| Literature DB >> 33834120 |
Hui-Han Chen1, Colleen Higgins1, Sarah K Laing2, Sarah L Bliese3, Marya Lieberman3, Sachiko Ozawa1,4.
Abstract
BACKGROUND: Over 10% of antibiotics in low- and middle-income countries (LMICs) are substandard or falsified. Detection of poor-quality antibiotics via the gold standard method, high-performance liquid chromatography (HPLC), is slow and costly. Paper analytical devices (PADs) and antibiotic paper analytical devices (aPADs) have been developed as an inexpensive way to estimate antibiotic quality in LMICs. AIM: To model the impact of using a rapid screening tools, PADs/aPADs, to improve the quality of amoxicillin used for treatment of childhood pneumonia in Kenya.Entities:
Keywords: Antibiotic; Kenya; falsified; medicines; pneumonia; quality; return on investment; substandard
Year: 2021 PMID: 33834120 PMCID: PMC8026160 DOI: 10.1177/2399202620980303
Source DB: PubMed Journal: Med Access Point Care ISSN: 2399-2026
Figure 1.Framework depicting three medicine quality testing scenarios.
HPLC: high-performance liquid chromatography; PADs/aPADs: paper analytical devices/antibiotic paper analytical devices.
Model input parameters and uncertainty ranges.
| Variables | Units | Values | Standard errors or uncertainty ranges | Sources |
|---|---|---|---|---|
| Epidemiologic & demographic | ||||
| Population under age 5 | Thousand | 6997 | – | UN DESA
|
| Life expectancy at birth | Year | 61.10 | – | UNICEF
|
| Pneumonia incidence for children under age 5 | % | 3.40 | 2.64–4.23 | O’Brien et al.
|
| Pneumonia prescribed with amoxicillin | % | 80 | 70–90 | Authors’ assumption |
| Care seeking from hospital | % | 61.98 | – | Nair et al.
|
| Distribution of patients | ||||
| National hospital | % | 24 | 3 | Ayieko et al.
|
| Provincial hospital | % | 20 | 3 | Ayieko et al.
|
| District hospital | % | 23 | 3 | Ayieko et al.
|
| Mission hospital | % | 31 | 3 | Ayieko et al.
|
| Average length of stay | ||||
| National hospital | Day | 8.20 | 2.05 | Ayieko et al.
|
| Provincial hospital | Day | 6.60 | 1.65 | Ayieko et al.
|
| District hospital | Day | 5.42 | 1.35 | Ayieko et al.
|
| Mission hospital | Day | 6.06 | 1.52 | Ayieko et al.
|
| Case-fatality ratio | ||||
| Hospital | % | 3.90 | 0.8 | Nair et al.
|
| Community | % | 9.20 | 2.3 | WHO
|
| Medicine quality testing | ||||
| Screening sensitivity | ||||
| PADs | % | 100 | – | Weaver et al.
|
| aPADs | % | 97 | – | Myers et al.
|
| HPLC | % | 100 | – | U.S. Pharmacopeia
|
| Screening specificity | ||||
| PADs | % | 100 | – | Weaver et al.
|
| aPADs | % | 92 | – | Myers et al.
|
| HPLC | % | 100 | – | U.S. Pharmacopeia
|
| Quality control for PADs | % | 10 | – | Authors’ assumption |
| Pills needed for each sample tested | ||||
| PADs | n | 1 | – | Weaver et al.
|
| aPADs | n | 1 | – | Weaver et al.
|
| HPLC | n | 100 | – | KPPB
|
| Substandard & falsified antibiotics | ||||
| Extra treatment time for SF antibiotics | Day | 5 | – | Authors’ assumption |
| Relative risk of mortality if receiving SF antibiotics | 2.00 | – | WHO
| |
| Market share and brand specific SF proportion | ||||
| Brand 1 | 13 (0) | – | Myers et al.
| |
| Brand 2 | 37 (0) | – | ||
| Brand 3 | 9 (11) | 10%
| ||
| Brand 4 | 2 (0) | – | ||
| Brand 5 | 20 (0) | – | ||
| Brand 6 | 4 (0) | – | ||
| Brand 7 | 2 (0) | – | ||
| Brand 8 | 1 (0) | – | ||
| Brand 9 | 9 (0) | – | ||
| Brand 10 | 10 (0) | – | ||
| Brand 11 | 37 (59) | 8%
| ||
| Brand 12 | 1 (0) | – | ||
| Brand 13 | 9 (0) | – | ||
| Costs | ||||
| Testing costs | ||||
| PADs | USD | 3.00 | 0.75
| Personal Communication |
| aPADs | USD | 3.00 | 0.75
| Personal Communication |
| HPLC | USD | 606.00 | 151.50
| Quote from MEDS
|
| Personnel sampling costs | USD/week | 250.00 | – | Expert opinion |
| Amoxicillin (250 mg/tab) price | USD | 0.005 | 0.001
| Calculated based on UNICEF’s report
|
| Diagnostic costs | ||||
| National hospital | USD | 23.73 | 85.26 | Ayieko et al.
|
| Provincial hospital | USD | 4.48 | 16.98 | Ayieko et al.
|
| District hospital | USD | 9.34 | 12.61 | Ayieko et al.
|
| Mission hospital | USD | 31.22 | 27.75 | Ayieko et al.
|
| Treatment costs | ||||
| National hospital | USD | 19.25 | 76.79 | Ayieko et al.
|
| Provincial hospital | USD | 8.34 | 23.14 | Ayieko et al.
|
| District hospital | USD | 3.74 | 7.05 | Ayieko et al.
|
| Mission hospital | USD | 26.48 | 25.03 | Ayieko et al.
|
| Daily hospital bed costs | ||||
| National hospital | USD | 22.17 | 28.78 | Ayieko et al.
|
| Provincial hospital | USD | 17.24 | 12.97 | Ayieko et al.
|
| District hospital | USD | 12.13 | 9.53 | Ayieko et al.
|
| Mission hospital | USD | 12.18 | 11.21 | Ayieko et al.
|
| Discount rate | % | 3.00 | – | Authors’ assumption |
| GDP per capita | USD | 1455.40 | – | World Bank
|
GDP: gross domestic product; HPLC: high-performance liquid chromatography; KPPB: Kenya Pharmacy and Poisons Board; MEDS: Mission for Essential Drugs and Supplies (Kenya); PADs/aPADs: paper analytical devices/antibiotic paper analytical devices; SF: substandard and falsified; UNDESA: United Nations Department of Economic and Social Affairs; UNICEF: United Nations Children’s Fund; USD: United States dollar; WHO: World Health Organization.
Standard error was estimated for brand specific substandard and falsified proportions.
Standard error was calculated based on 25% of the mean.
Figure 2.Monthly SF prevalence across medicine quality testing scenarios.
HPLC: high-performance liquid chromatography; PADs/aPADs: paper analytical devices/antibiotic paper analytical devices; SF: substandard or falsified.
The figure shows average monthly prevalence of SF Amoxicillin across 10,000 model runs. Dips demonstrate months where recalls of SF amoxicillin were simulated. After removal, SF prevalence can rebuild as new batches enter the market each month.
Average annual costs, investments, and returns to test amoxicillin quality in Kenya.
| HPLC (reference) | Expedited HPLC | PADs/aPADs | |
|---|---|---|---|
| Costs | |||
| Sampling, screening, testing, & removal costs | $9,153 | $9,153 | $6,120 |
| Incremental investment | $3,033 | $3,033 | $0 |
| Benefits | |||
| Treatment costs | $13,368,329 | $13,206,543 | $12,937,990 |
| Productivity losses: short-term | $5,364,369 | $5,289,872 | $5,166,347 |
| Long-term | $308,913,977 | $303,549,139 | $294,656,953 |
| Incremental return | |||
| Excluding productivity | $161,787 | $430,339 | |
| Including productivity | $5,601,122 | $14,855,385 | |
| Cost per benefit | |||
| Number of child pneumonia deaths | 12,707 | 12,486 | 12,120 |
| Deaths averted | 221 | 586 | |
| Cost per death averted | $41.42 | $10.44 | |
| Number of SF treatments received | 25,075 | 21,339 | 15,144 |
| SF treatments averted | 3,736 | 9,931 | |
| Cost per SF treatment averted | $2.45 | $0.62 | |
| SF treatments removed from market | 4,685 | 6,770 | 13,628 |
| Cost per SF treatment removed | $1.95 | $1.35 | $0.45 |
HPLC: high-performance liquid chromatography; PADs/aPADs: paper analytical devices/antibiotic paper analytical devices; SF: substandard or falsified.
The table presents annual average costs over 3 year model runs. Across all scenarios, the numbers of overall treatments (SF treatments + legitimate treatments) are kept constant. The PADs/aPADs with HPLC scenario draws three different samples over 3 years, and is thus is able to detect and remove more SF amoxicillin compared to other scenarios.
Figure 3.Annual incremental investment and returns (including productivity) across medicine quality testing scenarios.
HPLC: high-performance liquid chromatography; PADs/aPADs: paper analytical devices/antibiotic paper analytical devices; SF: substandard or falsified.
The model was run 10,000 times while varying input parameters based on distributions in Table 1. The HPLC and expedited HPLC scenarios closely overlap, as the testing costs for both scenarios are identical and yielded comparable impact on SF prevalence (Figure 2). The model consistently showed that PADs/aPADs scenario resulted in lower costs and greater benefits than HPLC alone.