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Estimating Hard-tissue Conditions from Dental Images via Machine Learning

机译:通过机器学习估算牙科图像的硬组织条件

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Despite the great success of machine learning in various biomedical domains, applications to dental hard tissue conditions (primarily on dental Caries, Erosive Tooth Wear (ETW), and Fluorosis) are under-explored, in particular for analyzing photographic images. The clinical diagnostics of these dental hard-tissue conditions is routinely performed by visual examination but is often limited by its subjectivity. To bridge this gap, we apply four categories of machine learning strategies including nine different methods with two different feature representations to estimate the probability and severity of dental hard-tissue conditions from photographic tooth images. Our first empirical study is performed on the real dataset containing both controls and cases, and the best probability estimation results are achieved by Extra Trees Regression (RMSE: 0.030, Pearson correlation: 0.600) for Caries, Decision Tree (RMSE: 0.183, Pearson correlation: 0.581) for ETW, and Bayesian ARD Regression (RMSE: 0.191, Pearson correlation: 0.745) for Fluorosis. Our second empirical study is performed on the case only datasets, and the best severity estimation results are achieved by Extra Trees Regression (RMSE: 0.029, Pearson correlation: 0.687) for Caries, Bayesian ARD Regression and Linear Regression (RMSE: 0.192, Pearson correlation: 0.490) for ETW, and Bayesian ARD Regression (RMSE: 0.238, Pearson correlation: 0.537) for Fluorosis. These results indicate that machine learning models provide promising opportunities to help clinical evaluation and save resources in the management of these dental conditions.
机译:尽管在各种生物医学域中的机器学习成功,但探讨了牙科硬组织条件的应用(主要针对龋齿,腐蚀牙齿磨损(ETW)和氟中毒),特别是用于分析摄影图像。通过视觉检查常规进行这些牙科硬组织条件的临床诊断,但通常受其主体性的限制。为了弥合这一差距,我们应用了四类机器学习策略,包括九种不同的方法,其中九种不同的方法具有两个不同的特征表示,以估计摄影牙齿图像的牙齿硬组织条件的概率和严重程度。我们的第一个实证研究是对包含控件和案例的真实数据集进行的,并且通过额外的树木回归实现了最佳概率估计结果(RMSE:0.030,Pearson相关:0.600),决策树(RMSE:0.183,Pearson相关性:0.581)对于ETW,贝叶斯ARD回归(RMSE:0.191,Pearson相关:0.745)用于氟化。我们的第二个经验研究是在仅用于数据集的情况下进行的,并且通过额外的树木回归(RMSE:0.029,Pearson相关:0.687)为龋齿,贝叶斯ARD回归和线性回归(RMSE:0.192,Pearson相关性)实现了最佳的严重性估算结果(RMSE:0.029,Pearson Contelion :0.490)对于ETW,和贝叶斯ARD回归(RMSE:0.238,Pearson相关:0.537)用于氟化物。这些结果表明,机器学习模式提供了有希望的机会,可以帮助临床评估,并节省资源在这些牙科条件的管理中。

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