Journal of Human Growth and Development
ISSN 0104-1282 ISSN 2175-3598
J. Hum. Growth Dev. vol.29 no.3 São Paulo set./dez. 2019
https://doi.org/10.7322/jhgd.v29.9543
ORIGINAL ARTICLE
Research methodology topics: Cohort studies or prospective and retrospective cohort studies
Luís Marcelo Aranha CamargoI, II, III, IV, V; Romeu Paulo Martins SilvaV, VI; Dionatas Ulises de Oliveira MeneguettiV, VII
IInstitute of Biomedical Sciences, University of São Paulo, Monte Negro, Rondônia, Brazil
IIDepartment of Medicine, São Lucas University Center, Porto Velho, Rondônia, Brazil
IIICenter of Tropical Medicine of Rondônia, Porto Velho, Rondônia, Brazil
IVNational Institute of Science and Technology EpiAmo / Rondônia
VStricto Sensu Graduate Program in Health Science in the Western Amazon, Federal University of Acre, Rio Branco, Acre, Brazil
VICenter for Health and Sports Sciences, Federal University of Acre, Rio Branco, Acre, Brazil
VIISchool of Application, Federal University of Acre, Rio Branco, Acre, Brazil
ABSTRACT
In health sciences, the epidemiological method can be divided into descriptive and analytical epidemiology and the latter being divided into observational (cross-sectional study, case-control study and cohort study) and experimental studies. Cohort studies may be retrospective or prospective, and both assume that the researcher will follow a population over time to seek a possible association between exposure (s) and outcome(s). These types of studies have as advantages the possibility of measuring several exposure factors and outcomes, both primary and secondary, for both relatively frequent outcomes and rare exposure factors. However, they are often long and therefore expensive studies. They have as main biases those of selection, memory and information. These are studies that may point to statistical associations between exposure and outcome that need other models to prove the casualty of these associations.
Keywords: cohort, longitudinal study, follow-up.
Authors summary
Why was this study done?
The present study was conducted to show the advantages and biases of a prospective and retrospective cohort study, demonstrating its application and in which situations it is indicated.
What did the researchers do and find?
It was found that the cohort study may be retrospective and prospective. In the retrospective study the researcher collects previous information on exposure factors and over time the in individuals. In the prospective study, the researcher is present at the exposure of one or more factors and followed for a period of time to observe one or more outcomes.
What do these findings mean?
That the cohort study, even with some biases, is a method that can estimate the incidence of an outcome (or more) exposed to one or more factors, and verifies whether there is a statistical association between exposure and outcome, either primary and secondary.
INTRODUCTION
The epidemiological method, in the area of Health Sciences, can be divided into two main areas: descriptive and analytical epidemiology. In the first part, indicators of morbidity, mortality, demographic, socioeconomic, quality of access health services and quality of life are used, among others. The second part, on other hand, uses data from descriptive epidemiology to analyze and seek explanations and/or associations for the descriptive data1-3. These (analytical) studies, on other hand, are divided into observational (cross-sectional study4, case-control study and cohort study) and experimental studies, best known as clinical trials1-3. They all have different advantages, disadvantages, costs, runtime and accuracy. While observational studies raise more hypothesis rather than showing causal association, experimental studies, considered the gold standard of epidemiological studies, are expensive, time-consuming but more accurate and may show a causal relationship between exposure and outcome.
COORT STUDY
These studies (also called longitudinal or "follow-up") assume that the researcher will follow a population over time to seek a possible (at least statistical) association between exposure and outcome. Roughly this study can be divided into 2 subtypes: a retrospective cohort study and a prospective cohort study (Figure 1).
In the prospective study the researcher is present at the time of exposure of one or more factors and accompanies for a period of time to observe one or more outcomes. In the case of the retrospective study the researcher can collect previous information on the exposure factor (s) (hence the retrospective term) and accompany individuals for a period of time (the cohort).
After some time of monitoring (months, years or decades) the researcher can relate the exposure to the outcome(s) using the Relative Risk (RR), which is nothing more than the incidence of the outcome (s) in the cohort. At the end of the study the investigator analyzes the incidence of the outcome in the group of exposed and non-exposed to the risk factor (s) in a contingency table (Table 1).
The RR will be calculated using the following formula:
This formula, in summary, represents the ratio of the Incidence between exposed (Ie) and Incidence between unexposed (Iu), therefore RR= Ie/ Iu.
The calculation of the sample size for a coort study is given by the following formula:
Both RR calculation and sample size can be performed using open access programs such as EpiInfo5 and OpenEpi6. There are also other online platforms that perform these types of analyzes, and allows the calculation of sample size7.
In addition to estimating the incidence of an outcome (or more) exposed to one or more exposure factors, one can verify whether there is a statistical association between exposure and outcome. The chi-square test can be used to verify the 95% confidence interval. If the number 1 is excluded from the confidence interval and / or the statistical significance (p) calculation is less than 5% (0.05), the statistical association can be validated (although it can not be assured that there is a causal relationship).
As an example of a prospective cohort study, sets up the following situation: a cohort of 3,400 people followed for 10 years, of whom 1,600 were exposed to a chemical and another 1,800 who were not exposed. As the outcome, the incidence of cases of myeloid leukemia was measured. In the exposed group there were 100 cases and in the group without product exposure (25) cases in 10 years (prospective cohort study). In order to calculate the RR using the formula above, we elaborate the one of contingency below (Table 2).
Using the formula for calculating RR above:
The RR =4.5 (CI 95% 2.918- 6.939)
* Interval Confidence 95% (95% IC) and p <0.05 (statistically significant).
With this data we can affirm that the occurrence of new cases of leukemia in the group exposed to the chemical has an incidence (Ie) of 62.55 new cases / 1,000 people, which in the group not exposed to incidence (Iu) is 14.1 /1,000 people and the statistically significant risk of leukemia in the exposed group is 4.5 higher than in the non-exposed group (RR) with high statistical significance (p = 0.001). Since p <0.05 and number 1 is not in the confidence interval, I accept the hypothesis of statistical association between outcome exposition.
In addition to the calculation of RR and incidence between exposed and non-exposed, this study model allows to calculate (Table 3).
CONCLUSION
Cohort studies present as advantages the ability of measuring several exposure factors and outcomes (primary and secondary). They can be applied to relatively frequent outcomes and rare exposure factors. In general, these studies are relatively expensive due to the cohort follow-up time. The errors of information and memory are the major biases of these studies. Often, in the presence of a statistical association between exposure and outcome, the Clinical Trial (experimental) is sought to confirm the hypothesis.
Perhaps the most successful example of Cohort Study (prospective) is the Framingham Study that has been going on for over 60 years. Much of the information on risk factors (exposure) and cardiovascular diseases (outcomes) derive from this study.
Acknowledgments
To Sergio de Almeida Basano and Juliana de Souza Almeida A. Camargo for the critical review of the article
REFERENCES
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Correspondence:
dionatas@icbusp.org
Manuscript received: September 2018
Manuscript accepted: August 2019
Version of record online: October 2019