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BMC Infectious Diseases

, 19:619 | Cite as

The association between tuberculin skin test result and active tuberculosis risk of college students in Beijing, China: a retrospective cohort study

  • Demin Cao
  • Zhiguo Zhang
  • Zhen Yang
  • Shubo Ma
  • Zhaogang Sun
  • Huijuan Duan
  • Baoli ZhuEmail author
  • Fei ZhaoEmail author
Open Access
Research article
  • 273 Downloads
Part of the following topical collections:
  1. Tuberculosis and other mycobacterial diseases

Abstract

Background

About 10% latent tuberculosis infections (LTBI) would progress to active tuberculosis (TB), if left prophylactic therapy. Tuberculin skin test (TST) is the most widely used method for LTBI screening in the school of China. However, for college students, the association between TST reaction size and active TB risk was unclear.

Methods

We conducted a retrospective study to assess whether the TST reaction size would predict active TB during the next two years after TST screening for college students. Multivariable Cox regression was performed to identify the size of TST reaction and other factors associated with active TB risk.

Results

A total of 67292 college students in Beijing, China were included in this study; 8021 (11.92%) individuals were TST positive (≥10 mm), and 3879 (5.76%) of them were strong TST positive (≥15 mm). During the two years of follow-up, 26 active TB cases were reported in 134575 person-years with an incidence rate of 19.32 (95% CI: 12.61–28.32) per 100000 person-years. The adjusted hazard ratios (HR) (95% CI) were 1.094 (0.247~4.846), 3.644 (1.188~11.179), 6.832 (2.436~19.163) and 9.768 (2.203~43.315) of cohorts with the TST reaction size intervals 5~9, 10~14, 15~20 and ≥ 20 mm, respectively, compared to cohort with interval 0~4 mm. Besides, the adjusted HR (95% CI) was 3.593 (1.354~9.537) of males compared to females.

Conclusions

This study indicated that the risk of active TB increased in college students when the TST reaction size was ≥10 mm, and males had a higher risk compared to females.

Keywords

Tuberculosis risk Tuberculin skin test College students 

Abbreviations

BCG

Bacillus Calmette-Gue’rin

BCITPT

Beijing Changping institute for tuberculosis prevention and treatment

CI

Confidence interval

HR

Hazard ratio

IR

Incidence rate

LTBI

Latent tuberculosis infections

Mtb

Mycobacterium tuberculosis

PPD

Purified protein derivative

PR

Prevalence rate

SD

Standard deviation

TB

Tuberculosis

TST

Tuberculin skin test

Background

Worldwide, it is estimated that one-third of the world’s population is infected with Mycobacterium tuberculosis (Mtb). In 2017, about 10 million people suffered from tuberculosis, and 12–14% of them died. Wherein China has the second largest number of TB patients (best estimate, 88.9 million; range, 76.1~10.30 million) in the world [1]. About 5–10% of people with LTBI would suffer from active TB. But approximately 60–90% such activation of TB would be prevented by early diagnosis and preventing treatment [2, 3].

School is a people-intensive place, in which students have been in prolonged face to face contact with each other. It is one of the most common places that reported for the community-based outbreak of TB in China [4, 5]. It is significant to implement early diagnosis and prophylactic therapy in the prevention of school tuberculosis. At present, tuberculin skin test, based on purified protein derivative (PPD) induced delayed-type hypersensitivity, is still the main means in Mtb infection screening in China, because of its handleability and inexpensive price.

Several studies have been performed among primary school students to estimate the risk of TB disease according to TST reaction size [6, 7]. However, very few studies focused on the association of TST reaction size and TB risk among college students, who were during or past-puberty with great changes of physiology and behavior. It was reported that the incidence of LTBI, as well as TB, for the people beyond the age of 15 years is higher than for them under that age [6, 8]. In this study, we aim to investigate the relationship between the risk of active TB and the intensity of the TST response of college students.

Methods

Study design and participants

We performed a retrospective cohort study of the college freshmen TB infection investigation of 20 colleges, located in Changping district, Beijing, China. The baseline examination took place in 2013–2016. Follow-up for all individuals started at the time they received TST, mainly in mid-September each year. We ended follow-up for each individual with 2 years follow-up. The data were excluded if any of the following conditions exist: active TB diagnosis in freshmen TB screening, having active TB history or missing TST results.

Data collection and procedures

Beijing Changping institute for tuberculosis prevention and treatment (BCITPT) is the public health institution mainly responsible for TB prevention and control in Changping district. Raw records of colleges’ freshmen TB screening of 2013–2016, which contained the age, sex, ethnicity, region, TST reaction size, and diagnosis result, were obtained from BCITPT. Data on reported TB cases of the colleges in Changping district were retrieved from national TB reporting system from 2013 to 2018. Besides, the incidence time of each TB case was collected for further analyses.

According to the medical records of BCITPT, TST was conducted with 2 units of tuberculin (TB-PPD, Beijing Sanroad biological products co., Ltd) on the left forearm using the intradermal technique for each college freshman. And results were measured and recorded after 72 h of TST. For students with the strong positive reaction of TST (induration size ≥15 mm or the presence of blister or necrosis), the subsequent medical diagnosis was performed using X-ray, Mtb culture of sputum and microscopy examination of sputum smears and so on. The individuals with TST reaction size ≥20 mm (886 ones in this study) were advised to receive preventive therapy. However, it was non-obligatory, a few students received preventive therapy, and because it needs three months of treatment, few ones successfully complete treatment. In this study, no one was excluded from the analysis due to receiving LTBI treatment. In the follow-up years, the student who was suspected to be TB case would be taken to BCITPT by the head teachers of classes of colleges in the first time, and all the suspected active TB cases in Changping district were confirmed and treated in BCITPT. They all accepted X-ray examination, microscopy examination of sputum smears and Mtb culture of sputum. The diagnosis and classification of TB were based on the national guidelines for diagnosis for pulmonary tuberculosis (WS 288—2008) and Classification of tuberculosis (WS 196—2001) [9, 10].

Statistical analyses

All analyses were performed using R 3.5.2 in this study. Pearson’s Chi-square test or Fisher’ exact test, where appropriate, was used to compare the frequency of categorical variables between the cohorts. The incidence rate (IR) and 95% confidence interval (CI) for each cohort were calculated. A 2-tailed P value of less than 0.05 was used to identify the statistical significance for all tests. Separately, cumulative incidence curves for different categories of sex and TST reaction size levels were plotted by using the Kaplan-Meier method, and the log-rank test was used to compare the curves. Subsequently, to identify the potential factors related to TB incidence, regression analysis based on Cox’s proportional hazards model was applied to estimate the unadjusted and adjusted hazard ratio (HR) and 95% CI. The univariates with P values less than 0.10 were then candidates included in multivariate Cox’s regression analysis. Besides, HR analyses of subgroups of males and females were performed with the same methods. The absolute risk of active TB (1/100000) of different TST reaction sizes was calculated and plotted.

Results

As shown in Table 1, a total of 68288 individuals were included in the enrollment TB screening project of college students during 2013–2016, and 67428 of them actually participated. There were no significant differences in age, sex, and region between those who agreed to participate and those who didn’t. After excluding 88 individuals diagnosed as active TB and 48 ones who had active TB history, 67292 (98.54%) individuals were included in the final follow-up cohort. They came from 31 provincial divisions of China, including Beijing (16234, 24.12%), Hebei (3922, 5.83%), Shandong (3125, 4.64%), He’nan (2889, 4.30%), Xinjiang (2086, 3.10%) and so on. There were 36351 (54.02%) males and 30941 (45.98%) females. And the mean (standard deviation, SD) age of the students was 19.52 (1.26) years at baseline (Additional file 1: Table S1).
Table 1

Baseline characteristics of students

Year

Enrollment of freshmen

# of follow-up

Sex

Age (means ± SD)

TST positive(%)

Strong TST positive(%)

Male(%)

Female(%)

2013

14899

14592

45.59

54.41

19.78 ± 1.53

10.85

5.10

2014

20081

19823

51.70

48.30

19.52 ± 1.13

10.60

4.61

2015

18914

18659

58.63

41.37

19.37 ± 0.95

13.53

6.92

2016

14394

14218

59.86

40.14

19.35 ± 1.04

12.74

6.54

Total

68288

67292

54.02

45.98

19.52 ± 1.26

11.92

5.76

TST positive: induration size ≥10 mm or the presence of blister or necrosis

Strong TST positive: induration size ≥15 mm or the presence of blister or necrosis

There were 8021 (11.92%) TST positive individuals (induration size ≥10 mm or the presence of blister or necrosis), and about half of them (3879, 5.76%) were strong TST positive (induration size ≥15 mm or presence of blister or necrosis) (Table 1). For TST negative individuals, reaction sizes of them were mainly distributed in 0~1 (51401, 76.39%), 4~5 (5278, 7.84%) and 8~9 (1328, 1.97%); for TST positive individuals, the reaction sizes of them were mainly distributed in 10~11 (2849, 4.23%), 12~13 (1279, 1.90%) and 14~15 (1925, 2.86%) (Additional file 1: Table S2). There were significant differences between the students with TST positive and TST negative in sex, ethnicity, and region (Additional file 1: Table S3). Specifically, males had a higher percentage of TST positive compared to females (12.18% vs. 11.61%); non-Han cohort had a higher percentage of TST positive compared to Han cohort (15.86% vs. 11.45%); the distribution trends of regions of TST positive was high in the west and low in the east (west: 14.22%, middle: 12.39%, east: 10.55%).

There were 26 active TB cases during the 2 years of follow-up. Three of them were diagnosed by microscopy examination of sputum smears; three of them were diagnosed by Mtb culture of sputum, and the others were diagnosed due to TB-related symptoms. During the one-year follow-up period, 9 cases of active TB were recorded in 67292 person-years with an incidence rate of 13.37 (95% CI: 6.11~25.40) per 100000 person-years. And for two-year follow up, 26 active TB cases were recorded in 134575 person-years with an incidence rate of 19.32 (95% CI: 12.61–28.32) per 100000 person-years. However, no significant difference in incidence rate was observed between the one-year and two-year follow up. Compared with the incidence rate of female (8.08 per 100000 person-years, 95% CI: 2.62~18.86), male individuals (28.89 per 100000 person-years, 95% CI: 17.88~44.17) had a higher incidence rate (P = 0.01). The comparison among subgroups who came from different regions of China indicated that those from western China had the highest incidence rate, which might be due to the higher rate of LTBI in those regions at baseline. But no significant difference in the incidence rate was observed among students from different regions of China, as well as Han and non-Han ethnicity (Table 2). According to the Chi-squared test for trend in proportions, it was observed that the incidence rate showed an increasing trend with increasing of TST reaction size (chi-squared = 24.037, P < 0.001).
Table 2

Factors associated with active TB incidence in follow-up individuals

 

# of individuals

TB events/follow-up person-years

IRa(95% CI)

P for chi-square test

Univariate Cox regression

Multivariate Cox regression

HR (95% CI)

P value

Adjusted HR(95% CI)

P value

Sex

0.01

 

 Female

30941

5/61881

8.08 (2.62~18.86)

 

Reference

Reference

 Male

36351

21/72694

28.89 (17.88~44.17)

3.576 (1.348~9.483)

0.01

3.593 (1.354~9.537)

0.01

Ethnicity

0.86

 

 Han

60086

23/120164

19.14 (12.12~28.73)

 

Reference

Reference

 Others

7206

3/14411

20.82 (4.29~60.85)

1.088 (0.3266~3.622)

0.89

 

Region

0.21

 

 East

33692

14/67377

20.78 (11.35~34.87)

 

Reference

Reference

 Middle

17069

3/34138

8.79 (1.81~25.69)

0.423 (0.121~1.472)

0.17

 

 West

16531

9/33060

27.22 (12.44~51.70)

1.310 (0.567~3.027)

0.52

TST response (induration size, mm)

< 0.001

 

 0~4

51963

13/103923

12.51 (6.65~21.40)

 

Reference

Reference

 5~9

7308

2/14615

13.68 (1.66~49.44)

1.094 (0.247~4.848)

0.91

1.094 (0.247~4.846)

0.91

 10~14

4217

4/8431

47.44 (12.90~121.50)

3.794 (1.237~11.635)

0.02

3.644 (1.188~11.179)

0.02

 15~19

2918

5/5834

85.70 (27.77~200.03)

6.853 (2.443~19.223)

< 0.001

6.832 (2.436~19.163)

< 0.001

  ≥ 20

886

2/1772

112.87 (13.66~407.79)

9.032 (2.038~40.025)

0.004

9.768 (2.203~43.315)

0.003

IR Incidence rate, HR Hazard ratio, CI Confidence interval

a Per 100 000 person years

Factors that significantly related to active TB incidence were sex and TST response. As shown in Fig. 1, the cumulative incidence of active TB had a significant difference between males and females (Fig. 1a), as well as subgroups with different TST reaction size levels (Fig. 1b). The significant variables for the active TB were summarized in Table 2. After adjusted with other factors, the males were found to have a higher risk of TB development by comparing with the females, with an adjusted HR 3.359 (95% CI: 1.354~9.537). For the TST response intensity, there was no significant difference of active TB risk between individuals with mean diameter of TST induration 0~4 mm and 5~9 mm (adjusted HR: 1.094, [95% CI, 0.247~4.846], P = 0.91). However, when the induration size was greater than 10 mm (10~14, 15~19 and ≥ 20, respectively), the adjusted HR (95% CI) showed an upward trend (3.644 [1.188~11.179], 6.832 [2.436~19.163] and 9.768 [2.203~43.315], respectively) (Table 2). From 0~4 to ≥20, the absolute risk of active TB (1/100000) were 25.02, 27.38, 94.85, 171.35, and 225.73, respectively. As can be seen from Fig. 2, there was little difference in the absolute risk of active TB between TST reaction size 0~4 mm and 5~9 mm, but it was increased rapidly with TST reaction size greater than 10 mm. Moreover, subgroups analyses of males and females showed that HR of the cohort with TST reaction size ≥10 mm was 5.41 (95% CI: 2.28~12.84, P < 0.001) compared to those with reaction size < 10 mm for males, and 5.08 (95% CI: 0.85~30.37, P > 0.05) for females. This suggested that in males, the risk of active TB was higher in college students with the TST positive results, but the difference was not significant for females.
Fig. 1

Cumulative incidence curves of active TB estimated by Kaplan-Meier method. (a) Cumulative incidence curve analysis of different intervals of the mean diameter of TST induration (0~4, 5~9, 10~14, 15~19 and ≥ 20) (b) Cumulative incidence curve analysis of sex

Fig. 2

The absolute risk of active TB of different TST reaction sizes

Discussion

In this retrospective study, we found that TST reaction size ≥10 mm in college freshmen predicted an increased risk of active TB in the subsequent 2 years of TST, compared with those with a reaction size <10 mm. Specifically, the active TB risk increased about 3 times per 5 mm increasing of the interval of TST reaction size compared to reaction size ≤5 mm, up to 9.768 times with reaction size ≥20 mm. And the distribution of the absolute risk of active TB of different induration sizes had similar features. Some previous studies also indicated that a person with a TST reaction size ≥15 mm had a high risk of active TB [6, 11]. However, college students, who were experiencing or going through puberty with great changes of physiology and behavior, were not included. Our study provided some evidence that strong TST reaction in the age of 17–21 years old could be used to predict the subsequent development of TB in two years after TST.

As the most effective and economical means for prevention from Mtb infection, vaccine coverage rate for bacillus Calmette-Gue’rin (BCG) has been around 97% since 1999 in China [12]. However, prior BCG vaccination had a strong influence on TST results on account of cross-reactivity among young people [13], which may lead to false positive results. Even though some more specificity and sensitivity methods have been developed, such as QuantiFERON-TB Gold, T-SPOT.TB and so forth [8, 14, 15], they have not yet been widely accepted in less developed areas because of their higher costs and complexity. Prophylactic therapy, with efficacy ranging from 60 to 90%, was necessary for LTBI persons [2, 16, 17], but not all TST positive ones. It was operable that the college students of TST reaction size ≥10 mm, about 11.92% (8021/67292) of the whole, were regarded as a high-risk population and did further screening with QFT or T-SPOT.

Furthermore, the males of students predicted a higher risk of active TB compared to females, which was consistent with the results of previous studies [18, 19, 20]. Adolescence is a bifurcation point between males and females for the incidence of some infectious disease [21]. There are two reasons that may lead to the difference in active TB incidence. One is the physiological difference between them. Sex hormones play a significant role in immune responses; the female sex hormone estrogen tends to be immune-enhancing, while the male sex hormone testosterone is usually immune-suppressive [21, 22]. The other is the behavioral difference in male and female. Mtb is a person-to-person transmitted pathogen mainly according to the droplet, but behavior-related exposure is usually higher among males, especially after puberty [23]. Thus, the sex-bias of immune status and Mtb exposure may lead to the different risk levels of incidence of active TB.

There were a few limitations in this study. At first, the absence information of some other influencing factors, such as BMI, smoking and alcohol drinking history, close contact history, comorbidity and so forth, in the raw records might lead to ignoring some risk factors and influencing the accuracy of results. Secondly, because of the missing information of students received LTBI treatment, the risk of active TB for those with TST reaction size ≥20 mm might be underestimated in this study. Thirdly. follow up time was not long enough. It was reported that TB risk decreased rapidly with time after Mtb infection [15, 24]. Longtime follow-up might provide more information on the relationship of TST reaction intensity and active TB risk of this population. In addition, this study was only performed in Beijing. Therefore, additional research should be done in a wider area of China with longer follow-up time to estimate the association between TST result and active TB incidence in the youth population.

Conclusions

In summary, the intensity of TST reaction could reflect the active TB risk to some extent for college students. And males had a higher risk compared to females. This may allow us to do a better job in the prevention of pulmonary tuberculosis of college students in the future.

Notes

Acknowledgements

Not applicable.

Authors’ contributions

DMC and ZGZ contributed equally to this work. FZ, ZGZ, and BLZ conceived and designed this study. SBM, ZGS, HJD and ZY collected the data. DMC performed the analysis and wrote the manuscript. All authors read and approved the final paper.

Funding

This study was supported by the Strategic Priority Research Program of the Chinese Academy of Sciences (No. XDB29020203) and the National Science and Technology Major Project of China (No. 2018ZX10103001). The funders had no role in study design, data collection, analysis and interpretation.

Ethics approval and consent to participate

This work has been approved by the Ethics Committee of Beijing Changping institute for tuberculosis prevention and treatment. Existing TB Screening records and clinical data of college students were abstracted from the electronic medical records and anonymously used.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

Supplementary material

12879_2019_4238_MOESM1_ESM.docx (33 kb)
Additional file 1: Table S1. The age distribution of the follow-up cohort. Table S2. The TST reaction size distribution of follow-up cohort. Table S3. The characteristics of individuals with TST positive and TST negative. (DOCX 21 kb)

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Copyright information

© The Author(s). 2019

Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

Authors and Affiliations

  • Demin Cao
    • 1
    • 2
  • Zhiguo Zhang
    • 3
  • Zhen Yang
    • 3
  • Shubo Ma
    • 3
  • Zhaogang Sun
    • 5
  • Huijuan Duan
    • 4
  • Baoli Zhu
    • 1
    • 2
    Email author
  • Fei Zhao
    • 5
    Email author
  1. 1.CAS Key Laboratory of Pathogenic Microbiology and ImmunologyInstitute of Microbiology, Chinese Academy of SciencesBeijingChina
  2. 2.University of Chinese Academy of SciencesBeijingChina
  3. 3.Beijing Changping institute for tuberculosis prevention and treatmentBeijingChina
  4. 4.Beijing Tuberculosis and Thoracic Tumor Research InstituteBeijingChina
  5. 5.Clinical Trials and Research CenterNational Center for Geriatrics of Beijing HospitalBeijingChina

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