| Literature DB >> 35895431 |
Sachiko Ozawa1,2, Hui-Han Chen1, Yi-Fang Ashley Lee1, Colleen R Higgins1, Tatenda T Yemeke1.
Abstract
Substandard and falsified medicines are often reported jointly, making it difficult to recognize variations in medicine quality. This study characterized medicine quality based on active pharmaceutical ingredient (API) amounts reported among substandard and falsified essential medicines in low- and middle-income countries (LMICs). A systematic review and meta-analysis was conducted using PubMed, supplemented by results from a previous systematic review, and the Medicine Quality Scientific Literature Surveyor. Study quality was assessed using the Medicine Quality Assessment Reporting Guidelines (MEDQUARG). Random-effects models were used to estimate the prevalence of medicines with < 50% API. Among 95,520 medicine samples from 130 studies, 12.4% (95% confidence interval [CI]: 10.2-14.6%) of essential medicines tested in LMICs were considered substandard or falsified, having failed at least one type of quality analysis. We identified 99 studies that reported API content, where 1.8% (95% CI: 0.8-2.8%) of samples reported containing < 50% of stated API. Among all failed samples (N = 9,724), 25.9% (95% CI: 19.3-32.6%) reported having < 80% API. Nearly one in seven (13.8%, 95% CI: 9.0-18.6%) failed samples were likely to be falsified based on reported API amounts of < 50%, whereas the remaining six of seven samples were likely to be substandard. Furthermore, 12.5% (95% CI: 7.7-17.3%) of failed samples reported finding 0% API. Many studies did not present a breakdown of actual API amount of each tested sample. We offer suggested improved guidelines for reporting poor-quality medicines. Consistent data on substandard and falsified medicines and medicine-specific tailored interventions are needed to ensure medicine quality throughout the supply chain.Entities:
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Year: 2022 PMID: 35895431 PMCID: PMC9209904 DOI: 10.4269/ajtmh.21-1123
Source DB: PubMed Journal: Am J Trop Med Hyg ISSN: 0002-9637 Impact factor: 3.707
Figure 1.Preferred Reporting Items for Systematic Reviews and Meta-analyses (PRISMA) diagram.
Figure 2.Forest plot of overall prevalence of substandard and falsified medicines. Sample size includes all medicine quality study samples tested. Antimalarials include studies that examined antimalarials but not antibiotics. Antibiotics exclude studies that examined antimalarials. Antimalarials and antibiotics category includes studies that examined both together. Sample sizes of 1) antiretrovirals, 2) antihypertensives, 3) analgesics and anti-inflammatories, and 4) uterotonics include studies that investigated the specific therapeutic category but not antibiotics or antimalarials, and may or may not include other therapeutic categories.
Studies reporting active pharmaceutical ingredient (API) amounts of samples that failed medicine quality tests, by therapeutic class
| Author (year) | Countries | Sample size | Incorrect or no API count (%) | < 50% API count (%) | < 80% API count (%) |
|---|---|---|---|---|---|
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| Roy et al. | Bangladesh | 53 | 0 (0.00%) | 0 (0.00%) | 16 (30.19%) |
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| Alotaibi et al. | Haiti, Ghana, Sierra, Leone, Democratic Republic of Congo, India, Papua New Guinea, Ethiopia | 290 | 0 (0.00%) | 0 (0.00%) | 4 (1.38%) |
| Bate et al. | Angola, Brazil, China, DRC, Egypt, Ethiopia, Ghana, India, Kenya, Mozambique, Nigeria, Russia, Rwanda, Tanzania, Thailand, Turkey, Uganda, Zambia | 1,437 | 59 (4.11%) | 59 (4.11%) | 142 (9.88%) |
| Bate et al. | Angola, DRC, Egypt, Ethiopia, Ghana, Kenya, Nigeria, Rwanda, Tanzania, Uganda, Zambia, India, Thailand, China, Turkey, Russia, Brazil | 713 | 0 (0.00%) | 29 (4.07%) | 65 (9.12%) |
| Bate et al. | Angola, DRC, Egypt, Ethiopia, Ghana, Kenya, Nigeria, Rwanda, Tanzania, Uganda, Zambia, India, Thailand, China, Turkey, Russia, Brazil, Mozambique | 1,470 | 57 (3.88%) | 57 (3.88%) | 160 (10.88%) |
| Bate et al. | Argentina | 687 | 14 (2.04%) | 14 (2.04%) | 48 (6.99%) |
| Boadu et al. | Ghana | 54 | 0 (0.00%) | 8 (14.81%) | 16 (29.63%) |
| Exebio et al. | Peru | 4,917 | 68 (1.38%) | 68 (1.38%) | 68 (1.38%) |
| Islam et al. | Myanmar | 235 | 3 (1.28%) | 3 (1.28%) | 3 (1.28%) |
| Kamau et al. | Kenya | 57 | 0 (0.00%) | 2 (3.51%) | 5 (8.77%) |
| Khan et al. | India | 59 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Khurelbat et al. | Mongolia | 1,236 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Khurelbat et al. | Mongolia | 1,770 | 0 (0.00%) | 0 (0.00%) | 73 (4.12%) |
| Kumar et al. | India | 3,925 | 90 (2.29%) | 90 (2.29%) | 110 (2.80%) |
| Kitutu et al. | Uganda | 179 | 3 (1.68%) | 3 (1.68%) | 10 (5.59%) |
| Laserson et al. | Colombia, Estonia, India, Latvia, Russia, Vietnam | 71 | 0 (0.00%) | 0 (0.00%) | 2 (2.82%) |
| Lawal et al. | Nigeria | 112 | 3 (2.68%) | 3 (2.68%) | 39 (34.82%) |
| Myers et al. | Kenya | 189 | 0 (0.00%) | 0 (0.00%) | 13 (6.88%) |
| Nabirova et al. | Kazakhstan | 854 | 0 (0.00%) | 0 (0.00%) | 36 (4.22%) |
| Nazerali et al. | Zimbabwe | 840 | 0 (0.00%) | 0 (0.00%) | 94 (11.19%) |
| Obaid et al. | Pakistan | 96 | 0 (0.00%) | 0 (0.00%) | 3 (3.13%) |
| Patel et al. | South Africa | 135 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Sabartova et al. | Armenia, Azerbaijan, Belarus, Estonia, Kazakhstan, Latvia, Moldova, Ukraine, Uzbekistan | 291 | 0 (0.00%) | 0 (0.00%) | 1 (0.34%) |
| Sakolkhai et al. | Thailand | 62 | 0 (0.00%) | 0 (0.00%) | 3 (4.84%) |
| Schafermann et al. | Togo | 92 | 0 (0.00%) | 1 (1.09%) | 1 (1.09%) |
| Tabernero et al. | Laos | 1,025 | 0 (0.00%) | 0 (0.00%) | 2 (0.20%) |
| Tshilumba et al. | Democratic Republic of Congo | 60 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Wahidullah et al. | Afghanistan | 348 | 0 (0.00%) | 1 (0.29%) | 1 (0.29%) |
| Wang et al. | South Africa, United States, China, Ethiopia, Thailand, Laos, Mexico, Nigeria | 88 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| WHO | Burkina Faso, Kenya, Madagascar, Nepal, Nigeria, Tajikistan, Tanzania, Uganda, Viet Nam, Zimbabwe | 204 | 1 (0.49%) | 1 (0.49%) | 5 (2.45%) |
| Yoshida et al. | Cambodia | 325 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
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| Antignac et al. | Benin, Burkina Faso, Republic of the Congo, the Democratic Republic of Congo, Guinea, Côte d’Ivoire, Mauritania, Niger, Senegal, Togo | 1,530 | 0 (0.00%) | 0 (0.00%) | 24 (1.57%) |
| Ndichu et al. | Nigeria | 102 | 0 (0.00%) | 0 (0.00%) | 6 (5.88%) |
| Rahman et al. | Cambodia | 372 | 0 (0.00%) | 6 (1.61%) | 7 (1.88%) |
| Redfern et al. | Nigeria | 361 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
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| Amin et al. | Kenya | 116 | 1 (0.86%) | 1 (0.86%) | 1 (0.86%) |
| Basco et al. | Cameroon | 284 | 76 (26.76%) | 76 (26.76%) | 84 (29.58%) |
| Belew et al. | Ethiopia | 74 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Bjorkman et al. | Uganda | 558 | 108 (19.35%) | 108 (19.35%) | 108 (19.35%) |
| Dondorp et al. | Myanmar, Lao PDR, Vietnam, Cambodia, Thailand | 232 | 99 (42.67%) | 103 (44.40%) | 103 (44.40%) |
| Evans et al. | Guyana and Suriname | 135 | 2 (1.48%) | 2 (1.48%) | 12 (8.89%) |
| Guo et al. | Myanmar | 153 | 1 (0.65%) | 1 (0.65%) | 1 (0.65%) |
| Idowu et al. | Nigeria | 50 | 3 (6.00%) | 3 (6.00%) | 3 (6.00%) |
| Ioset et al. | 13 countries in Asia, South America and Africa including Kenya, Nigeria, Vietnam; does not name all 13 | 171 | 2 (1.17%) | 2 (1.17%) | 2 (1.17%) |
| Kaur et al. | Tanzania | 304 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Kaur et al. | Equatorial Guinea (Bioko Island), Cambodia, Ghana, Nigeria, Rwanda, Tanzania | 10,079 | 98 (0.97%) | 98 (0.97%) | 98 (0.97%) |
| Khin et al. | Myanmar | 51 | 2 (3.92%) | 2 (3.92%) | 2 (3.92%) |
| Lalani et al. | Afghanistan | 134 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Maponga et al. | Gabon, Ghana, Kenya, Mali, Mozambique, Sudan, Zimbabwe | 288 | 0 (0.00%) | 0 (0.00%) | 13 (4.51%) |
| Mufusama et al. | Democratic Republic of the Congo | 150 | 4 (2.67%) | 6 (4.00%) | 19 (12.67%) |
| Mziray et al. | Tanzania | 1,444 | 1 (0.07%) | 1 (0.07%) | 1 (0.07%) |
| Newton et al. | Cambodia, Laos, Myanmar, Thailand, Vietnam | 104 | 39 (37.50%) | 39 (37.50%) | 39 (37.50%) |
| Newton et al. | Vietnam, Cambodia, Lao PDR, Myanmar, Thai/Myanmar border | 391 | 195 (49.87%) | 195 (49.87%) | 195 (49.87%) |
| Ochekpe et al. | Nigeria | 70 | 2 (2.86%) | 2 (2.86%) | 20 (28.57%) |
| Ogwal-Okeng et al. | Uganda | 88 | 0 (0.00%) | 0 (0.00%) | 11 (12.50%) |
| Osei-Safo et al. | Ghana, Togo | 124 | 1 (0.81%) | 1 (0.81%) | 6 (4.84%) |
| Phanouvong et al. | Cambodia | 374 | 8 (2.14%) | 17 (4.55%) | 31 (8.29%) |
| Tabernero et al. | Laos | 158 | 0 (0.00%) | 0 (0.00%) | 3 (1.90%) |
| Tipke et al. | Burkina Faso | 77 | 1 (1.30%) | 1 (1.30%) | 13 (16.88%) |
| Visser et al. | Gabon | 432 | 1 (0.23%) | 2 (0.46%) | 2 (0.46%) |
| WHO | Madagascar, Senegal, Uganda | 197 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| WHO | Cameroon, Ethiopia, Ghana, Kenya, Nigeria, Tanzania | 267 | 2 (0.75%) | 3 (1.12%) | 8 (3.00%) |
| Yeung et al. | Cambodia | 291 | 0 (0.00%) | 2 (0.69%) | 50 (17.18%) |
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| Baratta et al. | Congo, Ethiopia, India, Malawi, CAR, Guinea Conakry, Uganda, Brazil, Guinea Bissau, Madagascar, Kenya, Angola, Rwanda, Cameroon, Chad | 221 | 4 (1.81%) | 4 (1.81%) | 4 (1.81%) |
| Bate et al. | Ghana, Tanzania, Uganda, Nigeria, Angola, Zambia, Kenya, India, Thailand, China, Turkey, Russia, Brazil | 2,065 | 0 (0.00%) | 0 (0.00%) | 210 (10.17%) |
| Central Drug Standard Control Organization | India | 2,976 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Food and Drug Department | Lao | 1,567 | 10 (0.64%) | 10 (0.64%) | 18 (1.15%) |
| Food and Drug Department | Lao | 114 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Frimpong et al. | Ghana | 68 | 0 (0.00%) | 5 (7.35%) | 15 (22.06%) |
| Hajjou et al. | Ghana, Ethiopia, Liberia, Kenya, and Mozambique, Cambodia, Indonesia, Laos, Myanmar, Philippines, Thailand, Vietnam, China, Colombia, Ecuador, Guyana, Peru | 15,063 | 81 (0.54%) | 81 (0.54%) | 81 (0.54%) |
| Hetzel et al. | Papua New Guinea | 360 | 0 (0.00%) | 2 (0.56%) | 25 (6.94%) |
| Kaale et al. | Tanzania | 242 | 0 (0.00%) | 5 (2.07%) | 14 (5.79%) |
| Khan et al. | Cambodia | 679 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Khuluza et al. | Malawi | 56 | 1 (1.79%) | 2 (3.57%) | 3 (5.36%) |
| Kibwage et al. | Kenya | 262 | 1 (0.38%) | 1 (0.38%) | 17 (6.49%) |
| Lon et al. | Cambodia | 451 | 90 (19.96%) | 90 (19.96%) | 114 (25.28%) |
| Petersen et al. | Cameroon, Democratic Republic of the Congo, India, Ghana, Kenya, Nigeria, Uganda | 869 | 12 (1.38%) | 19 (2.19%) | 20 (2.30%) |
| Phanouvong et al. | Thailand | 709 | 4 (0.56%) | 6 (0.85%) | 6 (0.85%) |
| Pribluda et al. | Bolivia, Brazil, Colombia, Ecuador, Guyana, Suriname, Venezuela | 1,663 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Risha et al. | Tanzania | 1,257 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Schiavetti et al. | Democratic Republic of the Congo | 239 | 0 (0.00%) | 0 (0.00%) | 8 (3.35%) |
| Seear et al. | India | 300 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Shakoor et al. | Nigeria, Thailand | 96 | 6 (6.25%) | 6 (6.25%) | 6 (6.25%) |
| Stenson et al. | Laos | 366 | 12 (3.28%) | 12 (3.28%) | 17 (4.64%) |
| Syhakhang et al. | Laos | 666 | 15 (2.25%) | 15 (2.25%) | 20 (3.00%) |
| Taylor et al. | Nigeria | 581 | 6 (1.03%) | 13 (2.24%) | 32 (5.51%) |
| Uganda Medicines Transparency Alliance | Uganda | 105 | 0 (0.00%) | 0 (0.00%) | 5 (4.76%) |
| Wondemagegnehu et al. | Myanmar, Vietnam | 500 | 1 (0.20%) | 3 (0.60%) | 14 (2.80%) |
| WHO | Cameroon, Madagascar, Chad | 429 | 17 (3.96%) | 17 (3.96%) | 58 (13.52%) |
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| Kuwana et al. | Burkina Faso, Democratic Republic of the Congo, Nigeria, Rwanda, Zambia | 126 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Ministry of Medical Services | Kenya | 272 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| WHO | Cameroon, Democratic Republic of the Congo, Kenya, Nigeria, Tanzania, Uganda, Zambia | 394 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
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| Anyakora et al. | Nigeria | 637 | 0 (0.00%) | 0 (0.00%) | 0 (0.00%) |
| Hall et al. | Bangladesh, Egypt, Cambodia, Kenya, India, Mexico, Nigeria, Pakistan, Peru, Vietnam, Nigeria, Nepal, Pakistan, Bangladesh, Argentina, Indonesia, Peru, Philippines, Kazakhstan | 215 | 14 (6.51%) | 14 (6.51%) | 14 (6.51%) |
| Karikari-Boateng et al. | Ghana | 279 | 5 (1.79%) | 5 (1.79%) | 5 (1.79%) |
| Stanton et al. | Ghana | 101 | 1 (0.99%) | 25 (24.77%) | 57 (56.40%) |
| Stanton et al. | India | 381 | 0 (0.00%) | 16 (4.20%) | 44 (11.53%) |
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| Laroche et al. | Mauritania | 146 | 0 (0.00%) | 0 (0.00%) | 5 (3.42%) |
| Suleman et al. | Ethiopia | 106 | 0 (0.00%) | 0 (0.00%) | 1 (0.94%) |
Other includes phenobarbital, mebendazole, albendazole, and tinidazole.
Figure 3.Proportion of samples that failed medicine quality tests by active pharmaceutical ingredient (API) levels. Sample size (99 studies, N = 9,724) includes studies with enough information to distinguish proportions of failed samples for no or incorrect API, > 50% API, and > 80% API.
Figure 4.Medicines with < 50% active pharmaceutical ingredient (API) among samples that failed medicine quality tests. Sample size includes medicines found to be substandard or falsified across medicine quality studies. Classifications among therapeutic classes are the same as in Figure 2.
Suggested guidelines for reporting poor-quality medicines as substandard or falsified medicines
| Medicine quality | WHO definition | Operational characterizations of medicine quality | Suggested guidelines for medicine quality reporting |
|---|---|---|---|
| Falsified | Medical products that deliberately/fraudulently misrepresent their identity, composition or source | If at least one of the following is true:
- Contains 0% - Contains an incorrect API - Manufacturer credibly confirms the packaging misrepresents the identity of the medicine - Analysis of the packaging gives conclusive evidence for falsification (e.g., the stated manufacturer does not exist) |
Report numerical values of % API for every medicine tested, denoting the medicine, country, and region it was obtained from, sampled location (e.g., entry ports, warehouses, district hospitals, health centers, pharmacies, informal outlets), and method obtained (e.g., overt, mystery client). Visual inspection of packaging should be accompanied by findings from chemical testing to assess % API and results of communication with the manufacturer to confirm the source. Report if evidence for degradation exists (e.g., exhibiting multiple peaks in HPLC chromatogram) for samples containing < 80% API. Performance tests such as dissolution or disintegration test results should be reported for tablets alongside information on % API (e.g., results of Minilab tablet disintegration procedure). |
| Likely Falsified | Contains < 50% API and there is no evidence of decomposition | ||
| Likely Substandard | Authorized medical products that fail to meet either their quality standards, specifications, or both | Extreme deviation - The content of API deviates by more than 20% from the declared content - For tablets, an average dissolution value of tested units below pharmacopoeial Q value minus 25% |
API = active pharmaceutical ingredient; HPLC = high-performance liquid chromatography.