Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Influence of host factors and parasite biomass on the severity of imported Plasmodium falciparum malaria

  • Nicolas Argy ,

    nicolas.argy@gmail.com

    Affiliations Laboratoire de parasitologie, hôpital Bichat-Claude Bernard, APHP, Paris, France, Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France, Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, UMR MERIT 216, Institut de recherche pour le développement, Paris, France

  • Eric Kendjo,

    Affiliation Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France

  • Claire Augé-Courtoi,

    Affiliations Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, UMR MERIT 216, Institut de recherche pour le développement, Paris, France

  • Sandrine Cojean,

    Affiliation Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France

  • Jérôme Clain,

    Affiliations Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France, Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, UMR MERIT 216, Institut de recherche pour le développement, Paris, France

  • Pascal Houzé,

    Affiliations Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, Laboratoire de pharmacologie, hôpital Saint-Louis, APHP, Paris, France

  • Marc Thellier,

    Affiliations Laboratoire de parasitologie, hôpital Pitié-Salpêtrière, APHP, Paris, France, Faculté de Médecine, Université Pierre et Marie Curie, COMUE Sorbonne Paris Cité, Paris, France

  • Veronique Hubert,

    Affiliation Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France

  • Philippe Deloron,

    Affiliations Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, UMR MERIT 216, Institut de recherche pour le développement, Paris, France

  • Sandrine Houzé,

    Affiliations Laboratoire de parasitologie, hôpital Bichat-Claude Bernard, APHP, Paris, France, Centre National de Référence du Paludisme, hôpital Bichat-Claude Bernard, APHP, Paris, France, Faculté de Pharmacie, Université Paris Descartes, COMUE Sorbonne Paris Cité, Paris, France, UMR MERIT 216, Institut de recherche pour le développement, Paris, France

  • for the CNRP study group

    Membership of the Centre National de Référence du Paludisme (CNRP) study group is provided in the Acknowledgments.

Abstract

Objectives

Imported malaria in France is characterized by various clinical manifestations observed in a heterogeneous population of patients such as travelers/expatriates and African migrants. In this population, host factors and parasite biomass associated with severe imported malaria are poorly known.

Methods

From data collected by the Centre National de Référence du Paludisme, we identified epidemiological, demographic and biological features including parasite biomass and anti-plasmodial antibody levels (negative, positive and strongly positive serology) associated with different disease severity groups (very severe, moderately severe, and uncomplicated malaria) in 3 epidemiological groups (travelers/expatriates, first- and second-generation migrants).

Results

Age, ethnicity, absence of prior infection with P. falciparum, antibody levels, plasma PfHRP2 levels, total and circulating parasite biomass were related to severe malaria onset. Sequestered parasite biomass tended to be increased in very severe malaria, and was strongly correlated to the antibody level of the host.

Conclusions

Prior exposure to P. falciparum is associated with high anti-plasmodial antibody levels which influence clinical presentation of imported malaria and its correlated circulating and sequestered parasite burden.

Introduction

Plasmodium falciparum infection in tropical regions also threatens non-endemic countries through imported cases [1]. Demographic, epidemiological and immunological features of malaria cases diagnosed in Metropolitan France (called imported malaria) are clearly different to those from malaria-endemic areas; the resulting severe forms of malaria are variable [25]. Severe malaria (SM) is the consequence of parasitized red blood cell (pRBC) sequestration, responsible for tissue hypoxia and endothelial barrier dysfunction in the microcirculation [69], resulting from cytoadherence via host endothelial receptors of extra-erythrocytic parasitic protein Plasmodium falciparum Erythrocyte Membrane Protein 1 (PfEMP1) [911]. In endemic areas, repeated exposure to P. falciparum antigens during childhood appears necessary to induce a non-sterilizing antibody-mediated response against antigenic variants of PfEMP1, preventing parasite sequestration in adults [12]. Because of the lack of or waning anti-malarial immunity, travelers and African migrants are at risk of SM [12].

Plasma concentrations of P. falciparum histidine-rich protein 2 (PfHRP2) have been evaluated as a tool to improve the definition of SM in malaria-endemic areas [1315]. Plasma PfHRP2 levels, specifically produced by P. falciparum and released by schizonts, were reported to better reflect the total parasite biomass, including the sequestered component, than peripheral blood parasite density [13, 14].

Various epidemiological risk factors have already been identified in severe imported malaria [1618]. However, the influences of host characteristics and parasite biomass on the clinical presentation of imported malaria have not yet been investigated. Based on the clinical description of cases [2, 3, 19], we aimed to identify demographic, epidemiological and biological features associated with severe or non-severe imported malaria in France, including evaluation of plasma PfHRP2 levels and parasite biomass.

Materials and methods

Ethics statement

No specific consent was required because of, in coordination with Santé Publique France organisation for the care and surveillance of malaria, the human clinical, epidemiological and biological data as well as parasitic biomarkers (parasitaemia, PfHRP2, total parasite biomass, total circulating parasite biomass and sequestered parasite biomass) were collected in the CNRP database and analysed in accordance with the common public health mission of all French National Reference Centers (https://www.legifrance.gouv.fr/affichTexte.do?cidTexte=JORFTEXT000000810056&dateTexte=&categorieLien=id). The study of the biological samples obtained in the medical care context was considered as non-interventional research (article L1221-1.1 of the French public health code) only requiring the non-opposition of the patient during sampling (article L1211-2 of the French public health code). All data collected were anonymized before analyse.

Data sources and sample collection

This study was conducted in the Centre National de Référence du Paludisme (CNRP) laboratory, between 2010 and 2013. Prospective notification of imported malaria cases was undertaken through the CNRP national network of hospital laboratories. For each case, demographic (age, sex), epidemiological (ethnic origin, visited endemic area, self-reported prior exposure of malaria, immunosuppression, onset of symptoms, onset of diagnosis), biological (platelet counts, arterial blood pH, lactatemia, parasitemia, hemoglobin, creatinine, blood glucose, bilirubinemia) and clinical data (neurological and coagulation disorders, respiratory and renal failure, shock and jaundice) were collected in a database by the corresponding hospital, and the blood sample used for the initial parasitological diagnosis (D0 sample) was forwarded to the CNRP laboratory for diagnostic evaluation. Among these cases, inclusion criteria were as follows: patients not living in malaria-endemic countries and Caucasian expatriates infected with P. falciparum, D0 whole blood sample available in sufficient quantity to perform planned laboratory assays, no curative or preventive malaria treatment in the 30 days before diagnosis as confirmed by plasma determination of antimalarial drugs and metabolites at D0 (monodesethylchloroquine, chloroquine, cycloguanil, proguanil, quinine, doxycycline, sulfadoxine, pyrimethamine, mefloquine, lumefantrine, desbutyl-lumefantrine, amodiaquine, desethylamodiaquine, carboxymefloquine, atovaquone, piperaquine, primaquine and desbutylhalofantrine) and absence of bacterial co infection confirmed by negative blood culture during hospitalization.

Laboratory procedures

Plasmodium species and parasite density were determined from D0 samples on stained blood films. Parasitemia was expressed as number of parasites per μL assuming a mean of 4,500,000 RBC/μL. In the event of low parasite density, DNA extraction and nested species-specific PCR [20, 21] were performed to confirm malaria diagnosis. D0 plasma samples were stored at -20°C and used for antimalarial drug testing, PfHRP2 assay and serologic testing.

Study population

Patients were classified into 3 mutually exclusive groups: first-generation migrants (FGM) (born in malaria-endemic regions and living in Metropolitan France), second–generation migrants (SGM) (born in Metropolitan France from FGM parents and living in Metropolitan France), and travelers/expatriates (T/E). Travelers were born and living in non-malaria-endemic regions whereas expatriates were born in non-malaria-endemic regions and living in malaria-endemic regions. Malaria cases were classified into 2 groups: severe malaria (SM) defined according to the WHO definition [22], and uncomplicated malaria (UM) defined by the presence of asexual parasites and fever without any severity criteria. Following French recommendations regarding the classification of imported malaria cases [19], SM cases were also split into two sub-groups: very severe malaria (VSM), associated with a poor prognosis in the imported malaria context [19], defined by the presence of either organ dysfunction or shock or hyperlactatemia (or a combination of those) and moderately severe malaria (MSM), associated with a better prognosis [19], defined by the presence of one or several of the other WHO severity criteria.

PfHRP2 enzyme-linked immunosorbent assay and estimation of total parasite biomass

PfHRP2 assays were performed with the Malaria Antigen Celisa® commercial kit (Cellabs®; Brookvale, Australia), as recommended by the manufacturer, on D0 plasma diluted in RPMI 1640 (Life technologies®, Carlsbad, California, USA), according to the initial parasite density. PfHRP2 was quantified with the calibration curve obtained from three dilutions of the positive control. Samples with optical density values outside the range of the calibration were retested at an adapted dilution.

Total parasite biomass was estimated from the plasma PfHRP2 value, as described by Hendriksen et al. [15]. Total parasite biomass (Ptot) (number of parasites) was estimated by the formula: Ptot = 7.3 x PfHRP2 (g/L) x (1-hematocrit (%)) x body weight (kg) x 1013. The estimated total circulating parasite biomass (Pcirc) (number of parasites) was calculated as follows: Pcirc = parasites/μL x 106 x blood volume (L). The blood volume was defined as 0.08 x body weight (kg). The estimated sequestered parasite biomass (Pseq) corresponded to the difference between the estimated total parasite biomass and the estimated total circulating parasite biomass such as Pseq (number of parasites) = Ptot (number of parasites)–Pcirc (number of parasites) [15]. We assumed, as described in [15], that patients with negative Pseq values had few or no sequestered parasites, and these negative values were considered 0.

Indirect immunofluorescence assay

Previous exposure to Plasmodium sp. was evaluated by the detection and the quantification of total antibodies against Plasmodium falciparum. IgG/A/M anti-plasmodial antibodies were detected and quantified by serological screening based on indirect immunofluorescence assay using whole schizonts of the 3D7 P. falciparum strain as crude antigens, and fluoresceine linked anti-human IgG/A/M (Biorad®; Hercules, California, USA) as conjugate. Quantification of plasmatic antibody concentration was estimated by serologic titers. A four-fold dilution series of plasma from 1:16 to 1:16,384 were performed to determine the titer of anti-plasmodial antibodies corresponding to the final dilution for which fluorescent signal remains positive. Slides were examined under blinded conditions by two experienced microscopists. In case of discordant result, a third microscopist observed in a blinded manner the slide to arbitrate. The validation of the method determined the threshold of positivity at a titer of (1:64) corresponding to the threshold with the best compromise between sensitivity and specificity for antibody detection. Antibody titers from (1:64) to (1:1024) are usually observed at malaria remission. Titers over or equal to (1:4096) are unusual. For statistical analysis, antibody titers were classified into three groups: negative (or 0) corresponding to titers < 1:64; positive, corresponding to titers 1:64, 1:256 and 1:1024 and strongly positive, corresponding to titers ≥ 1:4096.

Statistical analysis

For each SM case included, control patients were randomly chosen from the pool of patients with UM. Quantitative variables were represented by mean and standard deviation (SD) for normal distributions, and by median and interquartile range [25th percentile-75th percentile] for non-normal distributions. Categorical variables were evaluated according to size and frequency. Quantitative variables with highly skewed distributions (plasma PfHRP2 concentration and parasite biomass values (Ptot, Pcirc and Pseq)) were log-transformed for statistical analysis and graphic representation. Chi-square test and Fisher’s exact test were used to compare categorical variables between groups. ANOVA and Kruskall-Wallis tests were used to compare quantitative variables between groups when appropriated. For all tests, a difference was considered significant when p<0.05. All reported p values are two-tailed. Bonferroni’s correction was performed for multiple comparisons between quantitative variables and groups.

The association between the presence of anti-plasmodial antibody as binary variable (positive/negative serology) and adjusted potential risk factors (theoretical and/or significant) as disease severity sub-group (VSM, MSM, UM), epidemiological sub-group (FGM, SGM and T/E) and age as binary variable (age<18 years-old/age>18 years-old) was investigated using logistic regression. Secondly, the association between imported malaria onset and adjusted potential risk factors (theoretical and/or significant) as the categorical variable epidemiological sub-groups (FGM, SGM and T/E) and antibody levels as well as age, total, circulating and sequestered parasite biomass as continuous variable was also investigated by logistic regression. Four multiple linear regressions models were finally performed to identify influential factors of PfHRP2 and parasite biomass (Ptot, Pcirc and Pseq) as the continuous variable age, disease severity and epidemiological sub-groups and antibody levels. Significant positive or negative relationships between variables were expressed by the coefficient values. For regression models, two-way interaction terms between variables were tested, but none were significant. Statistical analyses were performed using STATA, version 12 (Stata corp®, College station, Texas, USA).

Results

Study population

Among the 333 P. falciparum imported malaria cases included in the study, 138 were severe malaria cases (41.4%) comprising 55 very severe malaria and 83 moderately severe malaria cases, and 195 were uncomplicated malaria cases (58.6%). Demographic, epidemiological, clinical and biological characteristics of the UM group and SM sub-groups are presented in Table 1. 215 patients were men (64.6%) and the mean age was 37.3±16.3 years. 215 patients were first-generation migrants (64.6%), 52 second-generation migrants (15.6%), and 66 travellers/expatriates (19.8%). Patients were infected in West Africa (68.5%), Central Africa (26.4%), East Africa (1.5%) and the Indian Ocean (3%).

thumbnail
Table 1. Demographic, epidemiological, clinical and biological data from imported malaria cases in Metropolitan France from 2010 to 2013.

https://doi.org/10.1371/journal.pone.0175328.t001

Age of patients varied according to disease severity sub-groups (p = 0.002) (Table 1), with very severe malaria patients being older than moderately severe malaria and uncomplicated malaria patients (p = 0.013 and p = 0.001 respectively). The proportions of first-generation migrants, second-generation migrants and travelers/expatriates differed according to malaria severity (p = 0.002) (Table 1), the highest proportion of first-generation migrants and second-generation migrants was observed in the uncomplicated malaria group whereas travelers/expatriates were more common in the very severe malaria and moderately severe malaria groups. Previous self-reported history of malaria was more frequent in uncomplicated malaria than in very severe malaria and moderately severe malaria groups (p = 0.03) (Table 1). The median time between onset of symptoms and diagnosis differed between clinical sub-groups (p = 0.04), being higher in the very severe malaria group (4 days [26]) (Table 1). There was a gradual significant decrease in platelets related to disease severity decrease, from uncomplicated malaria to very severe malaria groups (p<0.01). Median parasite density varied according to disease severity (p<0.001) with parasite density being higher in severe malaria than in uncomplicated malaria (p<0.01), but being similar in very severe malaria and moderately severe malaria groups.

PfHRP2 and parasite biomass determination

To investigate parasite factors involved in severe malaria onset, plasma concentrations of PfHRP2 and total, circulating and sequestered parasite biomass were determined. Quantification of PfHRP2 was performed for 315 patients including 132 severe malaria cases (53 very severe malaria and 79 moderately severe malaria cases) and 183 uncomplicated malaria cases. The plasma levels of PfHRP2 were significantly higher in the very severe malaria and moderately severe malaria group compared to uncomplicated malaria (2766.9 ng/mL [772–5742.2] and 1017 ng/mL [336.4–2908.9] respectively vs. 234.7 ng/mL [85–774.2]; p<0.001), but were similar in very severe malaria and moderately severe malaria groups (Fig 1A). Total (Ptot), circulating (Pcirc), and sequestered (Pseq) parasite biomass were estimated for the 176 patients for whom weight and hematocrit data were available, including 85 severe malaria cases (37 very severe malaria and 48 moderately severe malaria) and 91 uncomplicated malaria patients. Negative Pseq values were obtained in 35 patients (19.9%) and were reported as 0 [14, 15] (Fig 1B). Total and circulating parasite biomass varied according to disease severity. Significantly higher levels of both Ptot and Pcirc were observed in very severe malaria compared to uncomplicated malaria and in moderately severe malaria compared to uncomplicated malaria (Ptot: 1.2 X 1013 [2.8 X 1012–2.5 X 1013] in very severe malaria, 4.4 X 1012 [1.5 X 1012–1.1 X 1013] in moderately severe malaria and 7.9 X 1011 [3 X 1011–2.3 X 1012] in uncomplicated malaria, p<0.001 for both comparisons; Pcirc: 2 X 1012 [1 X 1012–4.2 X 1012] in very severe malaria, 1.5 X 1012 [9.9 X 1011–2.3 X 1012] in moderately severe malaria and 2.5 X 1011 [1.0 X 1011–3.5 X 1011] in uncomplicated malaria, p<0.001 for both comparisons), but were similar in very severe malaria and moderately severe malaria groups (Fig 1B). Unexpectedly, Pseq levels did not differ between disease severity sub-groups.

thumbnail
Fig 1. PfHRP2 plasma levels and parasite biomass according to clinical presentation of imported malaria.

(A) Log-transformed plasma levels of PfHRP2 in the very severe malaria (VSM), moderately severe malaria (MSM) and uncomplicated malaria (UM) sub-groups. Levels of PfHRP2 were determined on 315 D0 plasma samples by ELISA. (*) corresponds to a significant difference using ANOVA test (p<0.05) and Bonferroni’s correction (p<0.016). (B) Log-transformed estimated total parasite biomass (Ptot), estimated total circulating parasite biomass (Pcirc) and estimated sequestrated parasite biomass (Pseq) respectively in the very severe malaria (VSM) (red box plot), moderately severe malaria (MSM) (orange box plot) and uncomplicated malaria (UM) groups (white box plot). Parasite biomass was estimated for 176 patients using a mathematical approach as described [15] with quantitative plasma levels of PfHRP2 (g/L) determined by ELISA, hematocrit (%), patient body weight (kg) and parasitemia (parasites/μL) on D0 sample. Box plot represents the median [25th percentile-75th percentile] with the extreme value 10th and 90th percentile. (*) corresponds to a significant difference using ANOVA test (p<0.05) and Bonferroni’s correction (p<0.016).

https://doi.org/10.1371/journal.pone.0175328.g001

Anti-plasmodial antibody in plasma

Anti-plasmodial antibody levels in plasma were investigated as host factors potentially influencing clinical presentation of imported malaria. The variation in antibody levels was evaluated according to disease severity and epidemiological groups. The titers of total anti-P. falciparum plasma antibodies at D0 were determined for 329 patients, and classified as negative in 93 cases (28.3%), positive in 179 cases (54.4%), and strongly positive in 57 cases (17.3%). Antibody levels differed according to disease severity sub-groups (p = 0.023), negative antibody levels were more frequent in moderately severe malaria compared to uncomplicated malaria (41.5% vs. 22.9%; p = 0.003). Antibody levels also varied with regard to malaria exposure (p<0.001). Negative serology was less frequent in the first-generation migrants group (p<0.001) (Table 2).

thumbnail
Table 2. Repartition of antibody titer sub-groups in each epidemiological sub-group.

https://doi.org/10.1371/journal.pone.0175328.t002

In multivariate analysis, positive antibody titers were more likely observed in uncomplicated malaria (odds ratio [95% CI]: 2.2 [1.2–4]; p = 0.008). Negative antibody levels were more likely observed in second-generation migrants and travelers/expatriates groups (0.3 [0.1–0.6]; p = 0.002 and 0.3 [0.2–0.5]; p<0.001 respectively) (Table 3).

thumbnail
Table 3. Multivariate analysis with logistic regression to identify factors influencing positive serology at D0 in French imported malaria.

https://doi.org/10.1371/journal.pone.0175328.t003

Risk factors for clinical severity

Logistic regression was performed to identify risk factors for severe imported malaria onset from age, ethnic origin, antibody levels, and parasite biomass (S1S4 Tables). This multivariate analysis identified, PfHRP2, Ptot and Pcirc as risk factors of MSM (odds ratio [95% CI]: 1.3 [1.2–1.6]; 1.3 [1.1–1.6], and 2.7 [1.9–3.9] respectively; all p<0.01) (S3 Table), and of VSM (1.6 [1.3–2.0]; 1.5 [1.2–1.9], and 2.1 [1.5–2.9], respectively; all p<0.01) (S2 Table). Conversely, decreased PfHRP2, Ptot and Pcirc were associated to uncomplicated malaria (0.5 [0.5–0.6]; 0.5 [0.4–0.7] and 0.1 [0.1–0.3] respectively; all p<0.01) (S4 Table). Depending on the statistical model, age was also a significant influent factor of very severe and moderately severe malaria onset (1 [1–1.1]; p = 0.01 and 1 [0.2–1]; p = 0.006 respectively) (S2 and S3 Tables) as well as positive serology sub-groups for moderately severe malaria and uncomplicated malaria (0.2 [0.1–0.7]; p = 0.01 and 4.4 [1.2–16.6]; p = 0.03 respectively) (S3 and S4 Tables).

Linear regression was performed to identify variables influencing PfHRP2 and parasite biomass values considered as risk factors of severity, from significant variables previously identified between disease severity sub-groups (VSM, MSM and UM) and from theoretical variables (age, epidemiological and antibody titer sub-groups) (Table 4). A negative correlation was observed between the UM group and PfHRP2, Ptot or Pcirc (coefficient [95% CI]: -1 [-2.1 - -1.2], -1.7 [-2.4 - -1.1] and -2.1 [-2.5 - -1.7]; all p<0.001), between negative antibody levels and PfHRP2 (-0.96 [-1.6 - -0.3]; p = 0.004) or Ptot (-1.1 [-1.2 - -0.3]; p = 0.009). Positive correlation was observed between positive antibody levels and Pcirc (0.5 [0.001–0.98]; p = 0.049). Pseq was positively correlated with the VSM group (6.5 [1.6–11.5]; p = 0.01) and was negatively correlated with negative and positive antibody titer groups (-7.8 [-13.2 - -2.3] and -6.7 [-11.6 - -1.7]; both p<0.01) (Table 4).

thumbnail
Table 4. Models of multivariate analysis with linear regression to identify factors related to PfHRP2, estimated total parasite biomass, estimated total circulating parasite biomass and estimated sequestered parasite biomass in imported malaria in France, 2010–2013.

https://doi.org/10.1371/journal.pone.0175328.t004

Discussion

A wide variety of clinical presentation could be seen in the context of imported malaria. Through the CNRP network and database, the study of imported severe and non-severe malaria cases, as defined by the WHO criteria established in 2000 and still in force in France, reaffirmed since 2013 [23] despite the 2014 WHO criteria [24], allowed us to identify risk factors in susceptible populations.

As reported previously, severe malaria patients, and particularly very severe malaria patients, are older than uncomplicated malaria patients [2, 16, 25], and differ in ethnicity [3, 16, 18], delay between onset of symptoms and diagnosis [18], previous history of malaria [16] and thrombocytopenia [26]. High parasite density is more frequent in SM, but similar in very severe malaria and moderately severe malaria patients. Among epidemiological sub-groups with a risk factor in severe malaria, travelers/expatriates are most susceptible to very severe malaria. Multivariate analysis including all these significant variables confirmed a significant association between age, serological status at D0 and severe imported malaria onset. Serological status is theoretically correlated with pre exposure to malaria and also associated with epidemiological sub-groups (second-generation migrants and travelers/expatriates) and disease severity sub-groups (UM) as observed in multivariate analysis. Compared to 70.4% in the uncomplicated malaria group which reported prior history of malaria, absence of or low prior exposure to P. falciparum in travelers/expatriates may explain this difference in clinical presentation. The high rate of prior history of malaria reported in 73.2% in the first-generation migrants groups corroborated our observations. Accordingly, it may be hypothesized that the potential protective effect of prior exposure to P. falciparum against SM, likely depends on the frequency and number of prior exposures [12, 27, 28]. Antibody detection and titers are informative with regard to prior exposure to Plasmodium spp. but not with regard to anti-malarial immune protection, providing quantitative but not qualitative information on the antibody response. The hypothesis of probable long-term protection in first-generation migrants is consistent with our results [29]. Persistence of protection after leaving malaria-endemic areas has already been suggested, but few biological data on immune responses are available [29, 30]. However, the differences in clinical presentation, observed in second-generation migrants and travelers/expatriates suggest the possibility that other factors are involved in protection against SM [31, 32]. Moreover, the difference in antibody response between first-generation migrants and second-generation migrants may also result from differences in exposure to the parasite.

Plasma PfHRP2 concentrations, Ptot and Pcirc correlated with the severity of malaria infection as observed in univariate and multivariate statistical analysis, but did not differentiate severe forms [14, 33]. Mathematical modeling to calculate parasite biomass may require taking into account both the P. falciparum strain and the population studied, which are thus central factors in this limitation, as already discussed by Dondorp et al., [14]. However, the lack of power or other pathophysiological mechanisms may also impede the detection of differences between SM sub-groups [14]. As we used the same methodology to estimate parasite biomass, this bias likely also applies to our work. As described by Cunnington et al., [34] sequestered parasite biomass is similar between SM and UM, confirming that parasite sequestration also occurs in UM. Distinct adhesion phenotypes may explain differences in malaria pathogenesis and in clinical presentation [11]. High antibody levels probably limit sequestration in UM, or favor an adhesion phenotype switch. However, linear regression model revealed a strong interaction between sequestered parasite biomass and VSM confirming a key role of the sequestration in very severe malaria. As observed for PfHRP2, Ptot and Pcirc, significant correlation between Pseq and the host antibody response was also observed, revealing interaction between parasite biomass and antibodies response.

Our study utilizing the CNRP network is subject to limitations. Recording of imported malaria cases is estimated to be 52% complete, and the percentage of sample transfer after notification was 75.8% in 2014, leading to a possible underestimation of particular clinical presentations as cerebral malaria [35]. Moreover, inclusion criteria with negative drug plasma levels to avoid the influence of drugs on biological data have limited the number of patients included, as antimalarial self-medication was frequently detected. Non-exhaustive information is sufficient for notification of imported malaria cases to the CNRP database, meaning that specific data may be missing, eventually preventing calculation of the parasite biomass. Determination of PfHRP2 was not performed if sample volume was inadequate. Pediatric cases were not included in our study because of insufficient blood sample volume, leading to skewed recruitment of children.

Our study of imported malaria confirms that ethnic origin, and anti-P. falciparum antibody response, correlated to prior exposure to P. falciparum, influent the clinical presentation of imported malaria. Parasite biomass may also determine the nature of the clinical presentation and significantly interact with antibodies titers. Our data suggest the key role of prior exposure to P. falciparum in inducing protection against VSM, generating antibody levels which significantly reduce the circulating and sequestered parasite burden. A more accurate qualitative study of the protective antibody repertoire is needed to understand the host-parasite interactions in non-exposed patients in imported malaria context.

Supporting information

S1 Table. Correlation matrix between plasmatic HRP2, estimated total parasite biomass, estimated total circulating parasite biomass and estimated sequestered parasite biomass.

Ptot, estimated total parasite biomass; Pcirc, estimated total circulating parasite biomass; Pseq, estimated sequestered parasite biomass.

https://doi.org/10.1371/journal.pone.0175328.s001

(DOCX)

S2 Table. Models of multivariate analysis with logistic regression to identify factors influencing very severe malaria onset in French imported malaria.

FGM, first-generation of migrants; SGM, Second-generation of migrants; T/E, Travellers/expatriates; VSM, very severe malaria; CI, Confidence interval; Ptot, estimated total parasite biomass; Pcirc, estimated total circulating biomass; Pseq, estimated sequestered parasite biomass. Multivariate analysis was performed on 315 patients for PfHRP2 (model 1) and 176 patients for Ptot, Pcirc and Pseq (model 2–4 respectively). Age, malaria exposure, serology status and log-transformed PfHRP2, Ptot, Pcirc and Pseq were selected, considered as influent factors. FGM and strongly positive serology were chosen as reference group for the analysis whereas age, PfHRP2, Ptot, Pcirc and Pseq were considered as continuous variable. Factors have a significant influence if p value<0.05.

https://doi.org/10.1371/journal.pone.0175328.s002

(DOCX)

S3 Table. Models of multivariate analysis with logistic regression to identify factors influencing moderately severe malaria onset in French imported malaria.

FGM, first-generation of migrants; SGM, Second-generation of migrants; T/E, Travellers/expatriates; VSM, very severe malaria; CI, Confidence interval; Ptot, estimated total parasite biomass; Pcirc, estimated total circulating biomass; Pseq, estimated sequestered parasite biomass. Multivariate analysis was performed on 315 patients for PfHRP2 (model 1) and 176 patients for Ptot, Pcirc and Pseq (model 2–4 respectively). Age, malaria exposure, serology status and log-transformed PfHRP2, Ptot, Pcirc and Pseq were selected, considered as influent factors. FGM and strongly positive serology were chosen as reference group for the analysis whereas age, PfHRP2, Ptot, Pcirc and Pseq were considered as continuous variable. Factors have a significant influence if p value<0.05.

https://doi.org/10.1371/journal.pone.0175328.s003

(DOCX)

S4 Table. Models of multivariate analysis with logistic regression to identify factors influencing uncomplicated malaria onset in French imported malaria.

FGM, first-generation of migrants; SGM, Second-generation of migrants; T/E, Travellers/expatriates; VSM, very severe malaria; CI, Confidence interval; Ptot, estimated total parasite biomass; Pcirc, estimated total circulating biomass; Pseq, estimated sequestered parasite biomass. Multivariate analysis was performed on 315 patients for PfHRP2 (model 1) and 176 patients for Ptot, Pcirc and Pseq (model 2–4 respectively). Age, malaria exposure, serology status and log-transformed PfHRP2, Ptot, Pcirc and Pseq were selected, considered as influent factors. FGM and strongly positive serology were chosen as reference group for the analysis whereas age, PfHRP2, Ptot, Pcirc and Pseq were considered as continuous variable. Factors have a significant influence if p value<0.05.

https://doi.org/10.1371/journal.pone.0175328.s004

(DOCX)

Acknowledgments

We thank additional members of the CNRP study group for their contribution to the collection of data:

Sophie Matheron* (Service des maladies infectieuses et tropicales, Hôpital Bichat-Claude Bernard, APHP, Paris, France); Enrique Casalino (Service des urgences, Hôpital Bichat-Claude Bernard, APHP, Paris, France); Michel Wolff (Service de réanimation médicale, Hôpital Bichat-Claude Bernard, APHP, Paris, France); Anne Delaval (Laboratoire de parasitologie-mycologie, Hôpital Robert Ballanger, Aulnay-sous-bois, France); Patrice Agnamey (Laboratoire de parasitologie-mycologie, CHU Amiens, Amiens, France); Rémi Durand (Laboratoire de parasitologie-mycologie, CHU Avicenne, APHP, Bobigny, France); Jean Etienne Pilo (Laboratoire de biologie, HIA Begin, Sant-Mandé, France); Christophe Rapp (Service des maladies infectieuses, HIA Begin, Sant-Mandé, France); Jean François Faucher (Service des maladies infectieuses, CHU Besançon, Besançon, France), Bernadette Cuisenier (Laboratoire de parasitologie-mycologie, CHU Dijon, Dijon, France), Isabelle Poilane and Dieudonné Bemba (Laboratoire de microbiologie, CHU Jean Verdier, Bondy, France); Aurélie Roide (Laboratoire d’hématologie, CHU Lariboisière, APHP, Paris, France); Anne Debourgogne (Laboratoire de parasitologie-mycologie, CHU Nancy, Nancy, France); Michel Thibault (Laboratoire de microbiologie, Hôpital René Dubos, Pontoise, France); Dominique Toubas (Laboratoire de parasitologie-mycologie, CHU Reims, Reims, France); Pierre Patoz (Laboratoire de parasitologie, CH Tourcoing, Tourcoing, France); Ludovic De Gentile (Laboratoire de parasitologie-mycologie, CHU Angers, Angers, France); Dominique Pons (Laboratoire de parasitologie-mycologie, CHU Clermont-Ferrand, Clermond-Ferrand, France); Jean Pierre Hurst (Laboratoire d’hématologie, CH Jacques Monod, Le Havre, France); Caroline Lohmann (Laboratoire de microbiologie, CH Mulhouse, Mulhouse, France); Marie Laure Bigel (Laboratoire de microbiologie, CH Mantes-la-Jolie, Mantes-la-Jolie, France); Nadine Godineau (Laboratoire de microbiologie, Hôpital Delafontaine, Saint-Denis, France); Maxime Thouvenin (Laboratoire de microbiologie, CH Troyes, Troyes, France); Jean Dunand and Nawel Ait-Ammar (Laboratoire de parasitologie-mycologie, CHU Ambroise Paré, APHP, Boulogne-Billancourt, France); Adela Angoulvant (Laboratoire de parasitologie-mycologie, CHU du Kremlin-Bicêtre, Le Kremlin-Bicêtre, France); Naima Dahane (Laboratoire de parasitologie-mycologie, CHU Cochin, APHP, Paris, France); Magali Lefevre (Laboratoire de biologie médicale, GH Public du Sud de l’Oise, Creil, France); Jean Benjamin Murat and Cécile Garnaud (Laboratoire de parasitologie-mycologie, CHU Grenoble, Grenoble, France); Eric Dannaoui (Laboratoire de parasitologie-mycologie, Hôpital Européen Georges Pompidou, APHP, Paris, France); Françoise Botterel (Laboratoire de parasitologie-mycologie, CHU Henri Mondor, APHP, Créteil, France); Emmanuel Dutoit (Laboratoire de parasitologie-mycologie, CHRU Lille, Lille, france); Marie Laure Dardé (Laboratoire de parasitologie-mycologie, CHU Dupuytren, Limoges, France); Houria Ichou and Catherine Branger (Laboratoire de microbiologie, CHU Louis Mourier, APHP, Colombes, France); Pascal Penn (Laboratoire de biologie, CH Le Mans, Le Mans, France); Cécile Angebault (Laboratoire de parasitologie-mycologie, CHU Necker, APHP, Paris, France); Florient Morio (Laboratoire de parasitologie-mycologie, CHU Nantes, Nantes, France); Laurent Bret (Laboratoire de parasitologie-mycologie, CHR Orléans, Orléans, France), Oussama Mouri (Laboratoire de parasitologie-mycologie, CHU Pitié-Salpétrière, APHP, Paris, France); Estelle Cateau (Laboratoire de parasitologie-mycologie, CHU Poitiers, Poitiers, France); Jean Yves Siriez (Service des urgences pédiatriques, CHU Robert Debré, APHP, Paris, France); O. Fenneteau (Laboratoire d’hémaotologie, CHU Robert Debré, APHP, Paris, France); Mathieu Revest (Service des maladies infectieuses, CHU Pontchaillou, rennes, France); Soria Belaz (Laboratoire de parasitologie-mycologie, CHU Pontchaillou, rennes, France); Ghania Belkadi (Laboratoire de parasitologie-mycologie, CHU Saint Antoine, APHP, Paris, France); Samia Hamane and Stéphane Bretagne (Laboratoire de parasitologie-mycologie, CHU Saint Louis, APHP, Paris, France); Ahmed Aboubacar (Laboratoire de parasitologie-mycologie, CHU Strasbourg, Strasbourg, France); Guillaume Leloup (Service des maladies infectieuses, CHU Tenon, APHP, Paris, France); Michel Develoux (Laboratoire de parasitologie-mycologie, CHU Tenon, APHP, Paris, France); Hélène Lapillonne (Laboratoire d’hématologie, CHU Armand Trousseau, APHP, Paris, France); Odile Eloy (Laboratoire de microbiologie, CHU André Mignot, Le Chesnay, France); Gilles Nevez (Laboratoire de parasitologie-mycologie, CHU Brest, Brest, France); Didier Raffenot (Laboratoire de microbiologie, CHU Chambéry, Chambéry, France), Bernadette Buret (Laboratoire de biologie, CH Niort, Niort, France), Guillaume Desoubeaux (Laboratoire de parasitologie-mycologie, CHRU Bretonneau, Tours, France), and Anne Goepp (Laboratoire de microbiologie, CH Villeneuve Saint-Georges, Villeneuve Saint-Georges, France).

* Contact email address of the lead author: sophie.matheron@aphp.fr

We thank Vincent Samson, Florianne Ferreira, Maribel Rodriguez-Gutierrez and Camille Moisant for technical support and Michel Cot for the manuscript revision.

Author Contributions

  1. Conceptualization: SH PD JC SC NA MT.
  2. Data curation: NA EK CAC PH VH CNRP.
  3. Formal analysis: NA EK.
  4. Funding acquisition: SH.
  5. Investigation: NA VH SH MT.
  6. Methodology: NA EK.
  7. Project administration: MT SH PD.
  8. Resources: SH PD.
  9. Software: EK.
  10. Supervision: SH, PD.
  11. Validation: NA EK SC JC PD SH.
  12. Visualization: NA EK PD SH.
  13. Writing – original draft: NA EK SH PD JC.
  14. Writing – review & editing: SH PD JC SC.

References

  1. 1. European Centre for disease prevention and control. Annual epidemiological report. 2014.
  2. 2. Bruneel F, Hocqueloux L, Alberti C, Wolff M, Chevret S, Bédos JP et al. The clinical spectrum of severe imported falciparum malaria in the intensive care unit: report of 188 cases in adults. Am J Respir Crit Care Med. 2003; 167:684–89. pmid:12411286
  3. 3. Bruneel F, Tubach F, Corne P, Megarbane B, Mira JP, Peytel E et al. Severe imported falciparum malaria: a cohort study in 400 critically ill adults. PLoS ONE. 2010; 5:e13236. pmid:20949045
  4. 4. Marks ME, Armstrong M, Suvari MM, Batson S, Whitty CJ, Chiodini PL et al. Severe imported falciparum malaria among adults requiring intensive care: a retrospective study at the hospital for tropical diseases, London. BMC Infect Dis. 2013; 13:118. pmid:23497139
  5. 5. González A, Nicolás JM, Muñoz J, Castro P, Mas J, Valls ME et al. Severe imported malaria in adults: retrospective study of 20 cases. Am J Trop Med Hyg. 2009; 81:595–99. pmid:19815872
  6. 6. Marchiafava E, Bignami A. On summer-autumn malarial fevers. In: Marchiafava E, editors. Two monographs on malaria and the parasites of malarial fevers. London: New Sydenham Society; 1894. pp. 1–232.
  7. 7. Hanson J, Lee SJ, Hossain MA, Anstey NM, Charunwatthana P, Maude RJ et al. Microvascular obstruction and endothelial activation are independently associated with the clinical manifestations of severe falciparum malaria in adults: an observational study. BMC Med. 2015; 13:122. pmid:26018532
  8. 8. MacPherson GG, Warrell MJ, White NJ, Looareesuwan S, Warrell DA. Human cerebral malaria. A quantitative ultrastructural analysis of parasitized erythrocyte sequestration. Am J Pathol. 1985; 119:385–401. pmid:3893148
  9. 9. Turner GD, Morrisson H, Jones M, Davis TM, Looareesuwan S, Buley ID et al. An immunohistochemical study of the pathology of fatal malaria. Evidence for widespread endothelial activation and a potential role for intercellular adhesion molecule-1 in cerebral sequestration. Am J Pathol. 1994; 145:1057–69. pmid:7526692
  10. 10. Rowe JA, Claessens A, Corrigan RA, Arman M. Adhesion of Plasmodium falciparum-infected erythrocytes to human cells: molecular mechanisms and therapeutic implications. Expert Rev Mol Med. 2009; 11:e16. pmid:19467172
  11. 11. Smith JD, Rowe JA, Higgins MK, Lavstsen T. Malaria’s deadly grip: cytoadhesion of Plasmodium falciparum-infected erythrocytes. Cell Microbiol. 2013; 15:1976–83. pmid:23957661
  12. 12. Doolan DL, Dobaño C, Baird JK. Acquired immunity to malaria. Clin Microbiol Rev. 2009; 22:13–36. pmid:19136431
  13. 13. Rubach MP, Mukemba J, Florence S, John B, Crookston B, Lopansri BK et al. Plasma Plasmodium falciparum histidine-rich protein-2 concentrations are associated with malaria severity and mortality in Tanzanian children. PLoS ONE. 2012; 7:e35985. pmid:22586457
  14. 14. Dondorp AM, Desakorn V, Pongtavornpinyo W, Sahassananda D, Silamut K, Chotivanich K et al. Estimation of the total parasite biomass in acute falciparum malaria from plasma PfHRP2. PLoS Med. 2005; 2:e204. pmid:16104831
  15. 15. Hendriksen ICE, Mwanga-Amumpaire J, von Seidlein L, Mtove G, White LJ, Olaosebikan R et al. Diagnosing severe falciparum malaria in parasitaemic African children: a prospective evaluation of plasma PfHRP2 measurement. PLoS Med. 2012; 9:e1001297. pmid:22927801
  16. 16. Phillips A, Bassett P, Zeki S, Newman S, Pasvol G. Risk factors for severe disease in adults with falciparum malaria. Clin Infect Dis. 2009; 48:871–78. pmid:19243243
  17. 17. Checkley AM, Smith A, Smith V, Blaze M, Bradley D, Chiodini PL, Whitty CJM. Risk factors for mortality from imported falciparum malaria in the United Kingdom over 20 years: an observational study. BMJ. 2012; 344:e2116. pmid:22454091
  18. 18. Seringe E, Thellier M, Fontanet A, Legros F, Bouchaud O, Ancelle T et al. Severe imported Plasmodium falciparum malaria, France, 1996–2003. Emerg Infect Dis. 2011; 17:807–13. pmid:21529388
  19. 19. Société de Pathologie Infectieuse de Langue Française, Collège des Universitaires de Maladies Infectieuses et Tropicales, Société Française de Médecine des Armées, Société Française de Parasitologie, Société Française de Pédiatrie, Société de Médecine des Voyages, Société de Pathologie Exotique, and Société de Réanimation de Langue Française. Management and prevention of imported Plasmodium falciparum malaria (Revision 2007 of the 1999 Consensus Conference). Médecine Mal Infect. 2008; 38:68–117.
  20. 20. Snounou G, Viriyakosol S, Jarra W, Thaithong S, Brown KN. Identification of the four human malaria parasite species in field samples by the polymerase chain reaction and detection of a high prevalence of mixed infections. Mol Biochem Parasitol. 1993; 58:283–92. pmid:8479452
  21. 21. Snounou G, Viriyakosol S, Zhu XP, Jarra W, Pinheiro L, do Rosario VE et al. High sensitivity of detection of human malaria parasites by the use of nested polymerase chain reaction. Mol Biochem Parasitol. 1993; 61:315–20. pmid:8264734
  22. 22. World Health Organization. Severe falciparum malaria. Trans R Soc Trop Med Hyg. 2000; 94:S1–90. pmid:11103309
  23. 23. Haut Conseil de la santé publique. Place de l’artésunate injectable dans le traitement du paludisme grave de l’adulte et de l’enfant. from: http://www.hcsp.fr.
  24. 24. World Health Organization. Guidelines for the treatment of malaria, third edition 2015. from: http://www.who.int.
  25. 25. Mühlberger N, Jelinek T, Behrens RH, Gjorup I, Coulaud JP, Clerinx J et al. Age as a risk factor for severe manifestations and fatal outcome of falciparum malaria in European patients: observations from TropNetEurop and SIMPID Surveillance Data. Clin Infect Dis. 2003; 36:990–95. pmid:12684911
  26. 26. Lampah DA, Yeo TW, Malloy M, Kenangalem E, Douglas NM, Ronaldo D et al. Severe Malarial Thrombocytopenia: A Risk Factor for Mortality in Papua, Indonesia. J Infect Dis. 2014; 211:623–34. pmid:25170106
  27. 27. Gupta S, Snow RW, Donnelly CA, Marsh K, Newbold C. Immunity to non-cerebral severe malaria is acquired after one or two infections. Nat Med. 1999; 5:340–43. pmid:10086393
  28. 28. Kurtis JD, Mtalib R, Onyango FK, Duffy PE. Human resistance to Plasmodium falciparum increases during puberty and is predicted by dehydroepiandrosterone sulfate levels. Infect Immun. 2001; 69:123–28. pmid:11119497
  29. 29. Bouchaud O, Cot M, Kony S, Durand R, Schiemann R, Ralaimazava P et al. Do African immigrants living in France have long-term malarial immunity? Am J Trop Med Hyg. 2005; 72:21–25. pmid:15728861
  30. 30. Ndungu FM, Lundblom K, Rono J, Illingworth J, Eriksson S, Färnert A. Long-lived Plasmodium falciparum specific memory B cells in naturally exposed Swedish travelers. Eur J Immunol. 2013; 43:2919–29. pmid:23881859
  31. 31. Cserti-Gazdewich CM, Mayr WR, Dzik WH. Plasmodium falciparum malaria and the immunogenetics of ABO, HLA, and CD36 (platelet glycoprotein IV). Vox Sang. 2011; 100:99–111. pmid:21175660
  32. 32. Taylor SM, Cerami C, Fairhurst RM. Hemoglobinopathies: slicing the Gordian knot of Plasmodium falciparum malaria pathogenesis. PLoS Pathog. 2013; 9:e1003327. pmid:23696730
  33. 33. Gonçalves BP, Huang CY, Morrison R, Holte S, Kabyemela E, Prevots DR et al. Parasite burden and severity of malaria in Tanzanian children. N Engl J Med. 2014; 370:1799–1808. pmid:24806160
  34. 34. Cunnington AJ, Bretscher MT, Nogaro SI, Riley EM, Walther M. Comparison of parasite sequestration in uncomplicated and severe childhood Plasmodium falciparum malaria. J Infect. 2013; 67:220–30. pmid:23623771
  35. 35. Centre National de Référence du Paludisme pour la France métropolitaine. Rapport annuel 2015. http://www.cnrpalu-france.org/pages/rapports-annuels/.