| Literature DB >> 32938614 |
Jishnu Das1,2, Madhukar Pai3,4,5, Giorgia Sulis6,4, Benjamin Daniels1, Ada Kwan7, Sumanth Gandra8, Amrita Daftary9,10.
Abstract
INTRODUCTION: Determining whether antibiotic prescriptions are inappropriate requires knowledge of patients' underlying conditions. In low-income and middle-income countries (LMICs), where misdiagnoses are frequent, this is challenging. Additionally, such details are often unavailable for prescription audits. Recent studies using standardised patients (SPs) offer a unique opportunity to generate unbiased prevalence estimates of antibiotic overuse, as the research design involves patients with predefined conditions.Entities:
Keywords: epidemiology; other study design; treatment
Mesh:
Substances:
Year: 2020 PMID: 32938614 PMCID: PMC7493125 DOI: 10.1136/bmjgh-2020-003393
Source DB: PubMed Journal: BMJ Glob Health ISSN: 2059-7908
Main features of SP studies included in our analyses
| Study site (year) | SP–provider interactions | Tracer conditions | Healthcare sector | Facility location | Provider selection approach | Provider consent | Provider participation* |
| China (2013) | 600 | Angina, child diarrhoea | Public | Rural | Census of all clinics designated under the New Cooperative Medical Scheme (ie, the major public health insurance programme in rural areas), followed by random selection of providers | Yes | 100% |
| China (2015) | 299 | Presumptive TB | Public | Rural | Census of all public providers followed by random sampling from one prefecture in each of 3 provinces out of a total of 47 prefectures, chosen to be representative of rural health systems | Yes | 274/274 (100%) |
| Kenya (2014) | 166 | Angina, asthma, child diarrhoea, presumptive TB | Public and private | Urban | Non-random convenience sample designed to include low-income, middle-income and high-income neighbourhoods in various Nairobi areas | Yes | 46/49 (93.9%) |
| Madhya Pradesh, India (2010 | 1123 | Angina, asthma, child diarrhoea | Public and private | Rural | Census of all medical care providers working in 60 villages randomly sampled in three districts in Madhya Pradesh; all public providers and qualified private providers were automatically sampled; for each public provider, the closest private practitioner was also sampled | No | Not applicable |
| Delhi, India (2014) | 250 | Presumptive and confirmed TB, presumptive MDR-TB | Private | Urban | Convenience sample (pilot study) | Yes | Not available |
| Mumbai and Patna, India (2014 | 2602 | Presumptive and confirmed TB, presumptive MDR-TB | Private | Urban | Street-by-street mapping of private providers who were known to see adult outpatients with respiratory symptoms, followed by random sampling stratified by provider qualification and private provider interface agency registration status | No | Not applicable |
| Birbhum district, West Bengal, India (2012 | 823 | Angina, respiratory distress, child diarrhoea | Private | Rural | Census of private health providers who had been practising for at least 3 years in 203 villages across Birbhum district | Yes | 304/360 (84.4%) |
| Mumbai, Patna and Delhi, India | 1200 | Presumptive TB, confirmed TB | Pharmacies | Urban | Convenience sample of 54 pharmacies from 28 low-income localities in Delhi (pilot phase), random sampling of pharmacies in Mumbai and Patna from a list of all pharmacies registered in the two cities | No | Not applicable |
| Udupi district, Karnataka, India (2018) | 1522 | For both adults and children: upper respiratory tract infection, diarrhoea, presumptive malaria | Pharmacies | Urban and rural | Of the 350 pharmacies registered in the district as per the local pharmacy association, 279 were considered eligible for the study after excluding those operating inside hospitals (47), those permanently closed or under renovations (10), those that could not be identified by the field team (4), those for veterinarian purposes only (1) and those used for SP training (10). | No | Not applicable |
*For studies in which provider consent was required.
MDR-TB, multidrug resistant tuberculosis; SP, standardised patient; TB, tuberculosis.
Number, proportion and bootstrapped 95% CIs (based on study-level clusters) of standardised patient–provider interactions in health facilities that resulted in prescription or dispensing of antibiotics across strata of key variables
| Variable | Country | |||||||
| All | India | China | Kenya | |||||
| n/N | Proportion | n/N | Proportion | n/N | Proportion | n/N | Proportion | |
| At least one antibiotic | 2734/5863 | 46.6 (33.4 to 53.9) | 2392/4798 | 49.9 (40.8 to 54.5) | 259/899 | 28.8 (17.8 to 50.8) | 83/166 | 50.0 (42.2 to 57.8) |
| Antibiotics, n | ||||||||
| 0 | 3129/5863 | 53.4 (46.1 to 66.6) | 2406/4798 | 50.1 (45.4 to 57.9) | 640/899 | 71.2 (49.2 to 71.2) | 83/166 | 50.0 (42.2 to 57.8) |
| 1 | 2465/5863 | 42.0 (31.4 to 47.4) | 2159/4798 | 45.0 (39.8 to 48.2) | 229/899 | 25.5 (25.5 to 42.8) | 77/166 | 46.4 (39.2 to 54.2) |
| 2 | 260/5863 | 4.4 (1.6 to 6.5) | 225/4798 | 4.7 (1.4 to 6.6) | 29/899 | 3.2 (3.2 to 7.7) | 6/166 | 3.6 (1.2 to 6.6) |
| 3 | 9/5863 | 0.2 (0.02 to 0.3) | 8/4798 | 0.2 (0.03 to 0.3) | 1/899 | 0.1 (0.1 to 0.3) | 0/166 | 0 |
| Health facility location | ||||||||
| Urban | 1653/3018 | 54.8 (50.0 to 55.2) | 1570/2852 | 55.0 (53.0 to 55.2) | – | – | 83/166 | 50.0 (42.8 to 57.8) |
| Rural | 1081/2845 | 38.0 (26.6 to 48.1) | 822/1946 | 42.2 (39.0 to 46.7) | 259/899 | 28.8 (17.8 to 50.8) | – | – |
| Healthcare sector | ||||||||
| Public | 443/1321 | 33.5 (20.6 to 50.8) | 156/367 | 42.5 (37.6 to 47.7) | 259/899 | 28.8 (17.8 to 50.8) | 28/55 | 50.9 (38.2 to 63.6) |
| Private | 2291/4542 | 50.4 (40.8 to 54.5) | 2236/4431 | 50.5 (50.2 to 54.5) | – | – | 55/111 | 49.5 (40.1 to 51.6) |
| Provider qualification | ||||||||
| Qualified | 1186/1906 | 62.2 (45.4 to 71.3) | 1115/1768 | 63.1 (44.6 to 71.8) | 71/138 | 51.4 (42.8 to 59.4) | NA | NA |
| Non-qualified | 1358/3191 | 42.6 (38.7 to 48.6) | 1277/3030 | 42.1 (37.8 to 47.9) | 81/161 | 50.3 (42.9 to 57.8) | NA | NA |
| Clinical presentation | ||||||||
| Angina | 169/955 | 17.7 (12.2 to 28.3) | 115/598 | 19.2 (16.8 to 21.1) | 29/315 | 9.2 (5.9 to 12.4) | 25/42 | 59.5 (45.2 to 73.8) |
| Asthma | 330/718 | 46.0 (44.0 to 50.2) | 308/676 | 45.6 (43.5 to 49.0) | – | – | 22/42 | 52.4 (38.1 to 66.7) |
| Child diarrhoea | 490/997 | 49.1 (33.4 to 67.9) | 399/672 | 59.4 (50.5 to 75.0) | 78/285 | 27.4 (21.8 to 32.5) | 13/40 | 32.5 (17.5 to 45.5) |
| Presumptive TB | 1293/2253 | 57.4 (51.3 to 58.6) | 1118/1912 | 58.5 (58.4 to 59.3) | 152/299 | 50.8 (44.8 to 56.2) | 23/42 | 54.8 (39.3 to 69.0) |
| Confirmed TB | 194/404 | 48.0 (47.7 to 50.0) | 194/404 | 48.0 (47.7 to 50.0) | – | – | – | – |
| Presumptive MDR-TB | 258/536 | 48.1 (48.0 to 48.1) | 258/536 | 48.1 (48.0 to 48.1) | – | – | – | – |
| Patient referred for further evaluation* | ||||||||
| Yes | 101/767 | 13.2 (9.4 to 20.4) | 65/498 | 13.1 (9.7 to 17.4) | 33/263 | 12.5 (7.3 to 31.6) | 3/6 | 50.0 (16.7 to 83.3) |
| No | 2163/4384 | 50.7 (35.6 to 57.5) | 1928/3628 | 53.1 (38.4 to 58.0) | 226/636 | 35.5 (23.3 to 55.4) | 67/120 | 55.8 (47.5 to 64.2) |
*All child diarrhoea cases from India and Kenya (n=712) were excluded from this analysis because children were not directly assessed by the provider.
MDR-TB, multidrug resistant tuberculosis; NA, not available; TB, tuberculosis.
Figure 1Crude percentage of SP—provider interactions resulting in antibiotic prescription/dispensing, by country and selected conditions (pharmacy-based studies are not included). SP, standardised patient; TB, tuberculosis.
Frequency of antibiotics prescribed/dispensed in health facilities across study countries, overall and according to both the AWaRe and ATC classifications
| Drug type | India | China | ||||||
| All settings | Urban India | Rural India | ||||||
| N | Proportion (95% CI) | N | Proportion (95% CI) | N | Proportion (95% CI) | N | Proportion (95% CI) | |
| Any antibiotic | 2768 | – | 1896 | – | 872 | – | 301 | – |
| AWaRe classification | ||||||||
| Access | 876 | 31.6 (30.0 to 38.9) | 584 | 30.8 (29.8 to 30.8) | 292 | 33.5 (29.9 to 37.1) | 126 | 41.9 (36.2 to 47.2) |
| Watch | 1317 | 47.6 (26.8 to 54.0) | 1041 | 54.9 (54.9 to 55.4) | 276 | 31.7 (21.2 to 40.3) | 99 | 32.9 (27.6 to 37.9) |
| Reserve | 23 | 0.8 (0.5 to 1.8) | 8 | 0.4 (0.4 to 0.5) | 15 | 1.7 (1.0 to 2.1) | 1 | 0.3 (0.3 to 1.3) |
| Discouraged | 334 | 12.1 (4.3 to 36.3) | 50 | 2.6 (2.6 to 2.8) | 284 | 32.6 (25.1 to 44.8) | 1 | 0.3 (0.3 to 1.3) |
| Not available* | 218 | 7.9 (5.4 to 10.8) | 213 | 11.2 (11.2 to 11.5) | 5 | 0.57 (0.3 to 1.0) | 74 | 24.6 (19.9 to 29.2) |
| ATC classification | ||||||||
| Penicillin | 711 | 25.7 (18.8 to 27.0) | 535 | 28.2 (27.7 to 28.2) | 176 | 20.2 (17.6 to 21.7) | 68 | 22.6 (17.6 to 27.2) |
| Cephalosporin | 361 | 13.0 (8.2 to 14.6) | 294 | 15.0 (14.9 to 15.0) | 76 | 8.7 (7.8 to 10.7) | 75 | 24.9 (20.9 to 29.2) |
| First generation | 21 | 0.8 (0.6 to 1.8) | 9 | 0.5 (0.47 to 0.51) | 12 | 1.4 (1.1 to 2.1) | 0 | 0 |
| Second generation | 22 | 0.8 (0.2 to 1.1) | 20 | 1.1 (1.1 to 1.2) | 2 | 0.2 (0.2 to 0.4) | 7 | 2.3 (0.7 to 4.0) |
| Third generation | 318 | 11.5 (7.1 to 12.9) | 256 | 13.5 (13.3 to 13.5) | 62 | 7.1 (6.4 to 8.1) | 1 | 0.3 (0.3 to 1.0) |
| Not available* | 0 | 0 | 0 | 0 | 0 | 0 | 67 | 22.3 (18.3 to 26.6) |
| Macrolide | 425 | 15.4 (4.1 to 19.3) | 389 | 20.5 (20.4 to 21.3) | 36 | 4.1 (4.1 to 4.3) | 60 | 19.9 (15.6 to 24.3) |
| Quinolone | 520 | 18.8 (16.6 to 24.2) | 354 | 18.7 (18.5 to 18.7) | 166 | 19.0 (18.5 to 26.8) | 37 | 12.3 (9.0 to 15.9) |
| Tetracycline | 67 | 2.4 (1.7 to 4.6) | 34 | 1.8 (1.4 to 1.8) | 33 | 3.8 (3.0 to 4.1) | 0 | 0 |
| Imidazole† | 61 | 2.2 (0.8 to 7.1) | 1 | 0.05 (0.05 to 0.06) | 60 | 6.9 (6.3 to 7.5) | 1 | 0.3 (0.3 to 1.3) |
| Sulfonamide‡ | 18 | 0.7 (0.2 to 1.9) | 3 | 0.16 (0.16 to 0.17) | 15 | 1.7 (0.9 to 2.1) | 9 | 3.0 (1.3 to 5.0) |
| Aminoglycoside | 6 | 0.2 (0.1 to 1.0) | 0 | 0 | 6 | 0.7 (0.7 to 1.3) | 45 | 15.0 (11.3 to 18.6) |
| Combinations§ | 289 | 12.1 (5.1 to 34.2) | 50 | 2.6 (2.6 to 2.8) | 284 | 32.6 (25.1 to 34.2) | 1 | 0.3 (0.3 to 1.3) |
| Antimycobacterial | 229 | 8.3 (0.3 to 10.9) | 226 | 11.9 (11.9 to 12.2) | 3 | 0.3 (0.2 to 0.5) | 1 | 0.3 (0.3 to 1.3) |
| Other antibiotics | 36 | 1.3 (1.0 to 2.4) | 19 | 1.0 (0.1 to 1.0) | 17 | 1.9 (1.8 to 2.6) | 4 | 1.3 (0.3 to 2.7) |
The unit of analysis is the individual drug, not the standardised patient–provider interaction.
*For these drugs, only the antibiotic class (eg, cephalosporin) was available.
†Only metronidazole was prescribed/dispensed.
‡Only trimethoprim–sulfamethoxazole was prescribed/dispensed.
§This category does not include combinations of antimycobacterial drugs.
ATC, Anatomical–Therapeutic–Chemical; AWaRe, Access–Watch–Reserve.
Figure 2Factors associated with antibiotic prescribing/dispensing in health facilities in India. Covariate-adjusted prevalence ratios and their 95% CIs estimated from a hierarchical Poisson model are reported. SP, standardised patient; TB, tuberculosis.
Antibiotic dispensing in Indian pharmacies
| Variable | Study setting | |||
| Udupi district, Karnataka | Mumbai, Delhi and Patna | |||
| n/N | Proportion (95% CI) | n/N | Proportion (95% CI) | |
| Number of antibiotics | ||||
| 1 | 55/1522 | 3.6 (2.6 to 4.6) | 294/1,00 | 24.5 (22.2 to 27.0) |
| 2 | 0 | 0 | 25/1200 | 2.1 (1.3 to 2.9) |
| Pharmacy location | ||||
| Urban | 25/744 | 3.3 (2.2 to 4.7) | 319/1200 | 26.6 (24.2 to 29.2) |
| Rural | 30/778 | 3.9 (2.7 to 5.2) | – | – |
| Clinical presentation | ||||
| Adult with URI | 11/250 | 4.4 (2.0 to 7.2) | – | – |
| Adult with diarrhoea | 12/259 | 4.6 (2.3 to 7.1) | – | – |
| Adult with fever (malaria suspect) | 10/252 | 4.0 (1.6 to 6.3) | – | – |
| Child with URI | 0/252 | 0 | – | – |
| Child with diarrhoea | 20/250 | 8.0 (4.8 to 11.2) | – | – |
| Child with fever (malaria suspect) | 2/259 | 0.8 (0.4 to 1.9) | – | – |
| Adult with presumptive TB | – | – | 221/599 | 36.9 (33.1 to 40.7) |
| Adult with confirmed TB | – | – | 98/601 | 16.3 (13.5 to 19.3) |
| Patient referred to health provider | ||||
| Yes | 15/710 | 2.1 (1.1; 3.1) | 41/497 | 8.2 (5.8; 10.9) |
| No | 40/812 | 4.9 (3.6; 6.4) | 278/703 | 39.5 (36.1; 43.2) |
TB, tuberculosis; URI, upper respiratory illness.