Literature DB >> 18611279

Antimalarial drug use in general populations of tropical Africa.

Florence Gardella1, Serge Assi, Fabrice Simon, Hervé Bogreau, Teunis Eggelte, Fatou Ba, Vincent Foumane, Marie-Claire Henry, Pélagie Traore Kientega, Léonardo Basco, Jean-François Trape, Richard Lalou, Maryse Martelloni, Marc Desbordes, Meïli Baragatti, Sébastien Briolant, Lionel Almeras, Bruno Pradines, Thierry Fusai, Christophe Rogier.   

Abstract

BACKGROUND: The burden of Plasmodium falciparum malaria has worsened because of the emergence of chloroquine resistance. Antimalarial drug use and drug pressure are critical factors contributing to the selection and spread of resistance. The present study explores the geographical, socio-economic and behavioural factors associated with the use of antimalarial drugs in Africa.
METHODS: The presence of chloroquine (CQ), pyrimethamine (PYR) and other antimalarial drugs has been evaluated by immuno-capture and high-performance liquid chromatography in the urine samples of 3,052 children (2-9 y), randomly drawn in 2003 from the general populations at 30 sites in Senegal (10), Burkina-Faso (10) and Cameroon (10). Questionnaires have been administered to the parents of sampled children and to a random sample of households in each site. The presence of CQ in urine was analysed as dependent variable according to individual and site characteristics using a random - effect logistic regression model to take into account the interdependency of observations made within the same site.
RESULTS: According to the sites, the prevalence rates of CQ and PYR ranged from 9% to 91% and from 0% to 21%, respectively. In multivariate analysis, the presence of CQ in urine was significantly associated with a history of fever during the three days preceding urine sampling (OR = 1.22, p = 0.043), socio-economic level of the population of the sites (OR = 2.74, p = 0.029), age (2-5 y = reference level; 6-9 y OR = 0.76, p = 0.002), prevalence of anti-circumsporozoite protein (CSP) antibodies (low prevalence: reference level; intermediate level OR = 2.47, p = 0.023), proportion of inhabitants who lived in another site one year before (OR = 2.53, p = 0.003), and duration to reach the nearest tarmacked road (duration less than one hour = reference level, duration equal to or more than one hour OR = 0.49, p = 0.019).
CONCLUSION: Antimalarial drug pressure varied considerably from one site to another. It was significantly higher in areas with intermediate malaria transmission level and in the most accessible sites. Thus, P. falciparum strains arriving in cross-road sites or in areas with intermediate malaria transmission are exposed to higher drug pressure, which could favour the selection and the spread of drug resistance.

Entities:  

Mesh:

Substances:

Year:  2008        PMID: 18611279      PMCID: PMC2494551          DOI: 10.1186/1475-2875-7-124

Source DB:  PubMed          Journal:  Malar J        ISSN: 1475-2875            Impact factor:   2.979


Background

Malaria remains a major public health problem in Africa. Around 60% of 250–500 million clinical disease episodes and over 80% of 1.25 million deaths attributed each year to malaria occur in sub-Saharan Africa [1]. Several studies have described a two-fold increase in deaths due to malaria during the 1980s and 1990s because of the emergence of the chloroquine resistance [2-4]. However recent publications have documented a decline in malaria morbidity and mortality trends attributed to the increased access to artemisinin-based combination therapies and widespread use of insecticide-treated nets [5-7]. Drug pressure, intensity of malaria transmission and population movement favour the spread of antimalarial drug resistance [8-10]. Uncontrolled antimalarial drug use is a critical factor that contributes to the drug pressure. Exploring socio-cultural factors which influence antimalarial drug use has been recognized as a priority. Furthermore, since one of the objectives of Roll Back Malaria was to promote an equitable coverage and access of antimalarial drugs [11], the impact of environmental and behavioural factors on treatment use is important to be recognized. However, few studies have focused on this aspect of the epidemiology of drug-resistant malaria [12,13]. The distance to public health facilities, socio-economic level, age and parasite prevalence have been identified as key factors of drug use, but these factors have been described generally without taking into account each other simultaneously. Thus, the possible associations and interactions of these factors have never been explored. In order to evaluate the association between the use of antimalarial drug and geographical, socio-economic and behavioral factors, a multi center cross-sectional study was conducted in 2003 in 30 sites from three countries (Senegal, Burkina Faso and Cameroon), when CQ was still the first-line treatment of uncomplicated malaria. Although the sites are not formally representatives of the whole continent, they represent a wide panel of ecosystems and malaria endemicity conditions.

Methods

Study sites

The study was conducted in two regions (in the north and the south of each country) in Senegal (sites #1 to 10), Burkina-Faso (sites #11 to 20) and Cameroon (sites #21 to 30) (Figure 1), between September 30 and December 17, 2003. In each area, this period corresponded to the end of the malaria transmission season or during the low transmission season. The rainy season (i.e. with an average of five or more rainy days per month in the nearest locality referred at ) lasts from August to September, from June to October, from May to September, from May to October and from May to October, in north Senegal, south Senegal, north Burkina-Faso, south Burkina-Faso and north Cameroon, respectively. In south Cameroon, there are two rainy seasons from March to June and from September to November. A list of different possible combinations of five sites (districts of towns or villages) was established for each region. The combinations were made to maximize the differences in environmental conditions suitable for malaria transmission, access to health structures and transport facilities between sites. A combination of five sites was randomly selected from the list of each region. In Burkina Faso, the combination of sites included three sites in an urban area and two sites in a rural area. In the regions of the other countries, only rural sites were included.
Figure 1

Map of the study areas in West and Central Africa. Study sites are indicated by open discs and their ID numbers on the maps of the study areas. Hydrographic networks are in white. Road networks are in black. Main localities are indicated by filled discs.

Map of the study areas in West and Central Africa. Study sites are indicated by open discs and their ID numbers on the maps of the study areas. Hydrographic networks are in white. Road networks are in black. Main localities are indicated by filled discs. The informed consent of the parents of each child was obtained orally at the beginning of the study after a thorough explanation of its purpose. The study design received clearance from the Senegal (Dakar), Burkina Faso (Ouagadougou) and Cameroon (Yaoundé) National Ethics Committees.

Site characteristics

In each site, 30 households were randomly selected from a numbered households list when it was available for the site or using a random-walk that was calibrated to be able to cover the whole of the surface of the site and started from its center. The head of each household was interviewed on the number of individuals in the household, the number of rooms occupied, and the presence of the following facilities: running water, electricity, kitchen, refrigerator, living room, dining room, television, radio, video recorder, mobile, landline phone, vehicle, characteristics of the house (wall without anfractuosities, ground built with tiles or cement, windows that can be closed hermetically, roof built with a permanent structure). The number of these facilities that were present was calculated and used as an unweighted score from 0 to 16 reflecting the socio-economic level of each household. A numbered list of all the inhabitants was drawn up for each household. Among them, up to three individuals were randomly chosen using a random numbers table. These individuals or their legal tutor were interviewed on their history of previous malaria attack, their personal characteristics (including age, last travel outside his/her village or town, length of residence in the site), their travels (number of nights spent in another village in the last 30 days) and their use of antimalarial drugs (including names of anti-malarial drugs commonly used, places where drugs are purchased, presence of stocks of medicines in the household). The sites were characterized by aggregating data collected from individuals or households (by calculating the median or proportion). Distances between sites and towns, sanitary structures and transport system were obtained from global positioning system coordinates. The duration of the corresponding travel were estimated by the averaged responses from key persons and heads of households.

People

The consumption of antimalarial drug was estimated by testing the presence of chloroquine (CQ) and pyrimethamine (Pyr) parent compounds and metabolites in urine samples of 100 children between two and nine years of age randomly selected in each site, independently of their clinical status. Parental consent was obtained for each child. The test is based on an enzyme-linked immunosorbent assay (ELISA) blocking test, where immobilized antibody was first reacted with the test sample and then with a drug-peroxidase-enzyme conjugate and finally with the peroxidase-enzyme-substrate [14]. The sensitivity for the detection of CQ and Pyr were 20 ng/ml and 50 ng/ml, respectively. The specificity in negative controls was 100%. The presence of antimalarials in urine was also tested in a random sub-sample of urine from each country using an high-performance liquid chromatography (HPLC) technique. A numbered list of all the urines was drawn up for each country. Among them, up to hundred urine samples were randomly chosen using computer-generated random numbers and sent at -20°C to France and then kept at -80°C until analysis. Samples without sufficient volume of urines (e.g. that were spilt during the transport) were not processed. HPLC allows the detection of CQ (the sensitivity has been defined for each molecule), amodiaquine, quinine, mefloquine, halofantrine, proguanil, sulphadoxine, doxycycline and pyrimethamine, as described elsewhere [15,16]. Fingerprick capillary blood was obtained to prepare Giemsa-stained thick smears. Parasite density and the number of trophozoites against 100 leukocytes were calculated for each Plasmodium species. Blood spots were collected and dried on Whatman® 3 MM filter paper. IgG antibody against P. falciparum circumsporozoite protein (CSP) was measured in dried blood samples using elution and ELISA techniques described elsewhere [17,18]. Sites were classified according the prevalence of anti-CSP antibodies: low (less than 20%), intermediate (20 – < 40%) and high (≥ 40%). For each child, information on site, age, sex, clinical status (fever during the last three days), consumption of anti-malarial drugs during the last seven days, travel during the last month was collected by questionnaires.

Statistical methods

Data were entered using EpiDATA v3.0 [19] and checked for consistency before statistical analysis using R 2.5.0. Descriptive analysis was done to determine the level of use of CQ and PYR, of anti-CSP antibodies, malaria or parasite rate and other characteristics by site. The presence of CQ in urine was analysed as a dependent variable according to individual and site characteristics using a random-effect logistic regression model to take into account the interdependency of observations made within the same site. A bivariate analysis was first performed by entering each independent variable in the logistic model. Variables were retained for the multivariate analysis when their effects had a p-value lower than 0.25. A multivariate analysis was done in two steps. First, an empty regression model was developed to evaluate the between-sites random variation. This was followed by the selection of children and site characteristics in the bivariate analysis and added to the model. Then a multivariate analysis was performed by a backward step-by-step procedure. The independent variables and their interactions were retained in the model if their effects were significant (likelihood ratio statistic, p < 0.05). The adequacy of the final model was estimated by the area under the receiver operating characteristic (ROC) curve and by looking at the adequacy between observed and predicted probabilities of detecting CQ in children's urine samples in each site.

Results

Site description

In the 30 sites, 3,231 children between two and nine years of age and 3,097 individuals from 1,109 households were randomly selected (Table 1). The prevalence of P. falciparum trophozoites was significantly (p < 0.05) different between sites. It varied from 16.2% (site 2) to 96.1% (site 18) (Table 2), with a median of 72%. It was significantly higher in the south than in the north of Senegal (72% versus 25%, p < 10-3), Burkina Faso (79% versus 64%, p < 10-3), and Cameroon (78% versus 61%, p < 10-3), and also higher in rural than in urban areas of Burkina Faso (84% versus 64%, p < 10-3). It was higher among children older than five years than among children below five years of age (65% versus 59%, p = 0.002).
Table 1

Study sites. ID number, country, region, type of area and geographical coordinates.

Site's nameIDCountryRegiontype of areaLatitudedegreeLongitude degree
THIAGO1SenegalNorthrural16.4-15.72
TEMEYE SALANE2SenegalNorthrural16.33-15.77
SANINTE3SenegalNorthrural16.23-15.8
NDIAKHAYE4SenegalNorthrural16.18-15.82
MALLA5SenegalNorthrural16.12-15.87
TIABEDJI6SenegalSouthrural12.63-12.4
SAMAL7SenegalSouthrural12.67-12.5
THIOBO BANTATA8SenegalSouthrural12.67-12.33
ASSONI9SenegalSouthrural12.65-12.49
LANDE RUNDE. LANDE BAITIL10SenegalSouthrural12.55-12.40
TIPTENGA11Burkina FasoNorthrural13.09-0.81
FATIN12Burkina FasoNorthrural12.93-0.95
OUAGADOUGOU S29–3013Burkina FasoNorthurban12.35-1.47
OUAGADOUGOU PISSY S1714Burkina FasoNorthurban12.34-1.56
OUAGADOUGOU NIOKO II S2615Burkina FasoNorthurban12.42-1.47
NIENA16Burkina FasoSouthrural11.72-4.72
TENASSO17Burkina FasoSouthrural11.28-4.93
BOBO-DIOULASSO SAMAGAN18Burkina FasoSouthurban11.13-4.35
BOBO-DIOULASSO DOGONA19Burkina FasoSouthurban11.2-4.28
BOBO-DIOULASSO KUINIMA20Burkina FasoSouthurban11.15-4.28
YOUKOUT21CameroonNorthrural8.2914.09
TCHOLLIRE II22CameroonNorthrural8.4514.26
SAKDJE23CameroonNorthrural8.2713.65
BOCKI24CameroonNorthrural8.7513.53
KATE25CameroonNorthrural8.7813.52
MELEN/NKOLAFENDEK26CameroonSouthrural2.7712.52
MIATTA/DJOUZE27CameroonSouthrural2.7312.63
ENDEGUE/ABDELON28CameroonSouthrural2.6912.64
ZOEBEFAM/NKOLEMBOULA29CameroonSouthrural2.7213.34
YEN/MEBAN II30CameroonSouthrural2.4312.67
Table 2

Prevalence of Plasmodium falciparum trophozoites, anti-CSP antibodies and antimalarial drugs detected in children between two and nine years of age.

ID SiteNb of thick smearsPrevalence of trophozoites (all species)Prevalence of Plasmodium falciparum trophozoitesPrevalence of anti-CSP antibodiesDetection of antimalarial drugs in children's urines




Nb of thick smears +(%)Nb of thick smears +(%)Nb of serologyNb of serology +(%)CQ*PYR†


CQ+‡Prevalence (95% CI)PYR+§Prevalence (95% CI)
110026 (26.0)25 (25.0)10013 (13.0)3636.0 (26.6–46.2)00.0 (0.0–3.6)
210517 (16.2)17 (16.2)10510 (9.5)1818.0 (11.0–26.9)00.0 (0.0–3.6)
311121 (18.9)19 (17.1)11013 (11.8)1614.5 (8.5–22.5)00.0 (0.0–3.3)
412023 (19.2)22 (18.3)11812 (10.2)5647.5 (38.2–56.9)00.0 (0.0–3.1)
510154 (53.5)47 (46.5)10025 (25.0)2625.7 (17.6–35.4)22.0 (0.2–7.0)
610079 (79.0)72 (72.0)10055 (55.0)2020.0 (12.7–29.2)00.0 (0.0–3.6)
710086 (86.0)79 (79.0)10048 (48.0)99.0 (4.2–16.4)00.0 (0.0–3.6)
810389 (86.4)83 (80.6)10375 (72.8)1414.0 (7.9–22.4)00.0 (0.0–3.6)
98460 (71.4)57 (67.9)8439 (46.4)1821.4 (13.2–31.7)00.0 (0.0–4.3)
1011078 (70.9)66 (60.0)11051 (46.4)109.1 (4.4–16.1)00.0 (0.0–3.3)
1110290 (88.2)90 (88.2)10493 (89.4)4746.1 (36.2–56.2)11.0 (0.0–5.3)
1210293 (91.2)88 (86.3)10298 (96.1)3333.7 (24.4–43.9)00.0 (0.0–3.7)
1310241 (40.2)41 (40.2)10421 (20.2)9890.7 (83.6–95.5)10.9 (0.0–5.1)
1410242 (41.2)38 (37.3)10522 (21.0)8980.2(71.5–87.1)00.0 (0.0–3.3)
1510069 (69.0)68 (68.0)10124 (23.8)6061.9 (51.4–71.5)00.0 (0.0–3.7)
16117100 (85.5)99 (84.6)11582 (71.3)1816.7 (10.2–25.1)00.0 (0.0–3.4)
1710279 (77.5)78 (76.5)10288 (86.3)1820.0 (12.3–29.8)11.1 (0.0–6.0)
1810298 (96.1)98 (96.1)10593 (88.6)1818.4 (11.3–27.5)00.0 (0.0–3.7)
1910188 (87.1)88 (87.1)10478 (75.0)3131.3 (22.4–41.4)00.0 (0.0–3.7)
2010455 (52.9)53 (51.0)10430 (28.8)6668.8 (58.5–77.8)11.0 (0.0–5.7)
2110165 (64.4)55 (54.5)9923 (23.2)4951.0 (40.6–61.4)2020.8 (13.2–30.3)
2210383 (80.6)80 (77.7)6625 (37.9)8989.0 (81.2–94.4)00.0 (0.0–3.6)
2310179 (78.2)72 (71.39946 (46.5)3534.7 (25.5–44.8)11.0 (0.0–5.4)
2410165 (64.4)59 (58.4)9932 (32.3)6867.3 (57.3–76.3)00.0 (0.0–3.6)
2510052 (52.0)41 (41.0)8616 (18.6)9187.5 (79.6–93.2)00.0 (0.0–3.5)
2610186 (85.1)74 (73.3)10229 (28.4)5655.4 (45.2–65.3)00.0 (0.0–3.6)
279983 (83.8)81 (81.8)488 (16.7)2827.2 (18.9–36.8)00.0 (0.0–3.5)
2810487 (83.7)84 (80.8)9521 (22.1)4239.6 (30.3–49.6)00.0 (0.0–3.4)
2910381 (78.6)76 (73.8)10322 (21.4)2524.3 (16.4–33.7)00.0 (0.0–3.5)
3010791 (85.0)86 (80.4)10734 (31.8)7872.9 (63.4–81.0)21.9 (0.2–6.6)
Total30882060 (66.7)1936 (62.7)29801226 (41.1)126241.3 (39.6–43.0)291 (0.6–1.4)

Nb: number; %, percent, *CQ: Chloroquine, † PYR: Pyrimethamine, ‡ CQ+ = number of samples with chloroquine in urine, §PYR+: number of samples with pyrimethamine in urine, Prevalence: expressed in percent.

Study sites. ID number, country, region, type of area and geographical coordinates. Prevalence of Plasmodium falciparum trophozoites, anti-CSP antibodies and antimalarial drugs detected in children between two and nine years of age. Nb: number; %, percent, *CQ: Chloroquine, † PYR: Pyrimethamine, ‡ CQ+ = number of samples with chloroquine in urine, §PYR+: number of samples with pyrimethamine in urine, Prevalence: expressed in percent. The prevalence of anti-CSP-antibodies varied from 9.5% (sites 2 and 4) to 96.1% (site 12) (Table 2) according to sites, with a median of 31%. It was significantly higher in the south than in the north in Senegal (54% versus 14%, p < 10-3) and in Burkina Faso (70% versus 49%, p < 10-3). In Cameroon, it was lower in the south (25% versus 32% p < 10-3). It was significantly higher in rural than in urban areas of Burkina Faso (86% versus 44%, p < 10-3) and higher among children aged more than five years old than among children aged less than five years (48% versus 32%, p < 10-3). The time necessary to join the nearest tarmacked road varied from 0 to 8.5 hours with a median of one hour. The proportion of inhabitants who lived in another site one year before the survey varied from 0% to 25% with a median of 4.3%. The average index of the household socio-economic level varied from 0.9 to 8.7 with a median of 3. No systematic distribution of antimalarial drugs to the children had been organized in the sites during six previous months. The others sites characteristics (i.e. individual or household data aggregated by site) are presented in Additional Files 1 and 2.

Chloroquine in urine

CQ was tested in urine samples by dipstick in 3,052 of 3,231 children, aged 2–9 years (no urine was available for 179 children, i.e. 5% of the randomized children). Males represented 49.9% of the children for whom urine samples were available. The characteristics of the other children are detailed in Additional File 3. Among these 3,052 children, 41.4% had CQ in their urine (1262/3052). The prevalence of CQ in children urine samples varied from 9.0% (site 7) to 90.1% (site 13) with a median of 32.2%. The prevalence of CQ in urine was significantly different between countries (Senegal = 22%, Burkina Faso = 47% and Cameroon = 55%, p < 10-3), between regions within the same country (i.e. higher in the north than in the south in Senegal [29% versus 14%, p < 10-3 ], in Burkina Faso, [63% versus 31%, p < 10-3 ], and in Cameroon, [66% versus 44%, p < 10-3 ]) and between sites from the same region (Table 2). It was significantly higher in urban than in rural areas of Burkina Faso (59% versus 37%, p = 0.047). The prevalence of CQ in urine samples was higher in sites with a moderate prevalence rate of anti-CSP antibodies (61%) than in sites with a low (39%, p <0.026) or high prevalence rate of anti-CSP antibodies (23%, p = 0.088). The prevalence of CQ in children's urine was higher in those aged ≤ 5 years old than in children aged > 5 years old (49% versus 35%, p = 0.001). This difference was observed independently of the prevalence of anti-CSP antibodies in the sites (Figure 2).
Figure 2

Prevalence rate (and 95% confidence interval) of chloroquine in urines of children between two and nine years of age according to their age and the prevalence rate of anti-CSP antibody among the children of the sites. *CQ: chloroquine.

Prevalence rate (and 95% confidence interval) of chloroquine in urines of children between two and nine years of age according to their age and the prevalence rate of anti-CSP antibody among the children of the sites. *CQ: chloroquine. The prevalence of CQ in urine was higher in children with a history of fever during the three days before urine sampling than in children with no history of fever (51% versus 38%, p = 0.032), and in children who had traveled out of the site during the month before urine sampling than children who did not leave the site (48% versus 41%, p = 0.048). The prevalence of CQ in urine was higher in sites with more than 5% of inhabitants living in another site one year before urine sampling (49% versus 33%, p = 0.058), in sites with an average socio-economic level equal to 6 or higher (68% versus 36%, p = 0.002) and in sites in which the duration to join the nearest tarmacked road was less than one hour (48% versus 36%, p = 0.206). The other results of the bivariate analysis are presented in Tables 3 and 4 and in Additional File 4.
Table 3

Chloroquine prevalence in urines of children between two and nine years of age according to children characteristics.

VariablesN*CQ+†Prevalence ofpresence of CQ‡ %crude OR95%CIp
SexMale1524618411.00
Female1528644421.070.901.260.458
Age2–5 years old1419691491.00
6–9 years old1633571350.740.630.890.001
Fever during the preceeding 3 dayswithout2252852381.00
with800410511.241.021.500.032
Antimalarial treatment during the preceding 7 daysno2652995381.00
yes400267671.901.462.470.000
Travel during the preceding 30 daysno29301203411.00
yes12259481.521.002.300.048
Malaria infectionno974466481.00
yes1939718370.600.490.740.000
Asexual Plasmodium falciparum infectionsno1094518471.00
yes1819666370.610.500.750.000

*N number of samples of urine, † CQ+ = number of samples with chloroquine in urines, ‡ CQ: Chloroquine.

Logistic regression model with random effect taking into account the interdependency of observations made within the same site.

Table 4

Chloroquine prevalence in urines of children between two and nine years of age according to site's characteristics.

Site's characteristicsN*CQ+†Prevalence of CQ‡ %crudeOR95%CIp
CountrySenegal1023223221.00
Burkina Faso1007478473.691.499.160.005
Cameroon1022561555.542.2313.720.000
RegionNorth1547811521.00
South1505451300.310.150.660.002
Type of arearural2443900371.00
urban609362592.931.018.460.047
Prop. ‡ living in an other locality one year before the study< 5%1424471331.00
>= 5%1628791492.290.975.400.058
Prop. ‡ living in an other site for more than 1 month during the preceding year< 15%1920685361.00
>= 15%1132577512.240.925.450.077
Proportion of visitors among individuals present in the households the night before< 2%1918635331.00
>= 2%1134627553.021.297.070.011
Prop. ‡ had a not damaged bed-net< 30%1826868481.00
>= 30%1226394320.480.201.150.100
Prop. ‡ had access to stockpiles of antimalarial drugs at home< 20%1955605311.00
>= 20%1097657604.051.868.810.000
Average number of individuals by household< 7834501601.00
7–91293504390.350.130.930.035
>= 10925257280.210.070.610.004
Socioeconomic level score in 2 classes<62540914361.00
>= 6512349684.731.7412.870.002
Length of the travel to join the nearest sanitary structure< 1 km404304751.00
1–9.9 km1034425410.200.060.670.010
>= 10 km1614533330.130.040.420.001
Length of the travel to join the pharmacy the most used< 5 km504340671.00
5–9.9 km1034425410.290.090.950.041
>= 10 km1514497330.190.060.570.003
Duration of the route to join the nearest tarmacked road< 1 hour1336640481.00
>= 1 hour1716622360.560.231.370.206
Prevalence rate of the anti-CSP antibodies among children between two and nine years of age< 20%635245391.00
20–39.9%1227746612.811.136.970.026
>= 40%1190271230.440.171.120.088
Prevalence rate of P. falciparum trophozoites among children between two and nine years of age< 25%428126291.00
25–49%526351676.621.6726.230.007
50–74%989407411.760.525.920.359
>= 75%1109378341.270.384.210.693

*N number of samples of urine, † CQ+ = number of samples with chloroquine in urines, ‡ Prop.: proportion of inhabitants of the site who

Logistic regression model with random effect taking into account the interdependency of observations made within the same site.

Chloroquine prevalence in urines of children between two and nine years of age according to children characteristics. *N number of samples of urine, † CQ+ = number of samples with chloroquine in urines, ‡ CQ: Chloroquine. Logistic regression model with random effect taking into account the interdependency of observations made within the same site. Chloroquine prevalence in urines of children between two and nine years of age according to site's characteristics. *N number of samples of urine, † CQ+ = number of samples with chloroquine in urines, ‡ Prop.: proportion of inhabitants of the site who Logistic regression model with random effect taking into account the interdependency of observations made within the same site. There was no significant interaction between variables retained in the model. In multivariate analysis, the prevalence of CQ in urine was lower among children above five years of age (OR = 0.76, 95% CI = 0.64–0.90), and in sites in which the duration to join the nearest tarmacked road was one hour or more (OR = 0.49, 95% CI = 0.27–0.89). It was higher among children who declared a febrile episode during the three days preceding the urine sampling (OR = 1.22, 95% CI = 1.01–1.49), in sites with a high average socio-economical level (OR = 2.74, 95% CI = 1.11–6.78), in sites with more than 5% of inhabitants living in another site one year before urine sampling (OR = 2.53, 95% CI = 1.11–6.78) and in sites with a prevalence rate of anti-CSP antibodies among two to nine-year old children comprised between 20 and 39.9% (OR = 2.47, 95% CI = 1.13–5.41) (Table 5). The area under the ROC curve was 0.764. Additional File 5 shows the adequacy between observed and expected prevalence of CQ in urine according to the final model.
Table 5

Multivariate analysis of the presence of chloroquine in urines of children between two and nine years of age.

VariablesNCQ+*Prevalence of CQ † %Crude OR95%CIp‡Adjusted OR95%CIp‡
Age
 2–5 years old1419691491.001.00
 6–9 years old1633571350.740.090.630.0010.760.640.900.002
Fever during the preceding 3 days
 without2252852381.001.00
 with800410511.241.021.500.0321.221.011.490.043
Proportion of individuals who were living in an other locality one year before the study
 < 5%1424471331.001.00
 >= 5%1628791492.290.975.400.0582.531.384.640.003
Score in 2 classes representing the households' average socioeconomic level
 < 62540914361.001.00
 >= 6512349684.731.7412.870.0022.741.116.780.029
Prevalence rate of the anti-CSP antibodies
 < 20%635245391.001.00
 20–39.9%1227746612.821.117.160.02892.471.135.410.023
 >= 40%1190271230.440.171.120.08850.680.321.430.305
Duration of the route to join the nearest tarmacked road
 < 1 hour1336640481.001.00
 >= 1 hour1716622360.560.231.370.2060.490.270.890.019

*CQ+ = number of samples with chloroquine in urines, † CQ: Chloroquine, ‡ p: p-value

Logistic regression model with random effect taking into account the interdependency of observations made within the same site.

Multivariate analysis of the presence of chloroquine in urines of children between two and nine years of age. *CQ+ = number of samples with chloroquine in urines, † CQ: Chloroquine, ‡ p: p-value Logistic regression model with random effect taking into account the interdependency of observations made within the same site.

Pyrimethamine in urine

PYR was tested using the same dipstick as CQ. The prevalence of PYR in children's urine samples varied from 0% to 21% (site 21) with a median of 0%. It was 0.2%, 0.4% and 2.2% in Senegal, Burkina Faso and Cameroon, respectively. Because of the low prevalence rate of PYR in urine, no bivariate or multivariate analysis was done.

Detection of antimalarials in urines using HPLC

HPLC measurement of CQ was performed for 280 urine samples (i.e. 93, 98 and 89 children from Senegal, Burkina Faso and Cameroon, respectively). The prevalence of CQ detected by HPLC was 27%, 45% and 51% in Senegal, Burkina Faso and Cameroon, respectively. These prevalence rates were not significantly different from those estimated using dipsticks. The prevalence of PYR detected by HPLC was 0%, 2% and 3% in Senegal, Burkina Faso and Cameroon, respectively. Amodiaquine was detected by HPLC in 6% (16/280) of the urine samples. Its prevalence rate was 2%, 8% and 7% in Senegal, Burkina Faso and Cameroon, respectively. Quinine was detected by HPLC in 1% (3/280) of the urines. Its prevalence rate was 0%, 1% and 2% in Senegal, Burkina Faso and Cameroon, respectively. Mefloquine, halofantrine, proguanil, sulphadoxine and doxycycline were not detected in any of the samples.

Discussion

CQ was the first-line antimalarial drug used in 2003 in Senegal, Burkina Faso and Cameroon among children between two and nine years of age. Other studies had shown that CQ was the main antimalarial drug used in Africa [20-22]. For example, in the study of Talusina et al conducted in 1998 and 1999 in Uganda, the prevalence of CQ in urine obtained from children between one and nine years of age was 48% [10]. According to the sites, CQ was present in 9% to 90% (median 32%) of the urine samples collected in the present study. One of the significant findings of the study was the wide range of CQ prevalence observed from one site to another, including within the same region. Six factors associated with the heterogeneity of antimalarial drug use were identified.

History of fever, age and socio-economic level

Three of these factors were expected. The first expected factor was the history of fever in days preceeding urine sampling. In case of fever, parents usually administer antimalarial drugs to their children as a presumptive treatment [22-24]. Second, the prevalence of CQ in urine was lower among children older than five years, most of whom have acquired antimalarial immunity during the first five years of permanent residence in an endemic area [25,26]. This association between age and CQ consumption was observed independently of the anti-CSP antibodies prevalence rate, i.e. the level of malaria transmission. The third expected factor was the average socio-economic level. High socio-economic level is associated with the ability to seek health service. In the study by Biritwun et al [27], conducted in Ghana, children from poorer community were less likely to take antimalarial treatment in a clinic or hospital as compared with children from a better-off community. These three factors are similar to those identified in earlier studies on the treatment given for fever [28,29].

Population mobility

Three less expected factors associated with CQ consumption have been identified in the present study. First, the prevalence of CQ in children's urine was higher in sites where the proportion of inhabitants living in another site one year ago was higher. Thus, drug pressure was highest in sites where population migration was most frequent. Second, the prevalence of CQ intake was higher in sites where the duration to join the nearest tarmacked road was shorter. Thus, drug pressure was highest in most accessible sites. It is possible that accessibility by tarmacked road facilitates access to health services, independently of the socio-economic level. These two factors indicate that population mobility in relation to migration and site accessibility is positively associated with a more frequent antimalarial drug use. Two consequences may be expected: i) probability of resistant P. falciparum strain imported from another region or country is higher, ii) selective drug pressure on the Plasmodium population is higher. It could have facilitated the diffusion of chloroquino-resistance [8,30]. It is the first time that antimalarial drug use is shown to be associated with population mobility.

Malaria transmission

The last factor associated with the presence of CQ in children's urine was the level of anti-CSP antibodies. The prevalence of anti-CSP antibodies was used as a proxy of the level of intensity of malaria transmission. This level is usually measured by determining the entomological inoculation rate. Parasite prevalence can be used as an alternative proxy [31], but in the present study the prevalence of anti-CSP antibodies was preferred because it is not modified by antimalarial treatment [32] or parasite resistance to drugs. CSP is actively expressed only during the sporozoite stage and is generally used as a proxy of the level of exposure to malaria [33]. In the present study, the prevalence of CQ in children's urine was higher in sites where the prevalence of anti-CSP antibodies was intermediate (between 20 and 39.9%). There are contrasting views on the role of transmission intensity of P. falciparum on drug consumption and spread of CQ resistance. In the study by Talisuna et al, conducted in seven sites in Uganda and involving 1,504 people aged 1–45 years, CQ use in all ages was inversely related to parasite prevalence [10]. The authors attributed this association with parasite prevalence, i.e. malaria endemicity, to the more rapid acquisition of antimalarial immunity in areas where the exposure to malaria infection is higher. A limitation of this study was the use of the parasite prevalence as the indicator for transmission intensity: this variable could be biased by drug use and drug resistance. In the present study, intermediate prevalence rate of anti-CSP antibodies, i.e. intermediate level of transmission, was significantly associated with higher consumption of CQ. It is consistent with the observation of Trape and Rogier who have reported that the cumulated incidence of clinical malaria was higher in intermediate endemic areas [4]. In terms of the spread of CQ resistance, there are three conflicting hypotheses on the role of malaria transmission [8,9]. The first hypothesis suggests that low transmission level increases the rate of spread of resistance because resistance gene combinations would be more stable and hence spread faster [34,35]. The second suggests that resistant parasites spread faster when transmission is high if intra-host dynamics exist: the increasing transmission intensity can increase the number of co-infecting clones, and antimalarial drug use would eradicate the drug susceptible clones and allow the survival of the resistant clones [35]. The third hypothesis suggests that the intensity of transmission intensity plays no role in the early stages of the evolution of parasite resistance [36]. All of these hypotheses do not take into consideration the effect of drug use. The present study shows that drug selection pressure was different between sites with different levels of transmission intensity. This observation should be taken into account for modeling the spread of drug resistance in relation to malaria transmission and acquisition of clinical immunity.

Diversity of antimalarial drug use

Few drugs other than CQ were present in the urine samples analysed in the present study. The prevalence of pyrimethamine in urine ranged from 0 to 21% (median 0%), depending on the sites. This could at least partly explain the low level of antifolate resistance during the study. In the meta-analysis of Talusina et al, the median of the prevalence of sulphadoxine-pyrimethamine (SP) treatment failure in Africa between 1996 and 2002 varied from 0 to 35% [8]. The widespread adoption of intermittent preventive treatment using SP in pregnant women could lead to an increased prevalence of resistances to this drug in the next future. Since 2001 the World Health Organization recommends that treatment policies in all countries experiencing resistance of P. falciparum to conventional monotherapies should be combination therapies, preferably those containing artemisinin derivatives [37]. However, a change in national antimalarial treatment policies can take several years. In 2003, CQ was still the usual treatment in the three countries where the present study was conducted.

Evaluating drug consumption

To assess the level of antimalarial drug consumption, two methods can be used: questionnaires and biological methods for detecting drugs in urine or blood. The assessment of antimalarial drug consumption by questionnaires is less reliable than biological methods because of misunderstanding of questions, failed memory, or deliberate attemps to provide false information [10,13,20]. In the present study, drug consumption was assessed by a CQ- and PYR-specific dipstick. The urine dipstick detects the presence of CQ and PYR and, by cross-reaction, also detects amodiaquine and proguanil. However, the standard method to detect and measure antimalarial drugs in urine and blood is high-performance liquid chromatography (HPLC). Since the latter is more expensive than urine dipstick, it was not used for all samples in this study. Proguanil was not found in urine by HPLC, and amodiaquine was present in only 6% of the samples. Therefore, the analysis of antimalarial consumption seems not biased by cross reactions.

Conclusion

Antimalarial drug pressure considerably varied from one site to another, including within the same region, and was significantly higher in areas with intermediate malaria transmission level, i.e. where the level of acquired malaria immunity is intermediate, and in the most accessible sites. Therefore, incoming resistant P falciparum strains from other sites would find favourable conditions to become established and spread in the receiving human population.

Authors' contributions

FG performed the statistical analysis and wrote the article. FS, HB and MB took part in the analyze of the data and the discussion about the results. SA did the immunological analysis. Dipsticks were designed by TE. FB, VF, LB, JFT PTK and MCH participated in the collection of data. MM and MD carried out the high-performance liquid chromatography. SB, TF, LA and BP participated in the discussion of the results. RL took part in the elaboration of the questionnaires. CR conceived the study, took part in the analyze of the data and the discussion and wrote the article. The final version of the manuscript was seen and approved by all authors.

Additional File 1

Individuals and households' characteristics by site. Click here for file

Additional File 2

Sites characteristics. Click here for file

Additional File 3

Children's characteristics. Click here for file

Additional File 4

Chloroquine prevalence in urines of children between two and nine years of age according to site's characteristics. Click here for file

Additional File 5

Predicted and observed prevalence by site of the presence of chloroquine in children's urines. Click here for file
  33 in total

1.  Relation between severe malaria morbidity in children and level of Plasmodium falciparum transmission in Africa.

Authors:  R W Snow; J A Omumbo; B Lowe; C S Molyneux; J O Obiero; A Palmer; M W Weber; M Pinder; B Nahlen; C Obonyo; C Newbold; S Gupta; K Marsh
Journal:  Lancet       Date:  1997-06-07       Impact factor: 79.321

2.  Incidence and management of malaria in two communities of different socio-economic level, in Accra, Ghana.

Authors:  R B Biritwum; J Welbeck; G Barnish
Journal:  Ann Trop Med Parasitol       Date:  2000-12

3.  Malaria morbidity, treatment-seeking behaviour, and mortality in a cohort of young children in rural Burkina Faso.

Authors:  Olaf Müller; Corneille Traoré; Heiko Becher; Bocar Kouyaté
Journal:  Trop Med Int Health       Date:  2003-04       Impact factor: 2.622

4.  Appropriate treatment of malaria? Use of antimalarial drugs for children's fevers in district medical units, drug shops and homes in eastern Uganda.

Authors:  N Nshakira; M Kristensen; F Ssali; S Reynolds Whyte
Journal:  Trop Med Int Health       Date:  2002-04       Impact factor: 2.622

5.  Host age as a determinant of naturally acquired immunity to Plasmodium falciparum.

Authors:  J K Baird
Journal:  Parasitol Today       Date:  1995-03

Review 6.  A critical review of behavioral issues related to malaria control in sub-Saharan Africa: what contributions have social scientists made?

Authors:  H A Holly Ann Williams; Caroline O H Jones
Journal:  Soc Sci Med       Date:  2004-08       Impact factor: 4.634

7.  [Drug resistance of Plasmodium falciparum. Analysis of factors in its appearance and spread].

Authors:  G Charmot; F Rodhain
Journal:  Med Trop (Mars)       Date:  1982 Jul-Aug

8.  A steep decline of malaria morbidity and mortality trends in Eritrea between 2000 and 2004: the effect of combination of control methods.

Authors:  Peter M Nyarango; Tewolde Gebremeskel; Goitom Mebrahtu; Jacob Mufunda; Usman Abdulmumini; Andom Ogbamariam; Andrew Kosia; Andemariam Gebremichael; Disanayike Gunawardena; Yohannes Ghebrat; Yahannes Okbaldet
Journal:  Malar J       Date:  2006-04-24       Impact factor: 2.979

9.  Assessing malaria control in the Kassena-Nankana district of northern Ghana through repeated surveys using the RBM tools.

Authors:  Seth Owusu-Agyei; Elizabeth Awini; Francis Anto; Thomas Mensah-Afful; Martin Adjuik; Abraham Hodgson; Edwin Afari; Fred Binka
Journal:  Malar J       Date:  2007-08-04       Impact factor: 2.979

10.  Impact of artemisinin-based combination therapy and insecticide-treated nets on malaria burden in Zanzibar.

Authors:  Achuyt Bhattarai; Abdullah S Ali; S Patrick Kachur; Andreas Mårtensson; Ali K Abbas; Rashid Khatib; Abdul-Wahiyd Al-Mafazy; Mahdi Ramsan; Guida Rotllant; Jan F Gerstenmaier; Fabrizio Molteni; Salim Abdulla; Scott M Montgomery; Akira Kaneko; Anders Björkman
Journal:  PLoS Med       Date:  2007-11-06       Impact factor: 11.069

View more
  19 in total

1.  Association between prevalence of chloroquine resistance and unusual mutation in pfmdr-I and pfcrt genes in India.

Authors:  Sabyasachi Das; Subhankari Prasad Chakraborty; Amiya Kumar Hati; Somenath Roy
Journal:  Am J Trop Med Hyg       Date:  2013-03-18       Impact factor: 2.345

Review 2.  Mitigating the threat of artemisinin resistance in Africa: improvement of drug-resistance surveillance and response systems.

Authors:  Ambrose O Talisuna; Corine Karema; Bernhards Ogutu; Elizabeth Juma; John Logedi; Andrew Nyandigisi; Modest Mulenga; Wilfred F Mbacham; Cally Roper; Philippe J Guerin; Umberto D'Alessandro; Robert W Snow
Journal:  Lancet Infect Dis       Date:  2012-11       Impact factor: 25.071

3.  Identification of a mutant PfCRT-mediated chloroquine tolerance phenotype in Plasmodium falciparum.

Authors:  Stephanie G Valderramos; Juan-Carlos Valderramos; Lise Musset; Lisa A Purcell; Odile Mercereau-Puijalon; Eric Legrand; David A Fidock
Journal:  PLoS Pathog       Date:  2010-05-13       Impact factor: 6.823

4.  Plasmodium falciparum drug resistance in Madagascar: facing the spread of unusual pfdhfr and pfmdr-1 haplotypes and the decrease of dihydroartemisinin susceptibility.

Authors:  Valérie Andriantsoanirina; Arsène Ratsimbasoa; Christiane Bouchier; Martial Jahevitra; Stéphane Rabearimanana; Rogelin Radrianjafy; Voahangy Andrianaranjaka; Tantely Randriantsoa; Marie Ange Rason; Magali Tichit; Léon Paul Rabarijaona; Odile Mercereau-Puijalon; Rémy Durand; Didier Ménard
Journal:  Antimicrob Agents Chemother       Date:  2009-08-24       Impact factor: 5.191

Review 5.  Ecogeographic genetic epidemiology.

Authors:  Chantel D Sloan; Eric J Duell; Xun Shi; Rebecca Irwin; Angeline S Andrew; Scott M Williams; Jason H Moore
Journal:  Genet Epidemiol       Date:  2009-05       Impact factor: 2.135

6.  Prevalence of molecular markers of Plasmodium falciparum drug resistance in Dakar, Senegal.

Authors:  Nathalie Wurtz; Bécaye Fall; Aurélie Pascual; Silmane Diawara; Kowry Sow; Eric Baret; Bakary Diatta; Khadidiatou B Fall; Pape S Mbaye; Fatou Fall; Yaya Diémé; Christophe Rogier; Raymond Bercion; Sébastien Briolant; Boubacar Wade; Bruno Pradines
Journal:  Malar J       Date:  2012-06-13       Impact factor: 2.979

7.  Ex vivo susceptibility of Plasmodium falciparum isolates from Dakar, Senegal, to seven standard anti-malarial drugs.

Authors:  Bécaye Fall; Silmane Diawara; Kowry Sow; Eric Baret; Bakary Diatta; Khadidiatou B Fall; Pape S Mbaye; Fatou Fall; Yaya Diémé; Christophe Rogier; Boubacar Wade; Raymond Bercion; Bruno Pradines
Journal:  Malar J       Date:  2011-10-20       Impact factor: 2.979

8.  Molecular analysis of markers associated with chloroquine and sulfadoxine/pyrimethamine resistance in Plasmodium falciparum malaria parasites from southeastern Côte-d'Ivoire by the time of Artemisinin-based Combination Therapy adoption in 2005.

Authors:  Berenger Aristide Ako; André Toure Offianan; Marnie Johansson; Louis Koné Penali; Simon-Pierre Assanvo Nguetta; Carol Hopkin Sibley
Journal:  Infect Drug Resist       Date:  2012-08-01       Impact factor: 4.003

9.  Plasmodium falciparum susceptibility to anti-malarial drugs in Dakar, Senegal, in 2010: an ex vivo and drug resistance molecular markers study.

Authors:  Bécaye Fall; Aurélie Pascual; Fatoumata D Sarr; Nathalie Wurtz; Vincent Richard; Eric Baret; Yaya Diémé; Sébastien Briolant; Raymond Bercion; Boubacar Wade; Adama Tall; Bruno Pradines
Journal:  Malar J       Date:  2013-03-20       Impact factor: 2.979

10.  Longitudinal study assessing the return of chloroquine susceptibility of Plasmodium falciparum in isolates from travellers returning from West and Central Africa, 2000-2011.

Authors:  Myriam Gharbi; Jennifer A Flegg; Véronique Hubert; Eric Kendjo; Jessica E Metcalf; Lionel Bertaux; Philippe J Guérin; Jacques Le Bras; Ahmed Aboubaca; Patrice Agnamey; Adela Angoulvant; Patricia Barbut; Didier Basset; Ghania Belkadi; Anne Pauline Bellanger; Dieudonné Bemba; Françoise Benoit-Vica; Antoine Berry; Marie-Laure Bigel; Julie Bonhomme; Françoise Botterel; Olivier Bouchaud; Marie-Elisabeth Bougnoux; Patrice Bourée; Nathalie Bourgeois; Catherine Branger; Laurent Bret; Bernadette Buret; Enrique Casalino; Sylviane Chevrier; Frédérique Conquere de Monbrison; Bernadette Cuisenier; Martin Danis; Marie-Laure Darde; Ludovic De Gentile; Jean-Marie Delarbre; Pascal Delaunay; Anne Delaval; Guillaume Desoubeaux; Michel Develoux; Jean Dunand; Rémy Durand; Odile Eloy; Nathalie Fauchet; Bernard Faugere; Alber Faye; Odile Fenneteau; Pierre Flori; Madeleine Fontrouge; Chantal Garabedian; Françoise Gayandrieu; Nadine Godineau; Pascal Houzé; Sandrine Houzé; Jean-Pierre Hurst; Houria Ichou; Laurence Lachaud; Agathe Lebuisson; Magalie Lefevre; Anne-Sophie LeGuern; Gwenaë Le Moal; Daniel Lusina; Marie-Claude Machouart; Denis Malvy; Sophie Matheron; Danièle Maubon; Denis Mechali; Bruno Megarbane; Guillaume Menard; Laurence Millon; Muriel Mimoun Aiach; Philippe Minodier; Christelle Morelle; Gilles Nevez; Philippe Parola; Daniel Parzy; Olivier Patey; Pierre Patoz; Pascale Penn; Alice Perignon; Stéphane Picot; Jean-Etienne Pilo; Isabelle Poilane; Denis Pons; Marie Poupart; Bruno Pradines; Didier Raffenot; Christophe Rapp; Marie-Catherine Receveur; Claudine Sarfati; Yaye Senghor; Fabrice Simon; Jean-Yves Siriez; Nicolas Taudon; Marc Thellier; Maxime Thouvenin; Dominique Toubas
Journal:  Malar J       Date:  2013-01-25       Impact factor: 2.979

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.