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. 2019 Sep;19(3):2356–2364. doi: 10.4314/ahs.v19i3.8

Antibiotics prescription pattern and determinants of utilization in the national health insurance scheme at a Tertiary Hospital in Nigeria

Roland Nnaemeka Okoro 1, Chijioke Nmeka 2, Patrick O Erah 3
PMCID: PMC7040270  PMID: 32127805

Abstract

Background

Subsidizing the cost of medicines through insurance schemes increases consumption of medicines and may contribute to irrational use of antibiotics.

Objectives

To describe the systemic antibiotics prescriptions patterns and analyze the determinants of their utilization in the National Health insurance Scheme (NHIS).

Methods

Established WHO guideline was followed to conduct this cross-sectional retrospective study at University of Nigeria Teaching Hospital, Nigeria. Data were collected from randomly sampled prescription sheets of one year duration. Logistic regression analysis was performed to determine the predictors of antibiotics prescriptions.

Results

The results are based on 802 sampled out-patients NHIS prescriptions. Average number of medicines per encounter was 4.0 ± 1.8, whereas 46.9% of antibiotics were prescribed by generic name. Penicillins (most frequently amoxicillin/clavulanate), and nitroimidazole (most frequently metronidazole) were the most commonly prescribed antibiotics with percentage share of 43.3% and 22.2%. Being <5 years old, and taking more than 4 medicines (OR 2.20, 95% CI 1.37–3.55) were the factors associated with the highest risk of antibiotics exposure.

Conclusion

There were poly-pharmacy, and non-adherence to generic antibiotic prescriptions. Penicillins (amoxicillin/clavulanate) were the most commonly prescribed antibiotic class. Being < 5 years old, and taking more than 4 medicines were significant predictors of antibiotics exposure.

Keywords: Antibiotics, national health insurance scheme, Nigeria, poly-pharmacy, prescription

Introduction

Antibiotics are commonly used in the ambulatory and hospital outpatient settings1. The patterns of use have been shown to vary between public and private sectors2,3. Earlier studies have reported penicillins and cephalosporins as the most frequently prescribed antibiotics in many clinical settings46. Antibiotics are powerful and effective medicines used for treating infections caused by bacteria. Also known as antimicrobial drugs, antibiotics have saved countless lives7. In spite of their effectiveness to treat many bacterial infections, they are frequently used irrationally to treat viral infections as in many cases of upper respiratory tract infections8. Generally, irrational use of medicines is common in Nigeria, resulting in polypharmacy, overuse of antibiotics and non-adherence to the principles of essential drug policy9,10.

In addition, subsidizing the cost of medicines through health insurance schemes increases consumption of medicines especially antibiotics, which in turn may contribute to irrational use11. The inevitable consequence of irrational use of antibiotics is the emergence of antibiotic-resistant pathogens, fueling an ever-increasing need for new drugs at a time when the pace of antimicrobial drug development has slowed dramatically12. Antimicrobial resistance is currently the greatest challenge to the effective treatment of infections globally. Antibiotic resistance not only leads to waste of health resources but also increases morbidity and mortality13,14. Therefore, appropriate use of antibiotics is an essential ingredient in the provision of quality health care, patient safety, and the rational use of health resources15 especially in a resource constrained nation like Nigeria. This underscores the need to monitoring antibiotics use in the scheme where the tendency for overuse is higher to ensure rational prescribing and use among health care providers and beneficiaries respectively.

In order to advise on effective strategies for more rational prescribing of antibiotics, a better understanding of factors with higher likelihood for an individual to have an antibiotic prescription is essential and development of targeted intervention programmes aimed at optimizing their use in those conditions is warranted.

Similar studies done under NHIS in the North East, South West, and North West Nigeria had reported irrational antibiotics use9,1618. The current situation in the University of Nigeria Teaching Hospital (UNTH) with respect to prescribing and use of antibiotics under NHIS is not documented. To our knowledge, no such study has been carried out purposively in an outpatient NHIS setting of the UNTH. Therefore, this study was undertaken to provide insights into antibiotics prescribing practices of the study setting and to gather baseline information that could serve as basis for designing appropriate interventions & policies to improve antibiotics prescribing in the scheme. The objectives of this study were to describe the systemic antibiotics prescription patterns and analyze the determinants of their utilization in the NHIS.

Methods

Setting

This study was conducted at the NHIS dispensing pharmacy outlet of the UNTH, Ituku-ozalla, Enugu, South East Nigeria. UNTH is a tertiary health care facility of about 500 bed capacity. It serves as the Teaching Hospital for the Faculty of Medicine of the University of Nigeria and is a participating health care provider in the scheme, and has over 20,000 enrollees. The department of pharmaceutical services is a service arm of the hospital. It provides pharmaceutical services to both the in-patients and out-patients that visit the hospital. NHIS dispensing pharmacy outlet is a dedicated pharmacy that attends to the medicine and medicine related needs of insured patients. It opens to patients throughout the workdays but the peak hours for out-patients transactions is from 10.00 am to 1.00 pm. All NHIS essential medicines are accessed from this pharmacy outlet except injections, creams, ophthalmic drugs, ear preparations, and surgical items which are accessed from other dispensing pharmacy outlets under NHIS coverage. NHIS prescriptions are filled, kept and stored in this pharmacy outlet for a minimum period of one year before disposal. As at time of this study, the average number of prescriptions dispensed per day was 50, and 4 pharmacists, 2 intern Pharmacists, 1 pharmacy technician, 1 pharmacy assistant, and 1 clerk were working in this pharmacy outlet.

Study design

This was descriptive, cross-sectional retrospective study that utilized prescription sheets issued to out-patients seen and treated under NHIS at the health care facility between January and December 2013.

Sampling

Systematic sampling with an interval of 20 was used to select prescriptions that were included in the study and simple balloting was used for the first pick.

Ethical consideration

Ethical approval was obtained from the Research and Ethics Committee of the hospital before the commencement of data collection.

Data collection

The data for this study were collected between August-October 2014 from the NHIS out-patient's prescription sheets of twelve months period of 2013. The following information including patient age in years, gender, months of prescription, number of all medicines prescribed, number of antibiotics prescribed, number of NHIS essential antibiotics prescribed, number of NHIS essential antibiotics prescribed by generic name, number of NHIS essential antibiotics dispensed, name of individual antibiotics and therapeutic class were extracted from the sampled prescription sheets into the pretested data collection forms.

Data analysis

The WHO drug use indicators investigated in this study were average number of medicines per encounter, average number of antibiotics per encounter, percentage of antibiotics prescribed by generic name, percentage of antibiotics prescribed from NHIS essential medicine list (EML) 2005 edition, and percentage of essential antibiotics dispensed15,19. These indicators were specifically chosen because they would provide information on particular areas of interest to the investigators.

The values of the prescribing indicators were calculated as follows:

  1. Average number of drugs prescribed per encounter =total number of drugs prescribed ÷ total number of encounters surveyed

  2. Average number of antibiotics prescribed per encounter = total number of antibiotics prescribed ÷ total number of encounters surveyed

  3. Percentage of NHIS essential antibiotics prescribed by generic name = (number of NHIS essential antibiotics prescribed by generic name ÷ total number of NHIS essential antibiotics prescribed) X 100

  4. Percentage of antibiotics prescribed from NHIS EML = (number of antibiotics prescribed from EML ÷ total number of antibiotics prescribed) X 100.

  5. Percentage of NHIS essential antibiotics dispensed =(number of NHIS essential antibiotics dispensed ÷ total number of NHIS essential antibiotics prescribed) X 100 Statistical analysis was done using the Statistical Package for Social Sciences (SPSS) version 21 (SPSS inc. Chicago) for Windows® and Microsoft® 2007 Excel package. The results were presented as mean (standard deviation), range, frequencies and percentages. Logistic regression analysis was performed to determine the predictors of antibiotics exposure. Statistical significance was set at p < 0.05.

Results

A total of 802 prescriptions were successfully analyzed. All encounters had 3214 drugs with an average of 4 medicines per prescription ranging from 1–11 medicines. The proportion of prescriptions with more than 4 medicines was 36.4%. Of all the medicines prescribed, 275 were antibiotics and 46.9% of these antibiotics were prescribed by generic name, whereas 82.9% were prescribed from NHIS EML as shown in Table 1.

Table 1.

Antibiotics prescribing indicators

Medicine Prescribing Indicator Value
Average number of medicines per prescription (Mean ± SD) 4.0 ± 1.8
Average number of antibiotics per encounter(Mean ± SD) 1.3 ± 0.5
Percentage of antibiotics prescribed by generic name (%) 46.9
Percentage of antibiotics prescribed from NHIS EML (%) 82.9
Percentage of antibiotics dispensed (%) 72.4

SD = Standard Deviation

A total of 211 encounters contained at least an antibiotic. Majority of patients that were prescribed antibiotics were females (57.3%) The mean age of patients exposed to antibiotics was 33.9 ± 19.3 years with majority within the age group of 12–59 years (72.5%). Most of the antibiotics were prescribed in the second quarter of the year (34.6%) as shown in Table 2.

Table 2.

Distribution of prescribed antibiotics in various age groups, gender and period of the year

Variable Antibiotics Prescribed n (%)
Age Group (Years) <5 20 (9.5)
5–11 25 (11.8)
12–59 153 (72.5)
≥60 13 (6.2)
Gender Female 121 (57.3)
Male 90 (42.7)
Period of the Year 1st Quarter 65 (30.8)
2nd Quarter 73 (34.6)
3rd Quarter 62 (29.4)
4th Quarter 11 (5.2)

Table 3 shows the prescribing rate for each individual antibiotic. Penicillins (43.3%), nitroimidazoles (22.2%) followed by floroquninolones (20.0%) were the most commonly prescribed antibiotic classes. Amoxicillin/clavulanate, and metronidazoles were the most frequently prescribed in the penicillins, and nitroimidazoles (73.1% vs 78.7%) therapeutic class categories respectively. Conversely, the tetracyclines, sulphonamides, and the lincosamides were rarely prescribed, accounting for only 4.0% of the total antibiotics surveyed.

Table 3.

Overall antibiotics prescription patterns (N =275)

Antibiotic Class n (%) Antibiotic Name n (%)
Penicillins 119(43.3) Amoxicillin+Clavulanate 87 (31.6)
Amoxicillin 21(7.6)
Ampicillin+Cloxacillin 7 (2.5)
Flucloxacillin 3 (1.1)
Ampicillin+Sulbactam 1 (0.4)
Nitroimidazoles 61(22.2) Metronidazole Secinidazole 48 (17.5) 10 (3.6)
Tinidazole 3 (1.1)
Floroquinolones 55(20.0) Ciprofloxacin Levofloxacin 36 (13.1) 14 (5.1)
Ofloxacin 5 (1.8)
Macrolides 14(5.1) Erythromycin Azithromycin 6 (2.2) 5 (1.8)
Clarithromycin 3 (1.1)
Cephalosporins 14(5.1) Cefixime 6 (2.2)
Cefpodoxime 4 (1.4)
Cefuroxime 3 (1.1)
Cephalexin 1 (0.4)
Tetracyclines 5(1.8) Doxycycline Tetracycline 4 (1.4) 1 (0.4)
Sulphonamide 5(1.8) Cotrimoxazole 5 (1.8)
Lincosamide 1(0.4) Clindamycin 1 (0.4)

Table 4 shows that out of the surveyed antibiotic prescriptions, 70.5% contained one antibiotic, 28.4% contained two antibiotics, while 1.0% contained three antibiotics. Amoxicillin/clavulanate contributed the highest share (43.0%) in the monotherapy group, Amoxicillin/clavulanate plus metronidazole (33.7%) was the most prescribed in the dual antibiotics combination category.

Table 4.

Prescribed antibiotics mono- and combination therapies

Variable Antibiotics n (%)
Monotherapy N = 149 Amoxicillin/Clavulanate 64 (43.0)
Ciprofloxacin 24 (16.1)
Amoxicillin 13 (8.7)
Ampicillin/Cloxacillin 6 (4.0)
Erythromycin 6 (4.0)
Cefixime 5 (3.4)
Levofloxacin 5 (3.4)
Others 26(17.4)
Dual therapy N = 60 Amoxicillin/Clavulanate+Metronidazole 19 (31.8)
Ciprofloxacin+Metronidazole 11(18.3)
Amoxicillin+Metronidazole 7 (11.7)
Levofloxacin + Secinidazole 6 (10.0)
Amoxicillin/Clavulanate+ Secinidazole 2 (3.3)
Cefpodoxime+Metronidazole 2 (3.3)
Doxycycline+Metronidazole 2 (3.3)
Others 11(18.3)
Triple therapy N = 2 Doxycycline+Metronidazole+Levofloxacin 2 (100.0)

Table 5 summarized the results of the antibiotic utilization determinants analysis. Age of the patients, and number of medicines per patient encounter were the main determinants of antibiotics exposure. In particular, being between 12–59 years old (OR 0.44, 95% CI 0.24 – 0.83), and ≥ 60 years old (OR 0.21, 95% CI 0.09 – 0.50) were significantly associated with least risk of antibiotics exposure, whereas taking more than 4 medicines was significantly associated with the highest risk of antibiotics exposure (OR 2.20, 95% CI 1.37 – 3.55).

Table 5.

Determinants of antibiotic exposure

Variable OR (95% CI) P value
Age group(years) <5 Reference
5–11 0.70 (0.32 – 1.50) 0.350
12–59 0.44 (0.24 – 0.83) 0.006*
≥60 0.21 (0.09 – 0.50) 0.001*
Gender Women Reference
Men 1.26 (0.92 – 1.74) 0.152
Period of year 1st Quarter Reference
2nd Quarter 0.79 (0.54 – 1.17) 0.237
3rd Quarter 0.92 (0.61 – 1.39) 0.690
4th Quarter 1.16 (0.54 – 2.50) 0.711
Number of
Medicines per
Encounter
1–2 Reference
3–4 1.63 (1.02 – 2.62) 0.042*
≥5 2.20 (1.37 . 3.55) 0.001*
*

Significant at P < 0.05

Discussion

This retrospective study shows high average number of medicines per prescription and low generic antibiotic prescribing, while more than two-third of the antibiotics surveyed were prescribed from NHIS EML. Majority of patients prescribed antibiotics were within the age group of 12–59 years; while more than one-half of the total prescriptions were written for females. The highest antibiotics prescription rate was recorded in the second quarter of the year. Penicillins followed by nitroimidazoles were the most prescribed antibiotic therapeutic classes, whereas amoxicillin/clavulanate followed by metronidazole was the most prescribed individual antibiotics. More than two-third of all antibiotics encounters constituted monotherapy. Age less than 5 years old and prescribing more medicines significantly increased the probability of receiving an antibiotics prescription.

The mean number of prescribed medicines found in this study was 4.1. This result is similar to 4.1 and 3.8 reported by studies that were conducted in the NHIS of tertiary healthcare facilities in the South West, and North West Nigeria respectively17,18. In contrast, a comparison of drug prescribing practices during a pre- and post-insurance era in a Nigerian hospital found the mean prescribed drugs to be 3.0 and 2.6, respectively16. Another study conducted in the NHIS of a tertiary healthcare facility in the North East Nigeria recorded a value of 3.49. The difference between the value reported by our study and these previous studies could be due to geographical variations, differences in prescribing habits and study settings. However, a study conducted under NHIS in Ghana reported a much lower value of 2.920. This lower value could be due to engagement of relevant stake holders on rationale prescribing habit in Ghanaian Health Insurance Scheme. Thus, the high average number of medicines per prescription in our study suggests poly-pharmacy. Polypharmacy increases the risk off unwanted side effects and of dangerous interactions between different medicines. The proportion of prescriptions that had more than 4 medicines was 36.4%. The level of poly-pharmacy in this study is comparable to 32.4% reported in the South West Nigeria17, but contrary to 14.1% recorded in North Central Nigeria21, 55.6% in Ghana22, and 47.9% in Cameroon23 respectively.

The percentage of generic antibiotics prescribed was 46.9%, which is considerably lower than the standard of 100%. This finding represents a severe underuse of generic antibiotics in the study setting. This result is consistent with the range of 45.8% – 57.0% reported by previous studies on general NHIS prescription audits9,1618 and non-NHIS prescription audits conducted in different parts of Nigeria21,24 and health insurance studies in Sudan that found 54.2% and 38.5% respectively25,26. When compared with the result of an earlier study done in another West African country, our value was far lower than 99.8% found in the NHIS in Ghana20. These much lower values were reported in Nigerian NHIS despite the fact that NHIS was established on generic medicine policy, in order to reduce health care cost on medicines. Therefore, these findings in Nigerian NHIS suggest poor implementation of this policy by relevant stakeholders. The implications of low generic use are primarily the wastage of scarce health resources and a decrease in access to pharmaceuticals because of an affordability barrier.

The concept of essential medicines was introduced to help streamline the number of medicines deployed within the health care system in order to improve rational prescribing and reducing health care costs. In this current study, 82.9% of all prescribed antibiotics were from the Nigerian NHIS EML. This is close to 91.0% reported by a study on general NHIS prescription audits in the North West Nigeria18. An NHIS study done in Sudan found 99.3% adherence to EML25. These findings indicate that there is still enough room for improvement in order to attain the 100% benchmark in our study setting. A study conducted in Ghana demonstrated that it is feasible to achieve an absolute adherence (100%) to EML in health insurance scheme20. The reason for this full adherence is because the Ghanaian insurance scheme reimburses only medicines prescribed from NHIS EML. Therefore, Nigerian NHIS should take cue from its Ghanaian counterpart and restrict medicines reimbursement to only medicines contained in the scheme's EML.

The current study showed higher antibiotic prescriptions for females than males consistent with the finding of a previous study done in Ghana20. Patients aged between 12–59 years had the highest antibiotic prescriptions when compared to other age groups and most of these antibiotics were prescribed in the second quarter of the year. This result is incongruent with the Ghanaian study that reported highest antibiotic prescriptionsfor patients below 5 years and in the first quarter of the year respectively20.

Our study revealed that penicillins followed by nitroimidazoles were the most prescribed antibiotic classes. This pattern is similar to the report of earlier study conducted in North West part of the country27, but contrary to the findings of other similar Nigerian studies21,28,29, and study done in a neighboring Cameroon23. Amoxicillin/clavulanate followed by metronidazole was the most frequently prescribed individual antibiotics comparable to amoxicillin, and metronidazole reported by similar non-insurance studies27,29. This result is not in agreement with the findings of non-insurance studies done in other parts of the country28,30,31 and Ghana22. The preference of Amoxicillin/clavulanate over other most prescribed antibiotics could be increasing affordability due to health insurance coverage.

Overall, 70.6% patients were treated with antibiotic monotherapy comparable with 96.5% reported by an Indian study32, but contrary to 38.1% found by a similar study conducted in the South East Nigeria31 and 39.5% reported by an Ethiopian study33. The antibiotic combination pattern showed that a combination of amoxicillin/clavulanate plus metronidazole (31.7%) had the highest share among the dual therapy prescriptions comparable with other studies that reported amoxicillin and metronidazole in the North West and South South Nigeria2729, but contrary to ciprofloxacin plus metronidazole recorded in Ghana22. Levofloxacin plus metronidazole plus doxycycline were the only triple combination recorded in the current study contrary to ciprofloxacin plus metronidazole plus doxycycline, and amoxicillin plus metronidazole plus doxycycline (21.5%) reported in North West Nigeria27,28. The differences in the observed prescribing patterns might be due to their availability in the hospital, differences in pathogen characteristics, physicians' antibiotic prescribing practices, antibiotic demand and patient characteristics, cultural and socioeconomic factors, and healthcare and legal environment.

Age groups 12–59 years and 60 years and above have lower risk of antibiotic exposure. This result is similar to the finding of a study conducted in Ghana20. This finding could be due to high prevalence of acute diarrhoeal disease and respiratory tract infections among children under 5 years in Nigeria34. Studies done in Nigeria confirmed that the exposure to antibiotics in children under 5 years of age is exceptionally high35. Studies from Portugal, Jordan, and Ethiopia also reported very high antibiotics exposure in children under 5 and fewer than 6 years of age36–38. Furthermore, this study revealed that increasing the number of medicines per encounter also increased the risk of receiving an antibiotic prescription. This finding suggests that antibiotics contribute significantly to poly-pharmacy recorded in this study.

Limitations

Only prescribed antibiotics were studied, drug prescription does not guarantee actual use. Secondly, the findings apply to only NHIS at the UNTH, and may thus be not representative of other NHIS settings in Nigeria which restricts generalization of the findings. Lastly, the study findings may not reflect the current antibiotics prescribing practice of the setting studied due to time lag between data collection and publishing of findings.

Conclusion

There were poly-pharmacy and non-adherence to generic antibiotic prescribing, whereas prescribing antibiotics from the essential medicine list was commendable but fell below the 100% of the NHIS guideline. Penicillins followed by nitroimidazoles were the most commonly prescribed antibiotic classes, whereas amoxicillin/clavulanate, and metronidazole were the most predominately prescribed individual antibiotics. Amoxicillin/clavulanate plus metronidazole was the most commonly prescribed antibiotic combination. Age, and number of medicines per encounter were significant determinants of antibiotic exposure.

Acknowledgement

The authors would like to extend their gratitude to Pharm (Dr.) Justin Ogbonna, Dr. Ndubuisi Ezema and staffers at the NHIS dispensing pharmacy outlet of UNTH for their technical support during data collection processes.

Funding

This research did not receive any specific grant from funding agencies in the public, commercial, or not-forprofit sectors.

Conflict of interest

Authors declared no conflict of interest.

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