Moon Jong Kim, Taegun An, Il-San Cho, Changhee Joo, Ji Woon Park
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引用次数: 0
Abstract
Objectives: This study aimed to develop and evaluate an artificial intelligence (AI) model to predict long-term treatment outcomes in temporomandibular disorder (TMD) patients using clinical data and verify the value of adding haematologic data in enhancing predictive accuracy.
Methods: The medical records of 132 TMD patients who visited the clinic and underwent 6 months of non-invasive conservative treatment between 2013 and 2019 were included in this study. The clinical data and haematologic features were collected from medical records. A decision tree algorithm was employed for feature selection, followed by a deep neural network (DNN) to build the prediction model. The performance of the models based on the decision tree algorithm and DNN was evaluated.
Results: The decision tree model achieved an accuracy of 90.6% and an F1-score of 0.800. The subjective pain-related features, along with haematologic markers associated with systemic inflammation, were proven to be important features in the decision tree model. The predictive performance of the DNN model improved as haematologic features were added, with the final model achieving an accuracy of 90.6% and an F1-score of 0.769.
Conclusions: This study showed the potential of machine learning models in predicting long-term TMD prognosis using clinical and haematological features. In addition, these findings highlight the importance of including both subjective pain assessments and systemic haematologic markers for the development of aetiology-based diagnostic systems for TMD to enhance clinical decision-making and prognosis prediction accuracy.
期刊介绍:
Journal of Oral Rehabilitation aims to be the most prestigious journal of dental research within all aspects of oral rehabilitation and applied oral physiology. It covers all diagnostic and clinical management aspects necessary to re-establish a subjective and objective harmonious oral function.
Oral rehabilitation may become necessary as a result of developmental or acquired disturbances in the orofacial region, orofacial traumas, or a variety of dental and oral diseases (primarily dental caries and periodontal diseases) and orofacial pain conditions. As such, oral rehabilitation in the twenty-first century is a matter of skilful diagnosis and minimal, appropriate intervention, the nature of which is intimately linked to a profound knowledge of oral physiology, oral biology, and dental and oral pathology.
The scientific content of the journal therefore strives to reflect the best of evidence-based clinical dentistry. Modern clinical management should be based on solid scientific evidence gathered about diagnostic procedures and the properties and efficacy of the chosen intervention (e.g. material science, biological, toxicological, pharmacological or psychological aspects). The content of the journal also reflects documentation of the possible side-effects of rehabilitation, and includes prognostic perspectives of the treatment modalities chosen.