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Nature and Science of Sleep logoLink to Nature and Science of Sleep
. 2020 Aug 24;12:593–602. doi: 10.2147/NSS.S258330

Gender Differences in the Clinical and Polysomnographic Characteristics Among Australian Aboriginal Patients with Obstructive Sleep Apnea

Sumit Mehra 1,2, Ram H Ghimire 1, Joy J Mingi 3,4, Monica Hatch 1, Himanshu Garg 1, Robert Adams 5, Subash S Heraganahally 1,3,
PMCID: PMC7455593  PMID: 32922104

Abstract

Background

In this study, we assessed the clinical and polysomnographic (PSG) characteristics according to gender among Australian Aboriginal men and woman diagnosed to have obstructive sleep apnea (OSA).

Methods

In this retrospective study, all adult Aboriginal patients over 18 years of age diagnosed to have OSA with an apnea hypopnea index (AHI) > 5/hour over a 5 year period were included.

Results

Of the 337 patients (168 females and 169 males), who underwent a diagnostic PSG, 297 (88%) were diagnosed to have OSA (AHI) >5/hour), 154/297 males (52%) and 143/297 females (48%). Amongst male and female patients with OSA, 63% and 37% were in the severe spectrum (AHI>30/hour). The male cohort had higher stage N1 NREM sleep (P<0.001), reduced N3 NREM sleep (P<0.001), higher AHI severity (P<0.001), higher NREM AHI (P<0.001), and high arousal index (P<0.005). REM sleep-related AHI was higher among female patients with all severity of OSA, along with severe oxygen desaturation during REM sleep. Among patients with severe OSA, the female cohort were younger (age 46 years vs 49 years, P=0.030) and had higher BMI with all severity of OSA, while males had larger neck circumference compared to females. Hypertension increased the odds of severe OSA versus the combined odds of mild and moderate OSA for both genders.

Conclusion

This study highlights some important differences in the way sleep apnea manifests in Australian Aboriginal males and females and further studies are warranted to explore avenues to look for a physiological basis for these observations and targeted interventions.

Keywords: aboriginal, ethnic, female, gender, male, obstructive sleep apnea

Summary

Obstructive Sleep Apnea (OSA) is increasingly being recognized among females, and emerging evidence suggests that there are significantly different gender aspects of OSA. However, the literature in regards to the sex differences in the clinical manifestation and sleep study parameters on OSA is scant. In this retrospective study, we evaluated and compared the demographic, clinical, and sleep study details of adult Australian Aboriginal male and female patients diagnosed to have OSA. This is probably the first study comparing the sleep health profile of this male and female Indigenous/Aboriginal population. Our study showed that severe sleep apnea was associated more commonly with male gender, with females having predominant REM sleep related OSA. Females with severe OSA were younger, and had higher BMI, in contrast to males who had larger neck circumference. Males with OSA have more fragmented and poor sleep quality. The presence of high blood pressure increases the odds of having severe OSA versus the combined odds of mild and moderate OSA for both genders. The results of our study highlight the clinical and gender differences in an Aboriginal population and may be helpful for further research to implement management strategies of OSA in this population.

Introduction

Obstructive sleep apnea (OSA) is a global health issue with a prevalence estimated in the general adult population to be between 6–17%.13 More recently, OSA is being increasingly recognised as a heterogeneous disorder with varying clinical phenotypic representations.47 Moreover, individual’s ethnicity and gender is considered to represent one of the important phenotype variants in the clinical manifestations of patients with OSA.8,9 Furthermore, OSA has been assumed to be a male predominant disease and most of our knowledge on OSA comes largely from male population-based studies. However, it is being increasingly recognised among women and the male-to-female ratio is estimated to be between 2:1 and 3:1.1012 The differences in prevalence, though not fully understood, however, are thought to be related to variation in craniofacial morphology, pattern of fat deposition, effect of sex hormones, and menopause.1317 Under-recognition of OSA in women in clinical settings may occur due to sociocultural and ethnic factors combined with varied clinical expression.

Published studies on ethnic and gender differences in the clinical manifestation of OSA has mostly come from populations involving Caucasians, African Americans, and Hispanics.8,9,18-20 However, worldwide approximately 370 million people are estimated to be of Indigenous descent and live in over 90 countries and are thought to make up for about 5% of the global population.21,22 In Australia, 3.3% of the population are considered to be of Aboriginal and Torres Strait Islander (ATSI) origin. However, in the Northern Territory (NT) of Australia about 30% of the population are Australian Aboriginals, the highest proportion among all Australian States and Territories and follow traditional Indigenous culture and belief.23 Furthermore, OSA is also being increasingly recognized in the Indigenous/Aboriginal population and studies have demonstrated that Indigenous/Aboriginal patients have a higher chance of having OSA compared to non- Indigenous/Aboriginals.2427 A recent study from our center had demonstrated that a higher proportion of ATSI patients were noted to have severe OSA.28

Although there is growing evidence to suggest that OSA manifests differently in different ethnic populations and has gender differences; however, there is limited evidence in the literature with regards to the ethnic and gender influence among Australian or other Indigenous/Aboriginal populations. Hence, it would be more meaningful to study a homogenous NT Australian Aboriginal cohort with a similar genetic/ethnic pool exposed to similar environmental and cultural conditions. Therefore, the aim of this study was to assess gender differences in clinical and polysomnographic (PSG) characteristics in Australian Aboriginal patients with OSA patients at the NT, Top End Health Service region (TEHS) of Australia.

Methods

Study Participants

The study participants who self-identified as only of Australian Aboriginals aged 18 years and over from our previous study cohort28 were included in this study. Patients who identified to be of both Aboriginal and/or Torres Strait Islander origin (ATSI) or Torres Strait Islander origin alone (TSI) were excluded from the study, in order for this study to represent a uniquely defined Australian Aboriginal cohort with similar genetic/ethnic, cultural pool, exposed to similar environmental and living conditions. Where information on gender or aboriginality was not clear from the data set the patients were excluded from the analysis.

The patients were referred to the specialist sleep service based at the Royal Darwin Hospital (RDH) and Darwin Private Hospital (DPH), Darwin, by primary health practitioners and other specialist physicians for assessment of clinically suspected sleep disorders, in particular OSA. Patients underwent a diagnostic PSG as per the discretion of the treating respiratory and sleep physician following an initial clinical consultation.

Clinical Data

As per standard protocol at our sleep diagnostic facility, all patients were administered with a detailed questionnaire by the sleep technologist prior to undergoing a diagnostic PSG. For non-English speaking patients, language interpreters or family members assisted with the questionnaire when available. The questionnaire was designed to provide information on demographics, Aboriginal status, age, sex, alcohol consumption, smoking history, and medical co-morbid conditions, such as the presence of diabetes, hypertension, and heart disease (including cardiac arrhythmia, coronary artery disease, and rheumatic heart disease). To assess subjective daytime symptoms of sleep disorder, the Epworth Sleepiness Scale (ESS) was utilized. Anthropometric measurements including weight, height, neck circumference (in the standing position at the level of the cricothyroid membrane), and body mass index (BMI) were also recorded.

Polysomnography (PSG)

Level 1 and level 2 PSGs were performed at the Darwin-based sleep service facility accredited by the National Association of Testing Authorities, Australia (NATA) and the Australian Sleep Association (ASA). The sleep studies which were performed and analysed during this study period were according to the 2007 American Academy of Sleep Medicine recommendations and as described in the previous study.28 All failed sleep studies, type 3, type 4 (limited sleep studies), continuous positive airway pressure (CPAP) initiation/titration studies, and studies in which AHI or sleep architecture was not available were excluded.

Statistical Considerations

Statistical analysis was conducted in Stata/SE 15. The assumption of normality was checked using Shapiro–Wilk test. The data are not normally distributed. Thus, continuous data was described with median and interquartile range (IQR) and was analyzed with a Wilcoxon rank-sum (Mann–Whitney) test. Categorical data was described with count and percentages and was analysed with a chi-squared (χ2) test.

The participants’ characteristics were first compared according to gender and second according to gender in each OSA category. Ordered logistic regression was used to investigate what factors influence the severity of OSA in male and female genders. These factors include participants’ demographic characteristics and medical co-morbid conditions. Statistical significance is set at P<0.05. All individual clinical parameters were analyzed as per medical records entries. The numbers of available information of each individual data are shown in respective areas when appropriate.

Ethical Consideration

This study is a part of the NT sleep health study approved by the Human Research Ethics Committee of the Northern Territory Health Service (TEHS) and Menzies School of Health Research. (Reference no: HREC2012-1886). Individual consent from the study participants was not obtained, as the study was retrospective in nature and no active pharmacological or non-pharmacological interventions were investigated during this study. Investigators involved in this study are the usual specialist care providers for the patients included in this study and have access to patients’ medical records and sleep study reports as a part of their usual medical care. Hence, separate patients’ consent to access their medical records or the sleep study reports was not required.

Results

Demographic and Baseline Clinical Characteristics

There were a total of 337 patients who were identified as Aboriginal Australians only and had undergone a diagnostic PSG during the study period (2011–2015). There were similar numbers of women (168, 49.9%) to men (169, 50.1%) within this group. Out of these 337 who had a diagnostic PSG, 297 (88%) patients were noted to have OSA (AHI>5/h), 154/297 males (51.8%) and 143/297 females (48.2%). The study results/analysis are representative of the 297 of the study cohort diagnosed to have OSA. Table 1 shows the demographic characteristics, Epworth Sleepiness score (ESS), smoking, alcohol history, and medical co-morbid conditions among both male and female study participants. Women had higher BMI compared to men (P=0.006), whilst men had larger neck circumferences compared to women (P<0.001) and ESS scores were similar among both men and women. Medical co-morbid conditions were noted to be highly prevalent, equally noted in both men and women, with diabetes (138, 46.5%), hypertension (131, 44.1%), and cardiovascular disease (116, 39.1%).

Table 1.

Comparison of Demographic Characteristics and Medical Co-Morbid Conditions Among Both Male and Female Study Participants with Obstructive Sleep Apnea

Variables Female Male All Patients P-value
Sex 143 (48.2%) 154 (51.8%) 297 (100%)
Age (years) 48.7 (39.4–55.8) 47 (39.7–57.7) 47.8 (39.7–56.5) 0.976
*Weight (kg) 94 (83–115.5) 103.2 (89.4–118) 100 (86–116.8) 0.011
*BMI 35.8 (32.1–43.2) 34.6 (30.1–39.4) 35.2 (30.6–40.7) 0.006
*Neck circ (cm) 38.5 (35.0–41.0) 46 (43–49) 44 (40–47.5) 0.001
ESS 11 (7–16) 10 (6–14) 10 (6–14) 0.161
Smoking 73 (51.0%) 77 (50.0%) 150 0.765
*Alcohol History 47 (32.9%) 75 (48.7%) 122 0.011
Diabetes 73 (51.0%) 65 (42.2%) 138 (46.5%) 0.127
Hypertension 62 (43.4%) 69 (44.8%) 131 (44.1%) 0.802
Heart Disease 53 (37.1%) 63 (40.9%) 116 (39.1%) 0.497
COPD 46 (32.2%) 40 (26.0%) 86 (29.0%) 0.240
CKD 33 (23.1%) 35 (22.7%) 68 (22.9%) 0.943

Notes: Data are presented as median (interquartile range) and n (%). *Statistically significant.

Abbreviations: BMI, body mass index; AF, atrial fibrillation; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; ESS, Epworth sleepiness scale; Circ, circumference; n, numbers.

Polysomnography Data

Polysomnography findings comparing male and female patients are shown in Table 2. Women with OSA had more slow wave or stage N3 non-rapid eye movement (NREM) sleep (P<0.001) and higher spontaneous arousal index (P=0.021) compared to men. Percentage of stage N1 non rapid eye movement sleep (P<0.001), respiratory arousal index (P<0.001), total arousal index (P= 0.005), total AHI (P<0.001), and NREM AHI (P<0.001) were significantly higher among males compared to females. The median total AHI among male OSA patients was 44.3 events/hour in comparison to 21.9 events/hour amongst female patients.

Table 2.

Comparison of Polysomnographic Results Among Male and Female Study Participants with Obstructive Sleep Apnea

PSG Variables Female Male All Participants P-value
Total 143 154 297
Sleep Latency (min) 20 (7.2–40.5) 16.6 (5.5–41.6) 18.5 (6.2–41.3) 0.386
REM Onset (min) 107 (74–183.5) 121 (75–188) 115.8 (74.5–187.25) 0.676
Wake After Sleep Onset (min) 74 (45.1–116.2) 91.4 (44.5–173) 81.25 (44.8–148.05) 0.123
Sleep Efficiency (%) 77.7 (68.2–86.0) 74.4 (60.4–85.9) 76.5 (64.3–86.0) 0.125
Total Sleep Time (min) 388.5 (338–451.5) 379.5 (296.5–437) 385.0 (319.8–439.0) 0.181
*N1 Sleep Percentage 9.6 (6.1–17.1) 18.2 (11.7 29.4) 13.4 (8–23.7) 0.001
N2 Sleep Percentage 53.9 (43.9–60.4) 51.5 (39.3–61.6) 52.6 (41.4–60.9) 0.570
*N3 Sleep Percentage 11.9 (4.3–20.6) 4.4 (0.6–11.3) 8.3 (1.6–15.9) 0.000
Stage REM Percentage 17.7 (10.9–22.3) 17 (11.2–22.9) 17.3 (11.2–22.3) 0.799
*Respiratory Arousal Index (/h) 9.9 (4.0–18.9) 18 (6.9–38.7) 12.5 (5.6–27.1) 0.000
Limb Related Arousal Index (/h) 4.4 (2.5–8.3) 3.7 (1.9–7.6) 4.1 (2.1–7.8) 0.269
*Spontaneous Arousal Index (/h) 3.4 (1.7–6.3) 2.4 (0.9–5.3) 3.1 (1.2–5.8) 0.021
*Total Arousal Index (/h) 23.8 (15.8–34.9) 28.4 (18.3–48) 25.8 (16.8–41) 0.005
*Total AHI (/h) 21.9 (12.6–45.5) 44.3 (20.3–67.2) 32 (14.7–60.7) 0.001
*NREM AHI (/h) 17.2 (7.4–43.6) 46.4 (18.5–67.9) 27.2 (10.8–60.6) 0.001
REM AHI (/h) 41.55 (22.5–73.4) 42.9 (22.5–68.9) 41.9 (22.5–71.6) 0.689
Avg SpO2: Wake 95 (93–96) 95 (93–96) 95 (93–96) 0.436
Avg SpO2: NREM 93 (91–95) 93 (91–95) 93 (91–95) 0.346
Avg SpO2: REM 93 (89–95) 93 (88–95) 93 (89 −95) 0.928
Minimum SpO2 During Sleep (%) 80 (70–85) 76.5 (65–85) 78 (68–85) 0.133

Notes: Data are presented as median (interquartile range). *Statistically significant.

Abbreviations: AHI, apnea hypopnea index; REM, rapid eye movement; NRE, non rapid eye movement; N1, N2, N3, non-rapid eye movement sleep stage; Avg SpO2, average oxygen saturation; /h, per hour.

Clinical Characteristic According to Apnea Hypopnea Index in Both Gender

The clinical and demographic characteristic for both male and female gender according to AHI severity, AHI<5 (normal range), AHI=5–15 (mild sleep apnea), AHI=15–30 (moderate sleep apnea), AHI>30 (severe sleep apnea) are shown in Table 3. Amongst those with OSA, severe OSA was present in more than half (52.2%), more so among males, accounting for more than 60%. Moreover, amongst male and female patients with OSA, 62.6% and 37.4% were in the severe spectrum, respectively. Among patients with severe OSA, the female cohort were younger and had higher BMI with all severity of OSA. Wereas male patients with OSA had larger neck circumferences in comparison to female patients with all severity categories, with increasing neck circumference associated with more severe OSA. In terms of the association of OSA with chronic health conditions such as chronic kidney disease, hypertension, diabetes, etc., no significant difference was noted in either gender.

Table 3.

Demographic Characteristics and Medical Co-Morbid Conditions in Male and Female Study Participants According to Apnea Hypopnea Index

Clinical Characteristics Mild (AHI 5–15) Moderate (AHI 15–30) Severe (AHI >30)
Total 76 (25.6%) 66 (22.2%) 155 (52.2%)
Sex Female 51 (67.1%) 34 (51.5%) 58 (37.4%)
Male 25 (32.9%) 32 (48.5%) 97 (62.6%)
Age (years) Female 50.6 (41.5–62.0) 50.2 (44.2–57.1) 46.5 (36–52.7)
Male 45.7 (36–54.5) 45.9 (39.6–54.3) 48.9 (39.8–58.4)
P-value 0.124 0.243 *0.030
Weight (kg) Female 92 (80.5–106.8) 96 (81.5–110) 94.2 (84–130)
Male 100 (84.8–110.2) 96 (88–110) 106.3 (91–120.9)
P-value 0.365 0.606 0.226
BMI Female 35.1 (30.5–41.0) 35.8 (32.4–40.4) 40.3 (32.2–46.4)
Male 32.5 (28.1–37.6) 31.9 (29.3–36.1) 35.8 (31–40.6)
P-value 0.057 *0.010 0.063
Neck Circ (cm) Female 40 (36.5–43) 40 (37–44) 44 (40.5–46.5)
Male 44 (42–46.5) 45.3 (42–48) 47 (44–50)
P-value *0.001 *0.001 *0.001
ESS Female 10 (6–14) 12 (7–17) 11 (8 −16)
Male 7.5 (5–11) 9 (6 −12) 10 (6 −15)
P-value 0.1813 0.1573 0.5359
Diabetes Female 28 (54.9%) 18 (52.9%) 27 (46.6%)
Male 11 (44.0%) 15 (46.9%) 39 (40.2%)
P-value 0.372 0.622 0.439
Hypertension Female 19 (37.3%) 19 (55.9%) 24 (41.4%)
Male 9 (36.0%) 12 (37.5%) 48 (49.5%)
P-value 0.915 0.135 0.328
Heart Disease Female 16 (31.4%) 14 (41.2%) 23 (39.7%)
Male 10 (40.0%) 15 (46.9%) 38 (39.2%)
P-value 0.456 0.641 0.953
COPD Female 21 (41.2%) 13 (38.2%) 12 (20.7%)
Male 8 (32.0%) 8 (25.0%) 24 (24.7%)
Pvalue 0.439 0.249 0.563
CKD Female 13 (25.5%) 7 (20.6%) 13 (22.4%)
Male 2 (8.0%) 11 (34.4%) 22 (22.7%)
P-value 0.072 0.209 0.969
AF Female 6 (11.8%) 3 (8.8%) 10 (17.2%)
Male 5 (20.0%) 3 (9.4%) 12 (12.4%)
P-value 0.338 0.938 0.400

Notes: Data are presented as median (interquartile range) and n (%). *Statistically significant.

Abbreviations: AHI, apnea hypopnea index; BMI, body mass index; AF, atrial fibrillation; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; ESS, Epworth sleepiness scale.

In terms of factors that influence the severity of OSA, ordered logistic regression for females showed that for one centimeter increase in neck circumference, the odds of severe OSA versus the combined odds of mild and moderate OSA is 1.16-times greater (P=0.012) (Table 4). Ordered logistic regression for males showed that for one unit increase in ESS score, the odds of severe OSA versus the combined odds of mild and moderate OSA is 1.10-times greater (P=0.027). For both genders higher BMI, larger neck circumference, higher ESS, and the presence of hypertension increases the odds of having severe OSA versus the combined odds of mild and moderate OSA. The association of atrial fibrillation with severe OSA (OR=3.70) was noted to be higher among females compared to men and hypertension was higher among males (OR=2.62) with severe OSA, but was not statistically significant.

Table 4.

Odds Ratio (OR) for Clinical Characteristics for Severe Obstructive Sleep Apnea Among Both Male and Female Study Participants

Risk Factors Females Males
OR (95% CI) P-value OR (95% CI) P-value
Age 0.99 (0.95–1.02) 0.447 1.03 (0.99–1.06) 0.118
BMI 1.01 (0.96–1.07) 0.617 1.04 (0.96–1.13) 0.300
Neck Circumference 1.16 (1.03–1.30) *0.012 1.11 (0.98–1.24) 0.090
ESS 1.01 (0.94–1.09) 0.779 1.10 (1.01–1.21) *0.027
Hypertension 1.54 (0.63–3.72) 0.342 2.62 (1.00–6.86) 0.050
Diabetes 0.53 (0.22–1.29) 0.162 0.42 (0.16–1.13) 0.087
Heart disease 0.99 (0.42–2.37) 0.991 0.89 (0.35–2.23) 0.810
AF 3.70 (0.70–19.44) 0.123 0.61 (0.15–2.48) 0.049
CKD 0.88 (0.31–2.52) 0.816 1.63 (0.55–4.83) 0.038
COPD/Asthma 0.60 (0.26–1.37) 0.228 0.40 (0.15–1.09) 0.073

Note: *Statistically significant.

Abbreviations: CKD, chronic kidney disease; BMI, body mass index; ESS, Epworth sleepiness scale; AF, atrial fibrillation; COPD, chronic obstructive pulmonary disease.

Polysomnographic Characteristic According to Apnea Hypopnea Index Severity in Both Genders

Figure 1 illustrates the polysomnographic results in both male and female OSA patients as per AHI severity. NREM stage 3 sleep is reduced in males with moderate-to-severe OSA in comparison to females. Increased severity of OSA is associated with reducing NREM stage 3 sleep percentage in males. NREM stage 1 sleep percentage was increased in men with severe OSA as compared to women, while no significant difference was noted in REM sleep percentage. Among patients with severe OSA, respiratory (P=0.014) and total arousal index (P=0.014) were higher in men. The REM sleep related AHI was higher among women with all severity of OSA (Figure 1 and Table 5). Moreover, REM related AHI was higher among females compared to males, even with normal overall AHI (Table 6).

Figure 1.

Figure 1

Polysomnographic characteristics among males and females with various severity of sleep apnea.

Table 5.

Prevalence of REM and NREM-Only OSA Among Male and Female Gender

Overall Female Male P-value
Total 337 168 169
REM OSA 292 (86.6%) 146 (86.9%) 146 (86.4%) 0.890
*NREM OSA 274 (81.3%) 125 (74.4%) 149 (88.2%) 0.001

Note: *Statistically significant.

Abbreviations: REM, rapid eye movement; NREM, non rapid eye movement; OSA, obstructive sleep apnea.

Table 6.

Prevalence of REM and NREM-Only OSA Among Male and Female Gender with Normal Total AHI

Overall Female Male p-value
*Normal total AHI but REM OSA 16 (4.7%) 12 (7.1%) 4 (2.4%) 0.036
Normal total AHI but NREM OSA 2 (0.6%) 1 (0.6%) 1 (0.6%) 0.958

Note: *Statistically significant.

Abbreviations: AHI, apnea hypopnea index; REM, rapid eye movement; NREM, non rapid eye movement; OSA, obstructive sleep apnea.

Discussion

This is one of the first studies to the best of our knowledge to demonstrate the ethnic and gender difference among Australian Aboriginal patients diagnosed to have OSA. This study showed that severe OSA was more common in males compared to females. Males had a higher AHI and higher arousal index. In comparison to men, Aboriginal women had milder severity of OSA and had more respiratory events during REM sleep (predominant REM OSA).

There is published evidence in the literature regarding gender differences in OSA manifestations in other ethnic groups.11,12,16,29 However, there is sparse knowledge specific to Indigenous populations, more so among the Australian Aboriginal population. In this study both genders, presence of higher body weight, BMI, and larger neck circumference were associated with severe OSA. However, among patients with severe OSA, the female cohort were younger and had a higher BMI in contrast to males. This result may suggest that females who may gain excessive weight even at a younger age may have risk of developing severe OSA. Larger neck circumference is noted to predict the presence of OSA.3032 In our study male participants were noted to have a larger neck circumference compared to females with severe OSA, hence, neck circumference may represent as a screening tool in male Indigenous populations. Obesity is considered to be one of the main risk factors for OSA.33,34 It is an established notion that men classically have a more android (upper body) versus gynoid (lower body) fat distribution, leading to the hypothesis that men are more prone to OSA simply due to increased deposition of fat around the airway, reflecting as increased neck circumference.35

Analysis of the PSG architecture showed that male Aboriginal patients with OSA had increased stage NREM stage 1 sleep and reduced NREM stage 3 sleep in contrast to females. This may represent that males with sleep apnea may have greater impact on sleep architecture and depth of sleep as compared to females. A previous study has shown that REM sleep related OSA is more common in women compared to men.12 Similarly we noticed in our study REM sleep related OSA was observed more commonly with all severity of OSA among females compared to males. Moreover, studies have demonstrated an association of REM sleep related OSA and hypertension.36,37 In our study we noticed the presence of hypertension increased the odds of having OSA. Hence, the presence of hypertension and REM sleep related OSA may warrant addressing therapeutic interventions, especially among female gender.

Few studies have documented sleep health issues among other Indigenous English speaking Organization for Economic Co-operation and Development (OECD) countries, such as New Zealand Māori’s, Canadian First Nations, and United States Indigenous people.26,38,39 Obesity, symptomatic OSA, and the presence of other medical co-morbidities were noted in higher proportions, as noted in our study cohort. Chronic health conditions are noted to be highly prevalent in Indigenous populations, including Australian Aboriginal people.4046 Under diagnosis or untreated OSA in this population may give rise to adverse health outcome.47 Ethnic and gender differences need to be considered in the clinical assessment of patients with OSA, which may itself represent a different phenotype.48,49 Our study highlights some important gender differences in sleep apnea and explore avenues to look for physiological basis for these observations and targeted interventions in the era of personalised sleep medicine. Further studies may be warranted in order to address prevention and management strategies in this population.

Limitations of the Study

The study results is limited to TEHS specific NT Aboriginal populations and the results cannot be generalised to wider other Australian Aboriginal populations or Indigenous groups. Furthermore, the high number of patients diagnosed with OSA in this study may be related to patients undergoing sleep study with already a high pre-test probability of OSA.

Conclusion

OSA is highly prevalent among both Australian Aboriginal male and female genders. The presence of severe OSA was more common in males compared to females. Amongst patients with severe OSA, the female cohort were younger and had higher BMI in contrast to males who had larger neck circumference. PSG parameters showed that males had reduced stage N3 NREM sleep. Among females, OSA was noted predominantly during REM sleep. Higher BMI, larger neck circumference, higher ESS score, and the presence of hypertension increased the odds of having severe OSA for both genders in this study population. The study highlights some important differences in the way sleep apnea manifests in both genders and explores avenues to look for physiological bases for these observations and targeted interventions.

Acknowledgments

We thank the sleep technologist at Darwin Respiratory and Sleep Health for the invaluable contribution towards this study. Institutions where work was performed: Department of Respiratory and Sleep Medicine, Royal Darwin Hospital, Darwin, Northern Territory, Australia and Darwin Respiratory and Sleep Health, Darwin, Northern Territory, Australia, 0810.

Abbreviations

AF, atrial fibrillation; AHI, apnea hypopnea index; AI, arousal index; TSI, Torres Strait Islander; ATSI, Aboriginal and/or Torres Strait Islander; ASA, Australasian Sleep Association; Avg SpO2, average oxygen saturation; BMI, body mass index; COPD, chronic obstructive pulmonary disease; CPAP, continuous positive airway pressure; CKD, chronic kidney disease; Circ, circumference; ESS, Epworth sleepiness score; HREC, Human Research Ethics Committees; /h, per hour; NREM, non rapid eye movement; N1, N2, N3, non-rapid eye movement sleep stage; NT, Northern Territory; NATA, National Association of Testing Authorities, Australia; OSA, obstructive sleep apnea; OR, odds ratio; PSG, polysomnography; REM, rapid eye movement; SpO2, oxygen saturation; TEHS, Top End Health Service; Mins, minutes.

Disclosure

Robert Adams reports grants from ResMed Foundation, outside the submitted work. The authors report no other potential conflicts of interest for this work.

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