Literature DB >> 34594119

The Magnitude of MTB and Rifampicin Resistance MTB Using Xpert-MTB/RIF Assay Among Tuberculosis Suspected Patients in Gedeo Zone, Southern Ethiopia.

Kuma Diriba1, Ephrem Awulachew1, Gemechu Churiso2.   

Abstract

BACKGROUND: Tuberculosis (TB) remains a major global health problem causing death among millions of people each year. The new barrier that challenges the control of tuberculosis is the emerging and the increasing number of drug-resistant TB that becomes a world concern. This study aimed to determine the magnitude of rifampicin-resistant Mycobacterium tuberculosis (RR-MTB) among presumptive TB patients attending Dilla University Referral Hospital, Gedeo Zone, Ethiopia.
METHODS: A retrospective cross-sectional study was conducted at Dilla University Referral Hospital from January 2014 to December 2020. Sputum results were done using Xpert MTB/RIF assay and other necessary data were collected from the registration logbooks using a standardized data extraction format and analyzed using SPSS version 23 statistical software.
RESULTS: A total of 17,745 presumptive TB patients were included, of which 62.2% were males. The overall prevalence of Mycobacterium tuberculosis (MTB) was 11.8%, of which 5.1% were confirmed to have RR-MTB. Extra-pulmonary TB was reported in 1.5% of the study participants. The highest prevalence of MTB and RR-MTB was recorded in 2017 with a prevalence of 20.1% and 8.5%, respectively. All age groups were significantly associated with a higher prevalence of MTB (p < 0.036). TB patients with a history of previous treatment and HIV positive were significantly associated with MTB (P < 0.021), while RR-MTB was only significantly associated with patients with a history of previous treatment (P < 0.018).
CONCLUSION: A high magnitude of MTB and RR-MTB was reported among TB patients with HIV and a history of previous treatment. Therefore, coordinated efforts should be applied to the improvement of treatment adherence of known TB cases, and appropriate control and prevention methods to reduce the emergence and increase of MTB and RR-MTB cases.
© 2021 Diriba et al.

Entities:  

Keywords:  HIV/TB; MTB; RR-MTB; Xpert MTB/RIF assay; presumptive TB; previous treatment

Year:  2021        PMID: 34594119      PMCID: PMC8478339          DOI: 10.2147/IDR.S327607

Source DB:  PubMed          Journal:  Infect Drug Resist        ISSN: 1178-6973            Impact factor:   4.003


Introduction and Background

Tuberculosis is an airborne disease resulting from Mycobacterium tuberculosis (M. tuberculosis). It typically affects the lungs and can also spread to other organs causing extra-pulmonary TB.1 The World Health Organization (WHO) recently announced that TB remains a major global health problem causing deaths among millions of people each year. TB is the ninth leading cause of death worldwide and the leading cause from a single infectious agent, ranking above HIV. Globally, TB kills almost three people every minute.2 In 2019, WHO estimated 9.6 million people developed TB and 1.2 million died of the disease.2,3 TB mortality and incidence rate are falling at about 3% and 2% per year worldwide, respectively.4 The main new barrier that challenges the control of TB is the high burden of multidrug-resistant TB (MDR-TB). In 2017, WHO estimated 580,000 new cases of RR-MTB worldwide, making them eligible for MDR-TB treatment.5 Of these, around 475,600 had MDR-TB. In total, 3.5% of new TB cases and 18% of patients with a history of previous treatment were found to be MDR-TB.6 This makes the MDR strain become a prime global concern. WHO has been targeting an end TB strategy based on an assessment of the TB epidemic and progress in TB diagnosis, treatment, and prevention efforts. This shift in the approach to TB control, which includes among its 2030 targets (90% TB case detection and treatment) including in high-risk populations, and a cure rate of 90% of detected TB cases.7 The developments of bacterial resistance to specific antibiotics are becoming an important consideration for clinicians. The emerging and increasing drug-resistant TB has resulted in a great challenge in the Africa region, sub-Saharan Africa (SSA) in particular. SSA stands the burden of both very high TB incidence and prevalence rates in the world and represents 14% of the global burden of new MDR-TB cases.8 Ethiopia ranks 10th among the high TB-pandemic countries and 15th among the 27 high-MDR-TB countries in the world and 3rd in Africa following South Africa and Nigeria,9 with more than 5000 estimated MDR-TB patients each year.10,11 The prevalence of MDR-TB in Ethiopia is 7.24%.12 Different studies in Ethiopia reported that patients with a history of previous treatments were significantly associated with MDR-MTB infection.13 The early diagnosis and treatment of TB patients are mandatory to reduce transmission of the disease. Millions of people are diagnosed and successfully treated for TB each year, averting millions of deaths, but there are still large gaps in detection and treatment. As to our knowledge, there are no data regarding the prevalence of MTB, RR-MTB, and associated risk factors in this particular study area. Therefore, the current study provides updated information on the prevalence of MTB, RR-MTB, and associated risk factors to decide health priorities, to allocate resources, and to monitor the emergence of resistance for planning effective use of anti-TB drugs. It also serves as preliminary information for health programmers to give special attention and design a package in the national TB control program that addresses such areas where thousands of people live in an overcrowded area. Hence, this study aimed to assess the magnitude of MTB and RR-MTB among presumptive TB patients in Gedeo Zone, Southern Ethiopia.

Methods

Study Design and Study Population

Study Setting

The study was conducted in the Gedeo Zone, which is located in the southern direction of Ethiopia with a total estimated population of 1,694,868 according to the 2007 population census conducted by the Central Statistical Agency of Ethiopia (data are from the Zonal health office). Gedeo Zone is found at a distance of 85 km from Hawassa and 365 km from Addis Ababa, the capital city of Ethiopia. It is located in the kola agro-ecological zone with an altitude of 1400 km above sea level and annual temperature ranging from 22 °C to 29 °C.14 A retrospective cross-sectional study design was used to collect seven-year data from January 2014 to December 2020 at Dilla University Referral Hospital. The study populations were all pulmonary TB suspected patients who visited the selected health institution between January 2014 and December 2020.

Eligibility Criteria

Inclusion criteria: we included all presumptive pulmonary TB patients with full information like age, sex, Xpert MTB/RIF assay results, HIV status, and previous TB treatment history results recorded on the registration logbook. Exclusion criteria: study participant data with incomplete information like age, gender, Xpert MTB/RIF invalid, indeterminate Xpert MTB/RIF results, HIV status, and TB treatment history results recorded on the logbook.

Variables

Outcome variable: MTB and RR-MTB. Independent variables: all included determinants (age, gender, HIV status, and TB treatment history).

Operational Definitions

New cases: patients who have never been treated for TB before. Relapse cases: patients who were declared cured or treatment completed by a physician but who report back to the health service and are now found to be sputum smear or culture positive. Lost to follow up: a TB patient who did not start treatment or whose treatment was interrupted for 2 consecutive months or more. Failure case: a TB patient whose sputum smear or culture is positive at month 5 or later treatment. MDR-TB: TB that does not respond to at least isoniazid and rifampicin, the most important first-line anti-TB drugs. Rifampicin-resistant TB (RR-TB): resistance to rifampicin detected using genotypic or phenotypic methods with or without resistance to other first-line anti-TB drugs. Default: patients who were not taking anti-TB drugs for 2 months or more, consecutively after starting treatment.

Data Collection and Laboratory Processing

Sociodemographic characteristics of study participants (age and sex) and clinical feature-related data (Gene Xpert MTB/RIF assay results, HIV antibody test results, and previous TB patient treatment history results) were collected using a pretested structured data extraction sheet by a trained laboratory technologist from the TB registration book at the TB laboratory and TB clinic.

Laboratory Processing

Those patients identified with signs and symptoms of pulmonary tuberculosis were ordered to bring a single sputum sample for the diagnosis of TB using the Xpert MTB/RIF assay (Cepheid, CA, USA). Briefly, 2 mL of Gene Xpert MTB/RIF sample reagent buffer was added to 1 mL of sputum specimen using a sterile pipette. The closed specimen container was manually agitated twice for 15 seconds and allowed to stand at room temperature for 10 min and again vortexes after 10 min and allowed to stand for 5 min and then 2 mL of the inactivated material was transferred to the test cartridge and the cartridge was then loaded into Gene Xpert device. Finally, the results were interpreted by the Gene Xpert diagnosis system from the measured fluorescent signals and displayed automatically after 2 hours. Rapid HIV test was done according to the national HIV test algorithm.

Data Processing and Analysis

After all demographic data and patients’ history were collected from the registration book, data entry, data analysis, and data cleaning were done using Epi-Data 3.1 and SPSS version 23.0 software. Frequency count and percentage were used to present the findings. Prevalence figures were calculated for the total study population and separately by clinical features of the disease. Association factors were assessed by bivariate logistic regression and multivariate logistic regression. Multivariate analysis was run by selecting those variables that appeared to have a P-value of <0.25 in the bivariate analysis to control the confounding effect of different variables. P-value of <0.05 was considered as statistically significant.

Ethical Consideration

The protocol for patient recruitment and participation in the study followed the principles of the Declaration of Helsinki and was approved by the Dilla University Health Research Ethics Review Committee under the protocol unique number 005/21-01. In the current study, sociodemographic and clinical data of TB suspected patients were collected retrospectively from medical records after getting permission to conduct the study from Dilla University Referral Hospital medical director and respective departments. Informed consent was not applicable for study participants since the study was retrospective, and we have used the clinical data obtained from routine medical services. Strict confidentiality was maintained by removing all patient identifiers and only code numbers were used throughout the study.

Results

Sociodemographic and Clinical Features of Study Participants

A total of 17,745 study participants suspected with TB and who have given sputum samples which had complete data were included in this study, out of which 62.2% were male and 37.8% were female with a sex distribution ratio of 1.6:1. The age of the study participants ranged from 1 year to 95 years with a median age of 37 (interquartile range: 24.7–49.3 years). The majority of study subjects were between the age group of 30–44 years which accounts for 30.6%, followed by the 15–29 year age group accounting for 24.4%. The majority of the study participants were new cases by accounting for 87% of the total participants. Among those participants tested for HIV, 52.4% were negative while only 2.5% were HIV positive. Out of TB suspected cases, MTB was isolated from 2090 giving an overall prevalence of 11.8% while the prevalence of EP-TB was 1.5%. The prevalence of RR-MTB was 5.1% (Table 1).
Table 1

Sociodemographic, Clinical Characteristics and MTB results Among TB Suspected Patients in Southern Ethiopia, 2014–2020 (N = 17,745)

VariablesCategoriesFrequencyPercentage (%)
GenderMale11,02962.2
Female671637.8
Age categories<1511546.5
15–29432324.4
30–44542930.6
45–59363420.5
60–74275815.5
>754472.5
MTB resultDetected209011.8
Not detected15,65588.2
Types of TBPTB209011.8
EPTB2681.5
History of TB treatmentNew case15,43487.0
Relapse6743.8
Lost to follow up13067.4
Failure1120.6
Transfer1560.9
Default630.4
HIV status for antibody testPositive4362.5
Negative930752.4
Unknown800245.1
RR-MTB resultRR-MTB detected1075.1
RR-MTB not detected198394.9
Sociodemographic, Clinical Characteristics and MTB results Among TB Suspected Patients in Southern Ethiopia, 2014–2020 (N = 17,745)

Prevalence of MTB and RR-MTB by Years

We tried to compare the prevalence of MTB and RR-MTB by year (as indicated in Figure 1) in which the study participants were treated. Our study showed that the highest prevalence of MTB was recorded in 2017, followed by 2020 and 2018 with the prevalence of 20.1%, 16.2%, and 10.4%, respectively. The least prevalence of MTB was reported in 2019 with a prevalence of 6.7%. Similarly, the highest prevalence of RR-MTB was reported in 2017 with a prevalence of 8.5% followed by 2019 and 2018 with the prevalence of 8.0% and 7.1%, while the least prevalence was reported in 2016 and 2020 with a prevalence of 2.2% and 2.9% (Figure 1).
Figure 1

The magnitude of MTB and RR-MTB by years in Southern Ethiopia, 2014–2020 (N = 17,745).

The magnitude of MTB and RR-MTB by years in Southern Ethiopia, 2014–2020 (N = 17,745).

Associated Risk Factors of MTB Infections

In the current study, a higher prevalence of MTB was reported in males (58.6%), but there is no significant association with MTB (p-value > 0.05). The occurrence of MTB was significantly associated with different age groups (p-value < 0.035). The likelihood of having MTB showed a decreasing trend as the age of study participants increases. Regarding treatment history, relapsed cases and treatment failure were significantly associated with the occurrence of MTB (p-value < 0.001). The likelihood of having MTB showed 1.71 times higher in HIV positive than in HIV negative patients (AOR: 1.71; 95% CI: 1.39–2.81, p < 0.001) (Table 2).
Table 2

The Magnitude of MTB in Different Study Participant Categories (Gender, Age, Treatment History, and HIV Status) in Southern Ethiopia, 2014–2020 (N = 17,745)

MTB Pos N (%)MTB Neg N (%)COR (95% CI)P-valueAOR (95% CI)P-value
Gender
Male1224 (58.6)9805 (62.6)RefRef
Female866 (41.4)5850 (37.4)0.95 (0.76–1.05)0.2410.95 (0.76–1.05)0.241
Age categories
<15132 (6.3)1022 (6.5)RefRef
15–29605 (28.9)3718 (23.7)2.45 (2.13–2.75)<0.001*2.31 (2.08–2.51)<0.001*
30–44554 (26.5)4875 (31.1)0.25 (0.13–0.55)0.021*0.24 (0.12–0.54)0.021*
45–59472 (22.6)3162 (20.2)1.25 (1.14–1.55)0.011*1.23 (1.06–1.39)0.011*
60–74281 (13.4)2477 (15.8)1.21 (1.11–1.43)0.033*1.21 (1.11–1.43)0.032*
>7546 (2.2)401 (2.6)0.24 (0.12–0.46)0.036*0.23 (0.11–0.44)0.035*
History of TB treatment
New case1940 (92.8)13,494 (86.2)RefRef
Relapse77 (3.7)597 (3.8)2.03 (2.01–2.45)<0.001*2.02 (2.01–2.43)<0.001*
Lost23 (1.1)1283 (8.2)1.24 (0.93–2.77)0.2731.22 (0.68–2.34)0.272
Failure22 (1.1)90 (0.6)2.47 (1.23–2.95)<0.001*2.42 (1.22–2.79)<0.001*
Transfer22 (1.1)134 (0.9)0.67 (0.31–1.98)0.2630.65 (0.30–1.91)0.261
Default6 (0.3)57 (0.4)1.14 (1.12–2.66)0.021*1.13 (1.11–2.64)0.021*
HIV status
Positive160 (36.7)276 (63.3)1.73 (1.43–2.85)<0.001*1.71 (1.39–2.81)<0.001*
Negative1498 (16.1)7809 (83.9)0.57 (0.26–1.88)0.2240.55 (0.23–1.79)0.222
Unknown432 (5.4)7570 (94.6)RefRef

Note: *Statistically significant.

The Magnitude of MTB in Different Study Participant Categories (Gender, Age, Treatment History, and HIV Status) in Southern Ethiopia, 2014–2020 (N = 17,745) Note: *Statistically significant.

Associated Risk Factors of RR-MTB

Among the total MTB confirmed patients, 107 (5.11%) of them were positive for RR-MTB. In this study, there is no association between sex and different age groups. Regarding the treatment history, the likelihood of patients with relapsed cases (AOR = 2.12; 95% CI 1.55–2.43, p = 0.01), failed cases (AOR = 1.42; 95% CI 1.22–2.79, p = 0.031), and default cases (AOR = 1.13; 95% CI 1.11, 1.64, p-value = 0.023) were more likely to have RR-MTB compared to the new cases (Table 3).
Table 3

The Magnitude of RR-MTB in Different Study Participant Categories (Gender, Age, Treatment History, and HIV Status) in Southern Ethiopia, 2014–2020 (N = 2090)

VariableRR-MTB Detected N (%)RR-MTB Not N (%)COR (95% CI)P-valueAOR (95% CI)P-value
Gender
Male74 (69.2)1150 (58.0)RefRef
Female33 (30.8)833 (42.0)1.31 (0.76–1.35)0.2411.31 (0.76–1.45)0.242
Age categories
<154 (3.7128 (6.5)1.11 (0.63–1.76)0.661.11 (0.64–1.76)0.67
15–2927 (25.2)581 (29.3)1.22 (0.34–3.75)0.431.23 (0.34–3.76)0.42
30–4431 (29.0)523 (26.4)1.15 (0.14–1.53)0.231.17 (0.15–1.63)0.24
45–5925 (23.4)443 (22.3)0.42 (0.21–1.33)0.360.42 (0.21–1.33)0.36
60–7418 (16.8)263 (13.3)1.24 (0.52–1.46)0.311.25 (0.52–1.46)0.31
>752 (1.9)45 (2.3)1.24 (0.32–2.46)0.421.25 (0.32–2.45)0.42
History of TB treatment
New case62 (57.9)1878 (94.7)RefRef
Relapse17 (15.9)60 (3.3)2.17 (1.58–2.45)0.011*2.16 (1.55–2.43)0.010*
Lost5 (4.7)18 (0.9)1.24 (0.93–3.77)0.0521.22 (0.68–3.34)0.051
Failure13 (12.2)9 (0.5)3.47 (2.23–4.95)<0.001*3.42 (2.22–4.79)<0.001*
Transfer6 (5.6)16 (0.8)0.67 (0.31–1.98)0.2630.65 (0.30–1.91)0.261
Default4 (3.7)2 (0.1)2.14 (1.12–3.66)0.019*2.13 (1.11–3.64)0.018*
HIV antibody test
Positive61 (57.0)99 (5.0)1.73 (0.39–2.85)0.4301.71 (0.39–2.81)0.421
Negative44 (41.1)1454 (73.3)0.57 (0.26–1.88)0.5240.55 (0.23–1.79)0.522
Unknown2 (1.9)430 (21.7)RefRef

Note: *Statistically significant.

The Magnitude of RR-MTB in Different Study Participant Categories (Gender, Age, Treatment History, and HIV Status) in Southern Ethiopia, 2014–2020 (N = 2090) Note: *Statistically significant.

Discussion

Data on the local epidemiology of MTB and RR-MTB and associated risk factors were useful for the prevention and control of MTB, but limited data were available in the study area. In our study, the overall prevalence of MTB and RR-MTB was 11.8% and 5.1%, respectively. In the current study, the prevalence of MTB was in line with previous reports from Amhara, 11%,15 Addis Ababa, 12.5%,16 South Africa, 13%,17 and Korea, 13.8%.18 However, our finding was lower than studies conducted in different parts of Ethiopia with prevalence ranging from 15.11 to 60.4%,15,19–24 Nigeria, 22.9%,25 Congo, 79.1%,26 and Togo, 57%.27 In contrast to our study, however, the studies conducted in Uganda, 5.5%,28 Addis Ababa, 6%,29 and Oromia region, 3.8%,30 were lower than our current study. The difference might be due to variation in methodological techniques (culture vs Xpert), study participants, study period, sample size, geography, TB control, and prevention practices. In our study, there is no significant association between males and females. But different previous studies reported that being male was a risk factor for MTB and MDR-TB development.31–33 In this study, participants of age groups between 15 and 29 years were more infected by MTB compared to other age groups (AOR = 2.31; 95% CI 2.08–2.51, p < 0.001). Similarly, different studies reported a higher prevalence of MTB in age groups ranging from 16 to 34 years,20,23 while other studies conducted in different areas reported no association between age and TB infection.34–37 Our study showed no significant association between gender and TB patients. However, studies conducted in the Philippines38 and North Sudan,39 and elsewhere,19 reported that females were less likely to have MTB compared to males. The explanation for enhanced MTB in males could be probably due to males are mainly involved in outdoor activities and have more frequent contact with TB patients while females usually stay at home. In our study, participants who had a history of previous treatment (failure, relapse, and default) were more infected by MTB compared to new cases. This result is in agreement with previous studies conducted in Ethiopia.15,23,40 Enhanced frequency of MTB in patients having a history of previous treatment indicates high transmission of TB infection in the community. So, serious emphasis should be given for the prevention and control to limit its transmission. In the current study, the prevalence of RR-MTB among patients suffering from TB infection was 5.1%. This result is nearly comparable with other previous studies conducted in Nigeria, 7.3%,41 Uganda, 5.7%,42 and Ethiopia, 8.3%.43 In contrast to our finding, however, previous studies conducted in different parts of Ethiopia, 11–54%,11,22,24,29,44 Nigeria, 14.7%,45 Congo, 42.2%,26 and in Togo, 24%,27 reported a higher prevalence of RR-MTB than our study. On the other hand, a lower prevalence was reported by studies conducted in other parts of Ethiopia, 1.2–4.7%,20,23,30,34,46 and the WHO report of 2017, 4.1%.47 The differences might be due to geographical variation, study setting, methodological differences, limited sample size, differences in study period, and differences in TB control and prevention practice. The high RR-MTB prevalence in different parts of Ethiopia,11,22,24 Congo,26 and India48 is explained by the included study participants who were suspected of MDR-TB (relapse, defaulter, lost, and failure) rather than presumptive TB patients. The lowest RR-MTB reported in Ethiopia30 might be due to the study conducted was a community-based study, rather than a health service-based study. In comparison to our study, the higher RR-MTB reports from the Somali region,49 Pakistan,50 Bangladesh,51 and Togo27 might be explained by the variation in the study period and the scope to use Xpert for TB diagnosis (when the Xpert assay was started to be used, it was recommended only for patients with presumptive MDR-TB; but, later, the Xpert MTB/RIF assay was recommended for all TB suspected patients). In our study, RR-MTB had no significant association with gender. However, other studies conducted in different areas24,46,52 have reported more RR-MTB among females compared to males. In contrast to our findings, however, other studies conducted in different areas reported more RR-MTB infection among males than females.44,53,54 In the present study, age groups of >75 years were less infected by RR-MTB compared to the other age groups. But, other studies24,54 reported less prevalence of RR-MTB between the age groups of 30–39 years. In our study, TB patients with previous treatment history (relapse, failure, default) were significantly associated with RR-MTB. This is in line with previous reports from different areas.11,46,52 As a result, coordinated efforts should be applied to treatment monitoring, limiting the transmission through the application of appropriate control and prevention methods to reduce the emergence of circulating drug-resistant MTB strains in the community. In the current study, we tried to see the trend of MTB and RR-MTB for the last seven years. Accordingly, a higher prevalence of MTB was reported in 2017 and 2020 with a prevalence of 20.1% and 16.2%, respectively. A high prevalence of RR-MTB was recorded in 2017 and 2019 accounting for 8.5% and 8%, respectively. Even though the overall prevalence of both MTB and RR-MTB were low, there is no significant reduction from time to time. Thus, health programmers and stakeholders should give special attention and design a package in the national TB control program that addresses such areas where thousands of people are living in overcrowded areas.

Limitations of the Study

This study included a large sample size and is believed to give representative and updated information on the prevalence of MTB and RR-MTB to the regional and national governments. However, it has its own limitations. As the study was retrospective, first, we could not perform the genotypic confirmation of the Xpert positive MTB and RR-MTB. Second, only rifampicin resistance was analyzed and resistance to other anti-TB drugs was not detected because of the retrospective nature of the study. Third, there was a lack of important information and data like contact history of MDR-TB and TB, education, residence, types of non-sputum specimen used for TB detection, and living conditions of patients; thus, we were unable to show the associations between these factors with our outcome variables.

Conclusion

The overall prevalence of MTB and RR-MTB in this study was 11.8% and 5.1%, respectively. Different age categories, being HIV positive, and previous TB treatment history (relapsed, failed, and defaulter) were significantly associated with high MTB. TB patients with previous treatment history (relapsed and failed) were also significantly associated with RR-MTB. As the prevalence of both MTB and RR-MTB was still high especially in patients with a history of previous treatment and no significant reduction from time to time, health programmers and stakeholders should give special attention and design a package in the national TB treatment, monitoring, and control program that addresses such areas where thousands of people live in overcrowded areas.
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Review 6.  Multidrug resistant tuberculosis in Ethiopian settings and its association with previous history of anti-tuberculosis treatment: a systematic review and meta-analysis.

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7.  Prevalence of tuberculosis, multidrug resistant tuberculosis and associated risk factors among smear negative presumptive pulmonary tuberculosis patients in Addis Ababa, Ethiopia.

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