmission intensity at some point in time or with a certain age.10 However, it is difficult to quantify very recent changes in exposure from binary antibody responses with a long half-life.11 Similarly, it is often difficult to quantify changes in transmission from samples collected at a single time point as they may be confounded by age dependence in risk. Fortunately, the human antibody response to complex pathogens contains rich information which can be leveraged if the right responses are identified, measured, and analyzed appropriately. Advances are being made in three related areas: 1) using information contained in the titers of antibodies, instead of reducing them to binary responses; 2) measuring antibodies to multiple antigens with differing kinetics, rather than limiting measurement to one or a few antigens with long half-lives; and 3) developing analytical methods which take advantage of these rich data to provide precise, quantitative estimates of exposure history in populations from more intensive analysis of fewer samples.

Methods have been recently developed to extend the analysis of age-stratified antibody prevalence by incorporating antibody titers.1214 Some of these models are similar in concept to those used to calculate SCR, but allow for different rates of boost and decay of relative antibody concentrations—data which are often already available from standardized ELISA or multiplex assay readouts. By using more information, these methods should produce more precise estimates of malaria transmission than those derived from binary responses. In parallel, investigators have begun to evaluate what information can be obtained by measuring responses to different antigens.1518 Not surprisingly, responses to different antigens appear to provide information of greater or lesser value for answering specific epidemiologic questions in different populations depending on their immunogenicity and other properties. For example, by evaluating SCR to hundreds of proteins using a protein microarray, Baum et al.15 showed that a distinct subset of these targets was more efficient in distinguishing transmission in two areas of highland Kenya. Similarly, Ondigo et al.16 demonstrated that seroconversion and reversion rates to different antigens varied considerably and illustrated how evaluating SCR to a number of antigens could provide more information on the temporal structure of past exposure than looking at responses to a single antigen. To turn these promising findings into reliable, informative antibody assays, we propose a strategy to design Combined Antibodies to Measure Exposure Recency Assays (CAMERAs) with the aim of answering actionable questions across a range of epidemiologic settings.19

DESIGNING HIGH-RESOLUTION CAMERAS FOR ACTIONABLE MALARIA SURVEILLANCE

Obtaining precision surveillance data from antibodies requires a detailed understanding of how antibody responses change over time in response to infection, and how these kinetics are modulated by factors such as age, genetic diversity in parasite and host, and prior Plasmodium exposure (including different species). Initiating prospective studies to define antibody kinetics throughout a representative set of epidemiologic settings would be an enormous endeavor.

Fortunately, a number of well-characterized cohorts have been performed or are ongoing in malaria-endemic areas, and many have archived appropriate biologic material in the form of serum, plasma, or dried blood spots.2028 The most useful of these have detailed capture of malaria infections through frequent active (e.g., monthly) and continuous passive surveillance, follow participants for an extended period of time (ideally ≥ 1 year), and have sufficient sample sizes to capture individual heterogeneity (e.g., ≥ 50 per age strata). Cohorts in which a documented change in transmission intensity has occurred are of particular interest, as these offer the best opportunity to disentangle recent from cumulative exposure. With these existing studies providing at least a subset of the samples needed, the next step is to identify antibody responses that are most informative about transmission. Although it has been shown that different antigens tend to elicit different qualities of response,29,30 it is still difficult to predict these a priori. In addition, it is not just the average of any particular metric of response to an antigen (e.g., degree of boosting with exposure, and half-life) that matters but also biological variation in these qualities across individuals. Therefore, a broad screen of responses provides the highest probability of identifying the optimal set of informative biomarkers.

High-throughput screens using protein microarrays or similar technologies offer one such approach.18,31 This technique allows rapid screening of a large number of responses and requires minimal amounts of both sample and antigen. Rapid production of “crude” antigens without much optimization allows a large number of antibody responses to be screened up front with minimal start-up time. One potential downside of this approach is that a subset of antigens may not be properly expressed or folded, but this potential limitation is less of an issue for efforts trying to identify markers of exposure as opposed to characterizing correlates of immunity. Furthermore, this downside is potentially overcome by sheer numbers—responses to certain sets of antigens are likely to provide similar information, and by screening many analytes simultaneously, it is likely that at least one representative member of each set will be successfully evaluated. Other high-throughput approaches, including peptide arrays32 and phage display libraries,33 may allow rapid evaluation of individual linear epitopes, including the ability to capture naturally occurring genetic variation in the target. The effort in producing standardized reagents at scale—ultimately required for final assays—can then be focused on a down selected set of promising antigens followed by iterations of validation to design CAMERAs (Figure 2).

Figure 2.
Figure 2.

Approach to designing combined antibodies to measure exposure recency assays (CAMERAs). (A) Samples from detailed cohorts, where accurate data on individuals’ prior malaria infections are available, are critical for providing a gold standard to identify informative antibody responses. Cohorts should represent the range of ages and epidemiologic settings where CAMERAs will ultimately be used. Various platforms are available for high-throughput screening of antibody responses, with tradeoffs based on cost, number of analytes that can be screened, precision, and dynamic range. (B) Down selection of the most informative combinations of responses (i.e., considered jointly) is accomplished via parametric modeling of antibody kinetics45 and/or any number of machine learning prediction algorithms. Both of these analytical approaches have advantages, and combining both may be optimal. (C) Top “hits” identified in comprehensive screens require validation in distinct individuals and cohorts. Given the smaller number of responses evaluated, it may be feasible to evaluate much larger numbers of samples including longitudinal sampling from individuals over time. (D) Final CAMERAs can be designed as point-of-contact (e.g., based on lateral flow or microfluidics) or laboratory-based assays, depending on the use case. The analytics for deriving epidemiologically relevant metrics from antibody responses will be integral to the assay.

Citation: The American Journal of Tropical Medicine and Hygiene 99, 5; 10.4269/ajtmh.18-0303

We have recently demonstrated the feasibility and potential of this approach, screening plasma samples from two cohorts of children in Uganda using a protein microarray containing 856 Plasmodium falciparum antigens, included based on their potential to provide information about prior exposure to this parasite.19 In this study, data from a small subset of antibodies (e.g., 3–6) chosen based on their combined information content measured at a single time point provided accurate estimates of whether an individual was infected in the last 30, 90, or 365 days and on their incidence of malaria in the prior year. These quantitative, individual-level data rivaled the rich information obtained from expensive cohort studies. For example, estimates of incidence obtained from antibodies accurately reproduced the spatial heterogeneity in transmission within a community detected by 1 year of entomological and clinical cohort data. When aggregated, antibody data from individuals dramatically outperformed parasite prevalence in precision and dynamic range, providing estimates of the incidence of malaria in a community from sample sizes as small as 20 (Figure 1C).

The specific antibody responses selected to be measured will depend on which are most informative for a given scenario. The number of potential antigens encoded by Plasmodium genomes, and number of sequence variants for those under balancing selection, is large, providing an embarrassment of riches regarding what to measure. Antibodies directed at antigens expressed exclusively during the pre-erythrocytic stage of infection may make good markers of newly acquired infection; those continually boosted by low-density asexual-stage infection may be better indicators of recent chronic infection; those specific for a given plasmodia will provide species-specific data. Evaluating responses to a panel of antigenic variants, or even specific epitopes within these variants, looking at different classes or immunoglobulin G (IgG) subclasses of antibodies, and evaluating avidity may all in theory provide additional information given the different kinetics of these responses. Antibodies directed against mosquito salivary antigens may provide additional information regarding exposure to important vectors. In the end, consistent empiric data validated across multiple settings with appropriate gold standards will be the best arbiter of what should be included in a CAMERA. A number of platforms are currently available for measuring antibodies (Figure 2), and options will continue to grow. Important factors informing appropriate platforms include the number and type of antibody responses and whether binary, semi-quantitative, or quantitative responses are required; cost, portability, speed, and level of training and equipment needed to perform the assay.

With the availability of samples and data from cohorts, methods for high-throughput screening of antibody responses, and a robust data analysis approach considering combinations of responses with appropriate validation, it should be possible to craft antibody assays that will provide accurate answers to nearly any malaria surveillance question with respect to the rate and timing of human Plasmodium infection. With that in mind, the most pressing questions will largely depend on the epidemiologic setting and consumer of the data (Table 1). In areas of endemic transmission, it will be important to measure variations in transmission over space and time, especially in response to interventions. For these settings, antibody assays will add power to surveys of parasite prevalence by increasing the range of transmission intensities over which estimates can be accurately obtained, and by increasing precision, allowing for smaller sample sizes and/or spatial mapping at a more granular level. In settings where P. vivax is endemic, a serologic test of recent infection may signal the presence of hypnozoites and thus need for radical cure. For control programs deciding strategy in areas of very low transmission attempting to eliminate malaria, additional questions become important. In such areas, it is of interest to identify all individuals who have been infected within a defined period of time to understand if local transmission is occurring, and if so where, how much, and in whom. In these areas, data on recent infections are of particular added value, given the large sample sizes otherwise needed to confirm or exclude ongoing transmission (Figure 1D). Evidence of more remote infection may also be of interest, to provide historical context for transmission potential when transmission has been interrupted. Finally, in the research setting, biomarkers of individuals’ prior malaria exposure may be important outcomes in epidemiologic studies, or as ways to adjust analyses for heterogeneous exposure, for example, when investigating mechanisms of immunologic protection.

Table 1

Actionable malaria surveillance data obtainable with combined antibodies to measure exposure recency assays

SettingRelevant questionsInformation derived from antibody assaysAdded value to traditional metrics
Programmatic, endemicWhat is the current level of transmission and how does it vary over space and time?Accurate estimates of transmission intensity calibrated to relevant metrics (e.g., force of infection) now and over time for communities. In particular, how intensity changes in response to interventions, human and mosquito behavior, and other factors.Dynamic range allows estimates over a broader range of transmission intensity than parasite prevalence.
Where are interventions most needed and which are optimal?Estimates of recent Plasmodium vivax infection, and thus likely hypnozoite carriage.Increased precision allows for smaller sample sizes and/or spatial mapping at a more granular level.
How well are current interventions working?Ability to measure prior and current transmission, for areas where prior estimates are not available.
Are individuals infected with dormant stages of parasites (P. vivax)?Ability to determine whether individuals are latently infected with P. vivax.
Programmatic, peri-elimination(above plus)Where recently or currently infected individuals live.(above plus)
Where are residual foci of transmission, if any?Identification of parasite species causing recent infections.More information from each individual allows for smaller sample sizes and/or more granular spatial data.
Which Plasmodium species are causing infections?Demographics of recently or currently infected individuals.Increased sensitivity for detecting infections when they are rare, including by species such as Plasmodium knowlesi, by detecting over a larger range of time.
What are the demographic groups at the highest risk of infection or transmission to others?How far in the past infections took place.Ability to reconstruct historical exposure from contemporary measurements.
Has transmission been interrupted?Historical spatial distribution of malaria exposure.Ability to measure waning immunity.
What is the receptivity of the area?Probability of individuals experiencing symptomatic or severe disease on infection.
Is the population susceptible to epidemic transmission?
ResearchWhat are the epidemiologic risk factors for infection with malaria parasites?Estimates of individuals’ prior exposure.Ability to evaluate diversity of parasites to which individuals have been previously exposed, for example, by measuring breadth of responses to polymorphic antigens.
What are the biomarkers and mechanisms of immunity to malaria?Determining how much variation in naturally acquired immunity can be attributed to differences in prior exposure.Ability to estimate individuals’ cumulative and recent exposure before observation during the research study.

PEOPLE ARE DIFFERENT, AND THAT IS OK

The extent to which particular surveillance questions can be answered by antibody data, and the corresponding sample sizes required to obtain answers with a given accuracy, will be largely determined by the sources of variation in antibody responses and the degree to which this variability can be systematically accounted for. Although laboratory methods can be optimized to minimize technical variation in the measurement of titer or presence versus absence of an antibody response, biological variation will remain. Some of this biological variation may be attributable to identifiable factors such as age and history of prior infection, but some will be unmeasured biological variability that is difficult to account for, for example, due to host genetics or nutritional status. In addition, differences in the sequence of parasite antigens, if not adequately taken into consideration, can provide an additional source of variation between individuals within a site or between geographic sites. Together, these sources of variation will set inherent limits on the precision of information that can be obtained from a particular antibody response in a given person. Despite this variation, precise population-level estimates can be obtained from antibody responses by 1) measuring responses to multiple antigens; 2) sampling multiple people in a given area; 3) incorporating knowledge of age–exposure–antibody relationships into data analysis; and 4) tailoring antibody assays to specific age groups and/or transmission intensities. Regarding the latter, although having a universal antibody assay for use in all settings may seem the most straightforward, in reality it is likely that certain sets of responses will have more utility in some settings versus others. For example, antibody responses which provide information about a decline in entomologic inoculation rate from 100 to 10 infectious bites per person year may be different than those which can confirm the absence of recent exposure in an elimination setting. Depending on multiplex capacity, the same standardized laboratory platform may essentially contain multiple “assays,” of which only a subset are actually used to produce outputs for a given setting. Platforms requiring a more parsimonious set of analytes, for example, standard lateral flow assays may be best targeted to a specific epidemiologic setting.

The apparent ambiguity of how to interpret a particular antibody response in a particular individual has been a psychological barrier in the widespread dissemination and acceptance of antibody data for surveillance. However, more commonly used metrics, such as parasite prevalence, are subject to similar caveats. Detecting a parasite in an individual’s blood, while seemingly concrete, is still an indirect measure of transmission mediated by the duration and density of infection, which are functions of age, prior exposure, and the limit of detection of the assay used (e.g., microscopy versus PCR). For this reason, parasite prevalence requires age standardization a reasonably sized sample of the population to obtain a single point estimate.3 Estimates of transmission derived from antibodies will also be averaged across a population sample. Thus, while there will be some uncertainty as to, for example, if a particular individual has been infected two versus three times in the past year, precise estimates of transmission can still be derived for the population. As discussed earlier, the increased granularity of information provided by antibody data for each individual will likely result in more accurate estimates from smaller sample sizes despite inherent biological variation. This advantage holds across all transmission intensities but may be particularly salient in areas of very low transmission.

PRACTICAL CONSIDERATIONS FOR INCORPORATING CAMERAS INTO ROUTINE SURVEILLANCE

Antibody measurements have great potential for augmenting information obtained in malaria surveillance activities. However, specific questions remain on what should be measured, in whom, and how to best make sense of the data (Figure 3). This will inevitably be an iterative process, with analytes, platforms, and analytical methods building on prior efforts. If methods are designed to map to relevant metrics of interest, for example, force of infection in the last year or the presence or absence of infection within the past year, then methods with improved test characteristics can be implemented as they become available with comparable outputs.

Figure 3.
Figure 3.

Outstanding questions for developing and using combined antibodies to measure exposure recency assays (CAMERAs).

Citation: The American Journal of Tropical Medicine and Hygiene 99, 5; 10.4269/ajtmh.18-0303

Once CAMERAs are designed and test characteristics are known, for example, among which age groups they are informative in a given setting, appropriate surveillance activities for sample collection and antibody measurement can be determined. For cross-sectional surveys, for example, malaria indicator surveys, school surveys, active and reactive case detection, and other surveillance activities, including those performed in intervention trials, CAMERAs offer a clear opportunity for obtaining additional information. Such measurements will add little incremental cost and, in fact, may offer substantial cost savings as smaller sample sizes may be required to obtain similar information. Incorporating measurement of antibodies in many cases requires no additional field work because many such surveys are already collecting dried blood spot samples. For example, demographic and health surveys (DHS) conducted in more than 50 countries already collect serum samples to measure specific biomarkers.5 Efficient collection of samples from other convenient venues, for example, from those presenting to health facilities for routine care may provide continuous, low-cost data to augment metrics such as test positivity rates and malaria incidence. The ease of collecting more comprehensive data at low cost via such approaches will need to be balanced with issues surrounding potentially biased sampling and is an area ripe for further investigation.

Finally, antibody data generated need to be consistently translated into easily interpretable metrics of transmission. Development and evaluation of analytical methods will be an integral part of assay design, critical for making decisions regarding the number and type of antibody responses which will be measured. Simple point-of-care assays may require straightforward interpretation, for example, a band visible on a lateral flow assay might indicate infection within the past year. However, given the potential increase in the breadth and accuracy of information obtained from combining data from multiple antibody responses, other assays may use more sophisticated algorithms. Such algorithms can be easily implemented in software to provide straightforward interpretation regardless of the complexity of the underlying algorithm.

The path for developing high-resolution CAMERAs is clear, and a number of research teams are working toward answering the salient questions outlined previously. As CAMERAs are designed, validated, and improved, their key role in malaria surveillance will come into clear focus.

Acknowledgments:

The authors thank Edward Wenger (Institute for Disease Modeling) for producing the simulation and associated image used in Figure 1D.

REFERENCES

  • 1.

    Tusting LS, Bousema T, Smith DL, Drakeley C, 2014. Chapter three—measuring changes in Plasmodium falciparum transmission: precision, accuracy and costs of metrics. Rollinson D, ed. Advances in Parasitology, Vol. 84. Academic Press, 151–208. Available at: http://www.sciencedirect.com/science/article/pii/B978012800099100003X. Accessed August 11, 2014.

    • PubMed
    • Export Citation
  • 2.

    Lindblade KA, Steinhardt L, Samuels A, Kachur SP, Slutsker L, 2013. The silent threat: asymptomatic parasitemia and malaria transmission. Expert Rev Anti Infect Ther 11: 623639.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 3.

    Gething PW, Patil AP, Smith DL, Guerra CA, Elyazar IR, Johnston GL, Tatem AJ, Hay SI, 2011. A new world malaria map: Plasmodium falciparum endemicity in 2010. Malar J 10: 378.

  • 4.

    Hay SI, Smith DL, Snow RW, 2008. Measuring malaria endemicity from intense to interrupted transmission. Lancet Infect Dis 8: 369378.

  • 5.

    Metcalf CJE, Farrar J, Cutts FT, Basta NE, Graham AL, Lessler J, Ferguson NM, Burke DS, Grenfell BT, 2016. Use of serological surveys to generate key insights into the changing global landscape of infectious disease. Lancet Lond Engl 388: 728730.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 6.

    Grenfell BT, Anderson RM, 1985. The estimation of age-related rates of infection from case notifications and serological data. Epidemiol Amp Infect 95: 419436.

  • 7.

    Muench H, 1934. Derivation of rates from summation data by the catalytic curve. J Am Stat Assoc 29: 2538.

  • 8.

    Drakeley CJ et al. 2005. Estimating medium- and long-term trends in malaria transmission by using serological markers of malaria exposure. Proc Natl Acad Sci USA 102: 51085113.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 9.

    Corran P, Coleman P, Riley E, Drakeley C, 2007. Serology: a robust indicator of malaria transmission intensity? Trends Parasitol 23: 575582.

  • 10.

    Cook J, Kleinschmidt I, Schwabe C, Nseng G, Bousema T, Corran PH, Riley EM, Drakeley CJ, 2011. Serological markers suggest heterogeneity of effectiveness of malaria control interventions on Bioko Island, Equatorial Guinea. PLoS One 6: e25137.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 11.

    Sepúlveda N, Paulino CD, Drakeley C, 2015. Sample size and power calculations for detecting changes in malaria transmission using antibody seroconversion rate. Malar J 14: 529.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 12.

    Arnold BF, van der Laan MJ, Hubbard AE, Steel C, Kubofcik J, Hamlin KL, Moss DM, Nutman TB, Priest JW, Lammie PJ, 2017. Measuring changes in transmission of neglected tropical diseases, malaria, and enteric pathogens from quantitative antibody levels. PLoS Negl Trop Dis 11: e0005616.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 13.

    Pothin E, Ferguson NM, Drakeley CJ, Ghani AC, 2016. Estimating malaria transmission intensity from Plasmodium falciparum serological data using antibody density models. Malar J 15: 79.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 14.

    Yman V, White MT, Rono J, Arcà B, Osier FH, Troye-Blomberg M, Boström S, Ronca R, Rooth I, Färnert A, 2016. Antibody acquisition models: a new tool for serological surveillance of malaria transmission intensity. Sci Rep 6: 19472.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 15.

    Baum E, Badu K, Molina DM, Liang X, Felgner PL, Yan G, 2013. Protein microarray analysis of antibody responses to Plasmodium falciparum in western Kenyan highland sites with differing transmission levels. PLoS One 8: e82246.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 16.

    Ondigo BN, Hodges JS, Ireland KF, Magak NG, Lanar DE, Dutta S, Narum DL, Park GS, Ofulla AV, John CC, 2014. Estimation of recent and long-term malaria transmission in a population by antibody testing to multiple Plasmodium falciparum antigens. J Infect Dis 210: 11231132.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 17.

    King CL, Davies DH, Felgner P, Baum E, Jain A, Randall A, Tetteh K, Drakeley CJ, Greenhouse B, 2015. Biosignatures of exposure/transmission and immunity. Am J Trop Med Hyg 93 (Suppl): 1627.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 18.

    Longley RJ et al. 2017. Naturally acquired antibody responses to more than 300 Plasmodium vivax proteins in three geographic regions. PLoS Negl Trop Dis 11: e0005888.

  • 19.

    Helb DA et al. 2015. Novel serologic biomarkers provide accurate estimates of recent Plasmodium falciparum exposure for individuals and communities. Proc Natl Acad Sci USA 112: E4438E4447.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 20.

    Coulibaly D et al. 2014. Stable malaria incidence despite scaling up control strategies in a malaria vaccine-testing site in Mali. Malar J 13: 374.

  • 21.

    Clark TD, Njama-Meya D, Nzarubara B, Maiteki-Sebuguzi C, Greenhouse B, Staedke SG, Kamya MR, Dorsey G, Rosenthal PJ, 2010. Incidence of malaria and efficacy of combination antimalarial therapies over 4 years in an urban cohort of Ugandan children. PLoS One 5: e11759.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 22.

    Olotu A, Fegan G, Williams TN, Sasi P, Ogada E, Bauni E, Wambua J, Marsh K, Borrmann S, Bejon P, 2010. Defining clinical malaria: the specificity and incidence of endpoints from active and passive surveillance of children in rural Kenya. PLoS One 5: e15569.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 23.

    Kamya MR et al. 2015. Malaria transmission, infection, and disease at three sites with varied transmission intensity in Uganda: implications for malaria control. Am J Trop Med Hyg 92: 903912.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 24.

    Robinson LJ et al. 2015. Strategies for understanding and reducing the Plasmodium vivax and Plasmodium ovale hypnozoite reservoir in Papua New Guinean children: a randomised placebo-controlled trial and mathematical model. PLoS Med 12: e1001891.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 25.

    Longley RJ, Reyes-Sandoval A, Montoya-Díaz E, Dunachie S, Kumpitak C, Nguitragool W, Mueller I, Sattabongkot J, 2016. Acquisition and longevity of antibodies to Plasmodium vivax preerythrocytic antigens in western Thailand. Clin Vaccine Immunol 23: 117124.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 26.

    Mwesigwa J et al. 2017. Residual malaria transmission dynamics varies across the Gambia despite high coverage of control interventions. PLoS One 12: e0187059.

  • 27.

    Tran TM et al. 2013. An intensive longitudinal cohort study of Malian children and adults reveals no evidence of acquired immunity to Plasmodium falciparum infection. Clin Infect Dis 57: 4047.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 28.

    Rodriguez-Barraquer I et al. 2016. Quantifying heterogeneous malaria exposure and clinical protection in a cohort of Ugandan children. J Infect Dis 214: 10721080.

  • 29.

    Akpogheneta OJ, Duah NO, Tetteh KKA, Dunyo S, Lanar DE, Pinder M, Conway DJ, 2008. Duration of naturally acquired antibody responses to blood-stage Plasmodium falciparum is age dependent and antigen specific. Infect Immun 76: 17481755.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 30.

    Liu EW, Skinner J, Tran TM, Kumar K, Narum DL, Jain A, Ongoiba A, Traoré B, Felgner PL, Crompton PD, 2018. Protein-specific features associated with variability in human antibody responses to Plasmodium falciparum Malaria antigens. Am J Trop Med Hyg 98: 5766.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 31.

    Crompton PD et al. 2010. A prospective analysis of the Ab response to Plasmodium falciparum before and after a malaria season by protein microarray. Proc Natl Acad Sci USA 107: 69586963.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 32.

    Travassos MA et al. 2013. Seroreactivity to Plasmodium falciparum erythrocyte membrane protein 1 intracellular domain in malaria-exposed children and adults. J Infect Dis 208: 15141519.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 33.

    Xu GJ et al. 2015. Viral immunology. Comprehensive serological profiling of human populations using a synthetic human virome. Science 348: aaa0698.

  • 34.

    Yeka A, Nankabirwa J, Mpimbaza A, Kigozi R, Arinaitwe E, Drakeley C, Greenhouse B, Kamya MR, Dorsey G, Staedke SG, 2015. Factors associated with malaria parasitemia, anemia and serological responses in a spectrum of epidemiological settings in Uganda. PLoS One 10: e0118901.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 35.

    Bødker R, Akida J, Shayo D, Kisinza W, Msangeni HA, Pedersen EM, Lindsay SW, 2003. Relationship between altitude and intensity of malaria transmission in the Usambara Mountains, Tanzania. J Med Entomol 40: 706717.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 36.

    Drakeley CJ, Carneiro I, Reyburn H, Malima R, Lusingu JPA, Cox J, Theander TG, Nkya WMMM, Lemnge MM, Riley EM, 2005. Altitude-dependent and -independent variations in Plasmodium falciparum prevalence in northeastern Tanzania. J Infect Dis 191: 15891598.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 37.

    Mbogo CN, Snow RW, Khamala CP, Kabiru EW, Ouma JH, Githure JI, Marsh K, Beier JC, 1995. Relationships between Plasmodium falciparum transmission by vector populations and the incidence of severe disease at nine sites on the Kenyan coast. Am J Trop Med Hyg 52: 201206.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 38.

    Mwangi TW, Ross A, Snow RW, Marsh K, 2005. Case definitions of clinical malaria under different transmission conditions in Kilifi District, Kenya. J Infect Dis 191: 19321939.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 39.

    Oesterholt MJ, Bousema JT, Mwerinde OK, Harris C, Lushino P, Masokoto A, Mwerinde H, Mosha FW, Drakeley CJ, 2006. Spatial and temporal variation in malaria transmission in a low endemicity area in northern Tanzania. Malar J 5: 98.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 40.

    Overgaard HJ, Reddy VP, Abaga S, Matias A, Reddy MR, Kulkarni V, Schwabe C, Segura L, Kleinschmidt I, Slotman MA, 2012. Malaria transmission after five years of vector control on Bioko Island, Equatorial Guinea. Parasit Vectors 5: 253.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 41.

    Perraut R, Marrama L, Diouf B, Sokhna C, Tall A, Nabeth P, Trape J-F, Longacre S, Mercereau-Puijalon O, 2005. Antibodies to the conserved C-terminal domain of the Plasmodium falciparum merozoite surface protein 1 and to the merozoite extract and their relationship with in vitro inhibitory antibodies and protection against clinical malaria in a Senegalese village. J Infect Dis 191: 264271.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 42.

    Stewart L et al. 2009. Rapid assessment of malaria transmission using age-specific sero-conversion rates. PLoS One 4: e6083.

  • 43.

    Stuckey EM et al. 2012. Simulation of malaria epidemiology and control in the highlands of western Kenya. Malar J 11: 357.

  • 44.

    Gerardin J, Ouédraogo AL, McCarthy KA, Eckhoff PA, Wenger EA, 2015. Characterization of the infectious reservoir of malaria with an agent-based model calibrated to age-stratified parasite densities and infectiousness. Malar J 14: 231.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 45.

    White MT, Griffin JT, Akpogheneta O, Conway DJ, Koram KA, Riley EM, Ghani AC, 2014. Dynamics of the antibody response to Plasmodium falciparum infection in African children. J Infect Dis 210: 11151122.

    • PubMed
    • Search Google Scholar
    • Export Citation

Author Notes

Address correspondence to Bryan Greenhouse, University of California, San Francisco, Box 1234, San Francisco, CA 94143. E-mail: bryan.greenhouse@ucsf.edu

Financial support: This work was funded in part by the NIH/NIAID International Centers of Excellence in Malaria Research (ICEMR) program, grants U19 AI089674 and U19 AI129392, NIH/NIAID R01 AI119019, and National Health & Medical Research Fund (GNT1092789). B. G. is a Chan Zuckerberg Biohub investigator.

Authors’ addresses: Bryan Greenhouse, University of California, San Francisco, San Francisco, CA, and Chan Zuckerberg Biohub, San Francisco, CA, E-mail: bryan.greenhouse@ucsf.edu. David L. Smith, Institute for Health Metrics and Evaluation, University of Washington, Seattle, WA, E-mail: smitdave@uw.edu. Isabel Rodríguez-Barraquer, University of California, San Francisco, San Francisco, CA, E-mail: isabel.rodriguez@ucsf.edu. Ivo Mueller, Walter and Eliza Hall Institute of Medical Research, Parkville, Australia, and Institute Pasteur, Paris, France, E-mail: ivo.mueller@pasteur.fr. Chris J. Drakeley, London School of Hygiene & Tropical Medicine, London, United Kingdom, E-mail: chris.drakeley@lshtm.ac.uk.

  • Figure 1.

    Established and next-generation methods for evaluating malaria transmission via antibodies provide higher resolution than parasite prevalence. (A) The seroconversion rate (SCR) for a population can be calculated from age-stratified prevalence of antibody responses, often with a long half-life. Data shown here are responses to apical membrane antigen 1 from three cross-sectional surveys in Uganda.34 (B) Paired SCR and parasite rate (PR) data from multiple sites10,3443 demonstrate that SCR (using merozoite surface protein 1, MSP-1) has a tighter association with transmission, as measured by the annual entomologic inoculation rate (EIR). (C) Using six antibodies identified as informative about recent exposure, predictions of P. falciparum exposure in a community can be obtained from relatively small surveys, in contrast to PR data obtained from the same surveys.19 (D) A simulation of a small village (N = 100) with seasonal, low transmission illustrates how ongoing transmission can be detected consistently from an antibody test measuring recent exposure, but less reliably from rapid diagnostic test (RDT).44

  • Figure 2.

    Approach to designing combined antibodies to measure exposure recency assays (CAMERAs). (A) Samples from detailed cohorts, where accurate data on individuals’ prior malaria infections are available, are critical for providing a gold standard to identify informative antibody responses. Cohorts should represent the range of ages and epidemiologic settings where CAMERAs will ultimately be used. Various platforms are available for high-throughput screening of antibody responses, with tradeoffs based on cost, number of analytes that can be screened, precision, and dynamic range. (B) Down selection of the most informative combinations of responses (i.e., considered jointly) is accomplished via parametric modeling of antibody kinetics45 and/or any number of machine learning prediction algorithms. Both of these analytical approaches have advantages, and combining both may be optimal. (C) Top “hits” identified in comprehensive screens require validation in distinct individuals and cohorts. Given the smaller number of responses evaluated, it may be feasible to evaluate much larger numbers of samples including longitudinal sampling from individuals over time. (D) Final CAMERAs can be designed as point-of-contact (e.g., based on lateral flow or microfluidics) or laboratory-based assays, depending on the use case. The analytics for deriving epidemiologically relevant metrics from antibody responses will be integral to the assay.

  • Figure 3.

    Outstanding questions for developing and using combined antibodies to measure exposure recency assays (CAMERAs).

  • 1.

    Tusting LS, Bousema T, Smith DL, Drakeley C, 2014. Chapter three—measuring changes in Plasmodium falciparum transmission: precision, accuracy and costs of metrics. Rollinson D, ed. Advances in Parasitology, Vol. 84. Academic Press, 151–208. Available at: http://www.sciencedirect.com/science/article/pii/B978012800099100003X. Accessed August 11, 2014.

    • PubMed
    • Export Citation
  • 2.

    Lindblade KA, Steinhardt L, Samuels A, Kachur SP, Slutsker L, 2013. The silent threat: asymptomatic parasitemia and malaria transmission. Expert Rev Anti Infect Ther 11: 623639.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 3.

    Gething PW, Patil AP, Smith DL, Guerra CA, Elyazar IR, Johnston GL, Tatem AJ, Hay SI, 2011. A new world malaria map: Plasmodium falciparum endemicity in 2010. Malar J 10: 378.

  • 4.

    Hay SI, Smith DL, Snow RW, 2008. Measuring malaria endemicity from intense to interrupted transmission. Lancet Infect Dis 8: 369378.

  • 5.

    Metcalf CJE, Farrar J, Cutts FT, Basta NE, Graham AL, Lessler J, Ferguson NM, Burke DS, Grenfell BT, 2016. Use of serological surveys to generate key insights into the changing global landscape of infectious disease. Lancet Lond Engl 388: 728730.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 6.

    Grenfell BT, Anderson RM, 1985. The estimation of age-related rates of infection from case notifications and serological data. Epidemiol Amp Infect 95: 419436.

  • 7.

    Muench H, 1934. Derivation of rates from summation data by the catalytic curve. J Am Stat Assoc 29: 2538.

  • 8.

    Drakeley CJ et al. 2005. Estimating medium- and long-term trends in malaria transmission by using serological markers of malaria exposure. Proc Natl Acad Sci USA 102: 51085113.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 9.

    Corran P, Coleman P, Riley E, Drakeley C, 2007. Serology: a robust indicator of malaria transmission intensity? Trends Parasitol 23: 575582.

  • 10.

    Cook J, Kleinschmidt I, Schwabe C, Nseng G, Bousema T, Corran PH, Riley EM, Drakeley CJ, 2011. Serological markers suggest heterogeneity of effectiveness of malaria control interventions on Bioko Island, Equatorial Guinea. PLoS One 6: e25137.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 11.

    Sepúlveda N, Paulino CD, Drakeley C, 2015. Sample size and power calculations for detecting changes in malaria transmission using antibody seroconversion rate. Malar J 14: 529.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 12.

    Arnold BF, van der Laan MJ, Hubbard AE, Steel C, Kubofcik J, Hamlin KL, Moss DM, Nutman TB, Priest JW, Lammie PJ, 2017. Measuring changes in transmission of neglected tropical diseases, malaria, and enteric pathogens from quantitative antibody levels. PLoS Negl Trop Dis 11: e0005616.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 13.

    Pothin E, Ferguson NM, Drakeley CJ, Ghani AC, 2016. Estimating malaria transmission intensity from Plasmodium falciparum serological data using antibody density models. Malar J 15: 79.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 14.

    Yman V, White MT, Rono J, Arcà B, Osier FH, Troye-Blomberg M, Boström S, Ronca R, Rooth I, Färnert A, 2016. Antibody acquisition models: a new tool for serological surveillance of malaria transmission intensity. Sci Rep 6: 19472.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 15.

    Baum E, Badu K, Molina DM, Liang X, Felgner PL, Yan G, 2013. Protein microarray analysis of antibody responses to Plasmodium falciparum in western Kenyan highland sites with differing transmission levels. PLoS One 8: e82246.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 16.

    Ondigo BN, Hodges JS, Ireland KF, Magak NG, Lanar DE, Dutta S, Narum DL, Park GS, Ofulla AV, John CC, 2014. Estimation of recent and long-term malaria transmission in a population by antibody testing to multiple Plasmodium falciparum antigens. J Infect Dis 210: 11231132.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 17.

    King CL, Davies DH, Felgner P, Baum E, Jain A, Randall A, Tetteh K, Drakeley CJ, Greenhouse B, 2015. Biosignatures of exposure/transmission and immunity. Am J Trop Med Hyg 93 (Suppl): 1627.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 18.

    Longley RJ et al. 2017. Naturally acquired antibody responses to more than 300 Plasmodium vivax proteins in three geographic regions. PLoS Negl Trop Dis 11: e0005888.

  • 19.

    Helb DA et al. 2015. Novel serologic biomarkers provide accurate estimates of recent Plasmodium falciparum exposure for individuals and communities. Proc Natl Acad Sci USA 112: E4438E4447.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 20.

    Coulibaly D et al. 2014. Stable malaria incidence despite scaling up control strategies in a malaria vaccine-testing site in Mali. Malar J 13: 374.

  • 21.

    Clark TD, Njama-Meya D, Nzarubara B, Maiteki-Sebuguzi C, Greenhouse B, Staedke SG, Kamya MR, Dorsey G, Rosenthal PJ, 2010. Incidence of malaria and efficacy of combination antimalarial therapies over 4 years in an urban cohort of Ugandan children. PLoS One 5: e11759.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 22.

    Olotu A, Fegan G, Williams TN, Sasi P, Ogada E, Bauni E, Wambua J, Marsh K, Borrmann S, Bejon P, 2010. Defining clinical malaria: the specificity and incidence of endpoints from active and passive surveillance of children in rural Kenya. PLoS One 5: e15569.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 23.

    Kamya MR et al. 2015. Malaria transmission, infection, and disease at three sites with varied transmission intensity in Uganda: implications for malaria control. Am J Trop Med Hyg 92: 903912.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 24.

    Robinson LJ et al. 2015. Strategies for understanding and reducing the Plasmodium vivax and Plasmodium ovale hypnozoite reservoir in Papua New Guinean children: a randomised placebo-controlled trial and mathematical model. PLoS Med 12: e1001891.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 25.

    Longley RJ, Reyes-Sandoval A, Montoya-Díaz E, Dunachie S, Kumpitak C, Nguitragool W, Mueller I, Sattabongkot J, 2016. Acquisition and longevity of antibodies to Plasmodium vivax preerythrocytic antigens in western Thailand. Clin Vaccine Immunol 23: 117124.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 26.

    Mwesigwa J et al. 2017. Residual malaria transmission dynamics varies across the Gambia despite high coverage of control interventions. PLoS One 12: e0187059.

  • 27.

    Tran TM et al. 2013. An intensive longitudinal cohort study of Malian children and adults reveals no evidence of acquired immunity to Plasmodium falciparum infection. Clin Infect Dis 57: 4047.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 28.

    Rodriguez-Barraquer I et al. 2016. Quantifying heterogeneous malaria exposure and clinical protection in a cohort of Ugandan children. J Infect Dis 214: 10721080.

  • 29.

    Akpogheneta OJ, Duah NO, Tetteh KKA, Dunyo S, Lanar DE, Pinder M, Conway DJ, 2008. Duration of naturally acquired antibody responses to blood-stage Plasmodium falciparum is age dependent and antigen specific. Infect Immun 76: 17481755.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 30.

    Liu EW, Skinner J, Tran TM, Kumar K, Narum DL, Jain A, Ongoiba A, Traoré B, Felgner PL, Crompton PD, 2018. Protein-specific features associated with variability in human antibody responses to Plasmodium falciparum Malaria antigens. Am J Trop Med Hyg 98: 5766.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 31.

    Crompton PD et al. 2010. A prospective analysis of the Ab response to Plasmodium falciparum before and after a malaria season by protein microarray. Proc Natl Acad Sci USA 107: 69586963.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 32.

    Travassos MA et al. 2013. Seroreactivity to Plasmodium falciparum erythrocyte membrane protein 1 intracellular domain in malaria-exposed children and adults. J Infect Dis 208: 15141519.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 33.

    Xu GJ et al. 2015. Viral immunology. Comprehensive serological profiling of human populations using a synthetic human virome. Science 348: aaa0698.

  • 34.

    Yeka A, Nankabirwa J, Mpimbaza A, Kigozi R, Arinaitwe E, Drakeley C, Greenhouse B, Kamya MR, Dorsey G, Staedke SG, 2015. Factors associated with malaria parasitemia, anemia and serological responses in a spectrum of epidemiological settings in Uganda. PLoS One 10: e0118901.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 35.

    Bødker R, Akida J, Shayo D, Kisinza W, Msangeni HA, Pedersen EM, Lindsay SW, 2003. Relationship between altitude and intensity of malaria transmission in the Usambara Mountains, Tanzania. J Med Entomol 40: 706717.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 36.

    Drakeley CJ, Carneiro I, Reyburn H, Malima R, Lusingu JPA, Cox J, Theander TG, Nkya WMMM, Lemnge MM, Riley EM, 2005. Altitude-dependent and -independent variations in Plasmodium falciparum prevalence in northeastern Tanzania. J Infect Dis 191: 15891598.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 37.

    Mbogo CN, Snow RW, Khamala CP, Kabiru EW, Ouma JH, Githure JI, Marsh K, Beier JC, 1995. Relationships between Plasmodium falciparum transmission by vector populations and the incidence of severe disease at nine sites on the Kenyan coast. Am J Trop Med Hyg 52: 201206.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 38.

    Mwangi TW, Ross A, Snow RW, Marsh K, 2005. Case definitions of clinical malaria under different transmission conditions in Kilifi District, Kenya. J Infect Dis 191: 19321939.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 39.

    Oesterholt MJ, Bousema JT, Mwerinde OK, Harris C, Lushino P, Masokoto A, Mwerinde H, Mosha FW, Drakeley CJ, 2006. Spatial and temporal variation in malaria transmission in a low endemicity area in northern Tanzania. Malar J 5: 98.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 40.

    Overgaard HJ, Reddy VP, Abaga S, Matias A, Reddy MR, Kulkarni V, Schwabe C, Segura L, Kleinschmidt I, Slotman MA, 2012. Malaria transmission after five years of vector control on Bioko Island, Equatorial Guinea. Parasit Vectors 5: 253.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 41.

    Perraut R, Marrama L, Diouf B, Sokhna C, Tall A, Nabeth P, Trape J-F, Longacre S, Mercereau-Puijalon O, 2005. Antibodies to the conserved C-terminal domain of the Plasmodium falciparum merozoite surface protein 1 and to the merozoite extract and their relationship with in vitro inhibitory antibodies and protection against clinical malaria in a Senegalese village. J Infect Dis 191: 264271.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 42.

    Stewart L et al. 2009. Rapid assessment of malaria transmission using age-specific sero-conversion rates. PLoS One 4: e6083.

  • 43.

    Stuckey EM et al. 2012. Simulation of malaria epidemiology and control in the highlands of western Kenya. Malar J 11: 357.

  • 44.

    Gerardin J, Ouédraogo AL, McCarthy KA, Eckhoff PA, Wenger EA, 2015. Characterization of the infectious reservoir of malaria with an agent-based model calibrated to age-stratified parasite densities and infectiousness. Malar J 14: 231.

    • PubMed
    • Search Google Scholar
    • Export Citation
  • 45.

    White MT, Griffin JT, Akpogheneta O, Conway DJ, Koram KA, Riley EM, Ghani AC, 2014. Dynamics of the antibody response to Plasmodium falciparum infection in African children. J Infect Dis 210: 11151122.

    • PubMed
    • Search Google Scholar
    • Export Citation
Past two years Past Year Past 30 Days
Abstract Views 0 0 0
Full Text Views 1749 779 37
PDF Downloads 400 93 11
 
 
 
 
Affiliate Membership Banner
 
 
Research for Health Information Banner
 
 
CLOCKSS
 
 
 
Society Publishers Coalition Banner
Save