| Literature DB >> 33282225 |
Adrienne N Poon1,2, Yawen Xiang1, Yelena Zavalishina1, Shant Ayanian2, Christopher F Aitken3, Andrew C Procter4, Igor Rudan1, Kit Yee Chan1,5.
Abstract
BACKGROUND: Rapid increase in life expectancy in low- and middle-income countries including the World Health Organization's Southeast Asia Region (SEAR) has resulted in an increase in the global burden of dementia, which is expected to become a leading cause of morbidity. Accurate burden estimates are key for informing policy and planning. Given the paucity of data, estimates were developed using both a Bayesian methodology and as well as a traditional frequentist approach to gain better insights into methodological approaches for disease burden estimates.Entities:
Mesh:
Year: 2020 PMID: 33282225 PMCID: PMC7688200 DOI: 10.7189/jogh.10.020701
Source DB: PubMed Journal: J Glob Health ISSN: 2047-2978 Impact factor: 4.413
Figure 1PRISMA flow diagram for selection of studies included in the systematic review.
Study details
| Study | Authors (Year) | Region/Country | Setting | Screening Tools | Outcome ascertainment | Study design |
|---|---|---|---|---|---|---|
| 1 | Banerjee (2017) [ | Kolkata, India | Urban | KBSB | DSM-IV; NINCDS-ADRDA; NINCDS-AIREN | 3-stage design cross-sectional study* |
| 2 | Gurukartick (2016) [ | Thiruvennainallur in Villupuram District of Tamil Nadu, India | Rural | VSID | DSM-IV | 2-stage design cross-sectional study† |
| 3 | Gambhir (2014) [ | Chiraigaon block of Varanasi District, India | Rural | HMSE | DSM-IV-TR; ICD-10 | 2-stage design cross-sectional study† |
| 4 | Senanarong (2013) [ | Siriraj, Thailand | Rural | TMSE | DSM-IV | 2-stage design cross-sectional study† |
| 5 | Tiwari (2013) [ | Luchnow, India | Rural | HMSE; CAMDEX-R | DSM-IV; ICD-10 | 3-stage design cross-sectional study* |
| 6 | Seby (2011) [ | Pune district of Maharashtra State, India | Urban | GHQ-12; MMSE | ICD-10 | 2-stage design cross-sectional study† |
| 7 | Mathuranath (2010) [ | Trivandrum, Kerala State, India | Urban | ACE; MMSE | DSM-IV; NINCDS-ADRDA; Hachinski’s Ischemic Scale | 2-stage design cross-sectional study† |
| 8 | Saldanha (2010) [ | Pune and Kirkee cantonments, Maharashtra, India | Urban | MMSE; CSI-D | ICD-10 | Single phase cross-sectional survey |
KCSB – Kolkata Cognitive Screening Battery, VSID – Vellore Screening Instrument for Dementia , HMSE – Hindi Mini Mental state examination, TMSE – Thai Mental State Examination, CAMDEX-R - Cambridge Examination for Mental Disorders of the Elderly - Revised (CAMDEX-R), GHQ-12 – General Health Questionnaire-12, MMSE – Mini Mental State Examination, ACE – Addenbrooke’s Cognition Examination, CSI-D – 10/66 Research Group Community Screening Instrument for Dementia, ICD – International Classification of Diseases, DSM – Diagnostic and Statistical Manual of Mental Disorders, NINDS-AIREN – National Institute of Neurological Disorders and Stroke Association criteria for vascular dementia, NINCDS-ADRDA – National Institute of Neurological and Communicative Disorders and Stroke and the Alzheimer’s Disease and Related Disorders Association criteria for Alzheimer’s disease
*3-stage design cross-sectional study: 1. Screening by trained fieldworkers; 2. Confirmation of suspected cases by consultant psychiatrists/ psychiatric team; 3. Checking of unsuspected cases by consult psychiatrists/ psychiatric team for false negatives.
†2-stage design cross-sectional study: 1. Screening by trained fieldworkers; 2. Confirmation of suspected cases by consultant psychiatrists/ psychiatric team.
Detailed sampling characteristics
| Study | Authors (year) | Sample selection | Participant recruitment | Sample size and response rate | Participants traits |
|---|---|---|---|---|---|
| 1 | Banerjee (2017) [ | Representative of the region in terms of socioeconomic and cultural levels | Stratified and random sampling | 100 802 approached and analysed | 47.2% female, ≥50 years old |
| Attrition <1% | |||||
| 2 | Gurukartick (2016) [ | Rural community dwelling elderly population | Random and proportional sampling | 1304 analysed | 44.9% female, ≥65 years old |
| Sample size calculation ≥1300 | |||||
| 3 | Gambhir (2014) [ | Rural community dwelling elderly population | Random sampling | 728 analysed | 64.4% female, ≥60 years old |
| 54-80% for female | |||||
| 4 | Senanorong (2013) [ | Rural community dwelling elderly population | Catchment from primary care unit of Siriraj Hospital | 1998 approached, 1973 analysed (98.7%) | 65.1% female, ≥60 years old |
| Sample size calculation ≥1948 | |||||
| 5 | Tiwari (2013) [ | Rural community dwelling elderly population | Random sampling | 2324 approached, 2146 analysed (92.3%) | 52.6% female, ≥60 years old |
| Sample size calculation ≥ 2060 | |||||
| 6 | Seby (2011) [ | Urban community dwelling elderly population | Consecutive sampling | 218 approached, 202 analysed (92.7%) | 49.1% female, ≥65 years old |
| 7 | Mathuranath (2010) [ | Representative of the region in terms of socioeconomic and cultural levels | Door to door survey | 2690 eligible, 2446 analysed (90.9%) | 59.4% female, ≥55 years old |
| 8 | Saldanha (2010) [ | Community dwelling population | Random sampling then door to door survey | 2145 approached, 2119 analysed, (98.8%) | 60.5% female, ≥65 years old |
Prevalence of dementia in 10-year age groups in SEAR
| Age | Pooled prevalence estimate (95% credible interval) | Number of PWD in SEAR in 2015 (thousands) | Projected number of PWD in SEAR in 2020 (thousands) | Projected number of PWD in SEAR in 2030 (thousands) |
|---|---|---|---|---|
| 0.016 (0.008-0.025) | 1691.90 (845.95-2,643.60) | 2063.18 (1031.59-3223.73) | 2733.55 (1366.78-4271.18) | |
| 0.034 (0.017-0.055) | 1739.41 (869.70-2,813.75) | 2,021.50 (1010.75-3270.08) | 3115.76 (1557.88-5040.20) | |
| 0.124 (0.056-0.200) | 2082.46 (940.46-3,358.80) | 2579.70 (1165.02-4160.80) | 3747.65 (1692.49-6044.60) | |
| 0.0314 (0.015-0.050) | 5513.77 (2656.12-8816.15) | 6664.38 (3207.37-10 654.61) | 9596.96 (4,617.14-15 355.98) |
PWD – people with dementia, SEAR – Southeast Asia Region
Figure 2Crude prevalence for individuals over age 60.
Figure 3Projected dementia cases in SEAR by Bayesian and frequentist models. Note: Due to the conceptual differences between the analytic approaches we would like to remind the reader that the 95% confidence intervals (Random-effects model) and 95% credible intervals (Bayesian) cannot be interpreted interchangeably.
Burden estimate comparisons between Bayesian and frequentist models
| Year | Bayesian NNHM | Random-effects model |
|---|---|---|
| 5.51 (2.66-8.82) million* | 5.21 (3.47 - 10.40) million | |
| 6.66 (3.21-10.7) million | 6.28 (4.18 – 12.60) million | |
| 9.60 (4.62-15.36) million | 8.78 (5.85 –17.56) million |
NNHM – normal-normal hierarchical model