Faculty of Dentistry, Baskent University, Ankara, Turkey.
Computer Engineering Department, Faculty of Engineering, Ankara University, Ankara, Turkey.
Technol Health Care. 2023;31(5):1723-1735. doi: 10.3233/THC-220563.
Pedodontists and general practitioners may need support in planning the early orthodontic treatment of patients with mixed dentition, especially in borderline cases. The use of machine learning algorithms is required to be able to consistently make treatment decisions for such cases.
This study aimed to use machine learning algorithms to facilitate the process of deciding whether to choose serial extraction or expansion of maxillary and mandibular dental arches for early treatment of borderline patients suffering from moderate to severe crowding.
The dataset of 116 patients who were previously treated by senior orthodontists and divided into two groups according to their treatment modalities were examined. Machine Learning algorithms including Multilayer Perceptron, Linear Logistic Regression, k-nearest Neighbors, Naïve Bayes, and Random Forest were trained on this dataset. Several metrics were used for the evaluation of accuracy, precision, recall, and kappa statistic.
The most important 12 features were determined with the feature selection algorithm. While all algorithms achieved over 90% accuracy, Random Forest yielded 95% accuracy, with high reliability values (kappa = 0.90).
The employment of machine learning methods for the treatment decision with or without extraction in the early treatment of patients in the mixed dentition can be particularly useful for pedodontists and general practitioners.
儿童牙科医生和全科医生可能需要支持来规划混合牙列患者的早期正畸治疗,特别是在临界病例中。需要使用机器学习算法来为这些病例做出一致的治疗决策。
本研究旨在使用机器学习算法来辅助决策,以确定是否选择序列拔牙或上颌和下颌牙弓扩展来治疗有中度至重度拥挤的临界患者的早期治疗。
检查了之前由资深正畸医生治疗的 116 名患者的数据集,并根据治疗方式将其分为两组。在这个数据集上训练了包括多层感知器、线性逻辑回归、k-最近邻、朴素贝叶斯和随机森林在内的机器学习算法。使用了几个指标来评估准确性、精度、召回率和kappa 统计量。
特征选择算法确定了最重要的 12 个特征。虽然所有算法的准确率都超过 90%,但随机森林的准确率达到 95%,可靠性值较高(kappa=0.90)。
在混合牙列患者的早期治疗中,使用机器学习方法进行是否拔牙的治疗决策,对儿童牙科医生和全科医生特别有用。