Literature DB >> 29326327

National roll-out of latent tuberculosis testing and treatment for new migrants in England: a retrospective evaluation in a high-incidence area.

Miranda G Loutet1, Matthew Burman2,3, Nivenka Jayasekera3, Duncan Trathen4, Susan Dart3, Heinke Kunst2,3, Dominik Zenner5,6,7.   

Abstract

Latent tuberculosis infection (LTBI) screening is an important intervention for tuberculosis (TB) elimination in low-incidence countries and is, therefore, a key component of England's TB control strategy. This study describes outcomes from a LTBI screening programme in a high-incidence area to inform national LTBI screening in England and other low-incidence countries.We conducted a retrospective cohort study of LTBI screening among eligible migrants (from high-incidence countries and entered the UK within the last 5 years), who were identified at primary-care clinics in Newham, London between August 2014 and August 2015. Multivariable logistic regression was used to identify factors associated with LTBI testing uptake, interferon-γ release assay (IGRA) positivity and treatment uptake.40% of individuals offered LTBI screening received an IGRA test. The majority of individuals tested were 16-35 years old, male and born in India, Bangladesh or Pakistan. Country of birth, smoking status and co-morbidities were associated with LTBI testing uptake. IGRA positivity was 32% among those tested and was significantly associated with country of birth, age, sex and co-morbidities.This study identifies factors associated with screening uptake, IGRA positivity and treatment uptake, and improves understanding of groups that should be supported to increase acceptability of LTBI testing and treatment in the community.
Copyright ©ERS 2018.

Entities:  

Mesh:

Year:  2018        PMID: 29326327      PMCID: PMC5898937          DOI: 10.1183/13993003.01226-2017

Source DB:  PubMed          Journal:  Eur Respir J        ISSN: 0903-1936            Impact factor:   16.671


Introduction

The World Health Organization's “End TB Strategy” aims to significantly reduce global tuberculosis (TB) incidence and mortality [1]. The strategy also aims for TB elimination (defined as incidence of <1 per 1 000 000 people) in low-incidence countries. One of the main interventions to achieve these goals is latent TB infection (LTBI) screening of high-risk groups, including migrants, to prevent re-activation [2]. In 2014, there were 6520 cases of TB notified in England, a rate of 12.0 cases per 100 000 [3]. Nearly three-quarters (72.2%) of all TB cases were notified among the foreign-born population and the vast majority (86.0%) of foreign-born cases were notified among settled migrants who had been in the UK for more than 2 years [3]. It is likely that the overwhelming majority of TB cases in the foreign-born population are due to reactivation of LTBI acquired before arrival in the UK, a pattern which has been observed in other countries [3-5]. It is well known that treatment for LTBI is efficacious in preventing active TB [6, 7]. Studies in the UK have also shown that targeted programmes using primary-care registers [8] and interferon-γ release assays (IGRA) to screen those most at risk of developing active TB are more effective in identifying LTBI cases, preventing active TB and are cost effective [9, 10]. Based on this evidence, new entrant LTBI testing and treatment became a key intervention of the Collaborative TB Strategy for England 2015–2020, which aims to reduce TB incidence in England and reduce health inequalities from TB over the next 5 years [11]. Systematic national implementation of the LTBI programme is essential to achieving the aims of the collaborative strategy and supports the WHO goal of TB elimination. In 2014, the London borough of Newham established a primary-care based LTBI screening and treatment service in response to its high TB incidence: the 3-year average TB incidence was 100 per 100 000 (2012–2014), higher than the average incidence in London (35.4 per 100 000) [3]. More than half of the population in Newham (54%) were born outside the UK and 86% of active TB cases in 2014 were notified among the foreign-born population [12, 13]. The high TB rates in Newham and novel approach to TB control led to the programme being selected as a pilot for the national LTBI programme. This study describes the screening outcomes of the LTBI testing and treatment pilot in Newham and determines factors contributing to LTBI screening uptake, IGRA test positivity and treatment uptake in order to inform LTBI screening programmes in England and other low-incidence countries.

Methods

Study design and cohort

We conducted a retrospective cohort study. We included all individuals identified as eligible for LTBI testing and treatment from 59 general practices (GPs) in the London borough of Newham between August 2014 and August 2015. Eligibility criteria included documented migrants who were born or who had spent ≥6 months in a high-incidence country (≥150 per 100 000 and sub-Saharan Africa) and had entered the UK within the last 5 years. Based on criteria for programmatic screening in the UK, individuals with pre-existing or previously treated LTBI or active TB were not eligible for testing and therefore not included in this study.

Screening process

The screening algorithm is outlined in figure 1. Eligible individuals were identified upon registering with a GP and offered LTBI testing. A single IGRA test was used to screen individuals. Individuals found to be IGRA positive were tested for HIV, hepatitis B and hepatitis C, and then reviewed by a GP to exclude active TB based on a history, physical examination and chest radiography. Individuals with signs or symptoms of suspected active TB (table 1), underlying liver disease or positive viral serology were referred to the local TB clinic in secondary care.
FIGURE 1

Latent tuberculosis infection (LTBI) testing and treatment programme flow chart. IGRA: interferon-γ release assay; GP: general practitioner; TB: tuberculosis.

TABLE 1

Definitions for LTBI and active TB cases

Case termDefinition
LTBIIGRA test positivity and no clinical signs or symptoms suggestive of active TB.
Active TBCulture confirmed disease due to Mycobacterium tuberculosis complex or in the absence of culture confirmation, a case with clinical signs and/or radiological signs and/or symptoms compatible with active TB and the TB clinician decided to treat the individual with a full course of anti-TB treatment.

LTBI: latent tuberculosis infection; TB: tuberculosis; IGRA: interferon-γ release assay.

Latent tuberculosis infection (LTBI) testing and treatment programme flow chart. IGRA: interferon-γ release assay; GP: general practitioner; TB: tuberculosis. Definitions for LTBI and active TB cases LTBI: latent tuberculosis infection; TB: tuberculosis; IGRA: interferon-γ release assay. All other individuals diagnosed with LTBI (table 1) were prescribed 3 months of rifampicin and isoniazid combination therapy by the GP as recommended by national and international guidelines [14, 15]. Electronic prescriptions were sent to accredited community pharmacists who had been trained in providing LTBI treatment.

Data collection and cleaning

Data was collected using a bespoke template within the GP's electronic patient record system (EMISWeb; EMIS Health, Leeds, UK). Demographic information (age, sex, country of birth), co-morbidities (immunosuppression, diabetes mellitus, pre-existing lung, chronic liver disease and chronic kidney disease) and LTBI screening data (IGRA test result, HIV test result, hepatitis B and C serology results, electronic prescription for treatment and reason for referral to secondary care) were extracted from EMISWeb. The GP surgeries within Newham were categorised geographically into eight clusters responsible for the provision of care in that area, labelled Cluster 1–8. Dates when LTBI testing was offered, the IGRA result was logged in the GP data system and the electronic prescription for treatment was issued were validated against each other and errors were excluded.

Statistical analysis

Logistic regression was performed for three steps along the patient pathway: LTBI testing uptake, IGRA positivity and LTBI treatment uptake (table 2). We report on LTBI testing uptake, not coverage (defined as those who accepted test among those who were eligible for screening). Although coverage is important from a population perspective, we estimate these figures from cumulative area returns, as we do not hold individual level data and do not present these here as not deemed robust enough. Analysis on treatment completion was beyond the scope of this paper, due to LTBI treatment being dispensed through pharmacists and therefore the data on treatment outcome was held in another database that is not currently linked to the primary care GP data. Demographic characteristics, co-morbidities and GP categories were used to compare eligible individuals at each step and odds ratios were calculated. Three forward stepwise multivariable logistic regression models were created, and a p-value of <0.05 was used to retain the variable in the model.
TABLE 2

Definitions for steps along the patient pathway

Patient pathway stepDefinition
LTBI testing uptakeThe number of eligible individuals with an IGRA test result recorded among those who had been offered LTBI testing.
IGRA positivityThe number of eligible individuals with a positive IGRA test result among all with any IGRA test result.
LTBI treatment uptakeThe number of eligible individuals with a logged electronic prescription among of all with a positive IGRA test result.

LTBI: latent tuberculosis infection; IGRA: interferon-γ release assay.

Definitions for steps along the patient pathway LTBI: latent tuberculosis infection; IGRA: interferon-γ release assay. The time to take up LTBI testing was calculated as the time between the date that LTBI screening was offered and the date that the IGRA result was logged in the GP data system. Only individuals with an IGRA result were included in the LTBI testing delay analysis. LTBI testing delay was defined as more than 3 months between being offered LTBI testing and having the IGRA test done. The time to take up LTBI treatment was calculated using the time between the date that the IGRA result was logged and the date the electronic prescription for LTBI treatment was issued. Only those with an electronic prescription were included in the LTBI treatment delay analysis. LTBI treatment delay was defined as more than 1 month between having an IGRA test done and being prescribed LTBI treatment. Both LTBI testing and treatment delays were defined based on the distribution of the data and descriptively compared against demographic characteristics. Individuals missing required data to calculate delays were excluded from the analysis. There were no demographic differences between those with dates and those without. Demographic and GP factors were tested using univariable logistic regression to find associations with either LTBI testing delay or treatment delay. Data were managed and analysed using Excel (Microsoft; Redmond, WA, USA) and STATA 13 (Statacorp; College Station, TX, USA).

Results

In total, 5591 individuals were offered LTBI testing between August 2014 and August 2015 in the London Borough of Newham. Most individuals were aged 16–35 years (3968; 71.0%), were male (3028; 54.2%) and born in the Indian sub-continent (4387; 78.5%) (table 3). The five most common countries of birth of individuals offered LTBI testing were Bangladesh (1697; 30.3%), India (1684; 30.1%), Pakistan (851; 15.2%), Nigeria (351; 6.3%) and Somalia (189; 3.4%) (Appendix 1 in the supplementary file). 539 (9.6%) individuals offered LTBI testing had at least one co-morbidity and 840 (15.0%) were current smokers (table 3).
TABLE 3

Baseline characteristics of all individuals offered latent tuberculosis infection testing

n (%)
Age group
 <16 years44 (0.8)
 16–35 years3968 (71.0)
 36–50 years1344 (26.9)
 >50 years235 (1.4)
Sex
 Male3028 (54.2)
 Female2563 (45.8)
Region of birth
 East and South-East Asia137 (2.5)
 Eastern Europe8 (0.1)
 Northern Africa11 (0.2)
 Southern Asia4387 (78.5)
 Sub-Saharan Africa1048 (18.7)
Five most common countries of birth#
 Bangladesh1697 (30.4)
 India1684 (30.1)
 Pakistan851 (15.2)
 Nigeria351 (6.3)
 Somalia189 (3.4)
 Other819 (14.6)
Co-morbidities
 Immunosuppression1 (0.02)
 Diabetes mellitus287 (5.1)
 Pre-existing lung disease182 (3.3)
 Chronic liver disease89 (1.6)
 Chronic kidney disease25 (0.5)
 Any comorbidity539 (9.6)
Current smoker840 (15.0)

#: See appendix 1 in the online supplementary material for all countries of birth listed.

Baseline characteristics of all individuals offered latent tuberculosis infection testing #: See appendix 1 in the online supplementary material for all countries of birth listed.

LTBI testing uptake

Of those individuals offered LTBI testing, 2269 (40.6%) had an IGRA test done, 1254 (22.4%) declined LTBI testing and 2068 (37.0%) had no IGRA result recorded (figure 1). There were no demographic differences between those who had declined LTBI testing and those who had been offered but had no IGRA result; therefore, all were considered as not having an IGRA test for the purpose of the analysis. Overall, LTBI testing uptake was highly variable month to month during the time period (between 38.1% and 60.4%) and also varied by GP surgery with zero to 88.8% of individuals taking up LTBI testing. The multivariable model for LTBI testing uptake, which adjusted for age, sex and all significant variables from univariable analysis, showed that individuals from East and South-East Asia and from sub-Saharan Africa were significantly less likely to take up LTBI testing compared with individuals from the Indian sub-continent (aOR 0.6 (95% CI, 0.4–0.9) and aOR 0.7 (95% CI, 0.6–0.8) respectively) (table 4). Individuals who currently smoked were less likely to take up LTBI testing (aOR 0.8 (95% CI, 0.7–0.9)) and those with chronic liver disease were more likely to take up LTBI testing (aOR 1.6 (95% CI, 1.1–2.5)). Diabetes mellitus was not significant in the multivariable model because age was a confounding factor, as 77.4% of diabetics were more than 36 years old. We compared the multivariable model with and without age and could validate the odds ratio for LTBI testing uptake among diabetics and, although it is strongly influenced by age, diabetics are more likely to take up LTBI testing. The multivariable analysis was repeated excluding all individuals who were offered testing but had no IGRA result and the results were broadly similar.
TABLE 4

Logistic regression model for latent tuberculosis infection (LTBI) testing uptake, comparing individuals with an interferon-γ release assay (IGRA) test result (IGRA done) to individuals who were offered LTBI testing but had no recorded IGRA test result (IGRA not done)

CharacteristicIGRA not done n (%#)IGRA done n (%#)Chi-squared p-valueUnivariable analysisMultivariable analysis
OR95% CIp-valueaOR95% CIp-valueLikelihood ratio
Age group0.002
 <16 years26 (59.1)18 (40.9)1.10.6–1.90.91.10.6–2.00.7
 16–35 years2396 (60.4)1572 (39.6)Comparison groupComparison group
 36–50 years788 (58.6)556 (41.4)1.10.9–1.20.21.11–1.30.03
 >50 years112 (47.7)123 (52.3)1.71.3–2.2<0.0011.81.4–2.4<0.001
Sex0.8
 Female1527 (59.6)1036 (40.4)Comparison groupComparison group
 Male1795 (59.3)1233 (40.7)1.010.9–1.10.810.9–1.10.80.8523
Region of birth<0.001
 East and South-East Asia99 (72.3)38 (27.7)0.50.3–0.70.0010.60.4–0.90.02
 Eastern Europe3 (37.5)5 (62.5)2.20.5–9.30.32.50.6–10.50.2
 Northern Africa and Middle East7 (63.6)4 (36.4)0.80.2–2.60.70.70.2–2.50.6
 Southern Asia2512 (57.3)1875 (42.7)Comparison groupComparison group
 Sub-Saharan Africa701 (66.9)347 (33.1)0.60.6–0.8<0.0010.70.6–0.8<0.001<0.001
BCG0.2
 No3299 (59.5)2246 (40.5)Comparison group
 Yes23 (50.0)23 (50.0)1.50.8–2.60.2
Immunosuppression0.4
 No3321 (59.4)2269 (40.6)Comparison group
 Yes1 (100.0)0 (0.0)n/an/an/a
Diabetes mellitus0.04
 No3168 (59.7)2136 (40.3)Comparison groupComparison group
 Yes154 (53.7)133 (46.3)1.31–1.60.041.040.8–1.30.80.7134
Pre-existing lung disease0.98
 No3214 (59.4)2195 (40.6)Comparison group
 Yes108 (59.3)74 (40.7)10.7–1.30.98
Chronic liver disease0.03
 No3279 (59.6)2223 (40.4)Comparison groupComparison group
 Yes43 (48.3)46 (51.7)1.61.04–2.40.031.61.1–2.50.020.0341
Chronic kidney disease0.6
 No3306 (59.4)2260 (40.6)Comparison group
 Yes16 (64.0)9 (36.0)0.80.4–1.90.6
Current smoker0.006
 No2787 (58.7)1964 (41.3)Comparison groupComparison group
 Yes535 (63.7)305 (36.3)0.80.7–0.90.0060.80.7–0.90.010.0031
General practice group<0.001
 Cluster 1930 (67.9)440 (32.1)Comparison groupComparison group
 Cluster2258 (63.2)150 (36.8)1.21.0–1.50.081.21.0–1.50.09
 Cluster 3412 (50.7)401 (49.3)2.11.7–2.5<0.0012.01.7–2.4<0.001
 Cluster 4463 (49.4)475 (50.6)2.21.8–2.6<0.0012.11.8–2.5<0.001
 Cluster 5512 (62.6)306 (37.4)1.31.1–1.50.011.31.1–1.60.006
 Cluster 6285 (51.6)267 (48.4)2.01.6–2.4<0.0012.01.6–2.5<0.001
 Cluster 7287 (70.7)119 (29.3)0.90.7–1.10.30.90.7–1.20.7
 Cluster 8131 (61.2)83 (38.8)1.31.0–1.80.051.51.1–2.00.01<0.001

#: proportions calculated out of each characteristic as row proportions.

Logistic regression model for latent tuberculosis infection (LTBI) testing uptake, comparing individuals with an interferon-γ release assay (IGRA) test result (IGRA done) to individuals who were offered LTBI testing but had no recorded IGRA test result (IGRA not done) #: proportions calculated out of each characteristic as row proportions. The median (interquartile range) time to take up LTBI testing was 1.5 (0.4–3.4) months; almost half (46.8%) of those who accepted LTBI testing had a delay of more than 1 month and 24.9% had a delay of more than 3 months. There were no significant differences in demographic characteristics between those that had a testing delay of less than 3 months and more than 3 months, and no difference in testing delay by IGRA result. The proportion of cases that experienced a testing delay varied by GP surgery from 0 to 100% experiencing a delay of more than 3 months. Among the eight GP surgery clusters, Cluster 3 had a significantly higher proportion of individuals who experienced a testing delay compared to Cluster 1, which offered the highest number of IGRA tests (OR 1.8 (95% CI, 1.1–2.8)) (table 5).
TABLE 5

Latent tuberculosis infection (LTBI) screening and treatment referral uptake delays by general practice surgery cluster

General practice clusterGeneral practice surgeries nAverage practice list size nDelay between LTBI test offered and IGRA test doneDelay between IGRA test done and treatment referral
<3 months n (%#)>3 months n (%#)Univariable analysis<1 month>1 monthUnivariable analysis
OR95% CIp-valuen (%#)n (%#)OR95% CIp-value
Cluster 187620164 (74.2)57 (25.8)Comparison group73 (82.9)15 (17.1)Comparison group
Cluster 26642252 (80.0)13 (20.0)0.70.4–1.40.322 (88.0)3 (12.0)0.70.2–2.50.5
Cluster 383618167 (82.3)36 (17.7)0.60.4–1.00.0540 (52.6)36 (47.4)4.42.1–9.0<0.001
Cluster 47700275 (62.0)46 (38.0)1.81.1–2.80.0240 (64.5)22 (35.5)2.71.2–5.70.01
Cluster 511674044 (67.7)21 (32.3)1.40.7–2.50.329 (46.8)33 (53.2)5.52.6–11.7<0.001
Cluster 66703461 (69.3)27 (30.7)1.30.7–2.20.436 (66.7)18 (33.3)2.41.1–5.40.03
Cluster 76687038 (82.6)8 (17.4)0.60.3–1.40.228 (82.3)6 (17.7)10.4–3.00.9
Cluster 84985845 (90.0)5 (10.0)0.30.1–0.80.027 (87.5)1 (12.5)0.70.1–6.10.7

#: Proportions calculated out of each general practice cluster as row proportions. IGRA: interferon-γ release assay.

Latent tuberculosis infection (LTBI) screening and treatment referral uptake delays by general practice surgery cluster #: Proportions calculated out of each general practice cluster as row proportions. IGRA: interferon-γ release assay.

IGRA test positivity

A total of 719 (31.7%) individuals tested positive by IGRA, 1545 (68.1%) had a negative result and five (0.2%) had an indeterminate result (figure 1). IGRA positivity increased with age: 25.8% among 16–35 year olds, 45.4% in 36–50 year olds and 51.2% in those over 50 years old. The multivariable model showed that males, those aged over 36 years old, those born in sub-Saharan Africa and individuals with diabetes mellitus were significantly more likely to test positive after adjusting for sex, age and significant variables from the univariable analysis (aOR 1.4 (95% CI, 1.2–1.7), aOR 2.1 (95%CI, 1.7–2.6), aOR 2.5 (95% CI, 1.7–3.7), aOR 1.6 (95% CI, 1.3–2.1), aOR 1.6 (95% CI, 1.1–2.3)) (table 6). Positive Bacillus Calmette–Guérin vaccination status was inversely correlated with IGRA positivity (OR 0.2 (95% CI, 0.1–0.9)).
TABLE 6

Logistic regression model for interferon-γ release assay (IGRA) test positivity, comparing individuals with a positive IGRA test result to individuals with a negative IGRA test result

CharacteristicIGRA negativeIGRA positiveChi-squaredUnivariable analysisMultivariable analysis
n (%#)n (%#)p valueOR95% CIp valueaOR95% CIp valueLikelihood ratio
Age group<0.001
 <1618 (100.0)0 (0.0)
 16–351166 (74.2)406 (25.8)Comparison groupComparison group
 36–50301 (54.6)250 (45.4)2.41.9–2.9<0.0012.11.7–2.6<0.001
 >5060 (48.8)63 (51.2)3.02.1–4.4<0.0012.51.7–3.7<0.001
Sex<0.001
 Female748 (72.3)286 (27.7)Comparison groupComparison group
 Male797 (64.8)433 (35.2)1.41.2–1.7<0.0011.41.2–1.7<0.0010.0010
Region of birth
 East and South East Asia27 (71.1)11 (28.9)0.960.5–2.00.90.80.4–1.70.6
 Eastern Europe2 (40.0)3 (60.0)3.50.6–21.20.24.40.7–27.40.1
 Northern Africa and Middle East3 (75.0)1 (25.0)0.80.1–7.60.80.60.06–6.40.7
 Southern Asia1314 (70.2)557 (29.8)Comparison groupComparison group
 Sub-Saharan Africa199 (57.5)147 (42.5)1.71.4–2.2<0.0011.61.3–2.1<0.0010.0010
BCG0.02
 No1525 (68.0)717 (32.0)Comparison groupComparison group
 Yes20 (90.9)2 (9.1)0.20.1–0.90.040.40.1–1.70.20.0946
Diabetes mellitus<0.001
 No1479 (69.4)653 (30.6)Comparison groupComparison group
 Yes66 (50.0)66 (50.0)2.31.6–3.2<0.0011.61.1–2.30.020.0240
Pre-existing lung disease0.4
 No1498 (68.4)692 (31.6)Comparison groupComparison group
 Yes47 (63.5)27 (36.5)1.20.8–2.00.41.040.6–1.70.90.8406
Chronic liver disease0.003
 No1524 (68.7)695 (31.3)Comparison groupComparison group
 Yes21 (46.7)24 (53.3)2.51.4–4.50.0021.81.0–3.40.060.0728
Chronic kidney disease0.1
 No1541 (68.3)714 (31.7)Comparison groupComparison group
 Yes4 (44.4)5 (55.6)2.70.7–10.10.11.50.4–5.70.60.5764
Current smoker0.8
 No1336 (68.2)624 (31.8)Comparison group
 Yes209 (68.8)95 (31.2)0.970.8–1.30.8

#: Proportions calculated out of each characteristic as row proportions.

Logistic regression model for interferon-γ release assay (IGRA) test positivity, comparing individuals with a positive IGRA test result to individuals with a negative IGRA test result #: Proportions calculated out of each characteristic as row proportions.

LTBI treatment uptake

Among individuals with a positive IGRA result, 616 (85.7%) had attended a GP consultation to rule-out active TB (figure 1). Overall 83 individuals were referred to the TB clinic for specialist care because of HIV (two individuals), hepatitis C (three) or hepatitis B (six) co-infection, or due to suspected active TB in individuals with at least one TB-related symptom (22) or an abnormal chest radiograph (five). The majority (40) of referred cases did not have a reason for referral recorded. Among those referred, a total of 11 active TB cases were notified, which accounts for a detection rate of 484.8 per 100 000 individuals screened. In total 449 (62.5%) of those with a positive IGRA test took up LTBI treatment. LTBI treatment uptake varied between 37.5% in August 2014 and 58.5% in July 2015; however, the increase was not significant (p=0.1). No demographic or clinical factors were significantly associated with individuals being prescribed treatment over those that were not prescribed treatment (table 7). Although not significant, a higher proportion of men with an IGRA positive result were prescribed treatment, which may in part be due to pregnant women with a positive IGRA result not being prescribed treatment. Treatment uptake varied by GP surgery from 0 to 100% of LTBI cases taking up treatment. Accounting for demographic and clinical factors, GP surgery clusters 3 and 4 were significantly less likely to prescribe treatment compared with the GP cluster 1 ((aOR 0.6 (95% CI, 0.3–0.9) and aOR 0.3 (95% CI, 0.2–0.5)).
TABLE 7

Logistic regression model for latent tuberculosis infection (LTBI) treatment prescription uptake, comparing individuals with a positive interferon-γ release assay (IGRA) test result who had an electronic prescription for LTBI treatment to those who did not have an electronic prescription

CharacteristicNo treatment prescribed n (%#)Treatment prescribed n (%#)Chi-squared p valueUnivariable analysisMultivariable analysis
OR95% CIp valueOR95% CIp value
Age group0.6
 <160 (0)0 (0)
 16–35115 (38.2)251 (61.8)Comparison groupComparison group
 36–5089 (35.6)161 (64.4)1.10.8–1.50.51.00.7–1.50.8
 >5026 (41.3)37 (58.7)0.90.5–1.50.60.90.5–1.60.6
Sex0.07
 female119 (41.6)167 (58.4)Comparison groupComparison group
 male151 (34.9)282 (65.1)1.30.9–1.80.071.41.0–2.00.06
Region of birth0.7
 East and South East Asia5 (45.5)6 (54.5)0.70.2–2.30.60.50.1–1.70.3
 Eastern Europe2 (66.7)1 (33.3)0.30.03–3.30.30.30.02–3.20.3
 Northern Africa and Middle East0 (0.0)1 (100.0)------
 Southern Asia207 (37.2)350 (62.8)Comparison groupComparison group
 Sub-saharan Africa56 (38.1)91 (61.9)0.90.7–1.40.80.90.6–1.40.5
BCG0.7
 no269 (37.5)448 (62.5)Comparison groupComparison group
 yes1 (50.0)1 (50.0)0.60.04–9.60.700.30.02–5.70.4
Diabetes mellitus0.4
 no242 (37.1)411 (62.9)Comparison groupComparison group
 yes28 (42.4)38 (57.6)0.80.5–1.30.40.80.4–1.30.4
Pre-existing lung disease0.9
 no260 (37.6)432 (62.4)Comparison groupComparison group
 yes10 (37.0)17 (63.0)1.00.5–2.30.91.00.4–2.20.9
Chronic liver disease0.2
 no258 (37.1)437 (62.9)Comparison groupComparison group
 yes12 (50.0)12 (50.0)0.60.3–1.30.20.50.2–1.30.2
Chronic kidney disease0.9
 no268 (37.5)446 (62.5)Comparison groupComparison group
 yes2 (40.0)3 (60.0)0.90.1–5.40.90.90.1–5.90.9
Current smoker0.3
 no239 (38.3)385 (61.7)Comparison groupComparison group
 yes31 (32.6)64 (67.4)1.30.8–2.00.3001.10.7–1.80.7
GP Practice group<0.001
 Cluster 137 (28.0)95 (72.0)Comparison groupComparison group
 Cluster 211 (29.0)27 (71.0)0.90.4–2.10.90.90.4–2.00.8
 Cluster 353 (38.7)84 (61.3)0.60.4–1.00.060.60.3–0.90.03
 Cluster 482 (55.0)67 (45.0)0.30.2–0.5<0.0010.30.2–0.5<0.001
 Cluster 532 (34.0)62 (66.0)0.80.4–1.30.30.70.4–1.20.2
 Cluster 625 (31.7)54 (68.3)0.80.4–1.50.60.80.4–1.40.4
 Cluster 718 (31.6)39 (68.4)0.80.4–1.60.60.90.4–1.80.8
 Cluster 85 (33.3)10 (66.7)0.80.2–2.40.70.80.2–2.60.7

#: Proportions calculated out of each characteristic as row proportions.

Logistic regression model for latent tuberculosis infection (LTBI) treatment prescription uptake, comparing individuals with a positive interferon-γ release assay (IGRA) test result who had an electronic prescription for LTBI treatment to those who did not have an electronic prescription #: Proportions calculated out of each characteristic as row proportions. The median (interquartile range) time to take up treatment for individuals with a positive IGRA result was 17 (0–40) days. 138 (32.9%) individuals had a LTBI treatment delay of more than 1 month. There were no demographic or clinical factors associated with treatment delay. However, the proportion of cases that experienced treatment delay varied by GP surgery from 0 to 100%. Among the eight clusters of GP surgeries, four had a significantly higher proportion of LTBI cases who experienced a treatment delay of more than 1 month when compared with GP cluster 1 (table 5).

Discussion

This paper reports on the first year of a large community-based LTBI testing and treatment programme in the London borough of Newham. Overall screening uptake was low but we identified key demographic, clinical and provider factors associated with low uptake and therefore, lessons learned from Newham contain important policy implications for the implementation of LTBI testing and treatment in England and other low TB incidence countries. Overall, less than half of the eligible population were tested for LTBI during the first year of the programme in Newham. A similarly large drop-off at this stage of the LTBI cascade of care was reported in a recent systematic review [16]. IGRA positivity was 32% in our study partly due to the inclusion of an older population in the first year of the pilot but also because the targeted population were screened based on country of birth. In this respect, our study was similar to other studies among migrant populations, where IGRA positivity varied between 25% and 30% and having LTBI was associated with increasing in-country TB incidence and age [17-20]. Overall, LTBI screening uptake and IGRA positivity were associated with demographic, clinical and provider related factors, whereas LTBI treatment uptake was exclusively provider-dependent and varied greatly by GP surgery. Our study also identified 11 active TB cases, which demonstrates the potential for LTBI screening programmes to have a larger impact on reducing further transmission of TB, thus reducing significant morbidity and mortality. We examined factors associated with LTBI testing uptake, which may allow for more targeted interventions to increase acceptance of the programme. Country of birth was an important influencing factor for both LTBI testing uptake and IGRA positivity because individuals from sub-Saharan Africa were less likely to take up testing whilst having a higher IGRA test positivity. This demonstrates the need for targeted interventions for the most at-risk patient populations. In the literature small-scale, setting-specific studies on LTBI screening have been described and systematic reviews on LTBI treatment uptake and completion have shown varied associations with migrant or refugee populations [21,22]. We are not aware of any other study which has examined additional demographics such as country of birth in detail, however other disease screening initiatives such as HPV vaccination [23] and HIV testing [24] have demonstrated similar differences among ethnic minorities. Pre-existing health conditions may influence LTBI testing uptake. Individuals with diabetes mellitus or chronic liver disease were more likely to take up LTBI testing when offered. This may be because these individuals know they are at higher risk of progression from LTBI to active TB, and increased access to care through monitoring of their diabetes, which in turn influence health-seeking behaviour [25-27]. Populations with co-morbidities have been found in other studies to have higher LTBI treatment completion rates when compared with other populations, which could indicate greater concern about their own health or better access to care for persons with chronic conditions [16,22]. Older individuals were also more likely to take up LTBI testing and had higher IGRA positivity which may be confounded by older individuals having more co-morbidities, but may also be influenced by similar health-seeking behaviour. Conversely, other studies have shown that current smokers or individuals with social risk factors, such as homelessness, injecting drug use and/or alcohol use are less likely to adhere to LTBI treatment, which supports our finding that current smokers were less likely to take up LTBI testing and suggests that health-seeking behaviours and access to care play an important role in LTBI testing and treatment programmes [21,22,28]. We tested all demographic and clinical factors and found no correlation with treatment uptake; however, the same model showed that treatment uptake varied widely by GP surgery and several geographic GP clusters were more likely to prescribe LTBI treatment than others. This association with providers can be explained by the differences in treatment delay, as GP surgeries that had longer treatment delays also had patients who were less likely to take up treatment. LTBI testing and treatment programmes in primary care can be complex and require training and incentives for GPs. A recent survey of GPs in England to find the enablers and barriers to testing and treating LTBI in primary care also confirmed the importance of training health care staff to feel confident in their work [29]. Training is provided to all GPs involved in the Newham LTBI screening programme and is mandatory for them to attend in order to stay in the programme; however, it is possible that implementation of the programme may differ based on available resources to offer screening, availability of appointments to offer treatment, knowledge, skills and beliefs. This study demonstrates the importance of identifying practices and clusters of practices with poorer treatment uptake in order to more closely engage them in training and support activities. A higher proportion of men were prescribed LTBI treatment compared with women, which is most likely due to the fact that pregnant women were not offered treatment until post-partum, as specified by the early screening rules of the pilot site. Early results from this study demonstrating the risk of lower uptake of women in childbearing age informed a revision of the pathway to allow for screening of pregnant women and a call–recall system for treatment after pregnancy. This study has several limitations. We present observational data, where data collection was not mandatory. This could have led to missing data and potential loss of statistical power for some analysis. We analysed and compared the baseline characteristics of those with complete records and with missing data and found these were broadly comparable; we think it likely that data were missing at random, not introducing bias. There may have also been coding errors used for categorising the co-morbidities; however, we do not think this has an effect in the analysis because there were no systematic errors found in the data. As this was an observational study, it is possible, that not all IGRA test results were recorded, which could have decreased the LTBI testing uptake rate and could have resulted in an overestimation of IGRA positivity if negative results were not recorded. However, we have no evidence for systematic under-recording by demographic or provider characteristics. Another limitation was that we were not able to report on LTBI screening coverage or on treatment outcomes, which were out of scope for this paper; however, the absence of these indicators does not affect the validity of our findings from the screening pathway. In conclusion, our evaluation of the LTBI testing and treatment project in Newham illustrates the feasibility and acceptability of primary-care based LTBI screening and treatment programmes. Our study shows that particular migrant population groups require more patient engagement to ensure high testing and treatment uptake particularly if uptake is low and/or LTBI positivity is high. This study also showed the immediate impact that LTBI screening programmes have on TB control by identifying active TB cases earlier, reducing further transmission. The testing and treatment delays found in this pilot were high and possibly adversely impacted on uptake. The innovative approach to LTBI screening through primary-care registrations has many positive implications on increasing accessibility within most migrant communities, however, special programmes are needed to meet the needs of undocumented migrants, asylum seekers, refugees and other underserved populations who may not engage with health services and therefore are missed by this programme. Whilst this paper identifies important factors related to LTBI testing and treatment uptake, larger studies are urgently needed to better understand the barriers and enablers to this intervention in order for it to effectively contribute to TB elimination worldwide. Please note: supplementary material is not edited by the Editorial Office, and is uploaded as it has been supplied by the author. Appendix 1. Country of birth for all patients offered LTBI testing. ERJ-01226-2017_Appendix
  22 in total

1.  Implementing and expanding HIV testing in immigrant populations in Europe: Comparing guideline's recommendations and expert's opinions.

Authors:  Débora Álvarez-Del Arco; Susana Monge; Yaiza Rivero-Montesdeoca; Fiona Burns; Teymur Noori; Julia Del Amo
Journal:  Enferm Infecc Microbiol Clin       Date:  2015-10-17       Impact factor: 1.731

2.  The effectiveness of primary care based risk stratification for targeted latent tuberculosis infection screening in recent immigrants to the UK: a retrospective cohort study.

Authors:  Rakesh K Panchal; Ivan Browne; Philip Monk; Gerrit Woltmann; Pranabashis Haldar
Journal:  Thorax       Date:  2013-11-19       Impact factor: 9.139

Review 3.  The cascade of care in diagnosis and treatment of latent tuberculosis infection: a systematic review and meta-analysis.

Authors:  Hannah Alsdurf; Philip C Hill; Alberto Matteelli; Haileyesus Getahun; Dick Menzies
Journal:  Lancet Infect Dis       Date:  2016-08-10       Impact factor: 25.071

4.  Estimating the burden of tuberculosis among foreign-born persons acquired prior to entering the U.S., 2005-2009.

Authors:  Philip M Ricks; Kevin P Cain; John E Oeltmann; J Steve Kammerer; Patrick K Moonan
Journal:  PLoS One       Date:  2011-11-29       Impact factor: 3.240

Review 5.  A scoping review of cost-effectiveness of screening and treatment for latent tubercolosis infection in migrants from high-incidence countries.

Authors:  Lorenzo Zammarchi; Gianluigi Casadei; Marianne Strohmeyer; Filippo Bartalesi; Carola Liendo; Alberto Matteelli; Maurizio Bonati; Eduardo Gotuzzo; Alessandro Bartoloni
Journal:  BMC Health Serv Res       Date:  2015-09-24       Impact factor: 2.655

Review 6.  Management of latent Mycobacterium tuberculosis infection: WHO guidelines for low tuberculosis burden countries.

Authors:  Haileyesus Getahun; Alberto Matteelli; Ibrahim Abubakar; Mohamed Abdel Aziz; Annabel Baddeley; Draurio Barreira; Saskia Den Boon; Susana Marta Borroto Gutierrez; Judith Bruchfeld; Erlina Burhan; Solange Cavalcante; Rolando Cedillos; Richard Chaisson; Cynthia Bin-Eng Chee; Lucy Chesire; Elizabeth Corbett; Masoud Dara; Justin Denholm; Gerard de Vries; Dennis Falzon; Nathan Ford; Margaret Gale-Rowe; Chris Gilpin; Enrico Girardi; Un-Yeong Go; Darshini Govindasamy; Alison D Grant; Malgorzata Grzemska; Ross Harris; C Robert Horsburgh; Asker Ismayilov; Ernesto Jaramillo; Sandra Kik; Katharina Kranzer; Christian Lienhardt; Philip LoBue; Knut Lönnroth; Guy Marks; Dick Menzies; Giovanni Battista Migliori; Davide Mosca; Ya Diul Mukadi; Alwyn Mwinga; Lisa Nelson; Nobuyuki Nishikiori; Anouk Oordt-Speets; Molebogeng Xheedha Rangaka; Andreas Reis; Lisa Rotz; Andreas Sandgren; Monica Sañé Schepisi; Holger J Schünemann; Surender Kumar Sharma; Giovanni Sotgiu; Helen R Stagg; Timothy R Sterling; Tamara Tayeb; Mukund Uplekar; Marieke J van der Werf; Wim Vandevelde; Femke van Kessel; Anna van't Hoog; Jay K Varma; Natalia Vezhnina; Constantia Voniatis; Marije Vonk Noordegraaf-Schouten; Diana Weil; Karin Weyer; Robert John Wilkinson; Takashi Yoshiyama; Jean Pierre Zellweger; Mario Raviglione
Journal:  Eur Respir J       Date:  2015-09-24       Impact factor: 16.671

Review 7.  Diabetes mellitus increases the risk of active tuberculosis: a systematic review of 13 observational studies.

Authors:  Christie Y Jeon; Megan B Murray
Journal:  PLoS Med       Date:  2008-07-15       Impact factor: 11.069

Review 8.  Interventions for improving adherence to treatment for latent tuberculosis infection: a systematic review.

Authors:  Anke L Stuurman; Marije Vonk Noordegraaf-Schouten; Femke van Kessel; Anouk M Oordt-Speets; Andreas Sandgren; Marieke J van der Werf
Journal:  BMC Infect Dis       Date:  2016-06-08       Impact factor: 3.090

9.  Initiation and completion rates for latent tuberculosis infection treatment: a systematic review.

Authors:  Andreas Sandgren; Marije Vonk Noordegraaf-Schouten; Femke van Kessel; Anke Stuurman; Anouk Oordt-Speets; Marieke J van der Werf
Journal:  BMC Infect Dis       Date:  2016-05-17       Impact factor: 3.090

Review 10.  Improving tuberculosis prevention and care through addressing the global diabetes epidemic: from evidence to policy and practice.

Authors:  Knut Lönnroth; Gojka Roglic; Anthony D Harries
Journal:  Lancet Diabetes Endocrinol       Date:  2014-09       Impact factor: 32.069

View more
  6 in total

1.  Delivering multi-disease screening to migrants for latent TB and blood-borne viruses in an emergency department setting: A feasibility study.

Authors:  Sally Hargreaves; Laura B Nellums; Catherine Johnson; Jacob Goldberg; Panagiotis Pantelidis; Asif Rahman; Jon S Friedland FMedSci
Journal:  Travel Med Infect Dis       Date:  2020-02-29       Impact factor: 6.211

Review 2.  A scoping review of paediatric latent tuberculosis infection care cascades: initial steps are lacking.

Authors:  Jeffrey I Campbell; Thomas J Sandora; Jessica E Haberer
Journal:  BMJ Glob Health       Date:  2021-05

3.  A feasibility study evaluating the uptake, effectiveness and acceptability of routine screening of pregnant migrants for latent tuberculosis infection in antenatal care: a research protocol.

Authors:  A Rahman; Shakila Thangaratinam; Andrew Copas; D Zenner; Peter J White; Chris Griffiths; Ibrahim Abubakar; Christine McCourt; Heinke Kunst
Journal:  BMJ Open       Date:  2022-04-04       Impact factor: 3.006

Review 4.  Screening for neglected tropical diseases and other infections in refugee and asylum-seeker populations in the United Kingdom.

Authors:  Paola Cinardo; Olivia Farrant; Kimberlee Gunn; Allison Ward; Sarah Eisen; Nicky Longley
Journal:  Ther Adv Infect Dis       Date:  2022-08-06

5.  Initiation and completion of treatment for latent tuberculosis infection in migrants globally: a systematic review and meta-analysis.

Authors:  Kieran Rustage; Jessica Lobe; Sally E Hayward; Kristina L Kristensen; Ioana Margineanu; Ymkje Stienstra; Delia Goletti; Dominik Zenner; Teymur Noori; Manish Pareek; Christina Greenaway; Jon S Friedland; Laura B Nellums; Sally Hargreaves
Journal:  Lancet Infect Dis       Date:  2021-08-04       Impact factor: 25.071

6.  Protocol for a cluster randomised control trial evaluating the efficacy and safety of treatment for latent tuberculosis infection in recent migrants within primary care: the CATAPuLT trial.

Authors:  M Burman; A Copas; D Zenner; V Hickson; L Gosce; D Trathen; R Ashcroft; A R Martineau; I Abubakar; C Griffiths; H Kunst
Journal:  BMC Public Health       Date:  2019-11-29       Impact factor: 3.295

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.