Statistical Methods and Machine Learning Algorithms for Investigating Metabolic Syndrome in Temporomandibular Disorders: A Nationwide Study.
Harry ChweidanNikolay RudyukDorit TzurChen GoldsteinGalit AlmozninoPublished in: Bioengineering (Basel, Switzerland) (2024)
The objective of this study was to analyze the associations between temporomandibular disorders (TMDs) and metabolic syndrome (MetS) components, consequences, and related conditions. This research analyzed data from the Dental, Oral, Medical Epidemiological (DOME) records-based study which integrated comprehensive socio-demographic, medical, and dental databases from a nationwide sample of dental attendees aged 18-50 years at military dental clinics for 1 year. Statistical and machine learning models were performed with TMDs as the dependent variable. The independent variables included age, sex, smoking, each of the MetS components, and consequences and related conditions, including hypertension, hyperlipidemia, diabetes, impaired glucose tolerance (IGT), obesity, cardiac disease, obstructive sleep apnea (OSA), nonalcoholic fatty liver disease (NAFLD), transient ischemic attack (TIA), stroke, deep venous thrombosis (DVT), and anemia. The study included 132,529 subjects, of which 1899 (1.43%) had been diagnosed with TMDs. The following parameters retained a statistically significant positive association with TMDs in the multivariable binary logistic regression analysis: female sex [OR = 2.65 (2.41-2.93)], anemia [OR = 1.69 (1.48-1.93)], and age [OR = 1.07 (1.06-1.08)]. Features importance generated by the XGBoost machine learning algorithm ranked the significance of the features with TMDs (the target variable) as follows: sex was ranked first followed by age (second), anemia (third), hypertension (fourth), and smoking (fifth). Metabolic morbidity and anemia should be included in the systemic evaluation of TMD patients.
Keyphrases
- machine learning
- metabolic syndrome
- chronic kidney disease
- big data
- obstructive sleep apnea
- end stage renal disease
- oral health
- artificial intelligence
- iron deficiency
- insulin resistance
- deep learning
- blood pressure
- healthcare
- primary care
- cardiovascular disease
- adipose tissue
- high fat diet
- ejection fraction
- atrial fibrillation
- left ventricular
- newly diagnosed
- skeletal muscle
- prognostic factors
- weight gain
- electronic health record
- physical activity
- blood brain barrier
- drug induced
- arterial hypertension
- glycemic control