AI Article Synopsis

  • The study investigates the use of artificial intelligence to automatically detect stereotypical mandibular jaw movements (MJM) in patients with sleep bruxism (SBx) during sleep studies.
  • Utilizing a hardware device and extreme gradient boosting (XGB) classifier, researchers recorded and analyzed data from 67 patients, achieving high accuracy in identifying episodes of rhythmic masticatory muscle activity (RMMA).
  • Results indicate that the AI model effectively distinguishes RMMA events, showing an 86.6% balanced accuracy and strong agreement with traditional manual scoring methods.

Article Abstract

Purpose: Sleep bruxism (SBx) activity is classically identified by capturing masseter and/or temporalis masticatory muscles electromyographic activity (EMG-MMA) during in-laboratory polysomnography (PSG). We aimed to identify stereotypical mandibular jaw movements (MJM) in patients with SBx and to develop rhythmic masticatory muscles activities (RMMA) automatic detection using an artificial intelligence (AI) based approach.

Patients And Methods: This was a prospective, observational study of 67 suspected obstructive sleep apnea (OSA) patients in whom PSG with masseter EMG was performed with simultaneous MJM recordings. The system used to collect MJM consisted of a small hardware device attached on the chin that communicates to a cloud-based infrastructure. An extreme gradient boosting (XGB) multiclass classifier was trained on 79,650 10-second epochs of MJM data from the 39 subjects with a history of SBx targeting 3 labels: RMMA episodes (n=1072), micro-arousals (n=1311), and MJM occurring at the breathing frequency (n=77,267).

Results: Validated on unseen data from 28 patients, the model showed a very good epoch-by-epoch agreement (Kappa = 0.799) and balanced accuracy of 86.6% was found for the MJM events when using RMMA standards. The RMMA episodes were detected with a sensitivity of 84.3%. Class-wise receiver operating characteristic (ROC) curve analysis confirmed the well-balanced performance of the classifier for RMMA (ROC area under the curve: 0.98, 95% confidence interval [CI] 0.97-0.99). There was good agreement between the MJM analytic model and manual EMG signal scoring of RMMA (median bias -0.80 events/h, 95% CI -9.77 to 2.85).

Conclusion: SBx can be reliably identified, quantified, and characterized with MJM when subjected to automated analysis supported by AI technology.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397703PMC
http://dx.doi.org/10.2147/NSS.S320664DOI Listing

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