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手动和基于人工智能的锥形束计算机断层扫描与数字扫描数据叠加的准确性,利用种植体规划软件:一项随机临床研究。

Accuracy of manual and artificial intelligence-based superimposition of cone-beam computed tomography with digital scan data, utilizing an implant planning software: A randomized clinical study.

机构信息

Department of Prosthodontics, School of Dental Medicine, Tufts University School of Dental Medicine, Boston, Massachusetts, USA.

Department of Public Health and Community Service, Tufts University School of Dental Medicine, Boston, Massachusetts, USA.

出版信息

Clin Oral Implants Res. 2024 Oct;35(10):1262-1272. doi: 10.1111/clr.14313. Epub 2024 Jun 10.

Abstract

OBJECTIVES

To investigate the accuracy of conventional and automatic artificial intelligence (AI)-based registration of cone-beam computed tomography (CBCT) with intraoral scans and to evaluate the impact of user's experience, restoration artifact, number of missing teeth, and free-ended edentulous area.

MATERIALS AND METHODS

Three initial registrations were performed for each of the 150 randomly selected patients, in an implant planning software: one from an experienced user, one from an inexperienced operator, and one from a randomly selected post-graduate student of implant dentistry. Six more registrations were performed for each dataset by the experienced clinician: implementing a manual or an automatic refinement, selecting 3 small or 3 large in-diameter surface areas and using multiple small or multiple large in-diameter surface areas. Finally, an automatic AI-driven registration was performed, using the AI tools that were integrated into the utilized implant planning software. The accuracy between each type of registration was measured using linear measurements between anatomical landmarks in metrology software.

RESULTS

Fully automatic-based AI registration was not significantly different from the conventional methods tested for patients without restorations. In the presence of multiple restoration artifacts, user's experience was important for an accurate registration. Registrations' accuracy was affected by the number of free-ended edentulous areas, but not by the absolute number of missing teeth (p < .0083).

CONCLUSIONS

In the absence of imaging artifacts, automated AI-based registration of CBCT data and model scan data can be as accurate as conventional superimposition methods. The number and size of selected superimposition areas should be individually chosen depending on each clinical situation.

摘要

目的

研究传统和基于人工智能(AI)的锥形束 CT(CBCT)与口内扫描自动配准的准确性,并评估用户经验、修复体伪影、缺牙数量和无牙颌游离端面积的影响。

材料与方法

对 150 名随机选择的患者的每个数据集进行了三次初始配准,在植入物规划软件中进行:一次由经验丰富的用户完成,一次由无经验的操作员完成,一次由随机选择的种植牙研究生完成。对每个数据集,经验丰富的临床医生又进行了六次配准:实施手动或自动细化,选择 3 个小或 3 个大直径表面区域,并使用多个小或多个大直径表面区域。最后,使用集成在使用的植入物规划软件中的 AI 工具执行自动 AI 驱动的配准。在计量软件中,通过在解剖学标志之间进行线性测量来测量每种配准类型之间的准确性。

结果

对于无修复体的患者,全自动基于 AI 的注册与测试的传统方法没有显著差异。在存在多个修复体伪影的情况下,用户经验对于准确注册很重要。注册的准确性受无牙颌游离端面积的数量影响,但不受缺失牙齿的绝对数量影响(p < .0083)。

结论

在不存在成像伪影的情况下,CBCT 数据和模型扫描数据的自动 AI 注册可以与传统叠加方法一样准确。应根据每个临床情况单独选择叠加区域的数量和大小。

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