Comparison Between Conventional and Artificial Intelligence-Assisted Setup for Digital Implant Planning: Accuracy, Time-Efficiency, and User Experience.

IF 4.8 1区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Panagiotis Ntovas, Marchand Laurent, Albrect Schnappauf, Finkelman Matthew, Marta Revilla-Leon, Wael Att
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引用次数: 0

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.

数字种植规划的传统设置与人工智能辅助设置的比较:准确性、时间效率和用户体验。
目的根据临床医生的经验,研究下颌管的常规人工智能(AI)自动分割和 CBCT 与模型扫描数据配准的可靠性和时间效率:要求 20 名临床医生(其中 10 名在计算机辅助种植规划方面具有中等经验,10 名具有较高经验)对下颌管进行双侧定位,然后将口内模型扫描与 CBCT 进行配准。随后,利用人工智能工具对每个数据集和每个参与者进行了相同的操作。统计意义通过混合模型(使用 PROC MIXED 语句和复合对称协方差结构)进行评估:手动操作和人工智能自动操作的下颌管分割和模型注册的平均时间分别为 4.75 (2.03) 分钟和 2.03 (0.36) 分钟(P 0.05)。在CBCT和口内扫描之间的配准方面,手动操作的平均差异为0.45 (0.16)毫米,人工智能辅助叠加操作的平均差异为0.37 (0.07)毫米(P > 0.05):人工智能自动种植规划工具是一种可行的选择,与传统的手动工作流程相比,它可以达到相似或更高的精确度,为经验丰富和经验不足的用户提供更高的时间效率。要想推广本研究的成果,还需要对各种软件和数据集进行进一步研究。
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来源期刊
Clinical Oral Implants Research
Clinical Oral Implants Research 医学-工程:生物医学
CiteScore
7.70
自引率
11.60%
发文量
149
审稿时长
3 months
期刊介绍: Clinical Oral Implants Research conveys scientific progress in the field of implant dentistry and its related areas to clinicians, teachers and researchers concerned with the application of this information for the benefit of patients in need of oral implants. The journal addresses itself to clinicians, general practitioners, periodontists, oral and maxillofacial surgeons and prosthodontists, as well as to teachers, academicians and scholars involved in the education of professionals and in the scientific promotion of the field of implant dentistry.
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