Literature DB >> 25134101

Quantification of risk factors for herpes zoster: population based case-control study.

Harriet J Forbes1, Krishnan Bhaskaran2, Sara L Thomas2, Liam Smeeth2, Tim Clayton2, Sinéad M Langan2.   

Abstract

OBJECTIVES: To quantify the effects of possible risk factors for herpes zoster at different ages.
DESIGN: Case-control study.
SETTING: UK Clinical Practice Research Datalink primary care data. PARTICIPANTS: 144 959 adults diagnosed with zoster between 2000 and 2011; 549,336 age, sex, and practice matched controls. MAIN OUTCOME MEASURES: Conditional logistic regression was used to generate adjusted odds ratios to estimate the strength of association of each potential risk factor with zoster and assess effect modification by age.
RESULTS: The median age of the cases and controls was 62 years. Factors associated with increased risk of zoster included rheumatoid arthritis (3111 (2.1%) v 8029 (1.5%); adjusted odds ratio 1.46, 99% confidence interval 1.38 to 1.55), inflammatory bowel disease (1851 (1.3%) v 5118 (0.9%); 1.36, 1.26 to 1.46), chronic obstructive pulmonary disease (6815 (4.7%) v 20 201 (3.7%); 1.32, 1.27 to 1.37), asthma (10 243 (7.1%) v 31 865 (5.8%); 1.21, 1.17 to 1.25), chronic kidney disease (8724 (6.0%) v 29 437 (5.4%); 1.14, 1.09 to 1.18), and depression (6830 (4.7%) v 22 052 (4.0%); 1.15, 1.10 to 1.20). Type 1, but not type 2, diabetes showed some association with zoster (adjusted odds ratio 1.27, 1.07 to 1.50). The relative effects of many assessed risk factors were larger in younger patients. Patients with severely immunosuppressive conditions were at greatest risk of zoster-for example, patients with lymphoma (adjusted odds ratio 3.90, 3.21 to 4.74) and myeloma (2.16, 1.84 to 2.53), who are not eligible for zoster vaccination.
CONCLUSIONS: A range of conditions were associated with increased risk of zoster. In general, the increased risk was proportionally greater in younger age groups. Current vaccines are contraindicated in people at the greatest risk of zoster, highlighting the need for alternative risk reduction strategies in these groups. © Forbes et al 2014.

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Year:  2014        PMID: 25134101      PMCID: PMC4019782          DOI: 10.1136/bmj.g2911

Source DB:  PubMed          Journal:  BMJ        ISSN: 0959-8138


Introduction

Herpes zoster (commonly known as shingles) is caused by the reactivation of latent varicella zoster virus when specific cell mediated immunity becomes compromised. It is a common disease in older people,1 with a lifetime risk of up to 30% rising to 50% among those living to 85 years.2 Zoster typically presents as a painful unilateral vesicular dermatomal rash that causes acute morbidity lasting two to four weeks.3 A severe complication—postherpetic neuralgia—although uncommon in patients aged under 50, develops in 12% of zoster patients aged 50 years or over1 4; it causes intense pain that can last from months to years and is associated with considerable impairment of quality of life. A live vaccine that reduces the risk of zoster and postherpetic neuralgia has recently been developed.4 The vaccine is licensed in peoople aged over 50 years. In the United States and Australia, it is recommended in people aged 60 years or over. In the United Kingdom, it is routinely available for patients aged 70, with a catch-up campaign for 72-79 year olds (on the basis of cost effectiveness studies5); the current catch-up cohort is those aged 79. Table 1 shows some examples of recommedations on vaccination in major countries. As the zoster vaccine is expensive, targeting vaccination towards groups at high risk of zoster is necessary. Age is the most important risk factor for zoster and postherpetic neuralgia, so it drives vaccination policies. The incidence of zoster rises from 3.5 per 1000 person years among 50-54 year olds to 7.1 per 1000 person years among 75-79 year olds in the UK.6 However, whether people with other risk factors, particuarly in younger age groups, might also benefit from vaccination is not clear.
Table 1

Vaccine recommendations in United Kingdom, United States, Canada, Australia, and Sweden

CountryGroups recommended to receive vaccineContraindications
United KingdomPeople aged 70 years, with catch-up campaign for 72-79 year olds (current catch-up cohort is 79 year olds)People with primary or acquired immunodeficiency state; active untreated tuberculosis infection; confirmed anaphylactic reaction to previous dose of varicella vaccine or any component of vaccine; pregnant women; people receiving immunosuppressive treatment (including high dose corticosteroids)
United StatesRecommended for people aged ≥60 yearsPeople with history of anaphylactic/anaphylactoid reaction to any component of vaccine; history of primary or acquired immunodeficiency state; people receiving immunosuppressive treatment, including high dose corticosteroids; women who are or may be pregnant
CanadaRecommended for people aged ≥60 years; also available for those aged 50-59 yearsPeople with anaphylactic hypersensitivity to any of vaccine’s componenets; congenital or acquired immune deficiency; active untreated tuberculosis; use of immune suppressive drugs; pregnant women; people with certain acute illnesses
AustraliaRecommended for people aged ≥60 years; also available for those aged 50-59 yearsPeople with anaphylactic hypersensitivity to any of vaccine’s componenets; those receiving high dose systemic immunosuppressive treatment (such as chemotherapy, radiation therapy, or oral corticosteroids); people with malignant conditions of reticuloendothelial system; any person with similar immunosuppression due to disease or treatment
SwedenRecommended for people aged ≥50 yearsPeople with weakened immune systems due to drug treatment or other health conditions; allergy to gelatin or neomycin; moderate or severe illness; women who are or may be pregnant
Vaccine recommendations in United Kingdom, United States, Canada, Australia, and Sweden Several clinical conditions not listed as contraindications for the zoster vaccine have been associated in some studies with an increased risk of zoster; these include autoimmune conditions such as rheumatoid arthritis,7 systemic lupus erythematosus,8 and inflammatory bowel disease,9 and chronic conditions such as diabetes mellitus,10 11 chronic obstructive pulmonary disease,11 12 chronic kidney disease,13 14 15 asthma,16 and depression.2 17 Large, adequately powered studies investigating the association of these conditions with zoster are lacking. This study therefore aimed to quantify the effects of various proposed risk factors for zoster and explore whether their effects differ by age group, to help to identify any groups of patients at high risk who are not currently targeted for vaccination. We aimed to add to the existing literature by using a very large data source and a consistent methodological approach to help comparison between various risk factors.

Methods

We did a matched case-control study to quantify the effects of a range of individual level factors on the risk of zoster in a general population.

Data source

This study used data from the UK Clinical Practice Research Datalink, a primary care database of anonymised patients’ records containing complete prescribing and diagnostic information and feedback from hospital referrals. Clinical diagnoses are coded in the Clinical Practice Research Datalink with Read codes.18 It is one of the largest sources of continuous patients’ records in the world, containing data on approximately 7% of the UK population, and is broadly representative of patients’ and practices’ characteristics in the UK.19 Sixty per cent of patients in the Clinical Practice Research Datalink have data available in the Hospital Episode Statistics database, which is a linked computerised database of hospital attendances in England from 1997.

Selection of cases

The base study population consisted of all patients aged 18 years or over, under follow-up between 1 January 2000 and 31 December 2011, with no evidence of previous zoster (no codes for zoster or postherpetic neuralgia before the start of follow-up). We identified zoster cases by using the Clinical Practice Research Datalink and Hospital Episodes Statistics. Cases in the Clinical Practice Research Datalink were those with a zoster Read code and at least 12 months’ follow-up before a first diagnosis of zoster, to exclude past cases of zoster recorded retrospectively after registration at a general practice.20 Incident zoster in Hospital Episodes Statistics was identified by ICD-10 (international classification of diseases, 10th revision) codes (B02, B02.0, B02.1, B02.31, B02.7, B02.8, B02.9, G53.0) that appeared in the primary diagnosis field; we excluded patients with these codes recorded in secondary diagnosis fields, as this could reflect either incident zoster or sequelae of past zoster. For cases identified in Hospital Episodes Statistics, we took the date of hospital admission as the index date. If zoster was identified in both Hospital Episodes Statistics and the Clinical Practice Research Datalink, we took the earliest recorded zoster diagnosis as the index date.

Selection of controls

We identified all potential controls for each case and used incidence density sampling to select up to four controls per case at random.21 Controls were registered with the practice at the index date of the case and for at least 12 months before and were matched to cases by practice, sex, and age (within 1 year). We selected controls before their exposure status for other risk factors was known. By matching on practice, we controlled for practice level socioeconomic status. Controls took the index date of their matched case. Controls had no history of zoster or postherpetic neuralgia at the index date, but they could go on to have zoster and therefore also be included as a case.22 Controls with no contact with their practice (that is, no consultation record of any kind, including repeat prescriptions and face to face or telephone consultations) any time from six months before to 12 months after the index date were assumed inactive in the database and excluded.

Risk factors

Information on risk factors was based on records entered in the Clinical Practice Research Datalink any time before the index date. For each risk factor, we developed a definition and a list of relevant Read codes. A clinician reviewed all code lists, and these are available on request. Patients without Read codes for a clinical condition were assumed not to have the condition.

Key risk factors of interest

Our key risk factors of interest were rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, depression, and diabetes (overall and by type) (see appendix section A for a full descriptions of how these risk factors were identified).

Severe immunosuppression

Our models included severely immunosuppressive conditions determined by the Advisory Committee on Immunization Practices to be contraindications to vaccination—namely, recent history (less than two years before index date) of leukaemia, lymphoma, or bone marrow transplant, or any history of HIV, haematopoietic stem cell transplantation, myeloma, or “other unspecified cellular immune deficiencies” (for example, pancytopenia).23 We also included use of immunosuppressive treatment; we extracted all relevant prescriptions before the index date and calculated duration of prescription (using data on quantity of tablets prescribed and numeric daily dose). We defined oral corticosteroid exposure as a 14 day course of high dose (≥20 mg/day) oral corticosteroids in the month before the index date. We included exposure to other immunosuppressive treatments in the month before the index date as an additional covariate (see appendix section A for further details).

Other characteristics

Other characteristics of patients included smoking (ex-smoker, current smoker, non-smoker), alcohol consumption (non-drinker, current drinker, ex-drinker), and body mass index (underweight (<18.5), normal weight (18.5-24.9), overweight (≥25), obese (≥30)) (see appendix section A for further details). We captured exposure to inhaled corticosteroids within three months before the index date (see appendix section A for further details), as some evidence suggests that they may increase the risk of zoster.24 We compared follow-up time (in years) for cases and controls, to check that the opportunity to record the exposures of interest in the two groups was equal.25 To explore whether the association between our risk factors of interest and zoster could be affected by ascertainment bias (that is, visiting a general practice for the risk factor may increase the likelihood of receiving a diagnosis of zoster), we investigated the association between zoster and treated epilepsy (an epilepsy Read code before index date and an epilepsy treatment (British National Formulary chapter 4.8.1) 12 months before the index date). Epilepsy is a chronic condition requiring high level healthcare use26; it is not thought to be associated with zoster.

Statistical analysis

We described the characteristics of the study population by case-control status. The analysis accounted for the matched design by using conditional logistic regression, so all odds ratios accounted for the matching factors of age (within 1 year), sex, practice, and calendar time. Initially, we calculated univariable odds ratios to estimate the strength of association of each potential risk factor with zoster; 99% confidence intervals were generated to account for multiple testing and reduce the chance of picking up small and clinically unimportant associations. We then did multivariable analyses on patients with complete data for all variables (see also below for approach to missing data). We investigated a potentially effect modifying role of age at diagnosis (index) date by calculating stratum specific odds ratios for each variable in the multivariable model by age groups (>50 years, 50-59 years, 60-69 years, and ≥70 years). We added interaction terms between age and other risk factors one at a time into the multivariable regression model and used likelihood ratio tests to investigate interactions. To quantify the effect of our assessed risk factors, we estimated the age specific absolute rate of zoster for each factor by multiplying the age specific effect estimates by the age specific rate of zoster in the general population in 2010. We estimated the age specific general population rates within the Clinical Practice Research Datalink by dividing the number of incident cases of zoster in 2010 by the total person time contribution of the population at risk in that year, which included all patients in the Clinical Practice Research Datalink with at least one year of follow-up and no history of zoster. We then evaluated to what extent combinations of risk factors could lead to a high risk of zoster, specifically within age groups not targeted for vaccination. We calculated the predicted risk of zoster for each person by summing the coefficients for their risk factors from the final model and multiplying their predicted odds ratio by the age specific rate of zoster in the general population. We were thus able to determine the number of cases aged under 70 but with a predicted risk of zoster equal to or higher than that of the general population aged at least 70 years (vaccination is currently offered to 70 and 79 year olds in the UK). We repeated this analysis with a 60 years age cut-off, to reflect vaccination policy from different countries. We restricted these calculations to people without severely immunosuppressive conditions. Sensitivity analyses included use of a wider definition of exposure to oral corticosteroids and other immunosuppressive treatment (anyone exposed three months before the index date). We used multiple imputation by chained equations to account for missing data (11% of patients had missing data for alcohol or smoking).27 The imputation model included all covariates from the main outcome model, together with matching variables of age and sex, and extra comorbidities as additional markers of alcohol or smoking related diseases. We created five imputed datasets and combined them for analysis. We further adjusted for patient level socioeconomic status in the subgroup of patients registered at English practices for whom these data were available (see appendix sections B-D for further details). We applied two different definitions of an “active” control. Firstly, we considered controls to be inactive if they had no contact with their general practice during any time from one year before to two years after the index date. Secondly, we considered controls to be inactive if they had not consulted their general practice in the previous three years. Finally, we calculated the mean yearly consultation rate before the index date (by dividing the total number of face to face or telephone consultations during follow-up by the total years of follow-up before the index date) among patients with our risk factors of interest and among patients with epilepsy.

Results

We identified a total of 145 397 incident cases of zoster. After matching, we removed inactive controls (n=27 928; 4.8% of all 577 264 matched controls). We excluded a small number of cases, as they had no eligible controls (n=438; 0.3%), largely owing to advanced age, leaving 144 959 cases. Table 2 shows descriptive details of the cases and controls; 59.4% of cases and 61.0% of controls were female (the higher proportion among controls was due to the variable number of controls per case). The median age at diagnosis of zoster was 62 (interquartile range 48-73) years for cases and 62 (49-74) years for controls. Approximately 45% of zoster cases occurred in patients under 60 years and 65% in those under 70 years. Registered follow-up time before the index date was equivalent in cases and controls (8.6 (4.3-12.1) years).
Table 2

Description of cases and controls. Values are numbers (percentages) unless stated otherwise

Cases (n=144 959)Controls (n=549 336)
Matching factors
Sex:
Female86 071 (59.4)335 272 (61.0)
Male58 888 (40.6)214 064 (39.0)
Age at index date (in years):
18-2910 849 (7.5)38 761 ( 7.1)
30-4928 762 (19.8)104 708 (19.1)
50-5927 833 (19.2)105 157 (19.1)
60-6931 134 (21.5)121 108 (22.0)
70-7928 025 (19.3)110 097 (20.0)
80-8915 891 (11.0)61 566 (11.2)
≥902465 (1.7)7939 (1.4)
Socioeconomic status (practice level)*:
1 (least deprived)28 938 (20.0)109 663 (20.0)
228 853 (19.9)109 253 (19.9)
329 811 (20.6)112 888 (20.5)
430 550 (21.1)115 678 (21.1)
5 (most deprived)26 807 (18.5)101 854 (18.5)
Other characteristics
Mean (interquartile range) length of follow-up (in years)8.6 (4.3-12.1)8.6 (4.3-12.1)
Body mass index category:
Underweight2776 (1.9)10 549 (1.9)
Normal weight50 530 (34.9)188 060 (34.2)
Overweight47 886 (33.0)177 603 (32.3)
Obese29 581 (20.4)109 440 (19.9)
Missing14 186 (9.8)63 684 (11.6)
Smoking status:
Non-smoker54 751 (37.8)208 436 (37.9)
Current smoker36 107 (24.9)141 826 (25.8)
Ex-smoker52 353 (36.1)186 373 (33.9)
Missing1784 (1.2)12 701 (2.3)
Alcohol use:
Non-drinker14 481 (10.0)56 774 (10.3)
Current drinker103 113 (71.1)383 976 (69.9)
Ex-drinker12 786 ( 8.8)45 242 (8.2)
Missing14 579 (10.1)63 344 (11.5)

*Measured by Index of Multiple Deprivation score.

Description of cases and controls. Values are numbers (percentages) unless stated otherwise *Measured by Index of Multiple Deprivation score. Table 3 shows the proportion of cases and controls with our key risk factors of interest and other covariates. The strongest risk factors for zoster were the severely immunosuppressive conditions, although their overall prevalence was low—2.8% of cases and 1.2% of controls (table 3). Odds ratios varied from 1.78 to 13.46, although the latter estimate (for haematopoietic stem cell transplantation) had a particularly wide 99% confidence interval, as it was based on only 29 exposed patients.
Table 3

Relative risk of zoster in patients with key risk factors of interest and other covariates

No (%)Odds ratio (99% CI)
Cases (n=144 959)Controls(n=549 336)Model 1*Model 2†Model 3‡
Key risk factors of interest
Rheumatoid arthritis3111 (2.1)8029 (1.5)1.52 (1.43 to 1.60)1.46 (1.38 to 1.55)1.22 (1.15 to 1.30)
Systemic lupus erythematosus387 (0.3)818 (0.1)1.85 (1.58 to 2.17)1.72 (1.45 to 2.04)1.60 (1.35 to 1.90)
Inflammatory bowel disease1851 (1.3)5118 (0.9)1.38 (1.29 to 1.48)1.36 (1.26 to 1.46)1.28 (1.18 to 1.38)
Chronic obstructive pulmonary disease6815 (4.7)20 201 (3.7)1.34 (1.29 to 1.39)1.32 (1.27 to 1.37)1.22 (1.17 to 1.28)
Asthma10 243 (7.1)31 865 (5.8)1.24 (1.20 to 1.28)1.21 (1.17 to 1.25)1.11 (1.06 to 1.16)
Chronic kidney disease8724 (6.0)29 437 (5.4)1.20 (1.16 to 1.24)1.14 (1.09 to 1.18)1.12 (1.08 to 1.17)
Depression6830 (4.7)22 052 (4.0)1.19 (1.15 to 1.24)1.15 (1.10 to 1.20)1.15 (1.10 to 1.19)
Diabetes11 430 (7.9)41 320 (7.5)1.07 (1.04 to 1.10)1.02 (0.99 to 1.05)1.02 (0.99 to 1.05)
Diabetes type:§
No diabetes133 529 (92.1)508 016 (92.5)1.00 (1.00 to 1.00)1.001.00
Type 1396 (0.3)1054 (0.2)1.37 (1.18 to 1.60)1.27 (1.07 to 1.50)1.26 (1.06 to 1.49)
Type 210 359 (7.1)38 136 (6.9)1.05 (1.02 to 1.09)1.01 (0.98 to 1.04)1.01 (0.98 to 1.04)
Unknown675 (0.5)2130 (0.4)1.20 (1.07 to 1.35)1.13 (1.00 to 1.27)1.12 (0.99 to 1.27)
Other covariates
Inhaled corticosteroids12 996 (9.0)38 902 (7.1)1.31 (1.28 to 1.35)1.13 (1.08 to 1.18)
Severe immunosuppression:
HIV128 (0.09)97 (0.02)4.74 (3.34 to 6.73)5.07 (3.41 to 7.54)5.07 (3.41 to 7.54)
Leukaemia205 (0.14)368 (0.07)2.14 (1.71 to 2.68)1.78 (1.39 to 2.28)1.77 (1.38 to 2.27)
Lymphoma444 (0.31)386 (0.07)4.41 (3.68 to 5.28)3.90 (3.21 to 4.74)3.89 (3.20 to 4.73)
Myeloma492 (0.34)816 (0.15)2.35 (2.03 to 2.73)2.16 (1.84 to 2.53)2.13 (1.82 to 2.51)
Haematopoietic stem cell transplantation26 (0.02)3 (0.00)32.82 (6.80 to 158.44)13.46 (2.68 to 67.60)13.71 (2.73 to 68.94)
Other unspecified cellular immune deficiencies95 (0.07)190 (0.03)1.90 (1.37 to 2.63)1.57 (1.10 to 2.22)1.49 (1.05 to 2.12)
Oral corticosteroids2164 (1.49)3822 (0.70)1.82 (1.58 to 2.10)1.48 (1.27 to 1.72)
Other immunosuppressive treatment502 (0.35)1058 (0.19)2.20 (2.05 to 2.36)1.82 (1.67 to 1.98)

*Adjusted for matching factors only.

†Adjusted for HIV, leukaemia, lymphoma, myeloma, haematopoietic stem cell transplantation, other unspecified cellular immune deficiencies, rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, depression, diabetes, smoking, and alcohol.

‡Additionally adjusted for oral corticosteroids, other immunosuppressive treatment, and inhaled corticosteroids.

§Separate model run for diabetes type (no diabetes, type 1, type 2, unknown) instead of diabetes (yes/no).

Relative risk of zoster in patients with key risk factors of interest and other covariates *Adjusted for matching factors only. †Adjusted for HIV, leukaemia, lymphoma, myeloma, haematopoietic stem cell transplantation, other unspecified cellular immune deficiencies, rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, depression, diabetes, smoking, and alcohol. ‡Additionally adjusted for oral corticosteroids, other immunosuppressive treatment, and inhaled corticosteroids. §Separate model run for diabetes type (no diabetes, type 1, type 2, unknown) instead of diabetes (yes/no). Among our key risk factors of interest, systemic lupus erythematosus had the strongest relative risk of zoster (adjusted odds ratio 1.72, 99% confidence interval 1.45 to 2.04) (table 3), but the condition was very rare (0.3% of cases and 0.1% of controls). The risk of zoster was increased by more than 30% among patients with rheumatoid arthritis (adjusted odds ratio 1.46, 1.38 to 1.55) and chronic obstructive pulmonary disease (1.32, 1.27 to 1.37). Asthma, chronic kidney disease, and depression were associated with a greater than 10% increased risk of zoster. Although no association existed between zoster and diabetes overall (adjusted odds ratio 1.02, 0.99 to 1.05), we found strong evidence that patients classified as having type 1 diabetes were at increased risk of zoster (1.27, 1.07 to 1.50). To assess whether some of the overall effect of these conditions was mediated by their treatments, we additionally adjusted for immunosuppressive treatments and inhaled corticosteroids (table 3, final column). The associations between zoster and rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disorder, and asthma were attenuated after adjustment but did not disappear. Among conditions not commonly treated with these drugs (chronic kidney disease, depression, and diabetes), the association did not vary after this additional adjustment. Treated epilepsy, not expected to be associated with zoster, was marginally more common among cases than controls (1420 (0.98%) v 5142 (0.94%)). We found little evidence of association with zoster in crude (odds ratio 1.05, 0.97 to 1.14) or adjusted analyses (1.06, 0.97 to 1.15), suggesting that other associations observed in this study are unlikely to be explained by ascertainment bias. We explored how the effect of our risk factors varied by age (tables 4 and 5). We found some evidence of age interaction. In general, the relative effects of these risk factors on zoster decreased with increasing age. For example, among patients with chronic kidney disease the odds ratio point estimate was 1.53, 1.21, and 1.11 among patients aged 18-49, 50-59, and 60-69 years respectively.
Table 4

Numbers of cases and controls with various risk factors, stratified by age

Key risk factors of interest<50 years50-59 years60-69 years≥70 years
Case (n=39 611)Control (n=143 469)Case (n=27 833)Control (n=105 157)Case (n=31 134)Control (n=121 108)Case (n=46 381)Control (n=179 602)
Rheumatoid arthritis2836145151282867222414463909
Systemic lupus erythematosus122146991817320793284
Inflammatory bowel disease4731003394108042412255601810
Chronic obstructive pulmonary disease99304614181518505301425212781
Asthma34479931199063032140685126668780
Chronic kidney disease403862613177415445090616421711
Depression26927983147449441079372215855403
Diabetes881238316325283309311253582422401
Diabetes type:
Type 125957681240381421896
Type 2422124614314727292210633558421530
Unknown200561120316133478222775
Table 5

Association of various risk factors with herpes zoster, stratified by age

Key risk factors of interestAdjusted odds ratio (99% CI)*P value †
<50 years50-59 years60-69 years≥70 years
Rheumatoid arthritis1.69 (1.38 to 2.06)1.45 (0.93 to 2.28)1.49 (0.97 to 2.29)1.41 (0.93 to 2.15)0.203
Systemic lupus erythematosus3.04 (2.14 to 4.31)1.98 (0.86 to 4.58)1.23 (0.52 to 2.89)1.29 (0.56 to 2.93)<0.001
Inflammatory bowel disease1.73 (1.47 to 2.03)1.40 (0.95 to 2.07)1.30 (0.88 to 1.90)1.18 (0.81 to 1.70)<0.001
Chronic obstructive pulmonary disease1.11 (0.80 to 1.54)1.29 (0.65 to 2.53)1.37 (0.71 to 2.66)1.30 (0.68 to 2.51)0.228
Asthma1.24 (1.17 to 1.32)1.19 (1.02 to 1.39)1.22 (1.05 to 1.42)1.18 (1.02 to 1.37)0.465
Chronic kidney disease1.63 (1.37 to 1.95)1.26 (0.85 to 1.87)1.14 (0.78 to 1.65)1.10 (0.77 to 1.57)<0.001
Depression1.24 (1.16 to 1.33)1.12 (0.94 to 1.33)1.08 (0.90 to 1.30)1.10 (0.93 to 1.30)0.002
Diabetes1.28 (1.15 to 1.43)1.11 (0.87 to 1.42)1.01 (0.80 to 1.28)0.97 (0.77 to 1.22)<0.001
Diabetes type:
Type 11.51 (1.22 to 1.88)1.16 (0.62 to 2.18)0.98 (0.46 to 2.08)0.62 (0.23 to 1.65)<0.001
Type 21.22 (1.05 to 1.42)1.09 (0.79 to 1.52)1.02 (0.74 to 1.40)0.97 (0.71 to 1.32)
Unknown1.20 (0.95 to 1.50)1.30 (0.71 to 2.36)1.02 (0.57 to 1.81)1.07 (0.62 to 1.82)

*Adjusted for HIV, leukaemia, lymphoma, myeloma, haematopoietic stem cell transplantation, other unspecified cellular immune deficiencies, rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, depression, diabetes, smoking, and alcohol.

†P value for interaction.

Numbers of cases and controls with various risk factors, stratified by age Association of various risk factors with herpes zoster, stratified by age *Adjusted for HIV, leukaemia, lymphoma, myeloma, haematopoietic stem cell transplantation, other unspecified cellular immune deficiencies, rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, depression, diabetes, smoking, and alcohol. †P value for interaction. To quantify the effect of our key risk factors of interest, particularly among age groups not targeted for vaccination, we estimated absolute rates of zoster (table 6). The rates remained low among patients aged 18-49 years (for example, for those with rheumatoid arthritis: 3.51 (99% confidence interval 2.40 to 5.13) per 1000 person years), despite the high relative risks in this age group. The absolute rates of zoster among patients aged 60-69 years were relatively high, particularly for those with chronic obstructive pulmonary disease and rheumatoid arthritis.
Table 6

Estimated rate of zoster in patients with various risk factors, by age group

Key risk factors of interestRate of zoster/1000 person years (99% CI)
<50 years50-59 years60-69 years≥70 years
General population (2010)2.08 (1.74 to 2.49)4.37 (3.72 to 5.12)6.69 (5.76 to 7.76)8.84 (7.49 to 10.43)
Rheumatoid arthritis3.51 (2.40 to 5.13)6.35 (3.46 to 11.66)9.96 (5.57 to 17.77)12.47 (6.94 to 22.41)
Systemic lupus erythematosus6.32 (3.73 to 10.74)8.67 (3.20 to 23.46)8.20 (2.99 to 22.45)11.36 (4.22 to 30.60)
Inflammatory bowel disease3.59 (2.56 to 5.04)6.13 (3.55 to 10.58)8.67 (5.10 to 14.74)10.41 (6.10 to 17.74)
Chronic obstructive pulmonary disease2.31 (1.40 to 3.84)5.62 (2.44 to 12.94)9.19 (4.09 to 20.62)11.54 (5.08 to 26.20)
Asthma2.58 (2.03 to 3.28)5.20 (3.81 to 7.11)8.16 (6.04 to 11.00)10.44 (7.64 to 14.25)
Chronic kidney disease3.39 (2.38 to 4.85)5.51 (3.17 to 9.59)7.60 (4.52 to 12.78)9.70 (5.74 to 16.37)
Depression2.59 (2.03 to 3.31)4.89 (3.51 to 6.80)7.22 (5.19 to 10.05)9.71 (6.94 to 13.58)
Diabetes2.66 (1.99 to 3.56)4.84 (3.23 to 7.27)6.79 (4.62 to 9.97)8.55 (5.76 to 12.70)
Diabetes type:
Type 13.14 (2.14 to 4.67)5.08 (2.32 to 11.16)6.55 (2.66 to 16.12)5.49 (1.75 to 17.21)
Type 22.54 (1.84 to 3.54)4.77 (2.93 to 7.78)6.79 (4.25 to 10.84)8.54 (5.28 to 13.79)
Unknown2.49 (1.68 to 3.74)5.66 (2.66 to 12.07)6.80 (3.28 to 14.07)9.43 (4.67 to 19.03)
Estimated rate of zoster in patients with various risk factors, by age group We calculated the predicted risk of zoster among 143 620 zoster cases (having excluded 1339 patients with severely immunosuppressive conditions) on the basis of their risk factor profile. Among these cases, 40 409 (28.1%) had at least one risk factor of interest. Of 97 789 zoster cases aged under 70 years, 3619 (3.7%) had a predicted risk as high as that for the general population aged 70 or over; 643 (0.96%) of 67 000 patients under 60 years had a predicted risk as high as those aged 60-69 years. Sensitivity analyses imputing missing data for smoking and alcohol (see appendix section B), using different definitions for immunosuppressive treatment (see appendix section C), adjusting for patient level socioeconomic status (see appendix section D), and applying different definitions of an active control (see appendix section E) did not change the study findings. The consultation rate was similar among patients with epilepsy and those with our risk factors of interest (see appendix section F).

Discussion

In this large matched case-control study, a range of conditions were associated with increased risk of zoster, including rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, type 1 diabetes, and depression. The relative effects of many of these risk factors were larger among younger patients. This raises the question of whether vaccination of certain younger, high risk groups may be beneficial; cost effectiveness studies, also considering the risk of postherpetic neuralgia, would be needed to answer this question. Among a wide range of risk factors, people with contraindications to currently available vaccines were at the highest risk of zoster, highlighting the need to identify strategies to reduce the risk of zoster among these groups.

Strengths and limitations of study

This large study included all incident cases of zoster in the Clinical Practice Research Datalink over an 11 year period, providing high power to detect small effects, except for rare potential risk factors. We assessed a wide range of factors, allowing adjustment for many of the known as well as potential confounders, in addition to exploring interactions with age, which is of key public health relevance in terms of vaccination policy. The study may be subject to ascertainment bias; regular general practice visits for a chronic condition such as diabetes may increase the likelihood of receiving a zoster diagnosis. However, we believe that most zoster cases would present to their general practice, owing to the extensive rash and considerable pain associated with zoster and free general practice attendance in the UK.28 A survey about immunisation practices in the United States among people aged 60 and over found that 95% of those who knew they had zoster sought care.29 Furthermore, we found little evidence to suggest that patients with epilepsy (who were visiting their general practice as frequently as patients with our risk factors of interest) were at increased risk of zoster. As with any observational study, residual confounding may be present. For example, exposure to varicella contacts, hypothesised to naturally boost varicella zoster virus specific immunity in people with latent varicella zoster virus infection and thus protect against zoster,30 was not available. Some misclassification of zoster is possible. In UK primary care, diagnosis of zoster is clinically based with no laboratory testing. Validation of zoster diagnoses in primary care in the Netherlands found that 90.8% of cases had raised antibodies indicating recent zoster infection, suggesting that diagnosis of zoster has a high positive predictive value.31 The frequency with which general practitioners wrongly reject the diagnosis of zoster has not, however, been investigated; this may be more common among younger patients in whom zoster is uncommon. However, the most common misclassification of zoster is as recurrent herpes simplex, which very rarely presents in a dermatomal distribution.32 Zoster is typically a straightforward clinical diagnosis, so the extent of misclassification is likely to be minimal. Any misclassification is likely to be non-differential with respect to exposure status, thus leading to an underestimation of associations. Finally, excluding “inactive” controls to remove patients who would not attend their general practice if they did develop zoster, may have resulted in healthier controls not being included and led to an underestimation of the odds ratios.

Comparison with other studies

The strength of association between the autoimmune conditions in this study and risk of zoster is broadly in line with previous studies.7 8 9 33 The increased risk associated with these conditions may partly reflect exposure to immunosuppressive drugs, as well as the conditions themselves. When we adjusted for immunosuppressive treatments, the increased risk of zoster was attenuated, suggesting that these drugs contribute to the overall increased risk of zoster in these patients. The effect of chronic obstructive pulmonary disease is also consistent with previous studies.11 12 After adjustment for oral and inhaled corticosteroids commonly used to treat chronic obstructive pulmonary disease, the association reduced in these patients, again suggesting that these treatments add to their overall risk of zoster. Larger associations between zoster and depression have been reported.11 17 34 No consensus exists on how to capture depression in electronic records; previous studies used different definitions, which may contribute to the varied findings. For example, a matched case-control study using commercial claims and encounters data in the United States found a higher risk of zoster among patients aged over 65 with depression (odds ratio 1.52, 95% confidence interval 1.46 to 1.58) but only included very severe cases (depressive disorder, chronic depressive personality disorder, or dysthymic disorder).11 The association of zoster with chronic kidney disease was also smaller than previous studies have suggested.15 The risks of zoster are reportedly increased in patients with diabetes of unspecified type.10 11 34 35 We found some evidence that type 1, but not type 2, diabetes was associated with an increased risk of zoster (although differentiating between type was not based on diagnostic codes, so misclassification is possible). Patients with type 1 diabetes may be at higher risk of zoster owing to the immune dysregulation resulting from autoimmune pathogenesis.36 The lack of effect found with type 2 diabetes must be interpreted cautiously, as negative confounding by ethnic group is possible; the type 2 diabetes population may have included South Asian patients (known to be at lower risk of zoster2 37 and higher risk of diabetes). Ethnicity is poorly recorded for older patients not recently registered in the Clinical Practice Research Datalink, so we could not capture this characteristic. The observed increased risks of zoster suggest that all these conditions are associated with some cell mediated immunosuppression. Disease induced immunosuppression has been proposed in chronic obstructive pulmonary disease and asthma patients,38 39 40 41 42 although long term exposure to corticosteroids in these patients is also likely to contribute to immunosuppression. Patients with chronic kidney disease are known to have immune dysfunction,43 particularly when the disease reaches end stage. For depression, stress may increase the risk of zoster as it affects several neuroendocrine functions that can affect cell mediated immunity,44 and depression itself has been associated with poorer zoster immunity.45 46

Conclusions and policy implications

Severe immunosuppression is known to be associated with an increased risk of zoster.11 47 48 49 What this study has highlighted, however, is that the strongest clinical risk factors for zoster are contraindications to its vaccine; the people arguably in most need of protection against zoster cannot currently benefit from vaccination. Alternative risk reduction strategies in these patients would help those at greatest risk of this disease and its complications. Another important consideration regarding vaccination policy is whether the risk factors for zoster are also risk factors for zoster’s main morbidity, postherpetic neuralgia. To date, very few studies have looked at this research question, and most have been underpowered. The role of severe immunosuppression as a risk factor for postherpetic neuralgia is inconclusive; three studies found that “general” immunosuppression was a risk factor for postherpetic neuralgia,35 50 51 whereas another study found no association.52 Autoimmune conditions have scarcely been assessed; one large cohort study in 34 280 zoster patients identified in Taiwanese health insurance records found that those with systemic lupus erythematosus were at greater risk of postherpetic neuralgia (rate ratio 2.27, 95% confidence interval 1.75 to 2.94).35 Three studies found point estimates for the association between diabetes and postherpetic neuralgia greater than one in multivariate analyses, although the evidence was insufficient to confirm the association.51 53 54 Some evidence suggests that depression is associated with postherpetic neuralgia.55 Larger studies assessing these and other risk factors for postherpetic neuralgia are needed to improve our understanding of the risk factors for postherpetic neuralgia. This study also raises the question of whether younger age groups at high risk of zoster may benefit from vaccination. Most cases of zoster occur in age groups too young for vaccination; this is because vaccination policy considers the risk of both zoster and postherpetic neuralgia, which is very uncommon in patients under 50. Deciding whether vaccination of groups of patients currently too young for vaccination would be cost effective will therefore require additional research on the risk factors for postherpetic neuralgia, specifically among patients aged under 50. Our study has identified a range of conditions that are associated with an increased risk of zoster, raising the question of whether targeted zoster vaccination of specific high risk groups at younger ages is warranted. However, this study has also shown that patients at the greatest risk of zoster are not currently eligible to receive the vaccine. A new herpes zoster vaccination campaign introduced in the United Kingdom in September 2013 is focused on older people only Recent literature has suggested that a range of clinical conditions are associated with an increased risk of zoster, raising the possibility that some younger people may be at high risk However, large, highly powered studies investigating the association of these clinical conditions with zoster are lacking Conditions associated with increased risk of zoster included rheumatoid arthritis, systemic lupus erythematosus, inflammatory bowel disease, chronic obstructive pulmonary disease, asthma, chronic kidney disease, type 1 diabetes, and depression The increased risks were generally greater among younger age groups The strongest risk factors are contraindications to vaccination, emphasising the need for alternative risk reduction strategies among these groups
  52 in total

1.  Safety and tolerability of a high-potency zoster vaccine in adults >/= 50 or years of age.

Authors:  Stephen K Tyring; Francisco Diaz-Mitoma; Larry G Padget; Margarita Nunez; Gregory Poland; William M Cassidy; Nickoya D Bundick; Jianjun Li; Ivan S F Chan; Jon E Stek; Paula W Annunziato
Journal:  Vaccine       Date:  2006-10-30       Impact factor: 3.641

Review 2.  Case-control designs in the study of common diseases: updates on the demise of the rare disease assumption and the choice of sampling scheme for controls.

Authors:  L Rodrigues; B R Kirkwood
Journal:  Int J Epidemiol       Date:  1990-03       Impact factor: 7.196

3.  The incidence of, risk factors for, and sequelae of herpes zoster among HIV patients in the highly active antiretroviral therapy era.

Authors:  Kelly A Gebo; Rita Kalyani; Richard D Moore; Michael J Polydefkis
Journal:  J Acquir Immune Defic Syndr       Date:  2005-10-01       Impact factor: 3.731

4.  Predictive factors for postherpetic neuralgia using ordered logistic regression analysis.

Authors:  Yuko Kanbayashi; Keiko Onishi; Keita Fukazawa; Kousuke Okamoto; Hiroshi Ueno; Tatsuya Takagi; Toyoshi Hosokawa
Journal:  Clin J Pain       Date:  2012-10       Impact factor: 3.442

5.  Epidemiological features and costs of herpes zoster in Taiwan: a national study 2000 to 2006.

Authors:  Jaw-Shyang Jih; Yi-Ju Chen; Ming-Wei Lin; Yu-Chun Chen; Tzeng-Ji Chen; Yu-Lin Huang; Chih-Chiang Chen; Ding-Dar Lee; Yun-Ting Chang; Wen-Jen Wang; Han-Nan Liu
Journal:  Acta Derm Venereol       Date:  2009-11       Impact factor: 4.437

6.  Herpes zoster: family history and psychological stress-case-control study.

Authors:  Andrea Lasserre; Fanette Blaizeau; Philippe Gorwood; Karine Bloch; Pierre Chauvin; François Liard; Thierry Blanchon; Thomas Hanslik
Journal:  J Clin Virol       Date:  2012-07-21       Impact factor: 3.168

7.  Impaired systemic cell-mediated immunity and increased susceptibility to acute respiratory tract infections in patients with COPD.

Authors:  Noriaki Takabatake; Makoto Sata; Shuichi Abe; Sumito Inoue; Hiroshi Saito; Hideki Yuki; Yoko Shibata; Isao Kubota
Journal:  Respir Med       Date:  2005-04       Impact factor: 3.415

8.  Varicella zoster virus-specific immune responses to a herpes zoster vaccine in elderly recipients with major depression and the impact of antidepressant medications.

Authors:  Michael R Irwin; Myron J Levin; Mark L Laudenslager; Richard Olmstead; Anne Lucko; Nancy Lang; Carmen Carrillo; Harold A Stanley; Michael J Caulfield; Adriana Weinberg; Ivan S F Chan; Jim Clair; Jeff G Smith; R D Marchese; Heather M Williams; Danielle J Beck; Patricia T McCook; Jane H Zhang; Gary Johnson; Michael N Oxman
Journal:  Clin Infect Dis       Date:  2013-02-13       Impact factor: 9.079

9.  A vaccine to prevent herpes zoster and postherpetic neuralgia in older adults.

Authors:  M N Oxman; M J Levin; G R Johnson; K E Schmader; S E Straus; L D Gelb; R D Arbeit; M S Simberkoff; A A Gershon; L E Davis; A Weinberg; K D Boardman; H M Williams; J Hongyuan Zhang; P N Peduzzi; C E Beisel; V A Morrison; J C Guatelli; P A Brooks; C A Kauffman; C T Pachucki; K M Neuzil; R F Betts; P F Wright; M R Griffin; P Brunell; N E Soto; A R Marques; S K Keay; R P Goodman; D J Cotton; J W Gnann; J Loutit; M Holodniy; W A Keitel; G E Crawford; S-S Yeh; Z Lobo; J F Toney; R N Greenberg; P M Keller; R Harbecke; A R Hayward; M R Irwin; T C Kyriakides; C Y Chan; I S F Chan; W W B Wang; P W Annunziato; J L Silber
Journal:  N Engl J Med       Date:  2005-06-02       Impact factor: 91.245

10.  Increased risk of herpes zoster among 108 604 patients with inflammatory bowel disease.

Authors:  M D Long; C Martin; R S Sandler; M D Kappelman
Journal:  Aliment Pharmacol Ther       Date:  2012-12-13       Impact factor: 8.171

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  73 in total

Review 1.  Herpes zoster epidemiology, management, and disease and economic burden in Europe: a multidisciplinary perspective.

Authors:  Robert W Johnson; Marie-José Alvarez-Pasquin; Marc Bijl; Elisabetta Franco; Jacques Gaillat; João G Clara; Marc Labetoulle; Jean-Pierre Michel; Luigi Naldi; Luis S Sanmarti; Thomas Weinke
Journal:  Ther Adv Vaccines       Date:  2015-07

2.  Risk of herpes zoster in children with asthma.

Authors:  Chung-Il Wi; Bong-Seong Kim; Sonia Mehra; Barbara P Yawn; Miguel A Park; Young J Juhn
Journal:  Allergy Asthma Proc       Date:  2015 Sep-Oct       Impact factor: 2.587

3.  Cytomegalovirus seropositivity is associated with herpes zoster.

Authors:  Benson Ogunjimi; Niel Hens; Richard Pebody; Hilde Jansens; Holly Seale; Mark Quinlivan; Heidi Theeten; Herman Goossens; Judy Breuer; Philippe Beutels
Journal:  Hum Vaccin Immunother       Date:  2015       Impact factor: 3.452

4.  Statin therapy and herpes virus reactivation-response to Zuin et al. paper.

Authors:  Jonathan E Sutton; Negar Maghsoodi; Alexa R Shipman; Kate E Shipman
Journal:  Eur J Clin Microbiol Infect Dis       Date:  2019-05-01       Impact factor: 3.267

5.  Unusual case of hemidiaphragmatic paralysis secondary to cervical herpes zoster.

Authors:  Muhammad Adnan Saleem; Zeeshan Mustafa; Noman Qayyum; Muhammad Badar Ganaie
Journal:  BMJ Case Rep       Date:  2018-01-23

Review 6.  T Lymphocytes as Measurable Targets of Protection and Vaccination Against Viral Disorders.

Authors:  Anne Monette; Andrew J Mouland
Journal:  Int Rev Cell Mol Biol       Date:  2018-10-24       Impact factor: 6.813

7.  Trigeminal herpes zoster: early recognition and treatment are crucial.

Authors:  Ben Lovell
Journal:  BMJ Case Rep       Date:  2015-03-20

8.  Herpes Zoster as the Presenting Manifestation of Systemic Lupus Erythematosus (SLE): A Rare Case Report.

Authors:  Arshna Qureshi; Debasish Chaudhury
Journal:  J Clin Diagn Res       Date:  2016-03-01

9.  Asthma as a risk factor for zoster in adults: A population-based case-control study.

Authors:  Hyo Jin Kwon; Duk Won Bang; Eun Na Kim; Chung-Il Wi; Barbara P Yawn; Peter C Wollan; Brian D Lahr; Euijung Ryu; Young J Juhn
Journal:  J Allergy Clin Immunol       Date:  2015-12-28       Impact factor: 10.793

Review 10.  Varicella zoster virus infection.

Authors:  Anne A Gershon; Judith Breuer; Jeffrey I Cohen; Randall J Cohrs; Michael D Gershon; Don Gilden; Charles Grose; Sophie Hambleton; Peter G E Kennedy; Michael N Oxman; Jane F Seward; Koichi Yamanishi
Journal:  Nat Rev Dis Primers       Date:  2015-07-02       Impact factor: 52.329

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