1. Introduction
Obstructive sleep apnoea (OSA) is the most common type of sleep-related breathing disorder, characterised by obstruction of the upper airways during sleep, resulting in hypoxia, hypercapnia and fragmentation of sleep [
1]. It is believed to be an essential public health problem, as unattended cases can be responsible for cardiovascular and cerebrovascular disorders [
1], cognitive [
2] and sexual [
3] problems, as well as traffic accidents [
1].
Obesity was found to be the most critical risk factor for OSA, followed by ageing, male sex and craniofacial malformations [
1]. Obesity, nowadays also mentioned as a’ global pandemic’, has shown an increasing, country-specific tendency in the last three decades [
4]. It is a major problem in developed countries, resulting from increased calorie intake, lack of physical activity and changes in the gut microbiome [
5]. An investigation between 1980 and 2013 showed that the prevalence of overweight and obesity increased by 27.5% in adults and 41.7% in infants [
6]. The increasing tendency to obesity leads to a dynamic increase in the prevalence of OSA, which can also be observed in the inflammation and dysfunction of the subcutaneous adipose tissue resulting from intermittent hypoxia. [
7]. Artificial intelligence is increasingly significant in many scientific fields and medical sciences. Due to the increasing tendency of examination results and mathematical-statistical methods, it is possible to predict OSA using artificial intelligence. Due to the complexity of OSA pathophysiology, various diagnostic methods are used; therefore, the correlations between the variables are complex and may not be analysed using conventional statistical methods. For this reason, learning algorithms (e.g., deep learning methods) are especially significant. The original biostatistical models were based on simple correspondences (e.g., linear or logarithmic) between different variables; therefore, the analyses aimed to describe these correlations [
8]. However, there are some theoretical and practical issues regarding these methods. In terms of the current investigation, three are crucial. First, the relatively simple functions applied can generally limitedly be used only to describe complex biological systems with circular causality [
9]. Furthermore, to apply the generally used models (e.g., logistic regression), a relatively large number of variables is necessary in order to achieve reliable results. A gold standard rule of logistic regression is that the number of variables in one cell must be at least five. In the case of three stages (e.g., low, medium and high) of ten independent variables, this means 10 × 3 × 5; therefore, 150 answer givers are suspected. However, the distribution between the different stages is unequal; hence, more answers are needed for a safety model that fits at least triple or quintuple. According to Bujang et al., at least 500 variables are necessary for a clinical investigation using logistic regression [
10]. Furthermore, in traditional statistical models (e.g., confirmative, multiple regression analysis), the researcher tests a correlation system based on previous scientific literature or experiences [
11]. However, the model might not correctly reflect reality, as it may give away the opportunity to analyse more complex correlations [
12]. It is possible to analyte the significant number of variables taken from diagnostic methods using artificial intelligence and non-linear correlations can also be analysed. The advantages of artificial intelligence can be widely used in medical studies, i.e., in diagnostics, therapy, or prediction. A study on artificial intelligence-based OSA prediction performed by a generalised regression neural network conducted a diagnosis including 23 clinical parameters [
13], while another study successfully predicted with AHI [
14]. Prediction of OSA was also possible including the most vital clinical factors of OSA, i.e., sex, age, BMI and snoring status, using a neural network [
15].
Consequently, the correspondences between OSA and anthropometric parameters and anatomical characteristics can be analysed. By analysing these correlations, OSA pathophysiology can be studied and diagnostic methods can be expanded. Additionally, there is the possibility to determine upper airway obstruction and build prediction models. Algorithms based on artificial intelligence can improve prediction using mathematical models using a learning method on more data points. Determining the anatomical characteristics of OSA patients is possible using anthropometric measurements, sleep endoscopy and medical imaging (i.e., ultrasound or MRI). This data collection allows the construction of a cost-effective diagnostic model of OSA, including the determination of the location and severity of the obstructions.
Although polysomnography (PSG) is the diagnostic method for OSA, due to the high number of patients, the use of screening methods (e.g., polygraphy or portable home devices) was necessary.
Hence, the present study aimed to analyse the role of the basic anthropometric parameters and the results of SAT US measurements in the pathogenesis of upper airway obstruction using artificial intelligence. By building an algorithm, it is possible to help clinicians in everyday practice in decision making, applying a relatively inexpensive and easy-to-use algorithm. The US-based SAT examinations were based on US examinations with other indications (e.g., thyroid gland abnormalities or bilestones) as a complementary examination of standard US measurements.
4. Discussions
Although the pathogenesis of OSA is highly complex, obesity is one of the most critical risk factors for the disorder.
The present study aimed to analyse the correlation between US SAT thicknesses of the neck, chest and abdomen and the correlation between upper airway obstruction and OSA. Furthermore, the possible use of artificial intelligence in predicting OSA and upper airway obstruction, including SAT thicknesses, was also analysed. The improvement of the diagnostic work on OSA is of great importance given the high ratio of undiagnosed cases.
The prediction of OSA based on basic anthropometric parameters, SAT thicknesses of the neck, chest and abdomen regions was carried out using artificial intelligence, which is nowadays also used in medical science. According to its severity categories, OSA could be predicted with 97% precision using these parameters.
The most important parameters used by the algorithm were the thickness of the abdominal SAT, the thickness of the SAT above the second intercostal space on the right and left side, age, sex and neck circumference. The usefulness of abdominal SAT was detected as the same as in the case of neck circumference or gender. In the prognosis of OSA, the thickness of the chest SAT was of the same importance as BMI. Based on most clinical investigations, neck circumference, neck fold thickness, body mass and BMI were the most important predictors of OSA [
34,
35]. Moreover, it can also be emphasised that, in addition to gender, age and neck circumference, BMI and chest SAT thickness also have considerable effects on the pathogenesis of OSA; therefore, the examination of these parameters also contains much information for the diagnosis.
In general agreement with previous investigations, [
36,
37,
38] in the current study, in the OSA group significantly higher values of neck circumference and SAT thickness were observed in the submental and submandibular region on the left side and both sides of the chest. However, none of the parameters mentioned above correlated with AHI; however, BMI was positively correlated with most anthropometric parameters and US SAT values.
Based on these correlations, the prognostic factors of OSA are essential in its prediction, although they are not correlated with the severity of OSA, i.e., based on AHI. Our results are similar to those of Ugur al., who have not observed a significant correlation between OSA severity (i.e., based on polysomnographic measurements) and US neck and abdominal SAT values [
18]. Schäfer et al. have also not detected a correlation between the AHI index and the thickness of the neck SAT [
39]. Oztura et al. found that the prediction of AHI is not influenced by BMI or neck circumference values [
40]. Although Yagi and Plywaczesky et al. found a significant correlation between BMI, neck circumference and AHI detected [
41,
42], other investigations have also observed a strong correlation between OSA severity and neck circumference independently of visceral obesity [
43,
44]. Öǧretmenoǧlu et al. calculated body fat mass and body fat percentage as the parameter most correlated with AHI, based on bioelectric impedance analysis [
45]. Liu et al. have found a higher thickness of abdominal and mesenteric adipose tissue in the OSA group, although the thickness of mesenteric adipose tissue showed a stronger correlation with AHI than the thickness of peritoneal and subcutaneous adipose tissues [
46]. This result is consistent with that of Ma et al., who have not observed a strong correlation between abdominal SAT and OSA; however, visceral fat was determined as an OSA risk factor [
47]. In the present study, the strongest correlation with BMI was detected between the SAT thicknesses of the chest and abdomen. Although neck SAT thickness might increase neck circumference, its correlation with BMI was moderate. Consistent with the results of the current study, Cielo et al. have also identified a correlation between adipose tissue in the neck and neck circumferences, although no correlation with OSA severity was detected [
48].
The accumulation of adipose tissue near the upper airways results in a reduction in their diameters, an increasing tendency to extraluminal pressure and increased collapsibility during sleep. These mechanisms lead to upper airway obstructions [
49].
The prediction of oropharyngeal obstruction using US parameters and anthropometric values was successful in 64%, which was determined using artificial intelligence. In addition to basic OSA risk factors, abdominal and chest SAT thicknesses had essential predictive values. The tongue-based obstruction could be predicted in 72% using the same parameters. Similarly to oropharyngeal obstruction, anthropometric parameters were crucial in OSA prediction; in addition, neck and abdominal SAT thicknesses were essential in this case. Therefore, it can be concluded that the thickness of the abdominal SAT corresponded to OSA and tongue-based obstruction, although it did not correspond to oropharyngeal obstruction. Submental and submandibular SAT was mainly correlated with oropharyngeal and tongue-based obstruction. This contradicts the results of Mortimore et al., who have stated that neck adipose tissue, independently of BMI values, significantly affects the occurrence of OSA; out of the anthropometric parameters, its correlation is the strongest with the disorder [
50].
Interestingly, neck circumferences were identified as an essential factor in OSA prediction; however, they did not influence oropharyngeal or tongue-based obstruction, respectively.
SAT accumulation, as part of obesity, can result in OSA and upper airway obstruction in a highly complex way. OSA risk factors (e.g., sex, age and BMI) and SAT thicknesses of the neck, chest and abdomen can be helpful in the prediction of OSA with high precision. The oropharyngeal and tongue-based obstruction could be detected with a lower precision since many other factors can also be responsible for the obstructions, which were not examined in the present investigation.
The use of artificial intelligence has also occurred in sleep medicine in recent years, especially regarding OSA diagnosis. The main objective of different investigations was to predict OSA based on physiological effects during sleep, such as oxygen saturation, respiratory rate, or ECG parameters [
51,
52,
53].
The use of self-administered questionnaires has some advantages in diagnosing OSA, e.g., they are easy to use, are not time-consuming and most give a reliable result. As previously reported, the prediction of OSA based on questionnaires by artificial intelligence showed a sensitivity of 80–81% and a specificity of 95–97% [
54]. The NoSAS score, including age, sex, neck circumferences, snoring and obesity, presented a high sensitivity and positive predictive value in the diagnosis of OSA [
55]. The STOP-BANG questionnaire showed high sensitivities and negative predictive values for diagnosing moderately severe OSA [
56]. The SAS score can diagnose OSA with high sensitivity [
57].
However, the prediction of OSA and upper airway obstruction based on SAT US and anthropometric parameters has not been previously investigated.
The significance of the present investigation is that using US in OSA diagnostics and obstruction localisation, an additional opportunity besides the standard procedures (i.e., drug-induced sleep endoscopy or polygraphy) is presented, which is vital due to the high account of undiagnosed cases. This can be especially significant in previously non-diagnosed cases of OSA when US examinations are indicated for other reasons (e.g., thyroid gland aberrations, salivary gland problems, abdominal pain or bilestones) or a US device is accessible for screening (e.g., general practitioner’s surgery, otorhinolaryngological or anaesthesiologic outpatient clinic). The applied algorithm can screen for OSA with high precision, which is essential, since the targeted diagnostic work-up for OSA can be started (home sleep test, polygraphy, PSG). Artificial intelligence can also help predict OSA and the location of the obstruction.
Our study has some limitations. Due to the relatively low number of investigated subjects, we were unable to divide OSA into more different groups. Examination of more subjects may provide facilities to carry out multivariable variance analyses. In the present study, visceral fat tissue was not investigated, although, according to the literature, it is also an essential factor in the pathogenesis of OSA.