0099/2021 - Diferenças na disponibilidade de medicamentos prescritos na Atenção Primária: evidências do Projeto Prover
Differences in medicines availability at Primary Health Care: evidencesProver Project
Autor:
• Maria Angélica Martins Bueno - Bueno, M. A. M. - <buenoangelicafarmacia@gmail.com>ORCID: https://orcid.org/0000-0002-9930-0219
Coautor(es):
• Taynãna César Simões - Simões, T.C - <taynana.simoes@fiocruz.br>ORCID: https://orcid.org/0000-0002-5849-343X
• Tatiana Chama Borges Luz - Luz, T.C.B. - Belo Horizonte, - <tatianachama@cpqrr.fiocruz.br, tatiana.luz@fiocruz.br>
ORCID: https://orcid.org/0000-0003-1323-3105
Resumo:
Estudo transversal da disponibilidade de medicamentos prescritos na Atenção Primária, com amostra probabilística de 1221 usuários das farmácias públicas de município polo de saúde em Minas Gerais, em 2017. Foram estimados indicadores de disponibilidade dos medicamentos e realizou-se regressão logística hierárquica, segundo o modelo comportamental de uso de serviços de saúde. Apenas 39,3% dos usuários receberam todos os medicamentos nas quantidades prescritas. Os medicamentos mais e menos disponíveis foram, respectivamente, os que atuam no sistema digestivo/metabolismo, e no sangue e órgãos hematopoiéticos. A disponibilidade integral do tratamento se mostrou associada à maior escolaridade (? 8 anos OR: 1,7; IC 95%: 1,3-2,4); proximidade até a farmácia (?15 min OR: 1,7; IC 95%: 1,2-2,3); ausência de gastos privados com medicamentos (OR: 2,2; IC 95%: 1,7-2,9) e menor número de medicamentos prescritos (? 2 OR: 3,2; IC 95%: 2,3-4,4; 3/4 OR: 1,6; IC 95%: 1,2-2,1). Esses resultados mostram diferenças na disponibilidade de medicamentos dentro do SUS, evidenciando a necessidade de reorganização da rede de atendimento dos serviços de dispensação e do planejamento das aquisições de medicamentos, além da proposição de políticas públicas que priorizem a população mais vulnerável.Palavras-chave:
Atenção Primária à Saúde; Assistência Farmacêutica; Prescrições; Provisão; Medicamentos.Abstract:
Cross-sectional study on the availability of prescribed medicines in Primary Health Care (PHC), with a probabilistic sample of 1,221 patientsPHC public pharmacies in a health pole municipality in Minas Gerais, 2017. We estimated indicators of medicines availability and run hierarchical logistic regression following the behavioral model of health services use. Only 39.3% of patients received all medications and in the prescribed quantities. The most and the least available drugs were, respectively, those for the digestive system/metabolism and for blood and hematopoietic organs. Full availability of the prescribed treatment was associated with higher education (≥ 8 years OR: 1.7; 95% CI: 1.3-2.4); proximity to the pharmacy (≤15 min OR: 1.7; 95% CI: 1.2-2.3); absence of out-of-pocket expenditure on medicines (OR: 2.2; 95% CI: 1.7-2.9) and lower number of prescription drugs (≤ 2 OR: 3.2; 95% CI: 2.3-4.4; 3/4 OR: 1.6; 95% CI: 1.2-2.1). These results showed differences in medicines availability within the Brazilian National Healthcare System (SUS) and highlighted the need to reorganize the dispensing services network and the pharmaceutical procurement planning, as well as to develop public policies to protect the vulnerable population.Keywords:
Primary Health Care; Pharmaceutical Services; Prescriptions; Supply; Medicines.Conteúdo:
Acessar Revista no ScieloOutros idiomas:
Differences in medicines availability at Primary Health Care: evidencesProver Project
Resumo (abstract):
Cross-sectional study on the availability of prescribed medicines in Primary Health Care (PHC), with a probabilistic sample of 1,221 patientsPHC public pharmacies in a health pole municipality in Minas Gerais, 2017. We estimated indicators of medicines availability and run hierarchical logistic regression following the behavioral model of health services use. Only 39.3% of patients received all medications and in the prescribed quantities. The most and the least available drugs were, respectively, those for the digestive system/metabolism and for blood and hematopoietic organs. Full availability of the prescribed treatment was associated with higher education (≥ 8 years OR: 1.7; 95% CI: 1.3-2.4); proximity to the pharmacy (≤15 min OR: 1.7; 95% CI: 1.2-2.3); absence of out-of-pocket expenditure on medicines (OR: 2.2; 95% CI: 1.7-2.9) and lower number of prescription drugs (≤ 2 OR: 3.2; 95% CI: 2.3-4.4; 3/4 OR: 1.6; 95% CI: 1.2-2.1). These results showed differences in medicines availability within the Brazilian National Healthcare System (SUS) and highlighted the need to reorganize the dispensing services network and the pharmaceutical procurement planning, as well as to develop public policies to protect the vulnerable population.Palavras-chave (keywords):
Primary Health Care; Pharmaceutical Services; Prescriptions; Supply; Medicines.Ler versão inglês (english version)
Conteúdo (article):
Diferenças na disponibilidade de medicamentos prescritos na Atenção Primária: evidências do Projeto ProverDifferences in prescribed medicine availability in Primary Health Care: evidence from the Prover Project
Maria Angélica Martins Bueno1, Taynãna César Simões2 e Tatiana Chama Borges Luz1,3*
1. Group for Transdisciplinary Studies in Health Technologies and Environment (Getesa/René Rachou Research Institute), Oswaldo Cruz Foundation, Minas Gerais, Brazil. ORCID: 0000-0002-9930-0219. E-mail: buenoangelicafarmacia@gmail.com
2. Center for Studies in Public Health and Aging (NESPE/René Rachou Research Institute), Oswaldo Cruz Foundation, Minas Gerais, Brazil. ORCID: 0000-0002-5849-343X.
E-mail: tay_estatistica@yahoo.com.br
3. Strathclyde Institute of Pharmacy and Biomedical Sciences (SIPBS), Scotland. ORCID: 0000-0003-1323-3105. E-mail: tatiana.luz@fiocruz.br
* Corresponding author:
Address: Avenida Augusto de Lima, 1715, Anexo, Barro Preto. Belo Horizonte, Minas Gerais, Brasil. CEP: 30.190-002 Tel: (+55) 31- 3349-7734
E-mail: tatiana.luz@fiocruz.br
Abstract
Estudo transversal da disponibilidade de medicamentos prescritos na Atenção Primária, com amostra probabilística de 1221 usuários das farmácias públicas de município polo de saúde em Minas Gerais, em 2017. Foram estimados indicadores de disponibilidade dos medicamentos e realizou-se regressão logística hierárquica, segundo o modelo comportamental de uso de serviços de saúde. Apenas 39,3% dos usuários receberam todos os medicamentos nas quantidades prescritas. Os medicamentos mais e menos disponíveis foram, respectivamente, os que atuam no sistema digestivo/metabolismo, e no sangue e órgãos hematopoiéticos. A disponibilidade integral do tratamento se mostrou associada à maior escolaridade (≥ 8 anos OR: 1,7; IC 95%: 1,3-2,4); proximidade até a farmácia (≤15 min OR: 1,7; IC 95%: 1,2-2,3); ausência de gastos privados com medicamentos (OR: 2,2; IC 95%: 1,7-2,9) e menor número de medicamentos prescritos (≤ 2 OR: 3,2; IC 95%: 2,3-4,4; 3/4 OR: 1,6; IC 95%: 1,2-2,1). Esses resultados mostram diferenças na disponibilidade de medicamentos dentro do SUS, evidenciando a necessidade de reorganização da rede de atendimento dos serviços de dispensação e do planejamento das aquisições de medicamentos, além da proposição de políticas públicas que priorizem a população mais vulnerável.
Palavras-chave: Atenção Primária à Saúde; Assistência Farmacêutica; Prescrições; Provisão; Medicamentos.
Abstract
This is a cross-sectional study on the availability of prescribed medicines in Primary Health Care (PHC), with a probabilistic sample of 1,221 users of public pharmacies in a health pole municipality in Minas Gerais, in 2017. Medicine availability indicators were estimated, and a hierarchical logistic regression was performed, according to the behavioral model of health service use. Only 39.3% of patients received all medicines in the prescribed quantities. The most and the least available medicines were, respectively, those for the digestive system/metabolism, and for blood and hematopoietic organs. Full availability of the prescribed treatment was associated with higher schooling (≥ 8 years OR: 1.7; 95% CI: 1.3-2.4); proximity to the pharmacy (≤15 min OR: 1.7; 95% CI: 1.2-2.3); absence of out-of-pocket expenditure on medicines (OR: 2.2; 95% CI: 1.7-2.9), and a smaller number of prescription drugs (≤ 2 OR: 3.2; 95% CI: 2.3-4.4; 3/4 OR: 1.6; 95% CI: 1.2-2.1). These results showed differences in medicine availability within the Brazilian Unified Health System (SUS), and highlighted the need to reorganize the dispensing services network and pharmaceutical procurement planning, as well as to develop public policies to protect the vulnerable population.
keywords: Primary Health Care; Pharmaceutical Services; Prescriptions; Provision; Medicines.
INTRODUCTION
Brazil has one of the largest public health systems in the world, the Unified Health System (SUS), which is coordinated by three management spheres: federal, state, and municipal. As an integral part of SUS, Pharmaceutical services (PS) has been reoriented after the implementation of the National Medication Policy in 19981, in order to ensure greater access to medicines by the population. Over more than 20 years, several measures have been adopted to increase the supply of medicines and to minimize the costs of purchasing pharmaceutical products2.
One of SUS’ organizational pillars is the decentralization of actions, including PS, making municipalities responsible for service provision, especially in the context of Primary Health Care (PHC)3. Some municipalities have their lists of essential drugs (REMUME) and, thus, ratify the commitment to supply these products to SUS users. Medicines are dispensed in public pharmacies, and it is usually necessary to present a prescription, which must comply with the items agreed upon by the municipality3.
Even with the advances resulting from policies aimed at improving access to medicines, some studies have shown managerial and organizational problems in PHC pharmacies, such as those related to infrastructure, service, and lack of medicines3-5.
The adequate supply of medicines has become a challenge for SUS, since Brazil is the only country with more than 100 million inhabitants with a public, universal, and free health care system6. Failures in the availability of medicines in the system can trigger underutilization of such products and lead to therapeutic failure, as well as to increased morbidity and mortality rates, returns to services, and public and out-of-pocket health expenditure7,8.
Considering that PS actions should be guided to ensure the principle of equity9, it is important to identify the social groups most likely to obtain medicines through SUS to support the planning and reorientation of policies to improve access to medicines. Given that studies on the availability of medicines in PHC and its associated factors are scarce in Brazil, the need for investigations to identify the population of users that are most likely to obtain all the prescribed pharmacotherapy is reinforced.
Thus, this study aims to analyze the availability of medicines in PHC pharmacies and to determine the factors associated with the full treatment availability.
METHODS
Study area, design and population
This study is part of the Prover Project, a cross-sectional survey conducted from August to November, 2017 in a large municipality in Minas Gerais, with more than 200,000 inhabitants. This is a health care pole municipality in the state of Minas Gerais, as it is a reference for other localities in the same region, at any care level of SUS10. The municipality has five PHC medicine dispensing services located in regional health areas in order to serve the entire population in such areas.
The Prover Project had a field team consisting of trained interviewers, a field supervisor, and technical-support fellows. Data were collected on paper and entered into final validated, corrected, and formatted databases.
The study population consisted of a probabilistic sample proportional to the number of users served by all PHC medicine dispensing services. Since the investigation was designed to assess multiple events of interest, the sample size was calculated considering 50% prevalence, a 95% confidence level, and a 3% tolerated margin of error, resulting in a maximum sample size of 1,067 individuals. A percentage of 15% was added, totaling a sample size of 1,228 individuals to compensate for possible losses..
Eligible participants were individuals over the age of 18, who had been using the dispensing services for at least six months, and who went to collect medicines for themselves on the day of the interview. Only users who had their medication prescription in hand were selected.
During the data collection period, all users of the dispensing services were approached by the interviewers, who introduced themselves, distributed leaflets about the project, and clarified the objectives of the study. After dispensing, the users were again approached and invited to participate. Those who accepted, answered the full questionnaire, and those who refused, answered a refusal questionnaire. These procedures were adopted to minimize selection bias and ensure a probabilistic sample.
The complete questionnaire consisted of a multi-item instrument pre-tested in a test-retest and pilot reliability study. The research team developed instrument, based on similar questions to those used in large national and international surveys11-14. The refusal questionnaire contained the same questions as those in the main questionnaire, concerning sex, age, and self-reported skin color.
Data on all prescriptions and all dispensed medicines were also collected. For each prescription, the names of each of the prescribed medicines, their concentrations, pharmaceutical forms, administration routes, total quantities prescribed, and treatment durations were recorded, when specified. In addition, patients were asked whether they had obtained the medicines, and if so, whether the necessary quantities had been dispensed to fulfill the treatment. In order to confirm the information, the prescriptions and the products obtained during dispensing were compared. The reasons for not obtaining the medicines were questioned when applicable. Answers such as: (1) “I did not need the medicine because I already have it at home”; (2) “I did not seek this medicine because I thought it was not necessary for me”; and (3) “I get this medicine from the popular pharmacy” were excluded from the analysis.
Data analysis
The analyses were conducted in two stages, and in the first stage, the prescribed medicines were considered. Each medicine was classified according to (1) the anatomical-therapeutic-chemical coding (ATC)15, and (2) according to its inclusion in the Municipal Medicine List (REMUME). For this study, only drugs classified as “present on REMUME” were included, i.e., when the active ingredient and pharmaceutical form were on the list in force in 201716. The absolute frequencies and proportions of prescribed medicines were presented, according to their main anatomical group (1st ATC level) and therapeutic subgroup (2nd ATC level).
Each medicine was considered “available” in public pharmacies if supplied in sufficiently to fulfill the entire treatment. Absolute frequencies were estimated, and three availability indicators were built: overall availability, availability by the major anatomical group, and availability by the therapeutic subgroup.
(1) Overall medicine availability:
(2) Availability by major anatomical groups:
(3) Availability by therapeutic subgroups:
Subsequently, the “full treatment availability” indicator was estimated, classifying it as “full” only if all prescribed medicines were considered available. The prevalence of full treatment availability was calculated by the following formula:
In the second stage, the factors associated with the full treatment availability were analyzed (dichotomous variable, “yes” or “no” type). The independent variables were organized based on the behavioral model of health service use proposed by Andersen (1995). This model establishes that the use of health services by individuals is the result of three main factors: (1) predisposing (which predispose the demand for services); (2) enabling (which facilitate or impede access to services); and (3) need factors (representing the perception of health status by individuals or by health professionals, which has an impact on the need for care)17.
In this study, the predisposing factors consisted of variables sex, age, self-reported skin color (white/non-white), education (number of completed schooling years), and marital status (single/divorced/widowed; married/common-law partner).
As enabling factors, the following were considered: monthly personal income (in minimum wages); health insurance coverage (yes/no); travel time to the pharmacy (in minutes), and out-of-pocket expenditure on medicines in the past three months (yes/no).
As need factors, the following were considered: number of medicines prescribed in the past 15 days (1-2; 3-4; 5 or more); self-assessment of health (very good/good; fair/poor/very poor); number of health conditions (up to two/three or more - evaluated on basis of the previous medical diagnosis reporting of high blood pressure, cardiovascular diseases, diabetes, pulmonary diseases, peptic ulcer, anxiety/depression, and hypercholesterolemia); physical activity practice (yes/no, with the data being collected through the question: “In your daily life, do you engage in any kind of physical exercise, such as walking, running, gymnastics, cycling, or sports such as soccer, volleyball, wrestling?”); recent alcohol use (yes = once or more times a month/every week/every day in the past 30 days; no = less than once a month/I never drink) and current smoking (yes = daily/once or more times a week/more than once a month; no = never smoked/not smoking currently).
Bivariate analyses were performed using logistic regression, with odds ratio (OR) estimates and their respective 95% confidence intervals. The hierarchical logistic regression model was used for the multiple analysis. The independent variables were grouped into three hierarchical levels, in the following order: predisposing, enabling, and need factors. For this step only the variables showing p<0.20 in the bivariate analysis were selected. Initially, a model was built with the predisposing factors adjusted to each other (Model 1). Variables showing p<0.05 were maintained and entered the next level adjustment. Model 2 was then composed of the enabling factors, adjusted by the significant variables from the previous level. Finally, Model 3 was represented by the need factors, adjusted by the variables showing statistical significance in the two previous models. Interpretations of odds ratios and significance levels were performed according to the respective levels of origin of the variables. Multicollinearity was analyzed through bivariate correlation tests between the explanatory variables. The models were compared using the Likelihood Ratio Test and Akaike’s criterion (AIC), and the best predictive power was observed in the model with the lowest AIC value18. All data were analyzed using the Stata software (StataCorp LP, College Station, USA) version 15.1.
Ethical Aspects
Users participated voluntarily, after reading and signing the Informed Consent Form (ICF). The Prover Project was approved by the Ethics Committee of Oswaldo Cruz Foundation, Brazil, according to report number 1.395.369.
RESULTS
Dispensed Medicines
Of the 4,591 prescribed medicines, 4,039 (88%) were listed on REMUME and were, therefore, included in the analysis. Among these, 2,818 (69.8%) were considered available, that is, they were dispensed to users in the quantities needed for treatment.
Table 1 shows the frequency distributions of prescribed and available medicines according to major anatomical groups and therapeutic subgroups.
The five most prescribed anatomical groups of medicines were those for treatment of the cardiovascular system (48.8%), followed by the digestive system and metabolism (16.6%), central nervous system (14.0%), blood and hematopoietic organs (8.5%), and hormones for systemic use (3.9%). Among these, it was observed that availability ranged from 56.1% to 80.1%, with the lowest prevalence among medicines acting on the blood and hematopoietic organs, and the highest among medicines acting on the digestive system and metabolism.
Considering the drugs that act on the cardiovascular system, it was observed that availability ranged from 49.2% to 91.4%, according to the therapeutic subgroup. Among the subgroups with higher prescription frequency, diuretic agents and those acting on the renin-angiotensin system showed availability of approximately 60%, while among the hypolipemic agents, the supply was over 90%.
Among the drugs that act on the digestive system and metabolism, antidiabetic agents are the most frequently prescribed, of which 69.4% were supplied.
Specifically in the group of medicines that act on the central nervous system, the low availability of antiepileptics (37.1%) and psycholytics (55.7%) is highlighted.
>Insert Table 1<
Factors associated with full availability of the prescribed treatment
The study included 1,186 individuals who met the inclusion criteria, i.e., who were prescribed only medicines listed on REMUME. The comparison between respondents (n=1,186) and non-respondents (n=387) showed no statistically significant differences at the 5% significance level for sex (p=0.289), race/color (p=0.941), or age (p=0.261).
Among the participants, only 39.3% fully obtained all the prescribed medicines. The participants characteristics are described in Tables 2, 3 and 4. Most were female (65.1%), with a mean age of 59.5 (SD: 13.2) years, four to seven years of schooling (39.8%); they were married or had a common-law partner (57.3%). Regarding health conditions, it was observed that more than half of the individuals had a negative self-perception of their health (57.7%), reported having up to two medical conditions diagnosed by the physician (58.1%), and did not practice physical activity (56.5%).
The results of the unadjusted logistic regression, with the crude Odds Ratio estimates for the predisposing, enabling, and need factors and the full availability of the prescribed treatment, are shown in Tables 2, 3, and 4, respectively. The variables selected for the multiple model, at a 20% significance level, were: age, schooling, and marital status (predisposing factors); monthly personal income, travel time to the pharmacy, and out-of-pocket expenditure on medicines in the past three months (enabling factors); number of medicines prescribed in the past 15 days, self-perception of health, and number of health conditions diagnosed by the physician (need factors).
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The results of the hierarchical logistic regression analysis of the full treatment availability predictors are shown in Table 5. It is observed that individuals who attended school for eight years or more had an almost twofold greater chance of having full treatment availability compared to individuals with less time of schooling (OR: 1.7; 95% CI: 1.3-2.4) (Model 1).
The chance of obtaining all prescribed medicines was also higher among those who took up to 15 minutes to get to the pharmacy (OR: 1.7; 95% CI: 1.2-2.3), and who had no out-of-pocket expenditure on medicines in the past three months (OR: 2.2; 95% CI: 1.7-2.9) (Model 2).
Among the need factors, the number of medications prescribed in the past 15 days showed a dose-response relationship with the full treatment availability (Model 3). The smaller the number of medications prescribed in the past 15 days, the greater the chance that individuals would obtain all the prescribed pharmacotherapy. The AIC estimate decreased with the addition of blocks of variables, reflecting a better fit of the models.
>Insert Table 5<
DISCUSSION
Patients’ ability to obtain prescribed medicines is a fundamental requirement of the care process, and it is also considered a quality indicator of the health system19. The literature lacks research that analyzes the availability of medicines in PHC and its associated factors, especially in public health systems, such as the Brazilian system. Authors have observed, for example, that in Bangladesh 33% of the medicines analyzed were available in public facilities20, while, in Sri Lanka, that prevalence was 56%21. In Kuwait, higher availability was observed, with 97.9% of the prescribed medicines being dispensed22. In our study, the overall availability of prescription drugs in public pharmacies was 69.8%.
Comparisons of availability prevalence data from different studies should be cautiously made; however, methodological differences make it difficult to directly compare the results, such as the way availability is measured, the types of medicines included for evaluation, and the study populations.
Our study also assessed the full treatment availability, identifying that only 39.4% of users received all the prescribed medicines. These results confirm what was previously observed by Luz et al.23 , who pointed out, as a recurring issue, the unavailability of medicines in public pharmacies, in the perception of pharmacists and patients. On the other hand, considering that, in this study, only the medicines included on the municipal list of essential medicines were analyzed, greater availability of medicines in the units would be expected24.
It is noteworthy that the prevalence of full treatment availability was lower than that in other studies conducted in Brazil7,25,26. It is possible to explain these differences using a more robust indicator in our investigation, which considered, for evaluation, all medicines included in REMUME, as well as the quantities dispensed, compared to the prescriptions.
No major anatomical group or therapeutic subgroup prescribed was totally dispensed as demanded by the users. Among the three anatomical groups with the highest prescription proportion, suboptimal availability is highlighted among those that act on the cardiovascular and the central nervous systems. These medicines are generally used to treat several chronic conditions27,28, and unavailability can lead to underutilization of such products, thus worsening patients’ quality of life and increasing morbidity and mortality29. Since the PHC user population consists mostly of individuals with chronic diseases30 and these health conditions are responsible for 70% of deaths in the country31, the importance of an adequate supply of those products for the SUS user population is reinforced.
In general, these results suggest problems involving the stages of planning and procurement of medicines in PHC. In addition, failures in communication management could be assumed since if prescribers were aware of the products in shortage in public pharmacies, they could make substitutions for available therapeutic equivalents. However, our findings do not support this hypothesis, since failures in availability were observed in all the subgroups analyzed. It is also assumed that managers are relying on the Popular Pharmacy Program, thus not offering medicines made available by that program32.
In this study, it was observed that predisposing, enabling, and need factors contributed to explain the full treatment availability.
Among the predisposing factors, having a higher schooling level almost doubled the chance of obtaining all the prescribed medications. These results contradict the findings in studies conducted in Brazil analyzing the acquisition of medicines exclusively through the public health system, which showed higher acquisition among the population with lower schooling levels33-36. This difference can partly be explained by the methodologies used by those authors, who considered the general population, accessed through household surveys. On the other hand, what our study shows is that there are also differences in obtaining medicines within the health system itself, possibly explained by the fact that individuals with higher schooling have a better perception of their health needs, which would lead them to use the services more often37, thus making it easier for them to obtain their medicines.
Regarding the enabling factors, two factors remained associated with the full treatment availability: shorter travel time to public pharmacies and absence of expenditure on medications in the past three months. In the case of travel time to pharmacies, this result was, to some extent, expected, since authors have shown that individuals who live close to health units are more likely to seek assistance and care38-40. This finding also suggests the need for an adaptation of the health care network in order to optimize geographical accessibility and meet the health needs of the population using PHC in an equal manner.
With regard to expenditure on medications in the past three months, individuals who did not have such expenses showed a higher chance of obtaining all the prescribed medicines. This association is not easy to explain since, in general, according to the time logic, the lack of medicines in public pharmacies leads users to acquire them from the private sector, thus incurring out-of-pocket expenditure on medicines24,33,36,41-44. Studies in India41, Cambodia43 and Mexico42 showed that, respectively, 76%, 52% and 35.4% of the interviewed users depended on private pharmacies for medicine acquisition due to shortages in the public sector. Thus, it is not possible to rule out the reverse causality hypothesis to explain the results found in our study, i.e., the availability of all pharmacotherapy in public pharmacies would lead to the absence of out-of-pocket expenditure on these products. In fact, this is the most plausible hypothesis since the question about out-of-pocket expenditure recalls three months before the interview date, thus reflecting previous experiences with the service - individuals sought their medicines during that period and having found them, had no expenditure on medicines. The interview occasion, on the other hand, must be considered a new experience with the service in this case - the individual is there seeking service for a new prescription - which elucidates the relationship observed between the absence of expenses and the full treatment availability.
The number of prescribed medicines was the only need factor that remained associated with full treatment availability, and an inversely proportional relationship was shown, i.e., individuals with fewer prescribed medicines had significantly higher chances of obtaining the full pharmacotherapy. This finding is consistent with that observed by other authors42,45 and evidence that the system is failing to serve the people with greater health needs since a larger number of medicines may be related to a heavier disease burden35,46-48.
This study provides relevant information on the availability of medicines in PHC in a municipality that is a health service pole in the state of Minas Gerais. Among the advantages of the study, we highlight the operationalization of availability measurement, which considered only the medicines listed on REMUME, analyzing each item prescribed and dispensed in sufficient quantities for treatment, with verification of all these data in loco, following dispensing. In the literature researched, several studies were found that characterize the “physical availability” of medicines according to the presence of at least one unit of the pharmaceutical product under evaluation in the pharmacy stocks5,24,48,49, a measure that tends to overestimate supply5,24,51. Another method for measuring medicine availability is through users’ self-reporting, which can be influenced by memory bias25,33-35,52,53 and information bias, since individuals may not have a concept of medicine and may not know the contents of municipal medicine lists.
To ensure the internal validity of the study, a representative sample of the adult population, distributed proportionally to the number of visits to public pharmacies, was included, and the profile of respondents and non-respondents did not show statistically significant differences. It is believed that the results found can also apply to other Brazilian municipalities, especially the large ones, with a population between 100,000 and 900,000 inhabitants54, because (1) the profile of users is similar to that of the adult population served in the Brazilian PHC30, and (2) the rules for regulating the implementation and financing of PS in PHC are the same throughout the country2.
Some limitations in this study, however, must be taken into consideration. As it has a cross-sectional design, it is not possible to assume that the lack of medicines observed is a constant reality in the investigated pharmacies. Nevertheless, considering that data collection lasted four months and that our results align with the specialized literature on the subject7,26,50,55, it is reasonable to assume that drug shortages are a frequent problem. Furthermore, the data were collected through interviews, and were subject to information and memory biases. A multi-item, pre-tested questionnaire was used to minimize these effects, obtaining data from prescriptions and dispensed medications. The interviews took place shortly after the service was provided at the pharmacies and were conducted by trained interviewers, who used standardized procedures throughout the data collection. To avoid overestimation of unavailability, only the drugs listed on REMUME were included in the data analysis.
CONCLUSIONS
The results in this study elucidate essential issues related to the availability of medicines and their determinants in the Brazilian public system, from the PHC perspective, revealing significant differences in medicine acquisition by the population served by SUS.
The findings point to the need for improvement in the organization of the care provision network to optimize the geographical access to dispensing services, and the planning of medicine acquisition. Equally important is the design of public policies and strategies that can reduce heterogeneities in obtaining medicines, especially among the most vulnerable population (individuals with less education, with out-of-pocket expenditure on medicines, and who use more prescription drugs). Furthermore, the results show the importance of analyzing the availability of medicines in the public health systems, considering specifically the user population, since it is thereby possible to evaluate the effectiveness of the pharmaceutical care actions adopted. In Brazil, considering that SUS serves approximately 70% of the population56 and and there is a budget and fiscal reduction scenario, the relevance of studies of this nature as sources of information to support public management is also emphasized.
Acknowledgements
We thank the Municipal Health Secretariat and the field team - especially Ana Karine Sarvel de Castro and Isabela Cristina Marques. We acknowledge the financial support from the Foundation for Research Support of the State of Minas Gerais - FAPEMIG (Process: APQ-01656-16) and Oswaldo Cruz Foundation - Fiocruz PAPES VII (Process 401792/2015-3). This study was also conducted with the support from the Coordination for the Improvement of Higher Education Personnel - Brazil (CAPES) - Funding Code 001.
CONTRIBUTIONS
MAM Bueno and TCB Luz contributed equally to the study design, data analysis, interpretation and manuscript drafting. TCB Luz was responsible for funding acquisition and Prover Project coordination. TC Simões contributed with the data analysis.
REFERENCES
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