Literature DB >> 23750825

Incidence of convulsive epilepsy in a rural area in Kenya.

Anthony K Ngugi1, Christian Bottomley, J Anthony G Scott, Victor Mung'ala-Odera, Evasius Bauni, Josemir W Sander, Immo Kleinschmidt, Charles R Newton.   

Abstract

PURPOSE: There are only a few studies of incidence of epilepsy in low and middle income countries (LMICs). These are often small and conducted in specific age groups or areas where the prevalence of risk factors is high; therefore, these studies are not representative of the wider populations. We determined the incidence of convulsive epilepsy (CE) in a large rural population in Kenya.
METHODS: We conducted two cross-sectional surveys 5 years apart within a health and demographic surveillance system. Initially we identified residents without epilepsy who were then reexamined in the follow-up survey to determine incidence. We estimated the overall incidence of CE and incidence by age-group, sex, and by administrative location. Estimates were adjusted for attrition during case identification and for the sensitivity of the screening method. KEY
FINDINGS: In a cohort of 151,408 people, 194 developed CE over the 5 years. The minimum crude incidence rate was 37.6/100,000 persons per year (95% confidence interval (CI) 32.7-43.3) and adjusted for loss to follow-up, and the sensitivity of the survey methodology was 77.0/100,000 persons per year (95% CI 67.7-87.4). Incidence was highest in children 6-12 years (96.1/100,000 persons per year; 95% CI 78.4-117.9), and was lowest in the 29-49 year age group (37.4/100,000 persons per year; 95% CI 25.7-54.7). SIGNIFICANCE: We estimated a high incidence of convulsive epilepsy in this population. Incidence was highest early and late in life, suggesting that preventive interventions should target exposures that occur in these age groups. Incidence of focal epilepsy was more than twice that of generalized epilepsy, suggesting that etiologies that are amenable to intervention were most important in this population. It is likely that incidence is underestimated because of the early mortality of incident cases.
© 2013 The Authors. Epilepsia published by Wiley Periodicals, Inc.

Entities:  

Keywords:  Convulsive epilepsy; Epilepsy; Incidence; Kenya

Mesh:

Year:  2013        PMID: 23750825      PMCID: PMC4114531          DOI: 10.1111/epi.12236

Source DB:  PubMed          Journal:  Epilepsia        ISSN: 0013-9580            Impact factor:   6.740


Epilepsy is a common neurologic condition and an important cause of disability and mortality (Carpio et al., 2005; Forsgen et al., 2005; Kaiser et al., 1998), accounting for 1% of days lost to illness globally (Leonardi &Ustan, 2002). It is estimated to affect around 70 million people in the world (Ngugi et al., 2010), of whom 80% live in the poorer regions of the world (Newton & Garcia, 2012). These estimates are based on life‐time prevalence data, which may underestimate the burden, since epilepsy is associated with considerable mortality early after the onset of seizures and it may spontaneously remit (Sander, 1990; Kwan & Sander, 2004; Carpio et al., 2005; Diop et al., 2005), leading to poor recall of seizure events (Sillanpaa et al., 2008). Incidence is not affected by either mortality or remission and may provide a more accurate assessment of the burden of epilepsy. There are, however, only a few estimates of incidence in low and middle income countries (LMICs) (Ngugi et al., 2011). This is due mainly to lack of health facility data to identify incident cases and the high cost of continuous surveillance of population‐based cohorts required for accurate incidence estimates. We estimated the incidence of convulsive epilepsy (CE) in a large population‐based cohort in a rural area of Kenya over a 5‐year period. We targeted CE, as opposed to all epilepsies, because convulsive epilepsies are easier to identify in cross‐sectional settings and thus do not require specialists, thereby reducing cost and enabling us to survey a large population efficiently. Furthermore, we compared the prevalence of CE 5 years apart to determine if the reduction in infectious diseases such as malaria and meningitis had changed the prevalence.

Methods

The study consisted of two cross‐sectional surveys, conducted 5 years apart, nested in a demographic surveillance system. In the first survey we determined the active convulsive epilepsy (ACE) status of residents to identify a cohort of individuals without epilepsy; in the second survey we reexamined this cohort to determine the number who had developed ACE during the intervening period. The incidence of epilepsy was then calculated by dividing the number of incident cases by the person years of observation among cohort members (reidentified in the second survey).

Study setting and study population

We conducted the study within the Kilifi Health and Demographic Surveillance System (KHDSS – http://www.kemri-wellcome.org/khdss/), which covers an area of 891 km2, in Kilifi District, one of the poorest districts in Kenya comprising a population of 233,881 persons in 2008 living in 25,526 homesteads (Scott et al., 2012). The KHDSS area was mapped using global positioning system (GPS) receivers, and digital maps derived from these data were used to locate homesteads and follow study participants. Community‐based field workers conduct reenumeration and vital status registration to update the population registers by visiting every homestead two or three times per year. The population is served by the Kilifi District Hospital (KDH), which is located at the center of the KHDSS area. Residents of the study area are predominantly Mijikenda, a Bantu grouping of nine tribes with Girima (45%), Chonyi (33%), and Kauma (11%) being the most common. About 55% of the population is considered absolutely poor with per capita monthly income of about 10 USD. The majority (80%) depend on subsistence farming, which is constrained by the low agricultural potential of the land (only 19% is arable). Only 45% of people are literate. Crude birth and death rates for this area are approximately 35/1,000 and 6/1,000 per year, respectively, and migration rates are approximately 100/1,000 per year, most of which is within the study area (Scott et al., 2012).

Cohort identification and follow‐up

We identified cohorts of people with and without ACE in a baseline cross‐sectional survey (Edwards et al., 2008). The survey was undertaken by door‐to‐door visits of all residences within the KHDSS between August and November 2003. The three‐stage method used to identify cases has been described elsewhere in detail (Edwards et al., 2008; Ngugi et al., 2012, 2013). Briefly, the first stage (stage I, SI) involved asking the head of each household two screening questions to identify members of the household with a history of convulsions (Appendix S1). Those that were positive were followed in stage II (SII) and were interviewed by a team of field personnel trained to administer a more detailed and specific screening tool for epilepsy (Appendix S2) (Placencia et al., 1992). Respondents positive in SII were then evaluated in stage III (SIII), where a diagnosis of ACE was made using detailed clinical history taken by a clinician trained in epilepsy and fluent in the local languages. The International League Against Epilepsy (ILAE) definitions of active epilepsy were used (Commission on Epidemiology & Prognosis: International League Against Epilepsy, 1993; Meinardi et al., 2001; Thurman et al., 2011), but a cutoff of at least one seizure in the preceding 12 months was used for active epilepsy (Meinardi et al., 2001; Ministry of Health, Kenya, 2002; Thurman et al., 2011). We excluded children younger than 6 years of age because of difficulties in differentiating between neonatal seizures, febrile seizures, and epilepsy in this age group. Deaths and migration were identified in the routine reenumeration within the KHDSS during the follow‐up period. In the second cross‐sectional survey, conducted between December 2007 and June 2008, we attempted to interview every subject in the cohort who had not died and was still a resident in the KHDSS (Ngugi et al., 2013). Due to logistical and cost implications, no attempt was made to find subjects from the first survey who had migrated out of the study area. The second cross‐sectional survey used the same methodology as the first cross‐sectional survey to identify new cases of ACE. In both surveys, we defined ACE as at least two unprovoked convulsions (tonic and/or clonic seizures) of which one occurred in the 12 months preceding the survey (Edwards et al., 2008; Ngugi et al., 2013). An incident case of CE was a participant who was found not to have ACE in the first survey but was subsequently detected as a case in the follow‐up survey. For an incident case, the first seizure may have occurred days or years before the second survey (Jallon et al., 2001). These cases were included in the analysis because there had been no other diagnosis of epilepsy before the presentation in the current study (Hauser et al., 1996; Olafsson et al., 2005). We thus defined an incident case on the basis of the date of diagnosis of epilepsy rather than on the date of the second unprovoked seizure (Commission on Epidemiology & Prognosis: International League Against Epilepsy, 1993), since the recall of dates by the patients and their caretakers is often poor. Seizure types for all cases were classified by the study neurologist (CRN) using the recommendations of the Commission of the Classification and Terminology of the ILAE (Berg et al., 2010; Thurman et al., 2011).

Analysis

We estimated incidence of CE as the number of new diagnoses of ACE among the subjects that did not have ACE in the baseline cross‐sectional survey, divided by the total person years of observation (pyo). All person‐observation time for those lost due to out‐migration or death was excluded from the denominator. We estimated an overall incidence together with 95% confidence intervals (95% CI) assuming a Poisson model for the number of incident cases. Given that some people may have developed epilepsy during the follow‐up but were inactive at the second survey, we assumed that the incidence estimated in this study was a minimum rate. Incidence rates were estimated by seizure type, age‐group, sex, and administrative location. We used the technique of multiple imputations (MIs) with five imputations to reduce bias due to loss to follow‐up between stages of the two surveys (Rubin, 1987; van Buuren, 2007; Ngugi et al., 2013). The imputation model used the outcome from SI to impute SII where this was missing, and the outcome from SII to impute SIII. All incidence estimates were adjusted for the low sensitivity (48.6%) of the screening methodology (Ngugi et al., 2012). This was done for both the baseline and follow‐up prevalence surveys to preclude the inclusion of cases missed in the baseline as incident cases (thereby increasing the incidence) and to include new‐onset cases that may have been excluded at the follow‐up (leading to under estimation of incidence). Incidence rates were compared between age (grouped as 6–12, 13–17, 18–28, 29–49, and 50+ year age bands), sex (female, male), ethnicity (Giriama, Chonyi, Kauma, Other Mijikenda, Luo, and other), and administrative area (Roka‐Matsangoni‐Mida, Ngerenya, Tezo, Chonyi, Sokoke, Jaribuni, Junju, Takaungu, and Kilifi Township) categories using incidence rate ratios obtained from Poisson regression models. To determine if mortality in new‐onset epilepsy was a possible cause of underestimation of incidence, we compared the proportions of patients with the first seizure at the beginning of follow‐up (in 2003) to those who experienced the first seizure nearer the reevaluation survey (i.e., in 2007). We further compared the age‐specific prevalence between the baseline (2003) and reevaluation survey (2008) to determine if the reduction in bacterial meningitis (Cowgill et al., 2006) and more lately malaria (O'Meara et al., 2008; Kariuki et al., 2011) in the last decade led to a corresponding reduction in the prevalence of epilepsy. All analyses were carried out in STATA version 11 (StataCorp, College Station, TX, U.S.A.). Written informed consent was obtained from all study participants. Where the patient was a child or an adult who could not respond, a caregiver was interviewed. Approval for the study was obtained from the Kenya Medical Research Institute/National Ethical Review Committee.

Results

In the baseline survey, we identified 448 subjects with ACE and 150,960 subjects without ACE. At the follow‐up survey, 45,809 (30.3%) participants of the cohort could not be found within the KHDSS because 42,506 (92.8%) had out‐migrated, 2,703 (5.9%) had died, and 600 (1.3%) could not be traced. There were no significant differences in the baseline characteristics of cohort members who were identified in the 2008 survey compared to those not found (Table 1) as well as among cases of ACE identified at baseline that were lost to follow‐up and those that remained in the study area (Table S1).
Table 1

Main characteristics of the incidence study completers and those lost to follow‐up

AttributeCategoryFound in the KDHSSNot found in the 2008 census
N%N%
SexMale47,54845.222,27848.6
Median age (IQR)20 (11–38)20 (14–30)
AreaRoka‐M‐Ma14,69114.05,65412.3
Ngerenya6,3526.02,7035.9
Tezo13,59012.95,84312.8
Chonyi21,13320.16,84114.9
Sokoke3,8863.71,6913.7
Jarubini‐Kauma6,1435.82,3485.1
Junju/Mtwapa17,97917.17,62616.7
Takaungu10,72310.24,4549.7
Kilifi Township10,65410.138,64918.9
EthnicityGiriama45,31043.120,50644.8
Chonyi36,68734.912,75727.9
Kauma12,13311.54,87210.6
Other Mijikendas5,7235.43,0026.6
Luos5930.68561.9
Others4,7024.53,8038.3
Stage I status at baselinePositive1,4251.44751.0
All cohort members105,15145,809

Roka‐Matsangoni‐Mida.

Roka‐Matsangoni‐Mida. There was no significant difference in the crude age‐specific prevalence between the surveys conduct in 2003 and 2008 (Table 2). In particular there were no differences in the prevalence of the 6–12 years age group between the surveys.
Table 2

Comparison of unadjusted age‐specific prevalence of ACE between the baseline (2003) and reevaluation (2008) surveys

Age group2003 survey2008 SurveyDifferences between the surveys p‐value
ScreenedNumber of cases identifiedPrevalence per 100095% CIScreenedNumber of cases identifiedPrevalence per 100095% CI
0–542,098842.01.6–2.5
6–1241,7271273.02.5–3.652,5731522.92.5–3.40.67
13–1725,281913.62.9–4.434,3981454.23.5–4.80.23
18–2831,9891183.73.1–4.438,0031564.13.5–4.80.38
29–4934,050712.11.6–2.642,6311022.42.0–2.90.37
≥5018,361412.21.6–3.024,178602.51.9–3.20.60
All ages151,4084483.02.7–3.2233,8816993.02.8–3.20.87
We identified 194 incident cases of CE. The median (interquartile range, IQR) age of incident cases was 19.5 (14–31) years, and 49% were male. We estimated that there would be 233 incident cases (after adjustment for loss to follow‐up) and 479 incident cases (after adjustment for both loss to follow‐up and sensitivity of the screening methodology). The total person‐years of observation (pyo) for this cohort was 623,004, after MIs with five rounds. The minimum crude incidence rate was 37.6/100,000 pyo (95% CI 32.7–33.3) and was 77.0/100,000 pyo (95% CI 67.7–87.4) after adjusting for loss to follow‐up and the sensitivity of the three‐stage survey methodology. At an adjusted rate of 51.6/100,000 pyo (95% CI 42.5–62.2), incidence of focal seizures was more than two times that of generalized seizures in this population, although a large proportion of convulsive seizures could not be classified according to onset due to lack of adequate information (Table 3).
Table 3

Incidence of convulsive seizure in Kilifi, Kenya

Seizure typeUnadjustedAdjusted for attritionAdjusted for attrition and sensitivity
CasesIncidence95% CICasesIncidence95% CICasesIncidence95% CI
Generalized438.36–11.2509.77.0–13.110319.914.4–26.9
Generalized convulsive4185.9–10.8489.36.9–12.69819.214.12–25.9
Generalized other motor20.40.1–1.620.50.1–1.951.00.2–3.8
Focal11121.517.7–25.913025.120.7–30.226751.642.5–62.2
Focal motor5310.27.4–14.86211.98.6–17.312724.517.8–35.5
Focal sec gen convulsive5811.28.7–14.66813.110.2–17.013926.920.89–35.1
Other motor undetermined61.20.14–2.571.40.2–2.9142.90.3–6.0
Other convulsive undetermined346.64.6–9.2407.75.4–10.78215.911.0–22.1
There was strong evidence of variation of incidence of CE with age, with the highest incidence in the 6–17 year olds, lowest in 28–49 year olds, and an increase in the ≥50 year olds (Table 4). Incidence did not vary according to sex, administrative area of residence, or ethnicity (Table 4).
Table 4

Incidence rates and ratios for age, sex, ethnicity, and area of residence for convulsive epilepsy in Kilifi, Kenya

PyoaCasesaIncidence ratea95% CIRate ratio95% CIp‐value
Age group
6–12197,04018996.178.4–117.91.00.008
13–1790,2468291.266.9–124.30.910.62–1.33
18–28102,4268482.360.7–111.90.820.56–1.20
29–49148,0205637.425.7–54.70.460.31–0.71
50+85,2726879.656.6–111.90.860.57–1.28
Sex
Female341,40624972.861.1–87.21.00.30
Male281,59823081.967.9–98.61.20.9–1.5
Ethnicity
Giriama268,20621078.264.4–95.11.00.65
Chonyi218,37015872.658.0–90.70.940.69–1.27
Kauma71,8146894.767.3–132.91.350.92–1.98
Other Mijikenda33,8642985.050.4–143.60.980.54–1.78
Luo3,390000
Other27,3601452.725.1–110.51.010.53–1.93
Area
Roka‐Matsangoni‐Mida86,80893106.679.6–142.81.00.35
Ngerenya37,9622975.944.9–128.20.650.35–1.20
Tezo80,6645668.947.3–100.40.610.38–.098
Chonyi126,2049373.554.7–98.40.630.41–0.95
Sokoke23,07025107.060.7–188.50.820.41–1.62
Jaribuni36,6123389.955.1–146.70.770.43–1.38
Junju106,9388075.154.7–102.70.670.44–1.03
Takaungu63,7624367.744.2–103.90.560.33–0.96
Kilifi Township60,9842947.328.0–79.80.590.34–1.00

Means estimated after adjustment for loss to follow‐up and sensitivity of the screening methodology.

Means estimated after adjustment for loss to follow‐up and sensitivity of the screening methodology. Of the 194 incident cases detected in the 2008 prevalence survey, 130 experienced the first nonfebrile seizure prior to the baseline epilepsy survey of 2003, 64 had seizure onset during the follow‐up period (i.e., between 2003 and 2007), and in 10 the date of onset was not available. During follow‐up, the highest proportion of incident cases (31.3%) occurred in the year preceding the reevaluation survey (2007), whereas the lowest (12.5%) was in the baseline year (2003), and these proportions were significantly different (p = 0.008). However, there was no significant trend in the number of incident cases over the years (p‐value for trend = 0.18).

Discussion

We used two cross‐sectional surveys 5 years apart within an existing HDSS of a rural population in Kenya to identify incident cases of ACE, and we estimated a minimum incident rate of convulsive epilepsy at 77.0/100,000 persons per year, which varied with age. Cases were identified in three‐stage cross‐sectional surveys at the beginning and at the end of the follow‐up period. ILAE definitions with modified timelines (Commission on Epidemiology & Prognosis: International League Against Epilepsy, 1993; Thurman et al., 2011) were used to define cases and noncases (Edwards et al., 2008; Ngugi et al., 2013). Within the KHDSS framework, the study benefitted from continuous follow‐up for migration and death, but we were able to determine the cumulative incidence of new cases from the cross‐sectional study that was conducted at the end of the study. As such, we have reported a minimum incident rate, since we were not able to detect newly developed epilepsy cases that may have died shortly after the onset of seizures or been inactive during the reevaluation survey of 2008. For example, of the 448 people with ACE identified at the baseline survey of 2003, 61 had died as at 31 December 2011. About 10% died within the first 3 years and 23% within the first 5 years of onset of seizures (data not shown). In addition, it was not possible to determine the epilepsy status of residents who migrated out of the KHDSS or died, although the demographic profiles of the incidence cohort (as well as for the cases of ACE) identified at baseline were similar to those of the cohort members who were found at the second cross‐sectional survey. In particular, the proportions of people with histories of convulsions at baseline (i.e., positive in the first stage of the baseline survey and therefore more likely to develop epilepsy) were similar among those lost and those who remained in the cohort. We also used the MIs to determine and incorporate the proportion of incident cases among participants lost to follow‐up into the overall estimate of incidence, thereby minimizing selection bias. Because mortality is typically highest in the first 1–2 years following the onset of seizures (Cockerell et al., 1994; Forsgen et al., 2005), incidence may have been underestimated as we evaluated the cohort 5 years apart. This is supported by the timing of the first seizure, which showed a significantly higher proportion of new‐onset epilepsy nearer to the reevaluation survey compared to that immediately after the baseline survey. We estimated the incidence rate of CE at 77/100,000 pyo. Prevalence studies in LMICs that have included nonconvulsive epilepsies (Kaamugisha & Feksi, 1988; Birbeck & Kalichi, 2004) have reported prevalence estimates that were 2–3 times higher than those that studied convulsive epilepsies only (Rwiza et al., 1992; Tekle‐Haimanot et al., 1997). Assuming similar rates for mortality and remission across studies, these findings would suggest that the incidence of all epilepsies in our population could be in the range of 154–231/100,000 persons per year, which is higher than rates reported for all epilepsies from other studies in LMICs. These estimates have varied widely, from 49/100,000 in India (Mani et al., 1998), 69.4/100,000 in Benin (Houinato et al., 2013), 73/100,000 in Tanzania (Rwiza et al., 1992), and 92/100,000 in Honduras (Medina et al., 2005). Our extrapolated incidence rates for all epilepsies would, however, be similar to the rate of 215/100,000 reported in an Onchocerciasis endemic area of Uganda (Kaiser et al., 1998), the 162/100,000 reported in an Cysticercosis endemic region of Peru (Villaran et al., 2009), and within the range estimated for LMICs in a recent review of incidence of life‐time epilepsy (Ngugi et al., 2011). These data suggest that incidence is likely to vary depending on the geographic distribution and risk factors associated with epilepsy, although these are unadjusted estimates and therefore the comparisons should be interpreted with caution. The observation that incidence of focal seizures was more than twice that of generalized seizures could suggest that factors such as neonatal insults and infections/infestations of the central nervous system, which can be prevented, are more important etiologies of convulsive epilepsy in this area (Ngugi et al., 2013). Compared to other studies that have used a 5‐year cutoff for the last seizure to define active epilepsy (Commission on Epidemiology & Prognosis: International League Against Epilepsy, 1993), we used a definition in which the last seizure was within the previous 12 months in our baseline and reevaluation prevalence surveys, as suggested by the ILAE for studies in the LMICs (Meinardi et al., 2001; Thurman et al., 2011) and because recall of seizures over a year ago is poor (Newton CR, Mung'alla‐Odera V, unpublished data). Therefore, under the ILAE definition, the incidence of convulsive epilepsy in this population could be considerably higher. Poor recall of seizures and early mortality were still likely to reduce the incidence estimates. For instance, if a respondent experienced the last seizure in the preceding 12 months but could not recall earlier seizures if they occurred long ago they were likely to be misclassified as a case of single seizure. These two factors (poor recall and early mortality) could explain the significant differences in the proportions of onset by years. The age‐incidence relationship in our study showed a U‐shaped curve, with highest incidence in the children and adolescents and old aged adults, and lowest in 28–49 year olds, as has been observed in the high income countries (HICs) (Jallon et al., 1997; Olafsson et al., 2005). In the 6–28 year age group, onset of recurrent seizures could be related to perinatal insults and infections of the central nervous system, particularly in the younger children (Preux & Druet‐Cabanc, 2005; Ngugi et al., 2013). Many genetically determined epilepsies may also manifest during this age (Goudsmit & van der Waals, 1983; Edwards et al., 2008). In the adolescents and young adults, recurrent seizures may develop as a consequence of temporally remote etiologies that result in static encephalopathies, for example, infectious brain insults earlier in life, cerebral palsy, and head injuries (Ogunniyi et al., 1987; Edwards et al., 2008). However, there was no change in the prevalence between the surveys in 2003 and 2008, particularly in the 6–12 year age group, despite the introduction of Haemophilus influenza type B (Hib) vaccine in 2001 (Cowgill et al., 2006), and a reduction of the incidence of severe malaria (O'Meara et al., 2008) and acute seizures (Kariuki et al., 2011) admitted to Kilifi District Hospital since 2004. These potential causes may not be responsible for a significant population‐attributable fraction of ACE, but could cause other forms on nonconvulsive epilepsies (Pomeroy et al., 1990), or there may not have been sufficient time for the reduction in the incidence of these conditions to reflect in the decrease in the prevalence. The incidence rate was not different between males and females in our study population. The higher incidence rate in the elderly (50+ years) compared to younger adults has also been observed in industrialized countries (Sander et al., 1990) and in one study in an LMIC (Rwiza et al., 1992) but not in another LMIC (Tekle‐Haimanot et al., 1997). Although it has not been documented in LMICs, elderly people may experience higher risk of developing epilepsy associated with progressive brain conditions that include tumors, cerebrovascular accidents and neurodegenerative conditions such as Alzheimer's disease (Commission on Epidemiology & Prognosis: International League Against Epilepsy, 1993). In view of the high incidence of CE in this population, etiologic studies are necessary, preferably in incident cases in order to elucidate causes, particularly among children, adolescents, and the elderly who are at highest risk. Neuroimaging may also help elucidate the causes. Furthermore, these age groups should be targeted for preventive public health interventions.

Limitations of the Study

We utilized a three‐stage survey methodology that had low sensitivity (48.6%) to detect cases of ACE. We were able to adjust estimates for the low sensitivity, but it is possible that some cases were missed during the baseline survey and counted as incident cases in the follow‐up survey resulting in an overestimation of the incidence rate. Furthermore, poor recall of seizures, particularly those that occurred long ago, could have led to underestimation of incidence. Premature mortality due to epilepsy, remission, as well as lack of identification of newly onset epilepsy cases that may have been inactive during the reevaluation survey (2008) may have led to an underestimate of the number of incident cases. Future studies would benefit from a more frequent reevaluation (e.g., every 6 months) of the cohort to increase the detection of incident cases. We also excluded children ≤5 years of age from this study, which may imply that the incidence of epilepsy in the study area could be considerably higher given that most of the epilepsy starts during early childhood.

Conclusion

We estimated the incidence of CE in a large population‐based prospective cohort study that was twice as high as that in HICs and within range of estimates reported for LMICs. Incidence of epilepsy was highest in children, adolescents, and the elderly; the causes should be investigated to prevent the development of epilepsy in these age groups. The incidence of focal epilepsy was more than twice that of generalized epilepsy, suggesting that etiologies that can be prevented could be most important in this area.

Disclosure

All authors confirm that they have no financial or personal interest, including advisory board affiliation, in any company or organization sponsoring the research. We confirm that we have read the Journal's position on issues involved in ethical publication and affirm that this report is consistent with those guidelines. Table S1. Main characteristics of epilepsy cases that completed the study and those lost to follow‐up. Click here for additional data file. Appendix S1. Stage I (SI) of the cross‐sectional survey: (Census screen for convulsions). Appendix S2. Stage II (SII) screening questions. Click here for additional data file.
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Journal:  J Neurol Neurosurg Psychiatry       Date:  2004-10       Impact factor: 10.154

9.  Inconsistency between prospectively and retrospectively reported febrile seizures.

Authors:  M Sillanpää; P R Camfield; C S Camfield; M Aromaa; H Helenius; P Rautava; W A Hauser
Journal:  Dev Med Child Neurol       Date:  2008-01       Impact factor: 5.449

10.  Profile: The Kilifi Health and Demographic Surveillance System (KHDSS).

Authors:  J Anthony G Scott; Evasius Bauni; Jennifer C Moisi; John Ojal; Hellen Gatakaa; Christopher Nyundo; Catherine S Molyneux; Francis Kombe; Benjamin Tsofa; Kevin Marsh; Norbert Peshu; Thomas N Williams
Journal:  Int J Epidemiol       Date:  2012-04-28       Impact factor: 7.196

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  9 in total

Review 1.  Epidemiology, causes, and treatment of epilepsy in sub-Saharan Africa.

Authors:  Awa Ba-Diop; Benoît Marin; Michel Druet-Cabanac; Edgard B Ngoungou; Charles R Newton; Pierre-Marie Preux
Journal:  Lancet Neurol       Date:  2014-10       Impact factor: 44.182

2.  The burden of neurological impairments and disability in older children measured in disability-adjusted life-years in rural Kenya.

Authors:  Jonathan A Abuga; Symon M Kariuki; Amina Abubakar; Samson M Kinyanjui; Michael Boele van Hensbroek; Charles R Newton
Journal:  PLOS Glob Public Health       Date:  2022-02-10

3.  Growth parameters and childhood epilepsy in Hai District, Tanzania: a community-based study.

Authors:  Jane J Rogathe; Jim Todd; Ewan Hunter; Richard Walker; Antony Ngugi; Charles Newton; Kathryn Burton
Journal:  Epilepsy Res       Date:  2014-07-06       Impact factor: 3.045

4.  Onchocerciasis in Mozambique: An Unknown Condition for Health Professionals.

Authors:  Emilia Virginia Noormahomed; Carmen Mascaró-Lazcano
Journal:  EC Microbiol       Date:  2019-03

5.  An epidemiological survey of epilepsy in tropical rural areas of China.

Authors:  Guoxian Zheng; Futao Li; Yongmin Chen; Huijuan Liu; Shurong Wang; Jitong Lao; Shuang Chen; Yimin Zhang; Rui Lu; Xiaoping Liao; Lin Ma; Qifu Li
Journal:  Epilepsia Open       Date:  2021-03-02

6.  Incidence, Remission and Mortality of Convulsive Epilepsy in Rural Northeast South Africa.

Authors:  Ryan G Wagner; Christian Bottomley; Anthony K Ngugi; Fredrick Ibinda; F Xavier Gómez-Olivé; Kathleen Kahn; Stephen Tollman; Charles R Newton; Ryan Wagner; Rhian Twine; Myles Connor; Mark Collinson; Honratio Masanja; Alexander Mathew; Angelina Kakooza; George Pariyo; Stefan Peterson; Donald Ndyo-mughenyi; Rachael Odhiambo; Eddie Chengo; Martin Chabi; Evasius Bauni; Gathoni Kamuyu; Victor Mung'ala Odera; James O Mageto; Ken Ae-Ngibise; Bright Akpalu; Albert Akpalu; Francis Agbokey; Patrick Adjei; Seth Owusu-Agyei; Immo Kleinschmidt; Victor C K Doku; Peter Odermatt; Brian Neville; Josemir W Sander; Steve White; Thomas Nutman; Patricia Wilkins; John Noh
Journal:  PLoS One       Date:  2015-06-08       Impact factor: 3.240

7.  Burden of epilepsy in rural Kenya measured in disability-adjusted life years.

Authors:  Fredrick Ibinda; Ryan G Wagner; Melanie Y Bertram; Anthony K Ngugi; Evasius Bauni; Theo Vos; Josemir W Sander; Charles R Newton
Journal:  Epilepsia       Date:  2014-07-31       Impact factor: 6.740

8.  Community perceptions of developmental and behavioral problems experienced by children living with epilepsy on the Kenyan coast: A qualitative study.

Authors:  Amina Abubakar; Symon M Kariuki; Judith Dzombo Tumaini; Joseph Gona; Khamis Katana; Jacqueline A Phillips Owen; Charles R Newton
Journal:  Epilepsy Behav       Date:  2015-04-11       Impact factor: 2.937

9.  Community-based management of epilepsy in Southeast Asia: Two intervention strategies in Lao PDR and Cambodia.

Authors:  Farid Boumediene; Channara Chhour; Phetvonsinh Chivorakoun; Vimalay Souvong; Peter Odermatt; Chamroeun Hun; Clémence Thebaut; Mayoura Bounlu; Navuth Chum; Somchit Vorachit; Sina Ros; Samleng Chan; Pierre-Marie Preux
Journal:  Lancet Reg Health West Pac       Date:  2020-10-09
  9 in total

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