Lokhande Pravin R, Balaguru S
Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Chennai 600 062, India.
J Oral Biol Craniofac Res. 2020 Apr-Jun;10(2):28-32. doi: 10.1016/j.jobcr.2020.01.008. Epub 2020 Jan 31.
To quantify the percentage filling of the gutta-percha in obturated root canal cavity using image processing and analysis.
The image processing and analysis using the X-ray radiographs is commonly being used by medical practitioners for easy and speedy diagnosis of patient health. But these methods are qualitative and assessment depends upon dentist's own experience and perception. Fifteen patients were randomly assigned to fifteen Dentists to perform the root canal treatment using warm vertical condensation. X-ray radiographs of pre and post obturation were obtained to carry image processing and analysis. Image enhancement, low pass filtering, k-means clustering algorithm and edge detection technique were applied to get results. Percentage filling of the obturated root canal using X-ray radiography (Dentist's prediction) and proposed algorithm results of the present study were compared. Out of fifteen Dentists, the prediction of twelve Dentists were close in range of percentage filling quantified using proposed algorithm of the present study. When investigated it was found that three discrepancies found due to lack of sufficient experience of the respective Dentist. The proposed algorithm not only helps to overcome this false assessment but also helps to quantify accurate percentage filling of gutta-percha and outlines unfilled cavity gap of root canal.
The proposed algorithm of present study provides accurate percentage filling of gutta-percha in the obturated root canal up to two decimal points. The present study used gutta-percha as obturation material but the study can be implemented for any obturation material.
The proposed algorithm of present study accurately quantified the percentage filling of root canal cavity using image processing. It also locates and outlines the unfilled root canal cavity.
利用图像处理与分析技术量化根管充填时牙胶的充填百分比。
利用X线片进行图像处理与分析,这在医学实践中常用于对患者健康状况进行简便快速的诊断。但这些方法是定性的,评估依赖于牙医自身的经验和认知。15名患者被随机分配给15名牙医,采用热垂直加压法进行根管治疗。获取充填前后的X线片以进行图像处理与分析。应用图像增强、低通滤波、k均值聚类算法和边缘检测技术来得出结果。比较了使用X线摄影法(牙医的预测)得出的根管充填百分比和本研究提出的算法结果。在15名牙医中,有12名牙医的预测在本研究提出的算法所量化的充填百分比范围内相近。经调查发现,有3处差异是由于各自牙医经验不足造成的。所提出的算法不仅有助于克服这种错误评估,还有助于量化牙胶的准确充填百分比,并勾勒出根管未充填的腔隙。
本研究提出的算法能精确到小数点后两位,提供根管充填时牙胶的准确充填百分比。本研究使用牙胶作为充填材料,但该研究可应用于任何充填材料。
本研究提出的算法利用图像处理技术准确量化了根管腔的充填百分比。它还能定位并勾勒出未充填的根管腔。