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Analysis of quality of information about deaths from neoplasms in Brazil between 2009 and 2019

ABSTRACT

Objective

To assess the quality of information about mortality from neoplasm within the Mortality Information System.

Methods:

Descriptive observational study evaluating the quality of the Mortality Information System, with an outcome referring to data on deaths from neoplasm between 2009 and 2019 in the Brazilian population (≥15 years). Information Quality (IQ) was measured through coverage, specificity and completeness of data, at national and state level.

Results:

The quality of the coverage dimension ranged from “good” to “excellent” in the national and state coverages. Specificity was classified as inadequate mainly in the states of the North and Northeast regions. The proportion of ill-defined causes was classified as “poor” quality in most units of analysis throughout the series. Data completeness varied according to indicator. Gender and age indicators were proven “excellent” for the entire period and units of analysis, while educational level varied in quality across units and periods, marital status had its quality improved over the period, as well as ethnicity/skin color.

Conclusions:

The quality of data on mortality from neoplasm in the Brazilian population (≥15 years) is mostly adequate, but there are important gaps to be filled, as the expansion of IQ seeks to give visibility to the health condition of the Brazilian population and to propose public actions for its improvement.

Keywords:
Vital statistics; Information management; Quality management; Health information system; Neoplasms

RESUMO

Objetivo:

Avaliar a qualidade das informações sobre mortalidade por neoplasias no âmbito do Sistema de Informação sobre Mortalidade.

Métodos:

Estudo descritivo observacional com avaliação da qualidade do Sistema de Informação sobre Mortalidade, com desfecho referente aos dados de óbitos por neoplasias ocorridos entre os anos de 2009 e 2019 na população brasileira (≥15 anos). A qualidade da informação (QI) foi mensurada para o Brasil e para as Unidades Federativas por meio das dimensões: cobertura, especificidade e completude dos dados.

Resultados:

A qualidade da dimensão cobertura variou entre “boa” e “excelente” nas abrangências nacional e estadual. A dimensão especificidade foi classificada como inadequada predominantemente nos Estados das Regiões Norte e Nordeste. A proporção de causas mal definidas foi classificada como de “baixa” qualidade na maioria das unidades de análise ao longo da série. A completude dos dados variou de acordo com o indicador utilizado, os indicadores sexo e idade mostraram-se “excelentes” para todo o período e unidades de análise, a escolaridade apresentou variação de qualidade tanto nas unidades como nos períodos e o estado civil apresentou melhoria da qualidade de seu registro ao longo do período, assim como o indicador raça/cor.

Conclusões:

A qualidade dos dados de mortalidade por neoplasias na população brasileira (≥15 anos) é, em sua maioria, adequada, mas há lacunas importantes que merecem ser preenchidas, pois a ampliação da QI busca dar visibilidade à condição de saúde da população brasileira, bem como propor ações públicas para sua melhoria.

Palavras-chave:
Estatísticas vitais; Gestão da informação; Qualidade dos dados; Sistema de informação em saúde; Neoplasias

INTRODUCTION

The evolution of mortality from neoplasms around the world places conditions such as neoplasms as an important public health problem, encouraging different nations to take measures to control their incidence and mortality due to the set of diseases that make up the group of neoplasms11. Global Burden of Disease Cancer Collaboration, Fitzmaurice C, Abate D, Abbasi N, Abbastabar H, Abd-Allah F, et al. Global, Regional, and National Cancer Incidence, mortality, years of life lost, years lived with disability, and disability-adjusted life-years for 29 cancer groups, 1990 to 2017: a systematic analysis for the global burden of disease study. JAMA Oncol 2019; 5(12): 1749-68. https://doi.org/10.1001/jamaoncol.2019.2996
https://doi.org/10.1001/jamaoncol.2019.2...
. In Brazil alone, there were 243,000 deaths from neoplasms in 2018, and the expectation for 2040 is that deaths will reach the mark of 432,0002. Nevertheless, the control of mortality from neoplasms is one of the goals of the United Nations (UN) 2030 Agenda, which is to reduce premature mortality from non-communicable diseases by one third33. Instituto de Pesquisa Econômica Aplicada. ODS – Metas Nacionais dos Objetivos de Desenvolvimento Sustentável. AGENDA 2030 [Internet]. 2018 [acessado 3 nov. 2020]. Disponível em: https://www.ipea.gov.br/portal/index.php?option=com_content&view=article&id=33895&Itemid=433
https://www.ipea.gov.br/portal/index.php...
. The measures to be adopted for its control must vary geographically in view of socioeconomic conditions of different countries and regions related to the occurrence of the disease and its outcome, thus demanding specific actions depending on the extent of the problem44. Oliveira NPD, Siqueira CAS, Lima KYN, Cancela MC Souza DLB. Association of cervical and breast cancer mortality with socioeconomic indicators and availability of health services. Cancer Epidemiol 2020; 64: 101660. https://doi.org/10.1016/j.canep.2019.101660
https://doi.org/10.1016/j.canep.2019.101...
.

In order to understand the dimension of the problem and propose effective actions to control the disease and mortality, health authorities must receive accurate information on the number of incident cases and deaths, so the availability of quality information in different official government databases is essential55. Curtis MD, Griffith SD, Tucker M, Taylor MD, Capra WB, Carrigan G, et al. Development and validation of a high-quality composite real-world mortality endpoint. Health Serv Res 2018; 53(6): 4460-76. https://doi.org/10.1111/1475-6773.12872
https://doi.org/10.1111/1475-6773.12872...
77. Iburg KM, Mikkelsen L, Adair T, Lopez AD. Are cause of death data fit for purpose? evidence from 20 countries at different levels of socio-economic development. PLoS One 2020; 15(8): e0237539. https://doi.org/10.1371/journal.pone.0237539
https://doi.org/10.1371/journal.pone.023...
. In Brazil, the Ministry of Health (MS) tool that provides data on vital statistics is the Mortality Information System (SIM, acronym in Portuguese). The SIM is part of the Health Information System (SIS, acronym in Portuguese) and contributes to delineating the epidemiological profile of mortality in the country88. Brasil. Ministério da Saúde. A experiência brasileira em sistemas de informação em saúde. Brasília: Editora do Ministério da Saúde, 2009 [Internet]. [acessado em 3 dez. 2020]. Disponível em: https://www.paho.org/bra/index.php?option=com_docman&view=document&layout=default&alias=299-a-experiencia-brasileira-em-sistemas-informacao-em-saude-v-2-9&category_slug=informacao-e-analise-saude-096&Itemid=965
https://www.paho.org/bra/index.php?optio...
, as it is a precise source for capturing and recording information on deaths at national, regional and municipal levels99. Jorge MHPM, Laurenti R, Gotlieb SLD. Análise da qualidade das estatísticas vitais brasileiras: a experiência de implantação do SIM e do SINASC. Ciênc Saúde Coletiva 2007; 12(3): 643-54. https://doi.org/10.1590/S1413-81232007000300014
https://doi.org/10.1590/S1413-8123200700...
.

The importance of quality of information (QI) checking in health is described by authors from different regions of the country and the world, but there is an emphasis on the quality of data, especially in developing countries, where the information that feeds national and global health data banks is still considered poor, so expanded actions to improve this condition are needed55. Curtis MD, Griffith SD, Tucker M, Taylor MD, Capra WB, Carrigan G, et al. Development and validation of a high-quality composite real-world mortality endpoint. Health Serv Res 2018; 53(6): 4460-76. https://doi.org/10.1111/1475-6773.12872
https://doi.org/10.1111/1475-6773.12872...
,1010. Saturno-Hernández PJ, Martínez-Nicolás I, Flores-Hernández S, Poblano-Verástegui O. Quality of the health information system: a comparative analysis of reported indicators, OECD Mexico 2010-2016. Salud Publica Mex 2019; 61(2): 184-92. https://doi.org/10.21149/9688
https://doi.org/10.21149/9688...
1616. Maia LTS, Souza WV, Mendes ACG, Silva AGS. Use of linkage to improve the completeness of the SIM and SINASC in the Brazilian capitals. Rev Saude Publica 2017; 51: 112. https://doi.org/10.11606/S1518-8787.2017051000431
https://doi.org/10.11606/S1518-8787.2017...
. At the national level, the importance of verifying the quality of data starts from the premise that managers use SIS data to make decisions, so the information available must reflect reality so that quality sectoral actions are carried out, adding political value to health information1717. Morais RM, Costa AL. An evaluation of the Brazilian Mortality Information System. Saúde Debate. 2017; 41(n. especial): 101-17. https://doi.org/10.1590/0103-11042017S09
https://doi.org/10.1590/0103-11042017S09...
,1818. Rodrigues NCP, Daumas RP, Almeida AS, O’Dwyer G, Andrade MKN, Flynn MB, et al. Risk factors for the ill-defined causes of death in the Brazilian states: a multilevel analysis. Cienc Saude Colet 2018; 23(11): 3979-88. https://doi.org/10.1590/1413-812320182311.27182016
https://doi.org/10.1590/1413-81232018231...
.

The Brazilian literature on QI of SIM data is usually limited to a specific group of an underlying cause of death and a geographic unit, which creates a gap for the comprehensive geographical perspective on QI of SIM data and makes comparison between different Brazilian regions impossible. Therefore, the objective of this study was to evaluate the QI about mortality from neoplasms within the scope of SIM, according to national data and by Federative Unit (FU).

METHODS

This is a descriptive observational study, carried out with data from Brazil and its FUs for the population aged 15 years or older whose deaths from neoplasms occurred between 2009 and 2019. Data were obtained from SIM through a time series of records of deaths from neoplasms in general (C00-C97) by place of residence for each study unit.

QI of SIM was measured in the following dimensions: coverage1919. Paes NA. Assessment of completeness of death reporting in Brazilian states for the year 2000. Rev Saude Publica 2005; 39(6): 882-90. https://doi.org/10.1590/s0034-89102005000600003
https://doi.org/10.1590/s0034-8910200500...
, specificity2020. Kanso S, Romero DE, Leite IC, Moraes EN. Diferenciais geográficos, socioeconômicos e demográficos da qualidade da informação da causa básica de morte dos idosos no Brasil. Cad Saude Publica 2011; 27(7): 1323-39. https://doi.org/10.1590/S0102-311X2011000700008
https://doi.org/10.1590/S0102-311X201100...
and completeness2121. Romero DE, Cunha CB. Quality of socioeconomic and demographic data in relation to infant mortality in the Brazilian Mortality Information System (1996/2001). Cad Saude Publica 2006; 22(3): 673-84. https://doi.org/10.1590/s0102-311x2006000300022
https://doi.org/10.1590/s0102-311x200600...
,2222. Felix JD, Zandonade E, Amorim MHC, Castro DS. Avaliação da completude das variáveis epidemiológicas do Sistema de Informação sobre Mortalidade em mulheres com óbitos por câncer de mama na Região Sudeste: Brasil (1998 a 2007). Ciênc Saúde Coletiva. 2012; 17(4): 945-53. https://doi.org/10.1590/S1413-81232012000400016
https://doi.org/10.1590/S1413-8123201200...
. Coverage, defined as the ratio between deaths recorded in SIM and deaths projected by the Brazilian Institute of Geography and Statistics (IBGE)2323. Coordenação Geral de Informações e Análise Epidemiológica. Sistema de Informações sobre Mortalidade – SIM. Consolidação da base de dados de 2011 [Internet]. 2013 [acessado em: 02 mar. 2021]; 12. Disponível em: http://tabnet.datasus.gov.br/cgi/sim/Consolida_Sim_2011.pdf
http://tabnet.datasus.gov.br/cgi/sim/Con...
and multiplied, at the end, by 100, was verified by comparing the occurrence data registered in SIM and IBGE via the civil registry between 2009 and 2019. Proportions below 80% were considered “regular”, between 80 and ≤90% “good” and between 91 and ≥100%, “excellent”1919. Paes NA. Assessment of completeness of death reporting in Brazilian states for the year 2000. Rev Saude Publica 2005; 39(6): 882-90. https://doi.org/10.1590/s0034-89102005000600003
https://doi.org/10.1590/s0034-8910200500...
.

Specificity was measured by two indicators: proportion of unspecific causes (PUC) and ill-defined causes (PIDC) in SIM. PUC refers to causes of mortality not falling under Chapter XVIII of the International Classification of Diseases (ICD-10)—Abnormal symptoms and signs, and clinical and laboratory findings not classified elsewhere—codes R00 to R99, which are considered imprecise or insufficiently defined causes. The measure, which used the unspecific causes recorded by place of residence of death in Chapter II of the ICD-10 (Neoplasms—codes C76, C77, C79, C80 and C97), was divided by the result of subtracting the total number of deaths from neoplasms (ICD-10 C00-C97) of the number of deaths in chapter XVIII (ICD-10 R00 to R99) and multiplied, at the end, by 100. Chapter XVIII was withdrawn to remove ill-defined causes and determine the weight of unspecific causes in the total number of deaths from neoplasms whose classifications have been considered well defined.

A median value of the PUC distribution (10.8%) was established as an assumption for the analyzed period; a median of less than 10.8% was described as adequate quality, and greater than or equal to this value was classified as inadequate. PIDC, in turn, was described as the percentage of deaths from ill-defined causes that occurred in a given space and period, and its calculation was performed with death data by place of residence in Chapter XVIII of the ICD-10, divided by total deaths from neoplasms (ICD-10 C00-C97) and multiplied, at the end, by 100. PIDC values <5% indicated “high” QI, between ≥5 and ≤15 “regular” QI, and values >15% were considered “poor” QI2020. Kanso S, Romero DE, Leite IC, Moraes EN. Diferenciais geográficos, socioeconômicos e demográficos da qualidade da informação da causa básica de morte dos idosos no Brasil. Cad Saude Publica 2011; 27(7): 1323-39. https://doi.org/10.1590/S0102-311X2011000700008
https://doi.org/10.1590/S0102-311X201100...
.

Finally, the completeness analysis sought to determine the degree of completion of demographic data, namely: age, sex, marital status, educational level and ethnicity/skin color. For this purpose, the categories referring to missing data, whose description in SIM is “ignored”, were used as a basis for calculation. The score determines 5 degrees of completeness based on the proportion of ignored data, being “excellent” when the variable has less than 5% incomplete filling; “good” when it presents from 5% to less than 11%; “regular” from 11% to less than 21%; “poor” from 21% to less than 50%; and “very poor” from 50% upwards2121. Romero DE, Cunha CB. Quality of socioeconomic and demographic data in relation to infant mortality in the Brazilian Mortality Information System (1996/2001). Cad Saude Publica 2006; 22(3): 673-84. https://doi.org/10.1590/s0102-311x2006000300022
https://doi.org/10.1590/s0102-311x200600...
,2222. Felix JD, Zandonade E, Amorim MHC, Castro DS. Avaliação da completude das variáveis epidemiológicas do Sistema de Informação sobre Mortalidade em mulheres com óbitos por câncer de mama na Região Sudeste: Brasil (1998 a 2007). Ciênc Saúde Coletiva. 2012; 17(4): 945-53. https://doi.org/10.1590/S1413-81232012000400016
https://doi.org/10.1590/S1413-8123201200...
.

RESULTS

From 2009 to 2019, there were 2,173,837 deaths from neoplasms (ICD-10 C00-C97) in the population aged 15 years and over residing in Brazil, with the Southeast Region responsible for 48% of deaths, followed by the Northeast (21.5%), South (19.5%), Midwest (6.3) and North (4.7) regions. The mortality growth rate in the same period for Brazil as a whole was 37%, with growth of 67% in the North Region, followed by the Midwest (51%), Northeast (47%), Southeast (31%) and South Regions. (23%).

Data coverage varied between 89 and 120% throughout the series, except for the State of Roraima, demonstrating that SIM data have a coverage score classified as “good” and “excellent”. Roraima also presented coverage with “excellent” rating, but with proportions ranging between 790 and 1,000% throughout the series.

The specificity indicator showed that the FUs whose values are classified as inadequate are concentrated in the North and Northeast regions of the country, with the exception of Minas Gerais, whose median was 14.88%. In the State of Bahia, the PUC was negative because the number of ill-defined causes (ICD-10 R00-R99) was higher than the number of cases of deaths from neoplasms (ICD-10 C00-C97) for the 2009-2012 and 2014-2016 periods (Figure 1)

Figure 1.
Specificity — Proportion of unspecific causes* in cancer mortality between 2009 and 2019 (Brazil/UF).

PIDC was classified as “poor” quality in most units throughout the series, with the exception of Tocantins in 2017, in which it was classified as “regular”; for the entire Espírito Santo series, with values ranging between “regular and good”; for Paraná, with “regular” values between 2017 and 2019; for Santa Catarina, with “regular” quality data between 2014 and 2019; for Mato Grosso do Sul, which presented “regular” quality until 2018; and for Goiás, also “regular” in 2014 and between 2016 and 2019. The Federal District had data oscillating between “regular” and “high” quality throughout (Table 1). Despite the fact that most units of analysis presented “poor” quality, there was an improvement in QI, with growth rates ranging between -3.5 and -72%. For Brazil, the growth rate was -29.7%. For the states of Piauí (21.9%), Sergipe (20.5%), Rio de Janeiro (19.5%), Mato Grosso do Sul (129.4%), and the Federal District (7.7%), a growth in IDC was observed along the series.

Table 1.
Specificity — Proportion of ill-defined causes of mortality from neoplasms between 2009 and 2019 (Brazil/FUs).

Data completeness varied according to the indicator used (Table 2): sex and age were “excellent” for the entire period and all units, presenting, respectively, incompleteness values that ranged from 0 to 0.2 and from 0 to 0.6. The variable educational level varied both in the units and in the periods, with a negative highlight for the states of Alagoas, Bahia, Espírito Santo, Goiás, Minas Gerais, Paraíba, Rio Grande do Norte, Rio Grande do Sul, and São Paulo, which presented data quality varying in the lower ranks from “regular” to “very poor” throughout the series. Regarding marital status, over the period, the units of analysis had an improvement in the quality of their registration, with negative variations for the states of Alagoas, Espírito Santo and Paraíba. Ethnicity/skin color indicator showed a completeness growth rate of -49% for Brazil throughout the series, which means that, over time, the filling out of ethnicity/skin color improved. Despite the improvement in this indicator, the states of Espírito Santo and Alagoas remained at the “regular” level for most of the series.

Table 2.
Completeness of education, marital status and race/color indicators for mortality from neoplasms between 2009 and 2019 (Brazil/FUs).

DISCUSSION

Our study showed that the coverage of data on mortality from neoplasms in SIM, in all units of analysis, is classified as excellent per the methodology used. The highest coverage value was found in the State of Roraima, which can be explained not only by the investment in public policies and administrative improvements in death records, but also by the low mortality projection by IBGE for this FU and the low uptake of deaths by the civil registry system66. Marinho MF. How to improve the quality of mortality information? Rev Bras Epidemiol 2019; 22 Suppl 3: e190017. https://doi.org/10.1590/1980-549720190017.supl.3
https://doi.org/10.1590/1980-54972019001...
,2424. Queiroz BL, Freire FHMA, Gonzaga MR, Lima EEC. Completeness of death-count coverage and adult mortality (45q15) for Brazilian states from 1980 to 2010. Rev Bras Epidemiol 2017; 20(Suppl 01): 21-33. https://doi.org/10.1590/1980-5497201700050003
https://doi.org/10.1590/1980-54972017000...
. The adequacy of coverage found in this study corroborates other studies that sought to determine the coverage of adult mortality data. In the survey by Costa et al.2525. Costa LFL, Montenegro MMS, Rabello Neto DL, Oliveira ATR, Trindade JEO, Adair T, et al. Estimating completeness of national and subnational death reporting in Brazil: application of record linkage methods. Popul Health Metr 2020; 18(1): 22. https://doi.org/10.1186/s12963-020-00223-2
https://doi.org/10.1186/s12963-020-00223...
, SIM coverage was 98%, while a low coverage of the civil registry for the State of Roraima was evidenced. In the study by Queiroz et al.2424. Queiroz BL, Freire FHMA, Gonzaga MR, Lima EEC. Completeness of death-count coverage and adult mortality (45q15) for Brazilian states from 1980 to 2010. Rev Bras Epidemiol 2017; 20(Suppl 01): 21-33. https://doi.org/10.1590/1980-5497201700050003
https://doi.org/10.1590/1980-54972017000...
, with coverage data from 1980 to 2010, the states of the South and Southeast regions had their coverage classified as “excellent”, while other regions had it classified between “regular” and “good”. The coverage of mortality data is essential to inform about the health condition of the Brazilian population, since a reduction in IDC is seen when associated with actions to its improvement66. Marinho MF. How to improve the quality of mortality information? Rev Bras Epidemiol 2019; 22 Suppl 3: e190017. https://doi.org/10.1590/1980-549720190017.supl.3
https://doi.org/10.1590/1980-54972019001...
.

The PUC of mortality from neoplasms in the FUs of the North and Northeast regions and in the State of Minas Gerais was considered inadequate, corroborating studies that described the effect of geographic area on the quality of health data1414. França E, Ishitani LH, Teixeira R, Duncan BB, Marinho F, Naghavi M. Changes in the quality of cause-of-death statistics in Brazil: garbage codes among registered deaths in 1996-2016. Popul Health Metr 2020; 18(Suppl 1): 20. https://doi.org/10.1186/s12963-020-00221-4
https://doi.org/10.1186/s12963-020-00221...
,2626. Teixeira RA, Naghavi M, Guimarães MDC, Ishitani LH, França EB. Quality of cause-of-death data in Brazil: Garbage codes among registered deaths in 2000 and 2015. Rev Bras Epidemiol 2019; 22(Suppl 3):e19002.supl.3. https://doi.org/10.1590/1980-549720190002.supl.3
https://doi.org/10.1590/1980-54972019000...
. According to Balieiro et al.2727. Balieiro PCS, Silva LCF, Sampaio VS, Monte EX, Pereira EMS, Queiroz LAF, et al. Factors associated with unspecified and ill-defined causes of death in the State of Amazonas, Brazil, from 2006 to 2012. Cienc Saude Colet 2019; 25(1): 339-52. https://doi.org/10.1590/1413-81232020251.27182017
https://doi.org/10.1590/1413-81232020251...
, unspecific causes of death in the State of Amazonas from 2006 to 2012 were related to the place of residence and occurrence of death, sociodemographic conditions, and the professional responsible for attesting to the death. The comparability of PUC of this study with that of others is limited due to methodological differences and the lesser emphasis given to this indicator. This can be explained by the fact that the reduction in PIDC and underreporting has a greater impact on the improvement in mortality records due to a specific cause when compared to the reduction in PUC2828. Malta DC, Abreu DMX, Moura L, Lana GC, Azevedo G, França E. Tendência das taxas de mortalidade de câncer de pulmão corrigidas no Brasil e regiões. Rev Saúde Pública 2016; 50: 33. https://doi.org/10.1590/S1518-8787.2016050006209
https://doi.org/10.1590/S1518-8787.20160...
. The denial of PUC in the State of Bahia, since the number of cases of deaths from neoplasms is lower than that of ill-defined causes, serves as an alert for the need to improve the completion of Death Certificates, as the high number of imprecise or not sufficiently defined causes compromises the assessment of the population’s health condition and, consequently, the allocation of strategies and financial resources1717. Morais RM, Costa AL. An evaluation of the Brazilian Mortality Information System. Saúde Debate. 2017; 41(n. especial): 101-17. https://doi.org/10.1590/0103-11042017S09
https://doi.org/10.1590/0103-11042017S09...
,1818. Rodrigues NCP, Daumas RP, Almeida AS, O’Dwyer G, Andrade MKN, Flynn MB, et al. Risk factors for the ill-defined causes of death in the Brazilian states: a multilevel analysis. Cienc Saude Colet 2018; 23(11): 3979-88. https://doi.org/10.1590/1413-812320182311.27182016
https://doi.org/10.1590/1413-81232018231...
.

Despite being classified in most Brazilian states as “poor” quality, PIDC showed an improvement in data over the years, corroborating studies that describe the reduction of PIDC in regions with low or medium socioeconomic development (although high quality data are still not available) as a result of investments in the public health system and advances in strengthening of statistics of death causes in the country. It is important to highlight that classification with codes R00–R99 not only represents poor quality of data, but also describes the lack of adequate health care, since these codes encompass conditions such as septicemia, hypertension, heart failure, among others that are preventable and treatable; it may also be due to a high number of deaths at home, which makes it difficult to properly report the cause77. Iburg KM, Mikkelsen L, Adair T, Lopez AD. Are cause of death data fit for purpose? evidence from 20 countries at different levels of socio-economic development. PLoS One 2020; 15(8): e0237539. https://doi.org/10.1371/journal.pone.0237539
https://doi.org/10.1371/journal.pone.023...
,1414. França E, Ishitani LH, Teixeira R, Duncan BB, Marinho F, Naghavi M. Changes in the quality of cause-of-death statistics in Brazil: garbage codes among registered deaths in 1996-2016. Popul Health Metr 2020; 18(Suppl 1): 20. https://doi.org/10.1186/s12963-020-00221-4
https://doi.org/10.1186/s12963-020-00221...
,1818. Rodrigues NCP, Daumas RP, Almeida AS, O’Dwyer G, Andrade MKN, Flynn MB, et al. Risk factors for the ill-defined causes of death in the Brazilian states: a multilevel analysis. Cienc Saude Colet 2018; 23(11): 3979-88. https://doi.org/10.1590/1413-812320182311.27182016
https://doi.org/10.1590/1413-81232018231...
. Even in high-income countries with advanced health information systems, classifications with R codes occur in smaller proportions than the ones showed in the present study. According to Mikkelsen et al.2929. Mikkelsen L, Iburg KM, Adair T, Fürst T, Hegnauer M, von der Lippe E, et al. Assessing the quality of cause of death data in six high-income countries: Australia, Canada, Denmark, Germany, Japan and Switzerland. Int J Public Health 2020; 65(1): 17-28. https://doi.org/10.1007/s00038-019-01325-x
https://doi.org/10.1007/s00038-019-01325...
, who investigated the use of ill-defined codes in six high-income countries, the average PIDC for such countries was 18% (2015 and 2016), and, in Brazil, the average PIDC in the same period was of 34.5%. This comparison reinforces the importance of maintaining investments to improve the quality of Brazilian health data1414. França E, Ishitani LH, Teixeira R, Duncan BB, Marinho F, Naghavi M. Changes in the quality of cause-of-death statistics in Brazil: garbage codes among registered deaths in 1996-2016. Popul Health Metr 2020; 18(Suppl 1): 20. https://doi.org/10.1186/s12963-020-00221-4
https://doi.org/10.1186/s12963-020-00221...
,1818. Rodrigues NCP, Daumas RP, Almeida AS, O’Dwyer G, Andrade MKN, Flynn MB, et al. Risk factors for the ill-defined causes of death in the Brazilian states: a multilevel analysis. Cienc Saude Colet 2018; 23(11): 3979-88. https://doi.org/10.1590/1413-812320182311.27182016
https://doi.org/10.1590/1413-81232018231...
, because even in states with historical reports of quality data, a high PIDC is still seen3030. Vidor AC, Conceição MBM, Luhm KR, Alves MFT, Arceno A, França EB, et al. Quality of data on causes of death in southern Brazil: the importance of garbage causes. Rev Bras Epidemiol 2019; 22(Suppl 3):e19003.supl.3. https://doi.org/10.1590/1980-549720190003.supl.3
https://doi.org/10.1590/1980-54972019000...
.

Gender and age indicators in deaths from neoplasms was classified as “excellent” completeness in the study period, corroborating other studies with different population and temporal approaches, which described the improvement in filling in these variables2222. Felix JD, Zandonade E, Amorim MHC, Castro DS. Avaliação da completude das variáveis epidemiológicas do Sistema de Informação sobre Mortalidade em mulheres com óbitos por câncer de mama na Região Sudeste: Brasil (1998 a 2007). Ciênc Saúde Coletiva. 2012; 17(4): 945-53. https://doi.org/10.1590/S1413-81232012000400016
https://doi.org/10.1590/S1413-8123201200...
,3131. Melo GBT, Valongueiro S. Incompletude dos registros de óbitos por causas externas no Sistema de Informações sobre Mortalidade em Pernambuco, Brasil, 2000-2002 e 2008-2010. Epidemiol Serv Saúde 2015; 24(4): 651-60. https://doi.org/10.5123/S1679-49742015000400007
https://doi.org/10.5123/S1679-4974201500...
,3232. Messias KLM, Bispo Júnior JP, Pegado MFQ, Oliveira LC, Peixoto TG, Sales MAC, et al. The quality of certification of deaths due to external causes in the city of Fortaleza in the State of Ceará, Brazil. Cienc Saude Colet 2016; 21(4): 1255-67. https://doi.org/10.1590/1413-81232015214.07922015
https://doi.org/10.1590/1413-81232015214...
. The variable educational level still has major limitations, requiring improvement in its completion, given its fundamental role in understanding social inequalities in mortality from different conditions, including neoplasms3333. Siegel RL, Miller KD, Jemal A. Cancer statistics, 2019. CA Cancer J Clin 2019; 69(1): 7-34. https://doi.org/10.3322/caac.21551
https://doi.org/10.3322/caac.21551...
. According to Melo and Valongueiro3131. Melo GBT, Valongueiro S. Incompletude dos registros de óbitos por causas externas no Sistema de Informações sobre Mortalidade em Pernambuco, Brasil, 2000-2002 e 2008-2010. Epidemiol Serv Saúde 2015; 24(4): 651-60. https://doi.org/10.5123/S1679-49742015000400007
https://doi.org/10.5123/S1679-4974201500...
, in a study that verified the incompleteness of records of deaths from external causes in the State of Pernambuco in two time series (2000 to 20002; 2008 to 2010), the completeness of educational level indicators improved when comparing both series, however it remained as “poor” quality in both periods. The completeness of the marital status variable was classified as “good” in most units of analysis; this data is consistent with what Messias et al.3232. Messias KLM, Bispo Júnior JP, Pegado MFQ, Oliveira LC, Peixoto TG, Sales MAC, et al. The quality of certification of deaths due to external causes in the city of Fortaleza in the State of Ceará, Brazil. Cienc Saude Colet 2016; 21(4): 1255-67. https://doi.org/10.1590/1413-81232015214.07922015
https://doi.org/10.1590/1413-81232015214...
presented in a study on the quality of mortality data from external causes in the city of Fortaleza, and with what Rios et al.3434. Rios MA, Anjos KF, Meira SS, Nery AA, Casotti CA. Completude do sistema de informação sobre mortalidade por suicídio em idosos no estado da Bahia. J Bras Psiquiatr 2013; 62(2): 131-8. https://doi.org/10.1590/S0047-20852013000200006
https://doi.org/10.1590/S0047-2085201300...
reported in a study on the completeness of mortality data from suicide among the elderly in the state of Bahia. The improvement in filling of ethnicity/skin color in Brazil and in most FUs was also observed by Romero et al.3535. Romero DE, Maia L, Muzy J. Tendência e desigualdade na completude da informação sobre raça/cor dos óbitos de idosos no Sistema de Informações sobre Mortalidade no Brasil, entre 2000 e 2015. Cad Saúde Pública 2019; 35(12): e00223218. https://doi.org/10.1590/0102-311X00223218
https://doi.org/10.1590/0102-311X0022321...
in a study that sought to highlight the trend and inequality related to this variable in the notification of mortality of the elderly in SIM between 2000 and 2015 in Brazil. This variable must be used to measure the impact of racialized inequality on mortality, and its adequate completion provides accuracy for studies that aim to understand such differences.

This study showed that the quality of data on mortality from neoplasms in the Brazilian population aged 15 years or older is, for the most part, adequate, but there are important gaps to be filled, as the expansion of QI seeks to give visibility to the health condition of the Brazilian population as a whole and to propose public actions for its improvement. Different actions and measures can be taken to improve QI. For Woods et al.3636. Woods JA, Johnson CE, Allingham SF, Ngo HT, Katzenellenbogen JM, Thompson SC. Collaborative data familiarisation and quality assessment: reflections from use of a national dataset to investigate palliative care for Indigenous Australians. Health Inf Manag 2021; 50(1-2): 64-75. https://doi.org/10.1177/1833358320908957
https://doi.org/10.1177/1833358320908957...
, the alternative to improve the quality of data in Canada was based on the development of a curation program that developed familiarization with data and with filling mechanisms, actions that were centralized when the data was received, reducing errors and making them rare over time. For Lemma et al.3737. Lemma S, Janson A, Persson LÅ, Wickremasinghe D, Källestål C. Improving quality and use of routine health information system data in low- and middle-income countries: a scoping review. PLoS One 2020; 15(10): e0239683. https://doi.org/10.1371/journal.pone.0239683
https://doi.org/10.1371/journal.pone.023...
, the expansion of QI in low- and middle-income countries took place through the combination of different tools, such as the use of technology, training of personnel and assessment tools to improve self-assessment and feedback resources in the system of routine health information.

This study contributed to the discussion on the quality of health data, with a temporal and geographical approach to the adult population through nationally used indicators. Research on the quality of health data usually applies a restricted geographical approach, with a strong emphasis on neonatal conditions, mortality in general and external causes, and a focus on mortality in children and the elderly. This investigation breaks new ground by bringing up a debate that has expanded geographically over the years and falls on a group of underlying causes of death. In addition, it is one of the first descriptive studies on the QI about mortality from neoplasms in Brazil, at the national level and by FU. This research has limitations that are consistent with those of a descriptive study, as it does not determine which factors are associated with QI. Based on results found, further studies with the same objective of analysis are necessary.

  • Financial support: none.

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Publication Dates

  • Publication in this collection
    02 Sept 2022
  • Date of issue
    2022

History

  • Received
    05 Jan 2022
  • Reviewed
    08 June 2022
  • Accepted
    08 June 2022
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