A novel artificial diagnostic criterion for sleep related bruxism of patient presenting with orofacial pain for the diagnosis of orofacial pain and temporomandibular disorders
4th International Conference on Orthodontics
October 09, 2023 | Prague, Czech Republic

Shuruq A. Alturki

Ministry of Health, Saudi Arabia

Posters & Accepted Abstracts: OHDM

Abstract:

Statement of the problem: Temporomandibular Disorders (TMD) and orofacial pain are highly prevalent. This prevalence can be compared to that of leading Non-Communicable Diseases (NCDs). However, it is surprising to still find a high degree of controversy regarding its diagnosis and management. Patients usually experience treatment delays, missed diagnoses, and receive unnecessary therapies. New artificial intelligence algorithms have helped diagnose numerous diseases. Nevertheless, no studies have focused on the use of artificial intelligence to diagnose these conditions. Objectives: This study aimed to develop and test the performance of a novel neural network (multilayer perceptron) with diagnostic capabilities in orofacial pain and TMD, including some types of referred pain. Methodology & Theoretical Orientation: A multilayer perceptron (MLP) was developed with one input layer, five hidden layers, and one output layer. It was trained using back propagation algorithms. Several categories of orofacial pain and TMD clinical cases were presented to 12 general dental clinicians and their diagnoses were contrasted to those provided by the artificial intelligence neural network. Findings: Overall, the diagnostic accuracy of the artificial intelligence was superior to that of the general dental clinicians (p = .0072). This was more evident in the clinical cases involving non-dental and referred orofacial pains (e.g., neuropathic pain, referred cardiac pain, neurovascular pain). Conclusion & Significance: This study showed, for the first time, that an artificial neural network can help medical and general dental clinicians diagnose several types of orofacial pain and dysfunction, including TMD, neuropathic, neurovascular, and referred cardiac pain. In some cases, the MLP appears to have a life-saving role. Figure 1 Schematic representation of ANN showing algorithm for pain assessment using facial pain and EEG. ANN: Artificial neural network, EEG:Electroencephalogram