Tooth point cloud resampling method based on divergence index and improved Euclidean clustering rule.

IF 3.3 3区 医学 Q2 ENGINEERING, BIOMEDICAL Physics in medicine and biology Pub Date : 2024-11-20 DOI:10.1088/1361-6560/ad953f
Zhixian Qiu, Jin-Gang Jiang, Dianhao Wu, Jingchao Wang, Shan Zhou
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Abstract

Objective: In endodontic therapy, 3D Cone Beam Computerized Tomography (CBCT) and oral scan fusion models allow exact root canal channels and guidance. However, the point cloud model from CBCT has few data points and poor model features, limiting 3D fusion with oral scan data. Our aim to build a sub-regional point cloud resampling method and evaluate the precision of merging it with three-dimensional oral scan data. Approach: Two molars and four incisors were resampled for this investigation. Based on point cloud density and curvature, the rebuilt model was separated into the crown and cervical cavities. Using crown surface morphology, Divergence Index (DI) was employed to determine resampling points based on point dispersion. Improved Euclidean Clustering Rule (IECR) downsamples each point using its weight and joins the two halves using Iterative Nearest Neighbour (ICP) to create a complete resampled point cloud. After aligning with the oral scanning model, the maximum error, maximum distance, average distance, and other characteristics are calculated to assess resampling. Additionally, a cross-entropy kernel-based point cloud reconstruction depth selection method is given to determine the appropriate reconstruction depth. Main results: Applying the DI-IECR technique reduces the average distance between the resampled tooth point cloud and the point cloud generated by the dental scanner by around 20%. The maximum error remains same to that of the widely used method. This study also demonstrates that the use of the DI-IECR approach guarantees the complete representation of the coronal characteristics of the resampled reconstructed 3D model, rather than excessively focusing processing resources on pertinent but insignificant areas. Significance: Point cloud data and crown features are balanced using DI-IECR. When registered with the oral scan model, CBCT-generated point clouds are more accurate and timely, making them a better intraoperative navigation model.

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基于发散指数和改进欧氏聚类规则的齿点云重采样方法
目的:在牙髓治疗中,三维锥形束计算机断层扫描(CBCT)和口腔扫描融合模型可实现精确的根管通道和引导。然而,CBCT 的点云模型数据点少、模型特征差,限制了与口腔扫描数据的三维融合。我们的目的是建立一种次区域点云重采样方法,并评估其与三维口腔扫描数据融合的精确度:本次研究对两颗臼齿和四颗门齿进行了重新取样。根据点云密度和曲率,将重建的模型分为牙冠和牙颈腔。使用牙冠表面形态学、发散指数(Divergence Index,DI)来确定基于点分散的重新取样点。改进欧几里得聚类规则(IECR)使用每个点的权重对其进行下采样,并使用迭代近邻(ICP)将两半点连接起来,以创建完整的重采样点云。与口腔扫描模型对齐后,计算最大误差、最大距离、平均距离和其他特征,以评估重采样情况。此外,还给出了一种基于交叉熵核的点云重建深度选择方法,以确定合适的重建深度:应用 DI-IECR 技术可将重采样后的牙齿点云与牙科扫描仪生成的点云之间的平均距离缩小约 20%。最大误差与广泛使用的方法相同。这项研究还表明,使用 DI-IECR 方法可以保证完整地呈现重新取样重建的三维模型的冠状特征,而不是将处理资源过度集中在相关但不重要的区域:使用 DI-IECR 平衡点云数据和牙冠特征。当与口腔扫描模型注册时,CBCT 生成的点云更加准确和及时,使其成为更好的术中导航模型。
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来源期刊
Physics in medicine and biology
Physics in medicine and biology 医学-工程:生物医学
CiteScore
6.50
自引率
14.30%
发文量
409
审稿时长
2 months
期刊介绍: The development and application of theoretical, computational and experimental physics to medicine, physiology and biology. Topics covered are: therapy physics (including ionizing and non-ionizing radiation); biomedical imaging (e.g. x-ray, magnetic resonance, ultrasound, optical and nuclear imaging); image-guided interventions; image reconstruction and analysis (including kinetic modelling); artificial intelligence in biomedical physics and analysis; nanoparticles in imaging and therapy; radiobiology; radiation protection and patient dose monitoring; radiation dosimetry
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