| Literature DB >> 32234122 |
Masja Straetemans1, Mirjam I Bakker1, Sandra Alba1, Christina Mergenthaler1, Ente Rood1, Peter H Andersen2, Henrieke Schimmel3, Aleksandar Simunovic4, Petra Svetina5, Carlos Carvalho6,7, Outi Lyytikäinen8, Ibrahim Abubakar9, Ross J Harris10,9, Csaba Ködmön11, Marieke J van der Werf11, Rob van Hest12,13.
Abstract
BackgroundProgress towards the World Health Organization's End TB Strategy is monitored by assessing tuberculosis (TB) incidence, often derived from TB notification, assuming complete case detection and reporting. This assumption is unlikely to hold in many settings, including European Union (EU) countries.AimWe aimed to assess observed and estimated completeness of TB notification through inventory studies and capture-recapture (CRC) methodology in six EU countries: Croatia, Denmark, Finland, the Netherlands, Portugal Slovenia.MethodsWe performed record linkage, case ascertainment and CRC analyses of data collected retrospectively from at least three national TB-related registers in each country between 2014 and 2016.ResultsObserved completeness of TB notification by inventory studies was 73.9% in Croatia, 98.7% in Denmark, 83.6% in Finland, 81.6% in the Netherlands, 85.8% in Portugal and 100% in Slovenia. Subsequent CRC analysis estimated completeness of TB notification to be 98.4% in Denmark, 76.5% in Finland and 77.0% in Portugal. In Croatia, CRC analyses produced implausible results while in the Netherlands and Slovenia, it was methodologically considered not meaningful.ConclusionInventory studies and CRC methodology suggest a TB notification completeness between 73.9% and 100% in the six EU countries. Mandatory reporting by clinicians and laboratories, and cross-checking of registers, strongly contributes to accurate notification rates, but hospital episode registers likely contain a considerable proportion of false-positive TB records and are thus less useful. Further strengthening routine surveillance to count TB cases, i.e. incidence, accurately by employing record-linkage of high-quality TB registers should make CRC studies obsolete in EU countries.Entities:
Keywords: Croatia; Denmark; Finland; Netherlands; Portugal; Slovenia; epidemiology; statistics; surveillance; tuberculosis
Mesh:
Year: 2020 PMID: 32234122 PMCID: PMC7118341 DOI: 10.2807/1560-7917.ES.2020.25.12.1900568
Source DB: PubMed Journal: Euro Surveill ISSN: 1025-496X
Tuberculosis inventory study eligibility and feasibility appraisal questionnaire with simple scoring system, European Union and European Economic Area countries, 2016
| Question number | Question | Scorea |
|---|---|---|
| 1 | Does your country have an electronic case-based TB notification database? | Essential |
| 2 | Are these the data you report to ECDC/TESSy? | 1 |
| 3 | Is TB notification mandatory in your country? | 2 |
| 4 | Only mandatory for the doctor or also for other, e.g. laboratory? | 2 |
| 5 | Does your country have other electronic case-based TB registers available? | Essential |
| 6 | Are standard TB case definitions used in these registers? | 2 |
| 7 | Do these registers contain variables that can be used for record linkage? | Essential |
| 8 | Does the NTP already routinely link certain TB registers? | 1 |
| 9 | Does the NTP have professionals that can assist in this study, e.g. data managers, statisticians? | 2 |
| 10 | Does your country have legal issues hindering capture–recapture studies? | Essential |
| 11 | Would your country be interested in participating? | Essential |
ECDC: European Centre for Disease Prevention and Control; NTP: National TB Programme; TB: tuberculosis; TESSy: The European Surveillance System.
a Scoring based on conditions considered essential, important (2 points), or nice (1 point) to have or not to have.
Demographics and main findings from inventory studies and capture–recapture analyses, six selected European Union countries, 2014–2016
| Country (study year) | Croatia (2015) | Denmark (2015) | Finland (2014) | Portugal (2015) | The Netherlands (2014) | Slovenia (2016) |
|---|---|---|---|---|---|---|
| 4,225,316 | 5,659,715 | 5,451,270 | 10,374,822 | 16,829,289 | 2,064,188 | |
| Southern | Northern | Northern | Southern | Western | Southern | |
| 10,600 EUR | 48,000 EUR | 37,600 EUR | 17,400 EUR | 39,800 EUR | 19,500 EUR | |
| 11.6 (486) | 6.3 (357) | 4.8 (263) | 21.0 (2,178) | 4.8 (814) | 5.7 (118) | |
| 489 | 379 | 260 | 2,182 | 814 | 118 | |
| 13.0 (560) | 6.5 (370) | 5.3 (290) | 23.0 (2,400) | 5.8 (980) | 6.5 (140) | |
| 15.2/32.9 | 67.8/0.0 | 33.1/1.5 | 16.7/0.1 | 73.8/0.0 | 36.4/0.0 | |
| National | National | National | Islands excluded | National | National | |
| 1. TB Notification Register (NTR) | 1. TB notification register (MIS2)e | 1. National Infectious Disease Register (NIDR/TTR) | 1. TB register (Sistema de Vigilância da Tuberculose - SVIG TB) | 1. The Netherlands Tuberculosis Register (NTR) | 1. TB notification register | |
| Probabilistic: first name, family name (Jaro-Wrinkler distance algorithm) | Deterministic: national identity code | Deterministic: national identity code | Probabilistic: | Deterministic: (relaxed) combination of major and minor proxy identifiersf | Deterministic: | |
| Poisson log-linear regression model 3-source data | Poisson log-linear regression model 3-source data | Poisson log-linear regression model 3-source data and 4-source data | Poisson log-linear regression model 3-source data | CRC not feasible due to complete overlap of two registers and one considered poor data quality | CRC not feasible because of almost complete overlap | |
| 73.9% (489/662) | 98.7% (379/384) | 83.6% (260/311)g | 85.8% (1,997/2,328) | 81.6% (814/998) | 100% (118/118) | |
| Considered implausible result | 117 (95% CI: 26–515)h/20 (95% CI: 2–234)i | 266 (95% CI 198–358)j | Not assessed | Not assessed | ||
| Not assessed | 98.4% (95% CI 97.9–98.7) | 76.5% (95% CI 63.7–81.3)k | 77.0% (95% CI 74.3% to 79.1%)j | Not assessed | Not assessed | |
| 81% (140/173) unnotified TB cases were only available in hospital register | Direct referral of cases from one source to another results in pairwise dependence that can be handled by log-linear models. | Many of the 313 (573–260) Hilmo and Avohilmo cases not notified are likely to be false positive | Probably false-positive TB cases in public health register and hospital discharge register | A check with non-TB mycobacteria register and latent TB infection data filtered 14 hospital-only cases out; the remaining 184 cases were registered in hospital discharge only which is expected to contain many false-positive records. | A priori notification and laboratory records expected to be highly interdependent, but other registers also appeared to be interdependent because of: (i) Majority of TB patients starting treatment in hospital; (ii) Regular mortality audits with hospital register’s cause of death data | |
| Impossible to interpret CRC analyses without following up on clinically diagnosed TB patients only available in hospital register. | Systematic validation of notification and laboratory register led to improved accuracy of data. | Primary health centre discharge data were found to be unreliable and follow-up of false positives is needed. | Number of unobserved cases is likely to be higher than previously thought but, due to likely presence of false-positive TB cases in hospital discharge registers, lower than estimated in this study. | Proportion of under-notification in the Netherlands in 2014 pending availability of time and resources necessary to investigate non-matching hospital-only TB cases. | Completeness of TB notification is high; only small percentage is culture negative. |
CI: confidence interval; CRC: capture-recapture; IS: inventory studies; TB: tuberculosis; n: number.
a For country-specific study year.
b Source: Eurostat.
c Based on United Nations geoscheme [33].
d Source: Tuberculosis surveillance and monitoring in Europe 2018; absolute number as reported to TESSy.
e MIS2 Meldesystemet for Infektions Sygdomme version 2.
f Major proxy identifiers include: year or full date of birth; sex, four-digit postal code, and minor proxy identifiers include date of notification, date of first bacteriology culture sample and date of hospital admission.
g After adjustment for 90% suspected false-positive TB cases.
h Excluding death register and assuming that 10% of cases in primary health centre and hospital discharge register are true TB cases.
i Including death register, excluding primary health centre discharge register, assumption 10% of Hilmo cases are true TB cases.
j After probabilistic matching and excluding possible cases.
k Four-source model under assumption that 10% of Hilmo and Avohilmo-only cases are true TB cases.
FigureSchematic view of the registered number of tuberculosis (TB) cases after record linkage of three TB-related registers, six selected European Union countries, 2014–2016