| Literature DB >> 20098724 |
Freya J I Fowkes1, Jack S Richards, Julie A Simpson, James G Beeson.
Abstract
BACKGROUND: One of the criteria to objectively prioritize merozoite antigens for malaria vaccine development is the demonstration that naturally acquired antibodies are associated with protection from malaria. However, published evidence of the protective effect of these antibodies is conflicting. METHODS ANDEntities:
Mesh:
Substances:
Year: 2010 PMID: 20098724 PMCID: PMC2808214 DOI: 10.1371/journal.pmed.1000218
Source DB: PubMed Journal: PLoS Med ISSN: 1549-1277 Impact factor: 11.069
Figure 1Flow chart of study identification.
Details of excluded studies can be found in Text S2. aDefinition of symptomatic malaria did not meet protocol definition; bAnalysed retro- and prospectively collected clinical data (n = 3), analysed antibody levels as outcome (n = 4,) and data presented on P. falciparum positive individuals only (n = 1); cReasons for exclusion: Data from seroprevalence surveys (n = 15); hospital-based study/recruited cases based on clinical/parasitemic status (n = 6); did not include malaria outcome of interest (n = 5); mother/infant studies (n = 3); measured IgG responses to undefined regions of antigens (n = 1); dScopel et al. (2007) provided data using a definition of symptomatic malaria that met our quality criteria, Sarr et al. (2006) provided data so P. falciparum could be analysed as outcome, and Osier et al. (2008) provided estimates for the whole cohort, whereas the manuscript originally presented data from P. falciparum-positive individuals only [58]–; eThe characteristics of included studies are given in Table 1.
Characteristics of prospective studies included in the systematic review by country.
| Country | Study: Author, Year [Reference] | Province | Follow-up (mo) | Population | Merozoite IgG Response |
| ||
| Sample Size | Age (y) | Source | Incidence Outcome (Cumulative Incidence %) | |||||
|
| Scopel, 2007 | Acre | 15 | 356 | 5–65 | MSP-2 | ACD, PCD | Symptomatic |
|
| Meraldi, 2004 | Kadiogo | 7 | 293 | 0.5–9 | GLURP, MSP-3 | ACD | Symptomatic |
| Nebie, 2008 | Bazega | 4 | 286 | 0.5–15 | AMA-1, GLURP, MSP-119, MSP-3 | ACD | Symptomatic | |
| Nebie, 2008 | Bazega | 4 | 360 | 0.5–10 | GLURP, MSP-3 | ACD | Symptomatic | |
|
| Conway, 2000 | Upper River | 5 | 337 | 3–7 | MSP-119, MSP-1-BL1, MSP-1-BL2 | ACD, PCD | Symptomatic |
| Polley, 2003 | Upper River | 5 | 334 | 3–7 | MSP-1-BL2 | ACD, PCD | Symptomatic | |
| Metzger, 2003 | Upper River | 5 | 329 | 3–7 | MSP-2 | ACD, PCD | Symptomatic | |
| Polley, 2007 | Upper River | 5 | 319 | 3–7 | MSP-3 | ACD, PCD | Symptomatic | |
| Dziegiel, 1993 | North Bank | 6 | 385 | 3–8 | GLURP | ACD | Symptomatic | |
| Egan, 1996 | North Bank | 6 | 327 | 3–8 | MSP-119, MSP-1-EGF | ACD | Symptomatic | |
| Taylor, 1998 | North Bank | 6 | 355 | 3–8 | MSP-2 | ACD | Symptomatic | |
| Okenu, 2000 | North Bank | 6 | 284 | 3–8 | EBA-175 | ACD | Symptomatic | |
| Okech, 2004 | North Bank | 6 | 260 | 3–8 | MSP-119
| ACD | Symptomatic | |
| Gray, 2007 | North Bank | 6 | 189 | 3–8 | AMA-1, MSP-119, | ACD | Symptomatic | |
|
| Dodoo, 1999 | Greater Accra | 18 | 266 | 3–15 | MSP-119, | ACD, PCD | Symptomatic |
| Dodoo, 2000 | Greater Accra | 18 | 115 | 3–15 | GLURP | ACD, PCD | Symptomatic | |
| Cavanagh, 2004 | Greater Accra | 18 | 280 | 3–15 | MSP-119, MSP-1-BL1, MSP-1-BL2 | ACD, PCD | Symptomatic | |
| Dodoo, 2008 | Greater Accra | 9 | 352 | 3–10 | AMA-1, GLURP, MSP-119, MSP-3 | ACD, PCD | Symptomatic | |
|
| Polley, 2004 | Coast | 6 | 1,071 | 0.1–85 | AMA-1 | ACD, PCD | Symptomatic |
| Polley, 2006 | Coast | 6 | 1,068 | 0.1–85 | MSP-2 | ACD, PCD | Symptomatic | |
| Osier, 2007 | Coast | 6 | 536 | 0.1–85 | MSP-3 | ACD, PCD | Symptomatic | |
| Osier, 2008 | Coast | 6 | 280 | 0.1–85 | EBA-175, MSP-119, MSP-1-BL2 | ACD, PCD | Symptomatic | |
|
| Al-Yaman, 1995 | East Sepik | 12 | 230 | 0.5–15 | MSP-2 | ACD, PCD | Symptomatic |
| Al-Yaman, 1996 | East Sepik | 12 | 230 | 0.5–15 | MSP-142 | ACD, PCD | Symptomatic | |
|
| Perraut, 2005 | Fatick | 5 | 205 | 3–75 | MSP-119 | ACD, PCD | Symptomatic |
| Sarr, 2006 | Fatick | 6 | 169 | 2–10 | MSP-2 | ACD | Symptomatic | |
|
| Egan, 1996 | Southern | 12 | 645 | 0–8 | MSP-119, MSP-1-EGF | ACD | Symptomatic |
|
| Lusingu, 2005 | Tanga | 6 | 171 | 0–19 | GLURP | ACD, PCD | Symptomatic |
Sample size refers to number of participants whose serology was determined. IgG responses measured by ELISA with the exception of Gray et al. [40] who used microarray immunoassays. Manuscripts by Egan et al. [36] and Okech et al. [39] report studies performed in two countries and feature twice in Table 1 and once in Tables 1 and 2, respectively. Studies by Polley et al. [45],[46] in the Kenyan coast were done at two study sites.
Indicates that the different antibody association studies were performed in the same cohort for the specified country and province. In The Gambia, the “Upper River” and “North Bank” studies were separate cohorts.
Antigen was not included in meta-analysis (as per protocol).
Malaria definitions:
History of fever plus P. falciparum >300/µl.
Fever plus P. falciparum ≥5,000/µl or fever plus P. falciparum >5,000/µl.
Fever or history of fever (within the past 72 h) plus P. falciparum ≥5,000/µl.
Fever plus an age-dependent threshold of P. falciparum.
Fever plus >30 P. falciparum trophozoites/100 leukocytes.
Fever plus P. falciparum >2,500/µl.
Pf, P. falciparum.
Characteristics of prospective treatment-to-reinfection studies included in the systematic review by country.
| Country | Study: Author, Year [Reference] | Province | Antimalarial | Follow-up (mo) | Population | Merozoite IgG Response |
| ||
| Sample Size | Age (y) | Source | Incidence Outcome (Cumulative Incidence %) | ||||||
|
| John, 2004 | Rift Valley | SP | 3 | 84 | 1–80 | MSP-119 | ACD, PCD | Reinfection (45) |
| John, 2005 | Rift Valley | SP | 3 | 84 | 1–80 | AMA-1, EBA-175, | ACD, PCD | Reinfection (45) | |
|
| Tolle, 1993 | Bamako | CQ | 7 | 191 | 1 to >15 | MSP-1-BL2 | ACD | High |
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| Stanisic, 2009 | Madang | A | 6 | 206 | 5–14 | AMA-1, MSP-119, MSP-2 | ACD, PCD | Reinfection (95), High |
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| Perraut, 2003 | Fatick | Q | 5 | 110 | 2–73 | MSP-119 | ACD | Reinfection (93), Symptomatic |
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| Okech, 2004 | Northern Region | SP | 5 | 156 | 7–16 | MSP-119 | ACD | High |
|
| Wang, 2001 | Khanh-Hoa | Q+D+ | 6 | 112 | 9–55 | MSP-119, MSP-4 | ACD | Reinfection (42) |
Sample size refers to number of participants whose serology was determined. IgG responses measured by ELISA. Okech (2004) [39] performed studies in two countries and also features in Table 1.
Indicates that the different antibody association studies were performed in the same cohort for the specified country and province.
Antigen was not included in meta-analysis (as per protocol).
Malaria definitions:
P. falciparum >5,000/µl.
Fever plus P. falciparum ≥5,000/µl or fever plus P. falciparum >5,000/µl.
Fever plus >30 P. falciparum trophozoites/100 leukocytes.
A, artesunate; CQ, chloroquine; D, Doxycyline; MSP-1-BL2r, Block 2 repeats; P, Primaquine; Pf, P. falciparum; Q, quinine; SP, sulfadoxine-pyrimethamine.
Figure 2Forest plot of the association of MSP-119 responses with incidence of symptomatic P. falciparum malaria.
RRs correspond to risk of symptomatic P. falciparum malaria for MSP-119 responders versus nonresponders and per doubling of antibody responses (log base 2). RR<1 indicate that antibody responses are protective against symptomatic P. falciparum whereas RR>1 indicate susceptibility. aEstimates are calculated by authors from data in the paper; bdata supplied by original authors and calculated by current authors; cestimates are published estimates. All estimates are unadjusted with the exception of estimates from Nebie et al. (2008) and Dodoo et al. (2008), which are adjusted for age, and estimates from Stanisic (2009) are adjusted for age and spatial confounders [29],[44],[55]. W, weight. Note: Egan, 1996 had two study sites *Sierra-Leone and **The Gambia, and their analysis only included those with clinical disease versus asymptomatics, i.e., excluded those uninfected as they were assumed to be unexposed [36].
Figure 3Forest plot of the association of MSP-1 block 2 and block 1 responses with incidence of symptomatic P. falciparum malaria.
RRs represent the risk of symptomatic P. falciparum malaria in IgG responders relative to nonresponders. RR<1 indicate that responders are protected from symptomatic P. falciparum whereas RR>1 indicate susceptibility. aEstimates are published estimates; bestimates are calculated by authors from data in the paper; cdata supplied by original authors and calculated by current authors. All reported estimates are unadjusted. W, weight.
Figure 4Forest plot of the association of MSP-1-block 2 repeats and flanking region responses with incidence of symptomatic P. falciparum malaria.
RRs represent the risk of symptomatic P. falciparum malaria in IgG responders relative to nonresponders. RR<1 indicate that responders are protected from symptomatic P. falciparum whereas RR>1 indicate susceptibility. aEstimates are published estimates; bestimates are calculated by authors from data in the paper. All reported estimates are unadjusted. W, weight.
Figure 5Forest plot of the association of MSP-2 responses with incidence of symptomatic P. falciparum malaria.
RR<1 indicate that responders are protected from symptomatic P. falciparum compared to nonresponders whereas RR>1 indicate susceptibility. aEstimates are published estimates; bconverted published estimate; cestimates are calculated by authors from data supplied by original author; destimates are calculated by authors from data in the paper. W, weight. Estimates reported are unadjusted with the exception of Stanisic (2009) (adjusted for spatial confounders and age) and Metzger (2003) (adjusted for age and preseason parasitaemia) [33],[55]. Note that estimates for Taylor (1998) are based on clinical and asymptomatic cases only (i.e., those uninfected were excluded on the basis they were unexposed) [37]. Polley (2006) stratified for two study sites in Coastal Kenya, *Chonyi and **Ngerenya [46].
Figure 6Forest plot of the association of MSP-3 responses with incidence of symptomatic P. falciparum malaria.
RR<1 indicate protection from symptomatic P. falciparum whereas RR>1 indicate susceptibility in responders versus nonresponders or per doubling of antibody responses. Estimates reported are unadjusted with the exception of Nebie (2008) (adjusted for age, sex, and village) [30] and Nebie (2008) and Dodoo (2008) (adjusted for age) [29],[44]. aEstimates are calculated by authors from data in the paper; bestimates are published estimates. All reported estimates are unadjusted. W, weight.
Figure 7Forest plot of the association of AMA-1 responses with incidence of symptomatic P. falciparum malaria.
RRs correspond to risk of symptomatic P. falciparum malaria for AMA1 responders versus nonresponders, High (H) and medium (M) versus low (L) responders (based on tertiles because sero-prevalence was high) and per doubling of antibody responses (log base 2). RR<1 indicate that antibody responses are protective against symptomatic P. falciparum whereas RR>1 indicate susceptibility. aEstimates are calculated by authors from data in the paper; bestimates are published estimates; cestimates supplied by the original authors. All estimates are unadjusted with the exception of Dodoo (2008) and Nebie (2008) with adjustments for age and Stanisic (2009) with adjustments for age and spatial confounders [29],[44],[55]. Polley (2004) stratified for two study sites in Coastal Kenya, *Chonyi and **Ngerenya.
Figure 8Forest plot of the association of GLURP responses with incidence of symptomatic P. falciparum malaria.
RRs correspond to risk of symptomatic P. falciparum malaria for GLURP responders versus nonresponders and per doubling of antibody responses (log base 2). RR<1 indicate that antibody responses are protective against symptomatic P. falciparum whereas RR>1 indicate susceptibility. aEstimates are published estimates with adjustments for age, Nebie (2008) responder versus nonresponder analysis also adjusted for sex and village [30]; bestimates are calculated by authors from data in the paper. GLURP-R2 estimates were not combined because I 2>75%. W, weight.
Proposed guidelines of the reporting of Malaria Immuno-epidemiology Observational Studies (MIOS guidelines).
| Report Section | Topics | Recommended Inclusions |
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| Indicate the study design and the study population |
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| Provide in the abstract an informative and balanced summary of what was done and the main findings. Indicate immune response measured, antigens used, and all | |
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| Explain the scientific background and rationale for the antigens and |
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| State objectives, including any prespecified hypotheses (i.e., protection, no effect). | |
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| State how the current study will add to the malaria immuno-epidemiology literature and briefly state how it compares to previous studies. | |
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| A description of the setting, including location, |
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| Study design, describe exactly how and when immune response, | |
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| Relevant dates such as participant recruitment, measurement of immune responses, follow-up, and | |
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| Eligibility criteria and sources and methods of selection of participants. Justification of criteria. | |
| Methods of follow-up and data collection. Indicate intervals for ACD and the appropriateness of the use of PCD in the setting. Indicate how presumptive malaria diagnosis was dealt with in data collection. | ||
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| A description of any efforts to address potential sources of bias. | |
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| Sample size calculations. Include the level of precision and power, the expected size of differences to be measured (e.g., in antibody levels, risk/odds of malaria), and the minimum difference you wish to detect. | |
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| Definitions of all | |
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| Definitions of all immunological variables. Explain how responders and nonresponders were defined. Explain how continuous variables were handled in the analyses such as the use of transformations and groupings. Describe which groupings were chosen and why, and state the cut-offs used for each group and the category mean or median values. For each antigen indicate the allele, amino acid position, expression system, and tag. Provide gene accession numbers. | |
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| A list of all potential confounders and effect modifiers that were considered with justification. These should at least include age, | |
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| Rationale for statistical approach considering study design and distribution of immunological and | |
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| Description of all statistical methods, including those used to control for confounding, examine subgroups and interactions (particularly with age) and any sensitivity analyses. Explain how missing data were addressed if relevant. | |
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| Details and justification of all data transformations explored during analysis. State any assumptions of linearity in immunological data. State whether categories generated from continuous antibody variables were used as a nominal or ordinal variable (i.e., classified into unordered or ordered qualitative categories). | |
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| The numbers of individuals at each stage of the study and any groups excluded from analysis. |
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| The demographic and clinical characteristics of the participants and information on exposures and potential confounders. Indicate the number of participants with missing data for each variable of interest. Summarize follow-up times if applicable and mention changes in incidence of | |
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| Mean (standard deviation) or median (percentiles/range) of values to describe measures of central tendency and the spread of data measured in the study. Do not use inferential measures such as standard errors or confidence intervals. | |
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| Details of any quantification of antibody or other concentrations (i.e., titres in µg/ml). | |
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| Counts of cases, controls, person-time at risk, risk etc. for each immune response category in addition to effect-measure estimates and results of model fitting. | |
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| Unadjusted and adjusted estimates of risk and their precision, e.g., 95% CIs. This will allow the reader to judge by how much, and in what direction, they changed. Make clear which confounders were adjusted for and why they were included. Provide risk estimates for all immunology variables investigated (i.e., responders versus nonresponders and any dose-dependent variables). | |
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| Separate estimates for each immune response. Also assess joint effects and interactions between immune responses. Consider both additive and multiplicative scales (i.e., does the combined effect of response | |
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| Separate estimates for different lengths of follow-up. E.g., 1, 3, 6, 9, 12 mo. | |
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| Report all other analyses done such as subgroups, interactions, and sensitivity analysis. | |
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| Summarise key results in relation to study objectives |
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| Provide limitations of your study. | |
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| Give a balanced interpretation of the results considering limitations. Discuss both direction and magnitude of effects and pay particular attention to evidence of no effect versus no evidence of an effect. Outline possible methodological reasons for why the current results may differ from other studies. | |
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| Discuss the generalisability of results to other malaria endemic areas. |
Items should be addressed in the main body of the manuscript and/or supplementary material. This table has been adapted from the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) statement, which contains a checklist of items that should be addressed in reports of observational studies [74]. The STROBE statement and explanation [73],[74] should also be consulted.