Determining the reliability of diagnosis and treatment using artificial intelligence software with panoramic radiographs.

IF 1.7 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Imaging Science in Dentistry Pub Date : 2023-09-01 Epub Date: 2023-08-02 DOI:10.5624/isd.20230109
Kaan Orhan, Ceren Aktuna Belgin, David Manulis, Maria Golitsyna, Seval Bayrak, Secil Aksoy, Alex Sanders, Merve Önder, Matvey Ezhov, Mamat Shamshiev, Maxim Gusarev, Vladislav Shlenskii
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引用次数: 1

Abstract

Purpose: The objective of this study was to evaluate the accuracy and effectiveness of an artificial intelligence (AI) program in identifying dental conditions using panoramic radiographs (PRs), as well as to assess the appropriateness of its treatment recommendations.

Material and methods: PRs from 100 patients (representing 4497 teeth) with known clinical examination findings were randomly selected from a university database. Three dentomaxillofacial radiologists and the Diagnocat AI software evaluated these PRs. The evaluations were focused on various dental conditions and treatments, including canal filling, caries, cast post and core, dental calculus, fillings, furcation lesions, implants, lack of interproximal tooth contact, open margins, overhangs, periapical lesions, periodontal bone loss, short fillings, voids in root fillings, overfillings, pontics, root fragments, impacted teeth, artificial crowns, missing teeth, and healthy teeth.

Results: The AI demonstrated almost perfect agreement (exceeding 0.81) in most of the assessments when compared to the ground truth. The sensitivity was very high (above 0.8) for the evaluation of healthy teeth, artificial crowns, dental calculus, missing teeth, fillings, lack of interproximal contact, periodontal bone loss, and implants. However, the sensitivity was low for the assessment of caries, periapical lesions, pontic voids in the root canal, and overhangs.

Conclusion: Despite the limitations of this study, the synthesized data suggest that AI-based decision support systems can serve as a valuable tool in detecting dental conditions, when used with PR for clinical dental applications.

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使用人工智能软件通过全景射线照片确定诊断和治疗的可靠性。
目的:本研究的目的是评估人工智能(AI)程序在使用全景放射学(PR)识别牙齿状况方面的准确性和有效性,并评估其治疗建议的适当性。材料和方法:从大学数据库中随机选择100名已知临床检查结果的患者(代表4497颗牙齿)的PR。三位牙颌面放射科医生和Diagnocat AI软件对这些PR进行了评估。评估的重点是各种牙齿状况和治疗方法,包括管充填、龋齿、铸造桩核、牙石、填充物、分叉病变、种植体、邻牙接触不足、开放边缘、悬突、根尖周病变、牙周骨丢失、短填充物、根填充物中的空隙、过度填充、桥体、根碎片、阻生牙,人造牙冠、缺失的牙齿和健康的牙齿。结果:与基本事实相比,AI在大多数评估中表现出几乎完全一致(超过0.81)。评估健康牙齿、人工牙冠、牙石、缺失牙齿、填充物、缺乏邻间接触、牙周骨丢失和植入物的敏感性非常高(超过0.8)。然而,对龋齿、根尖周病变、根管桥体空洞和悬突的评估敏感性较低。结论:尽管本研究存在局限性,但综合数据表明,当与PR一起用于临床牙科应用时,基于人工智能的决策支持系统可以作为检测牙科状况的有价值工具。
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来源期刊
Imaging Science in Dentistry
Imaging Science in Dentistry DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
2.90
自引率
11.10%
发文量
42
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