计算机科学
分割
人工智能
植入
口腔正畸科
医学
外科
作者
Panagiotis Ntovas,Marchand Laurent,Albrect Schnappauf,Finkelman Matthew,Marta Revilla‐León,Wael Att
摘要
ABSTRACT Objectives To investigate the reliability and time efficiency of the conventional compared to the automatic artificial intelligence (AI) segmentation of the mandibular canal and registration of the CBCT with the model scan data, in relation to clinician's experience. Materials and Methods Twenty clinicians, 10 with a moderate and 10 with a high experience in computer‐assisted implant planning, were asked to perform a bilateral localization of the mandibular canal, followed by a registration of the intraoral model scan with the CBCT. Subsequently, for each data set and each participant, the same operations were performed utilizing the AI tool. Statistical significance was assessed via a mixed model (using the PROC MIXED statement and the compound symmetry covariance structure). Results The mean time for the segmentation of the mandibular canals and the registration of the models was 4.75 (2.03)min for the manual and 2.03 (0.36) min for the AI‐automated operations ( p < 0.001). The mean discrepancy in the mandibular canals was 0.71 (1.80) mm RMS error for the manual segmentation and 0.68 (0.36) RMS error for the AI‐assisted segmentation ( p > 0.05). For the registration between the CBCT and the intraoral scans, the mean discrepancy was 0.45 (0.16) mm for the manual and 0.37 (0.07) mm for the AI‐assisted superimposition ( p > 0.05). Conclusions AI‐automated implant planning tools are feasible options that can lead to a similar or better accuracy compared to the conventional manual workflow, providing improved time efficiency for both experienced and less experienced users. Further research including a variety of software and data sets is required to be able to generalize the outcomes of the present study.
科研通智能强力驱动
Strongly Powered by AbleSci AI