| Literature DB >> 34276583 |
Sadudee Chotirat1, Narimane Nekkab2, Chalermpon Kumpitak1, Jenni Hietanen1,3, Michael T White2, Kirakorn Kiattibutr1, Patiwat Sa-Angchai4, Jessica Brewster5, Kael Schoffer5, Eizo Takashima6, Takafumi Tsuboi6, Matthias Harbers7,8, Chetan E Chitnis9, Julie Healer5,10, Wai-Hong Tham5,10, Wang Nguitragool3, Ivo Mueller2,5,10, Jetsumon Sattabongkot1, Rhea J Longley5,10.
Abstract
Thailand is aiming for malaria elimination by the year 2030. However, the high proportion of asymptomatic infections and the presence of the hidden hypnozoite stage of Plasmodium vivax are impeding these efforts. We hypothesized that a validated surveillance tool utilizing serological markers of recent exposure to P. vivax infection could help to identify areas of ongoing transmission. The objective of this exploratory study was to assess the ability of P. vivax serological exposure markers to detect residual transmission "hot-spots" in Western Thailand. Total IgG levels were measured against a panel of 23 candidate P. vivax serological exposure markers using a multiplexed bead-based assay. A total of 4,255 plasma samples from a cross-sectional survey conducted in 2012 of endemic areas in the Kanchanaburi and Ratchaburi provinces were assayed. We compared IgG levels with multiple epidemiological factors that are associated with an increased risk of P. vivax infection in Thailand, including age, gender, and spatial location, as well as Plasmodium infection status itself. IgG levels to all proteins were significantly higher in the presence of a P. vivax infection (n = 144) (T-test, p < 0.0001). Overall seropositivity rates varied from 2.5% (PVX_097625, merozoite surface protein 8) to 16.8% (PVX_082670, merozoite surface protein 7), with 43% of individuals seropositive to at least 1 protein. Higher IgG levels were associated with older age (>18 years, p < 0.05) and males (17/23 proteins, p < 0.05), supporting the paradigm that men have a higher risk of infection than females in this setting. We used a Random Forests algorithm to predict which individuals had exposure to P. vivax parasites in the last 9-months, based on their IgG antibody levels to a panel of eight previously validated P. vivax proteins. Spatial clustering was observed at the village and regional level, with a moderate correlation between PCR prevalence and sero-prevalence as predicted by the algorithm. Our data provides proof-of-concept for application of such surrogate markers as evidence of recent exposure in low transmission areas. These data can be used to better identify geographical areas with asymptomatic infection burdens that can be targeted in elimination campaigns.Entities:
Keywords: Plasmodium vivax; Thailand; antibodies; malaria; serological exposure marker; serology; serosurveillance; surveillance
Year: 2021 PMID: 34276583 PMCID: PMC8279756 DOI: 10.3389/fmicb.2021.643501
Source DB: PubMed Journal: Front Microbiol ISSN: 1664-302X Impact factor: 5.640
Study volunteer characteristics.
| Variable | Value |
| Age (years), median (range) | 20 (0.6–92) |
| Male | 2,058 (48.37%) |
| Female | 2,197 (51.63%) |
| Bongti | 2,334 |
| Kong Mong Tha (KMT) | 407 |
| Suan Phueng | 1,514 |
| 190 (4.47%) | |
| 144 | |
| 46 | |
| Mixed | 11 |
| 0.43–11,808 | |
| Fever (>37.6°C), number (%) | 28 (0.67%) |
| Number individuals tested | 100 |
| Number individuals positive | 4 |
| Yes | 28 (0.66%) |
| No | 4,226 (99.34%) |
| Yes | 3849 (90.5%) |
| No | 404 (9.5%) |
| No bednet | 280 (6.59%) |
| 0–6 months | 449 (10.57%) |
| 6–12 months | 321 (7.53%) |
| 1–2 years | 3,199 (75.29%) |
| Yes | 199 (4.68%) |
| No | 4,059 (95.32%) |
| Yes | 294 (6.91%) |
| No | 3,960 (93.09%) |
Plasmodium vivax proteins used in this study.
| PlasmoDB code/GenBank ID | Annotation | Region, amino acids (size) | Expression system |
| PVX_094255B | Reticulocyte binding protein 2b (n-terminal fragment) | 161–1,454 (1,294) | |
| PVX_099980 | Merozoite surface protein 1 (MSP1-19) | 1622–1,729 (108) | WGCF, CellFree Sciences |
| PVX_094255A | Reticulocyte binding protein 2b (c-terminal fragment) | 1,986–2,653 (667) | WGCF, CellFree Sciences |
| PVX_087885B | Rhoptry associated membrane antigen (RAMA) | 462–730 (269) | WGCF, Ehime University |
| KMZ83376.1 | Erythrocyte binding protein (EBP) | 109–432 (324) | |
| PVX_000930 | Sexual stage antigen S16 | 31-end (110) | WGCF, CellFree Sciences |
| PVX_095055 | Rh5 interacting protein (RIPR) | 552–1,075 (524) | |
| PVX_097720 | Merozoite surface protein 3 (MSP3α) | 25-end (828) | WGCF, CellFree Sciences |
| PVX_097715 | Hypothetical protein | 20-end (431) | WGCF, CellFree Sciences |
| PVX_082650 | Merozoite surface protein 7 (MSP7B) | 24-end (429) | WGCF, CellFree Sciences |
| AAY34130.1 | Duffy binding protein region II (strain AH) | 1–237 (237) | |
| PVX_097625 | Merozoite surface protein 8 (MSP8) | 24–463 (440) | WGCF, CellFree Sciences |
| PVX_092955 | Pv-fam-a | 25–358 (334) | WGCF, Ehime University |
| PVX_112670 | Pv-fam-a | 34-end (302) | WGCF, CellFree Sciences |
| PVX_087885A | Rhoptry associated membrane antigen (RAMA) | 462–730 (269) | WGCF, CellFree Sciences |
| PVX_096995 | Pv-fam-a | 61-end (420) | WGCF, CellFree Sciences |
| PVX_097680 | Merozoite surface protein 3 (MSP3β) | 21-end (996) | WGCF, CellFree Sciences |
| PVX_082700 | Merozoite surface protein 7 (MSP7L) | 23-end (397) | WGCF, CellFree Sciences |
| PVX_003770 | Merozoite surface protein 5 (MSP5) | 23-365 (343) | WGCF, CellFree Sciences |
| PVX_082670 | Merozoite surface protein 7 (MSP7F) | 24-end (388) | WGCF, CellFree Sciences |
| PVX_082735 | Thrombospondin related adhesion protein (PvTRAP/SSP2) | 26-493 (468) | WGCF, CellFree Sciences |
| PVX_088820 | Pv-fam-a | 58-end (259) | WGCF, Ehime University |
| PVX_110810 | Duffy binding protein region II (strain Sal1) | 193-521 (329) |
FIGURE 1Population-level seropositivity and immunogenicity of the IgG response against 23 P. vivax proteins. IgG levels were measured in 1,873–4,255 individuals from a 2012 Thai cross-sectional survey. (A) The percentage of individuals exceeding equivalent of 1/100 of the PNG pool was calculated using RAU values for each protein. The percentage of individuals seropositive was calculated by comparing to seropositivity cut-offs, defined as the mean + 2× the standard deviation of the negative control samples (n = 274). (B) Population-level seropositivity rates (n = 1,873–4,255) compared to seropositivity rates in individuals with current P. vivax infections (n = 76–144).
FIGURE 2Association of IgG levels against 23 P. vivax proteins with age and gender. (A) IgG levels compared between individuals from the 2012 cross-sectional survey as split by age: 0–7, 7–13, 13–18, and more than 18 years. Statistical significance between groups was assessed by one-way ANOVA with Sidak’s multiple comparison test. (B) IgG levels compared between gender of participants (male or female). Statistical significance was assessed by T-test. The black dashed line indicates the assay minimum, the blue dashed line the assay maximum, and the red dashed line is equivalent to a 1/100 dilution of the PNG pool. ∗p < 0.05, ∗∗p < 0.01, ∗∗∗p < 0.001, ****p < 0.0001.
FIGURE 3Association of IgG levels against 23 P. vivax proteins with concurrent P. vivax or P. falciparum infections. (A) IgG levels are shown against the 23 proteins in individuals with or without current P. vivax infections. (B) IgG levels are shown against the 23 proteins in individuals with or without current P. falciparum infections. Note these include individuals with P. falciparum-P. vivax co-infections. The black dashed line indicates the assay minimum, the blue dashed line the assay maximum, and the red dashed line is equivalent to a 1/100 dilution of the PNG pool. Statistical significance was assessed using T-tests. *p < 0.05, **p < 0.01, ***p < 0.001, ****p < 0.0001.
FIGURE 4Spatial distribution of P. vivax infections in the 2012 cross-sectional survey. The location of individuals (at the household level) with P. vivax infections (orange) in eight villages of Bongti (A), Suan Phueng (B), and Kong Mong Tha (C). The size of orange dots represents the PCR positive cases ranging from 1 to 5. The shading in orange represents multiple positive individuals in the same household or multiple positive households in the one area. Blue dots are indicative of uninfected individuals. The map was made using QGIS 3.16 software. Bongti had the largest number of enrolled individuals (n = 2,334) including village 1: Ban Bong Ti Bon with 31 with P. vivax infections, village 2: Ban Bong Ti Lang with 37 with P. vivax infections, and village 3: Ban Thai Muang with 22 with P. vivax infections. Suan Phueng was the second largest region with 1,514 enrolled individuals, including village 4: Wangko with 14 P. vivax infections, village 5: Huai Krawan 14 with P. vivax infections, village 6: Pong Hang with 13 P. vivax infections, and village 7: Huai Phak with 7 P. vivax infections. Kong Mong Tha (village 8) was the smallest region (n = 407 enrolled individuals) and also had the lowest number of P. vivax infections: 6 total.
Association between IgG level to the P. vivax proteins with location of household.
| Average RAU (log10) | p-values | |||||||
| Protein | Sample size | BT | KMT | SP | Between groups | BT vs KMT | BT vs SP | KMT vs SP |
| PVX_099980 | 4,255 | −3.149 | −3.396 | −3.303 | 0.053 | |||
| PVX_096995 | 4,255 | −3.388 | −3.588 | −3.454 | 0.0002 | |||
| PVX_097715 | 3,916 | −2.704 | −2.609 | −2.639 | 0.591 | |||
| PVX_112670 | 4,255 | −2.738 | −2.959 | −2.948 | 0.972 | |||
| PVX_003770 | 4,255 | −3.281 | −3.324 | −3.348 | 0.0109 | 0.568 | 0.009 | 0.893 |
| PVX_087885A | 4,255 | −3.023 | −3.367 | −3.305 | 0.115 | |||
| PVX_082700 | 4,255 | −3.388 | −3.499 | −3.406 | 0.0013 | 0.001 | 0.708 | 0.01 |
| PVX_082650 | 4,255 | −3.221 | −3.157 | −3.098 | 0.299 | 0.398 | ||
| PVX_094255A | 4,255 | −3.119 | −3.164 | −3.128 | 0.3726 | 0.412 | 0.952 | 0.636 |
| PVX_097680 | 4,255 | −3.182 | −3.887 | −3.761 | 0.0002 | |||
| PVX_097625 | 4,255 | −3.523 | −3.841 | −3.747 | 0.0002 | |||
| PVX_082670 | 4,255 | −3.108 | −3.644 | −3.585 | 0.238 | |||
| PVX_082735 | 4,255 | −3.223 | −3.382 | −3.337 | 0.369 | |||
| PVX_097720 | 4,255 | −3.320 | −3.724 | −3.648 | 0.052 | |||
| PVX_000930 | 4,255 | −3.441 | −3.588 | −3.615 | 0.798 | |||
| KMZ83376.1 | 4,255 | −2.976 | −3.398 | −3.435 | 0.783 | |||
| AAY34130.1 | 4,255 | −3.581 | −3.814 | −3.766 | 0.547 | |||
| PVX_095055 | 4,255 | −3.375 | −3.618 | −3.468 | 0.001 | |||
| PVX_094255B | 4,255 | −3.449 | −3.563 | −3.552 | 0.0001 | 0.027 | 0.993 | |
| PVX_110810 | 4,255 | −3.248 | −3.861 | −3.752 | 0.016 | |||
| PVX_087885B | 4,255 | −3.382 | −3.516 | −3.473 | 0.456 | |||
| PVX_092995 | 4,255 | −2.722 | −3.154 | −3.133 | 0.808 | |||
Classification with a 62% sensitivity and 90% specificity target.
| PCR+ | PCR− | Total | Proportion | |
| SERO+ | 108 | 556 | 664 | 15.6% (14.5%, 16.7%) |
| SERO− | 36 | 3,555 | 3,591 | |
| Total | 144 | 4,111 | 4,255 |
FIGURE 5Spatial distribution of model predicted recent P. vivax exposure status. The location of individuals (at the household level) who were classed as seropositive (orange dot) in the algorithm, using the antibody responses against the top eight P. vivax proteins. The size of orange dots represents the seropositive cases ranging from 1 to 11. The shading in orange represents multiple sero-positive individuals in the same household or multiple positive households in the one area. Blue dots are indicative of seronegative in the algorithm. The map was made using QGIS 3.16 software. Bongti (A) had 354 seropositive individuals out of a total 2,334 individuals tested (sero-prevalence of 15.2%). Suan Phueng (B) was the second largest region with seropositive prevalence of 259 in the 1,514 individuals (17.1%). Kong Mong Tha (C) was the smallest region and also had the lowest sero-prevalence, with 51 of the 407 individuals having a serological signature of recent P. vivax exposure (12.5% sero-prevalence).
FIGURE 6Association between village-level PCR prevalence and adjusted P. vivax sero-prevalence. P. vivax sero-prevalence was predicted by the algorithm incorporating antibody responses to the panel of eight P. vivax proteins, using the 62% sensitivity, 90% specificity target. The estimates were adjusted, at the village-level, for to account for the known sensitivity and specificity. A Pearson r correlation was performed to assess the association between PCR prevalence and adjusted P. vivax sero-prevalence. Data passed the Anderson–Darling test for normality.