基于人工智能的切管可视化,用于预防和检测种植体后损伤。

T Jindanil, R C Fontenele, S L de-Azevedo-Vaz, P Lahoud, F S Neves, R Jacobs
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引用次数: 0

摘要

本研究的目的是临床验证一种基于人工智能(AI)的工具,用于锥体束计算机断层扫描(CBCT)下颌切口管(MIC)的自动分割,从而预防和检测医源性种植体相关神经损伤。从鲁汶大学医院的患者记录中筛选与神经损伤的植入手术病例相关的CBCT。将CBCT扫描导入到Virtual Patient Creator中进行管段分割和3D模型生成。两名口腔放射科医生将人工智能分割的管道与各自的CBCT图像进行了比较。五名观察员随后进行了椎管识别和损伤检测(在场/不在场),并报告了他们在五点李克特量表上的置信度。对10例患者进行评估(女8例,男2例;年龄49-81岁)。基于人工智能的工具可以在术前和术后图像中清晰地显示双侧MIC,显示种植体-管之间的关系,与记录的种植后疼痛或神经障碍一致。对于术前评估,基于人工智能的工具显着提高了切管检测(25%;P = 0.025)和观察者置信度(8%;P = 0.038)。该基于人工智能的工具在临床上被证明是有用的,可以在CBCT图像上实现双侧MIC的可视化。通过集成三维建模的根管分割,术前根管检测和专家置信度明显提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-based incisive canal visualization for preventing and detecting post-implant injury, using cone beam computed tomography.

The aim of this study was to clinically validate an artificial intelligence (AI)-based tool for automatic segmentation of the mandibular incisive canal (MIC) on cone beam computed tomography (CBCT), enabling prevention and detection of iatrogenic implant-related nerve injuries. Patient records from University Hospitals Leuven were screened for CBCT related to implant surgery cases with nerve injuries. CBCT scans were imported into Virtual Patient Creator for canal segmentation and 3D model generation. Two oral radiologists compared the AI-segmented canals with respective CBCT images. Five observers then performed canal identification and injury detection (present/absent) and reported their confidence level on a five-point Likert scale. Ten patient cases were assessed (eight female, two male; age 49-81 years). The AI-based tool enabled clear visualization of bilateral MIC in both pre- and postoperative images, revealing implant-canal relationships consistent with recorded post-implant pain or neural disturbance. For preoperative assessment, the AI-based tool significantly improved incisive canal detection (by 25%; P = 0.025) and observer confidence (by 8%; P = 0.038). The AI-based tool proved to be clinically useful to enable bilateral MIC visualization on CBCT images. Through canal segmentation with integrated 3D modelling, preoperative canal detection and the experts' confidence level were significantly improved.

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