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Validation of the STOP-Bang questionnaire as a means of screening for obstructive sleep apnea in adults in Brazil

Validação do questionário STOP-Bang para a identificação de apneia obstrutiva do sono em adultos no Brasil

Ricardo Luiz de Menezes Duarte, Lorena Barbosa de Moraes Fonseca, Flavio José Magalhães-da-Silveira, Erika Aparecida da Silveira, Marcelo Fouad Rabahi

DOI: http://dx.doi.org/10.1590/S1806-37562017000000139

ABSTRACT

Objective: To validate the Portuguese-language version of the STOP-Bang (acronym for Snoring, Tiredness, Observed apnea, high blood Pressure, Body mass index, Age, Neck circumference, and Gender) questionnaire, culturally adapted for use in Brazil, as a means of screening for obstructive sleep apnea (OSA) in adults. Methods: In this validation study, we enrolled patients ≥ 18 years of age, recruited between May of 2015 and August of 2016. All patients completed the STOP-Bang questionnaire and underwent overnight polysomnography. To evaluate the performance of the questionnaire, we used contingency tables and areas under the (receiver operating characteristic) curve (AUCs). Results: We included 456 patients. The mean age was 43.7 ± 12.5 years, and 291 (63.8%) of the patients were male. On the basis of the apnea-hypopnea index (AHI), we categorized OSA as mild/moderate/severe (any OSA; AHI ≥ 5 events/h), moderate/severe (AHI ≥ 15 events/h), or severe (AHI ≥ 30 events/h). The overall prevalence of OSA was 78.3%, compared with 52.0%, and 28.5% for moderate/severe and severe OSA, respectively. The most common score on the STOP-Bang questionnaire was 4 points (n = 106), followed by 3 points (n = 85) and 5 points (n = 82). An increase in the score was paralleled by a reduction in sensitivity with a corresponding increase in specificity for all AHI cut-off points. The AUCs obtained for the identification of any, moderate/severe, and severe OSA were: 0.743, 0.731, and 0.779, respectively. For any OSA, the score on the questionnaire (cut-off, ≥ 3 points) presented sensitivity, specificity, and accuracy of 83.5%, 45.5%, and 75.2%, respectively. Conclusions: The STOP-Bang questionnaire performed adequately for OSA screening, indicating that it could be used as an effective screening tool for the disorder.

Keywords: Sleep apnea, obstructive/diagnosis; Polysomnography; Diagnostic techniques and procedures; Surveys and questionnaires.

RESUMO

Objetivo: Realizar a validação da versão brasileira do questionário STOP-Bang (acrônimo em inglês para Snoring, Tiredness, Observed apnea, high blood Pressure, Body mass index, Age, Neck circumference, and Gender) para a identificação de apneia obstrutiva do sono (AOS) em adultos. Métodos: Neste estudo de validação, foram incluídos pacientes com idade ≥ 18 anos, recrutados entre maio de 2015 e novembro de 2016. Todos os pacientes completaram o questionário STOP-Bang e foram submetidos a polissonografia de noite inteira. O índice de apneias e hipopneias (IAH) foi calculado. Foram utilizadas tabelas de contingência e a área sob a curva (ASC) ROC para avaliar o desempenho do questionário. Resultados: Foram incluídos 456 pacientes. A média de idade foi de 43,7 ± 12,5 anos, e 291 (63,8%) dos pacientes eram homens. Com base no IAH, a AOS foi classificada em leve/moderada/grave (AOS, independentemente da gravidade; IAH ≥ 5 eventos/h), cuja prevalência foi de 78,3%; moderada/grave (IAH ≥ 15 eventos/h), cuja prevalência foi de 52,0%; e grave (IAH ≥ 30 eventos/h), cuja prevalência foi de 28,5%. A pontuação mais frequentemente obtida no STOP-Bang foi 4 (n = 106), seguida de 3 (n = 85) e 5 (n = 82). O aumento da pontuação obtida no STOP-Bang (pontuação máxima: 8) resultou em redução da sensibilidade e aumento correspondente da especificidade em todos os pontos de corte do IAH (≥ 5, ≥ 15 e ≥ 30 eventos/h). A ASC para a identificação de AOS, AOS moderada/grave e AOS grave foi de 0,743, 0,731 e 0,779, respectivamente. Para a identificação de AOS, a pontuação no STOP-Bang (valor de corte ≥ 3) apresentou sensibilidade de 83,5%, especificidade de 45,5% e acurácia de 75,2%. Conclusões: O questionário STOP-Bang mostrou-se adequado para identificar AOS e pode ser uma ferramenta eficaz para o diagnóstico do transtorno.

Palavras-chave: Apneia obstrutiva do sono/diagnóstico; Polissonografia; Técnicas e procedimentos diagnósticos; Inquéritos e questionários.

INTRODUCTION

Obstructive sleep apnea (OSA) is the most common sleep disorder and a major public health problem, affecting 2-4% of the adult population.(1,2) However, due to the aging of the population(3) and the obesity epidemic,(4) the actual prevalence of OSA might be higher than previously reported.(5-7) The signs, symptoms, and consequences of OSA are a direct result of the disturbances associated with repetitive upper airway collapse(8): sleep fragmentation, hypoxemia, hypercapnia, marked oscillations in intrathoracic pressure, and increased sympathetic activity. Left untreated, OSA limits the ability to perform activities of daily living, worsens quality of life, compromises personal safety, and decreases labor productivity, as well as increasing health care expenditures.(3,4)

The current gold standard for the diagnosis of OSA is overnight polysomnography in a laboratory. However, OSA has become so prevalent that the available sleep laboratories have been overwhelmed. Sleep laboratories around the world have long waiting lists of patients suspected of having OSA.(9) To address this issue, several screening questionnaires and clinical screening models have been developed to help identify patients with suspected OSA.(10-16) The great majority of these models were developed in other countries, and their reproducibility in Brazil remains unclear. The use of practical screening tools will probably translate to a higher rate of diagnosis and a reduction in costs. That is especially true for portable diagnostic methods in areas with limited resources.

The STOP-Bang (acronym for Snoring, Tiredness, Observed apnea, high blood Pressure, Body mass index, Age, Neck circumference, and Gender) questionnaire and its predecessor, the STOP questionnaire, were first developed and validated for use in surgical patients.(14) The STOP and STOP-Bang are both self-report questionnaires and consist of 4 and 8 yes/no questions, respectively. When a cut-off score of ≥ 3 points was used in a sample of surgical patients, the STOP-Bang questionnaire showed the following conditional probabilities for the diagnosis of OSA(14): sensitivity of 83.6%, specificity of 56.4%, a positive predictive value (PPV) of 81.0%, and a negative predictive value (NPV) of 60.8%.

The population of Brazil includes individuals from diverse ethnic, racial, and social groups. Given that the Brazilian population is racially and ethnically diverse, it could be useful to determine the validity and performance of the STOP-Bang questionnaire in this setting. To our knowledge, there have been no studies determining the reproducibility of this questionnaire in Brazil. The objective of the present study was to validate the Portuguese-language version of the STOP-Bang questionnaire that has been culturally adapted for use in Brazil(17) in patients with suspected OSA who were submitted to overnight polysomnography.

METHODS

Patient selection

Consecutive outpatients were recruited from among those referred for overnight polysomnography at two sleep laboratories in Brazil: one in the city of Goiânia (enrollment from May 2015 to August 2015, n = 229) and one in the city of Rio de Janeiro (enrollment from October 2016 to November 2016, n = 227). The study protocol was approved by the Research Ethics Committees of the Alberto Rassi Hospital, in Goiânia (Protocol no. 752/14), and of the Federal University of Rio de Janeiro, in Rio de Janeiro (Protocol no. 1,764,165). All procedures were performed in accordance with the Declaration of Helsinki, and all participating patients gave written informed consent.

All clinical and polysomnography data were collected prospectively. The following inclusion criteria were applied: being ≥ 18 years of age; not having previously been diagnosed with OSA; and having been referred to a sleep laboratory for polysomnography, for any reason. We excluded patients who had participated in the cultural adaptation of the STOP-Bang questionnaire,(17) as well as those who did not complete the questionnaire fully or correctly and those is whom the polysomnography was incomplete or technically inadequate.

Application of the STOP-Bang questionnaire

After signing the consent form, the patients completed the STOP-Bang questionnaire. The four initial questions-those corresponding to the "STOP" portion of the questionnaire-were answered by the patients themselves. The responses to the questions corresponding to the "Bang" portion of the questionnaire were collected by the researcher on a standardized form. Body weight was measured in kilograms, and height was measured in meters. The body mass index (BMI) was then calculated as follows: weight in kilograms divided by height in meters squared (kg/m2). Neck circumference was measured with a 150-cm tape measure, whose smallest markings were at 0.01-cm intervals, and was determined at the level of the cricothyroid membrane.

Sleep studies

All sleep studies were conducted either in Goiânia, on an Alice 5 diagnostic sleep system (Philips Respironics, Murrysville, PA, USA), or in Rio de Janeiro, on an EMBLA S7000 digital system (Embla Systems Inc., Broomfield, CO, USA). The following were performed: electroencephalography; left and right electro-oculography; electromyography of the submental and anterior tibialis muscles; snore detection; nasal airflow monitoring (with a nasal cannula); respiratory effort assessment (with the use of thoracic and abdominal straps); pulse oximetry; electrocardiography; body position monitoring; and digital video capture. Polysomnography records were scored manually and were interpreted in accordance with existing guidelines,(18) which define apnea as a ≥ 90% reduction in airflow for ≥ 10 s and hypopnea as a ≥ 30% reduction in airflow for ≥ 10 s, accompanied by desaturation ≥ 3% or an arousal. The apnea-hypopnea index (AHI) was calculated by determining the total number of apnea and hypopnea events per hour of sleep. The diagnosis of OSA was based on an AHI ≥ 5 events/h. The severity of OSA was classified as follows: mild/moderate/severe (any OSA; AHI ≥ 5 events/h); moderate/severe (AHI ≥ 15 events/h); or severe (AHI ≥ 30 events/h). At both sleep laboratories, the physicians who carried out the polysomnography examinations were blinded to the STOP-Bang scores.

Statistical analysis

Statistical analysis was performed with the IBM SPSS Statistics software package, version 23.0 for Windows (IBM Corporation, Armonk, NY, USA). Continuous variables are expressed as mean and standard deviation, whereas categorical (dichotomous) variables are expressed as absolute and relative frequencies. Groups were compared with the chi-square-test (for dichotomous variables), Student's t-test and one-way ANOVA (for normally distributed continuous variables), or the Mann-Whitney U test and the Kruskal-Wallis test (for non-normally distributed continuous variables). Correlations were evaluated by determining Spearman's correlation coefficient (rs). The ROC curves and the areas under the curve (AUCs) were assessed at all three AHI thresholds (5 events/h, 15 events/h, and 30 events/h). Multivariate tests were used in order to calculate the odds ratios and their respective 95% confidence intervals. Using 2 × 2 contingency tables, we calculated the following conditional probabilities: sensitivity, specificity, PPV, NPV, accuracy, likelihood ratios, and odds ratios. The post-test probability of each STOP-Bang score was calculated by logistic regression. All statistical tests were two-sided, and values of p < 0.05 were considered statistically significant.

RESULTS

A total of 522 patients were referred for diagnostic polysomnography. Of those 522 patients, 66 (12.6%) were excluded, as follows: 50 patients, because the polysomnography was technically inadequate; 11 patients, because the STOP-Bang questionnaire was completed incorrectly; and 5 patients, because they had previously participated in the cross-cultural adaptation of the questionnaire. Therefore, the final study population comprised 456 patients, in two independent samples: one from Rio de Janeiro (n = 229) and one from Goiânia (n = 227). As can be seen in Table 1, 63.8% of the patients were male, the mean age was 43.7 ± 12.5 years, the mean BMI was 32.1 ± 7.8 kg/m2, and the mean neck circumference was 40.8 ± 4.3 cm. We observed statistically significant differences between the patients with and without OSA for all continuous variables (age, BMI, and neck circumference), those with OSA (AHI ≥ 5 events/h) being older (p < 0.001), having a higher BMI (p = 0.001), and having a larger neck circumference (p < 0.001). Six of the eight items on the STOP-Bang questionnaire presented a statistically significant difference between the patients with and without OSA, the two exceptions being tiredness (p = 0.730) and BMI > 35 kg/m2 (p = 0.705). In comparison with the patients without OSA, those with OSA were more likely to snore (p = 0.002), to present with apnea (p < 0.001), to have hypertension (p < 0.001), to be over 50 years of age (p = 0.011), to have a neck circumference > 40 cm (p < 0.001), and to be male (p < 0.001). Among the patients with severe OSA (AHI ≥ 30 events/h), the mean age was 45.9 ± 12.8 years, the mean BMI was 33.5 ± 7.9 kg/m2, and the mean neck circumference was 43.1 ± 4.2 cm.
 



The overall prevalence of OSA was 78.3%, compared with 52.0% and 28.5% for moderate/severe OSA and severe OSA, respectively. In addition, the overall prevalence of OSA was higher in males than in females (84.5% vs. 67.3%), as was that of moderate/severe OSA (60.1% vs. 37.6%) and severe OSA (36.4% vs. 14.5%), the differences being statistically significant (p < 0.001 for all). That suggests that male gender influences the occurrence of OSA.
 



Table 2 shows the adjusted odds ratios for all eight STOP-Bang items in relation to OSA severity. Only three items were independent predictors at all three AHI thresholds: observed apnea, age, and neck circumference. In contrast, the tiredness item was not an independent predictor at any AHI threshold (p = 0.912 for any OSA, p = 0.397 for moderate/severe OSA, and p = 0.097 for severe OSA). The best predictor of moderate/severe OSA was neck circumference (adjusted OR: 2.347; 95% CI: 1.445-3.816), followed by age (adjusted OR: 2.132; 95% CI: 1.308-3.472) and observed apnea (adjusted OR: 1.897; 95% CI: 1.233-2.923).
 



Table 3 shows the distribution of the parameters according to OSA severity. The most common STOP-Bang score (occurring in 106 patients) was 4 points, followed by 3 points (occurring in 85) and 5 points (occurring in 82). Using the cut-off STOP-Bang score of 3 points, we classified 34.1% of the patients as having no OSA (AHI < 5 events/h) and 9.4% as having severe OSA (AHI ≥ 30 events/h). The mean STOP-Bang score was 3.8 ± 1.6 points in the study population as a whole and was significantly lower in females than in males (2.8 ± 1.3 points vs. 4.4 ± 1.4 points; p < 0.001). In addition, the mean STOP-Bang score increased significantly in parallel with increasing severity of OSA-from 2.8 ± 1.4 points for the patients without OSA to 4.1 ± 1.5 points for those with any OSA, 4.5 ± 1.5 points for those with moderate/severe OSA, and 5.0 ± 1.3 points for those with severe OSA-the p-value for trend being < 0.001.
 

 




The performance of the STOP-Bang questionnaire is shown in Table 4. As can be seen in the table, the cut-off STOP-Bang score (≥ 3 points) showed the following conditional probabilities for the identification of any OSA: sensitivity of 83.5%, specificity of 45.5%, PPV of 84.7%, NPV of 43.3%, and accuracy of 75.2%. For the identification of moderate/severe OSA, the same STOP-Bang cut-off score had a sensitivity of 88.6%, a specificity of 35.2%, a PPV of 59.7%, an NPV of 74.0%, and an accuracy of 62.9%; for the identification of severe OSA, it had a sensitivity of 95.4%, a specificity of 30.1%, a PPV of 35.2%, an NPV of 94.2%, and an accuracy of 48.7%. The STOP-Bang score correlated positively with the AHI (rs = 0.516; p < 0.001). According to the ROC curves (Figure 1), the STOP-Bang questionnaire showed the following AUCs: 0.743 (95% CI: 0.689-0.798) for the diagnosis of any OSA; 0.731 (95% CI: 0.685-0.777) for the diagnosis of moderate/severe OSA; and 0.779 (95% CI: 0.735-0.824) for the diagnosis of severe OSA. Table 5 summarizes the prediction of any OSA, moderate/severe OSA, and severe OSA in relation to the various possible scores obtained on the STOP-Bang questionnaire. For a score ≥ 3 points, the post-test probability of any OSA, moderate/severe OSA, and severe OSA was 84.7%, 59.6%, and 35.2%, respectively.
 




DISCUSSION

In this prospective study, we determined that the STOP-Bang questionnaire shows promise as a screening tool for OSA in patients referred to sleep laboratories in Brazil. The use of the STOP-Bang questionnaire could provide various benefits: reducing the risk of peri- and post-operative complications, which often go undiagnosed in surgical patients with OSA(19); reducing the occurrence of comorbidities, thus minimizing the health care costs associated with the disorder; and providing a portable diagnostic method, which could be critical in areas with limited resources, where polysomnography is not widely available. In addition, the performance of the STOP-Bang questionnaire was quite similar to that reported in previous studies for the STOP and STOP-Bang questionnaires(14,20-25); that is, high sensitivity and low-to-moderate specificity, which could be especially critical in the more severe forms of OSA, leading to a decrease in accuracy (the proportion of correctly screened individuals). This aspect of its predictive performance (low specificity) has also been reported in various studies designed to translate, adapt, or validate the STOP-Bang questionnaire.(21-25)

Our study showed a high prevalence of OSA overall, as well as a high prevalence of moderate/severe OSA and severe OSA. That could be explained by the fact that it was conducted in a sleep laboratory setting. Unlike studies conducted in the community, sleep laboratory studies have reported OSA prevalence rates of 42-76%.(10) Our study, similar to previous studies, demonstrated that the prevalence of OSA is higher in men than in women.(3,8,26-30) In addition, men generally present with typical symptoms, such as snoring and observed apnea, whereas women are more likely to present with atypical symptoms, such as depression, fatigue, and insomnia.(26-29) Anthropometric and demographic data also differ between genders: men generally have larger neck circumferences than do women,(31) whereas women with OSA are generally older than their male counterparts.(3) Furthermore, the performance of a questionnaire for OSA can vary widely depending on the population studied and the AHI cut-off point used for OSA diagnosis.(10,11) The Berlin questionnaire, for example, was initially developed in a primary care setting,(13) and its performance might therefore be better in that setting than in the sleep laboratory.(32) In contrast, the STOP-Bang questionnaire was initially developed for use in surgical patients. (14) Although the STOP-Bang questionnaire has been widely validated as a screening tool,(20) it was found to be inadequate and inappropriate as a means of confirming the presence of significant OSA among patients at a Veterans Administration facility in the United States, possibly because of the low (4.9%) specificity obtained in that study.(33)

The STOP-Bang is a screening instrument with high sensitivity, that sensitivity increasing in proportion to increases in the AHI threshold used (from 5 events/h to 30 events/h).(14) Conversely, it exhibits low-to-moderate specificity, which reduces its accuracy. Because it prioritizes sensitivity over specificity, the STOP-Bang questionnaire classifies a large number of patients as high-risk, thus increasing the rate of false-positive results. Consequently, the STOP-Bang questionnaire alone is insufficient to rule out the need for a sleep study in all patients. Another important feature of the instrument is that an increase in its score (maximum, 8 points) has been shown to result in an increase in post-test probability.(34-36) Unfortunately, our study failed to show a linear increase in the post-test probability with increasing STOP-Bang scores, except in the patients with severe OSA, among whom such an increase was observed for all scores.

One previous study evaluated four tools for OSA screening(37): the four-variable screening tool, the STOP questionnaire, the STOP-Bang questionnaire, and the Epworth Sleepiness Scale. To predict moderate/severe OSA, the STOP-Bang questionnaire had the highest sensitivity (87.0%), with an AUC of 0.64, whereas the four-variable screening tool presented the highest specificity (93.2%) and accuracy (79.4%). Similar findings were reported in another study comparing five different questionnaires (the STOP questionnaire, the STOP-Bang questionnaire, the Berlin questionnaire, the Epworth Sleepiness Scale, and the four-variable screening tool).(38) In that study, the STOP-Bang questionnaire had the highest sensitivity (97.6%), as well as the lowest specificity (12.7%), for the identification of moderate/severe OSA.

The present study has some limitations that need to be emphasized. It involved patients referred to the sleep laboratory, who are typically pre-selected patients, which could represent a selection bias. In addition, we did not compare the performance of the STOP-Bang questionnaire with that of other validated screening instruments, and there is therefore a need for further studies comparing it with such tools. Nevertheless, our study was performed with a considerable sample of adults, all of whom underwent overnight polysomnography, which is the gold standard for the diagnosis of OSA. Additional strengths were the fact that it was a prospective study, with manual analysis of the polysomnography results, and the fact that the physicians involved in the polysomnography examinations had no prior knowledge of the STOP-Bang results.

In conclusion, the STOP-Bang questionnaire showed good performance in screening for OSA and can predict the severity of the disorder. The validation of the STOP-Bang questionnaire will promote its use as an important screening tool for OSA in sleep laboratories in Brazil. Because our study was conducted in a sleep laboratory setting, further studies are needed in order to validate the STOP-Bang questionnaire for use in other contexts, such as primary care.

ACKNOWLEDGMENTS

The authors would like to thank Dr. Frances Chung for her kindness in authorizing the validation of the STOP-Bang questionnaire for use in Brazil.

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