System Dynamics Lab, Department of Mechanical Engineering, Indian Institute of Technology Indore, Indore, Madhya Pradesh, India.
Solid Mechanics Lab, Department of Mechanical Engineering, Indian Institute of Technology Indore, Indore, Madhya Pradesh, India.
Proc Inst Mech Eng H. 2023 Oct;237(10):1202-1214. doi: 10.1177/09544119231196285. Epub 2023 Sep 5.
This study proposes an intelligent health prediction and fault prognosis of the endodontic file during the root canal treatment. Root canal treatment is the procedure of disinfecting the infected pulp through the canal with the help of an endodontic instrument. Force signals are acquired with the help of a dynamometer during the canal preparation, and statistical features are extracted. The extracted features are selected through the window-wise feature extraction process. Characteristic features for endodontic file prognostics include time-domain features of the signals are evaluated. The extracted feature has inappropriate information, that is, noise between the signals; hence the smoothing of the feature is required at this stage to observe a trend in the signals. Based on the smoothing feature and post-processing of the feature, defined the health index to calculate the health condition of the endodontic instruments. A machine learning algorithm and exponential degradation model are used to predict the health of the endodontic instrument during the root canal treatment. This model is used to forecast the degradation of the endodontic file so that actions can be taken before actual failures happen. The proposed methodology can analyze the failures and micro-crack initiation of the endodontic instruments. Endodontics practitioners can use the machine learning models as well as an exponential model for estimating the health condition of the endodontic instrument. This study may help the clinician to progress the efficiency of the root canal treatment and the competence of the endodontic instruments.
本研究提出了一种在根管治疗过程中对牙髓锉进行智能健康预测和故障预测的方法。根管治疗是通过牙髓锉在根管内消毒感染牙髓的过程。在根管预备过程中,借助测力计采集力信号,并提取统计特征。通过窗口特征提取过程选择提取的特征。用于牙髓锉预测的特征包括评估信号的时域特征。提取的特征具有不适当的信息,即信号之间的噪声;因此,在此阶段需要对特征进行平滑处理,以观察信号中的趋势。基于平滑特征和特征的后处理,定义健康指数来计算牙髓锉的健康状况。使用机器学习算法和指数退化模型来预测根管治疗过程中牙髓锉的健康状况。该模型用于预测牙髓锉的退化情况,以便在实际故障发生之前采取措施。所提出的方法可以分析牙髓锉的故障和微裂纹的萌生。牙髓病医生可以使用机器学习模型以及指数模型来估计牙髓锉的健康状况。本研究可能有助于临床医生提高根管治疗的效率和牙髓锉的性能。