Prediction of treatment outcome in burning mouth syndrome patients using machine learning based on clinical data

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作者
Moon-Jong Kim
Pil-Jong Kim
Hong-Gee Kim
Hong-Seop Kho
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[1] Gwanak Seoul National University Dental Hospital,Department of Oral Medicine
[2] Seoul National University,Biomedical Knowledge Engineering Laboratory, School of Dentistry
[3] Seoul National University,Department of Oral Medicine and Oral Diagnosis, School of Dentistry and Dental Research Institute
[4] Seoul National University,Institute On Aging
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The purpose of this study is to apply a machine learning approach to predict whether patients with burning mouth syndrome (BMS) respond to the initial approach and clonazepam therapy based on clinical data. Among the patients with the primary type of BMS who visited the clinic from 2006 to 2015, those treated with the initial approach of detailed explanation regarding home care instruction and use of oral topical lubricants, or who were prescribed clonazepam for a minimum of 1 month were included in this study. The clinical data and treatment outcomes were collected from medical records. Extreme Gradient-Boosted Decision Trees was used for machine learning algorithms to construct prediction models. Accuracy of the prediction models was evaluated and feature importance calculated. The accuracy of the prediction models for the initial approach and clonazepam therapy was 67.6% and 67.4%, respectively. Aggravating factors and psychological distress were important features in the prediction model for the initial approach, and intensity of symptoms before administration was the important feature in the prediction model for clonazepam therapy. In conclusion, the analysis of treatment outcomes in patients with BMS using a machine learning approach showed meaningful results of clinical applicability.
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