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基于口腔根尖射线摄影的牙周病损诊断机器学习模型的开发和验证。

Development and validation of intraoral periapical radiography-based machine learning model for periodontal defect diagnosis.

机构信息

Department of Periodontology, Faculty of Dentistry, Ankara University, Ankara, Turkey.

Department of Oral and Maxillofacial Radiology, Faculty of Dentistry, Ankara University, Ankara, Turkey.

出版信息

Proc Inst Mech Eng H. 2023 May;237(5):607-618. doi: 10.1177/09544119231162682. Epub 2023 Mar 20.

Abstract

Radiographic determination of the bone level is useful in the diagnosis and determination of the severity of the periodontal disease. Various two- and three-dimensional imaging modalities offer choices for imaging pathologic processes that affect the periodontium. In recent years, innovative computer techniques, especially artificial intelligence (AI), have begun to be used in many areas of dentistry and are helping increase treatment and diagnostic performance. This study was aimed at developing a machine-learning (ML) model and assessing the extent to which it was capable of classifying periodontal defects on 2D periapical images. Eighty-seven periapical images were examined as part of this research. The existence or absence of periodontal defects in the aforementioned images were evaluated by a human observer. The evaluations were subsequently repeated using a radiomics platform. A comparison was made of all data acquired through human observation and ML techniques by SVM analysis. According to the study findings the ability of human observers and the ML model to detect periodontal defects was significantly different in comparison to the gold standard. However, ML and human observers performed similarly for the detection of periodontal defects without a significant difference. This study reveals that the prediction of periodontal defects can be achieved by combining particular radiomic features with image variables. The proposed machine leaning model can be utilized for supporting clinical practitioners and eventually substitute evaluations conducted by human observers while enhancing future levels of performance.

摘要

放射影像学测定骨水平有助于牙周病的诊断和严重程度的确定。各种二维和三维成像方式为影响牙周组织的病理过程的成像提供了选择。近年来,创新的计算机技术,特别是人工智能(AI),已开始在许多牙科领域得到应用,并有助于提高治疗和诊断性能。本研究旨在开发一种机器学习(ML)模型,并评估其在二维根尖图像上分类牙周缺陷的能力。该研究共检查了 87 张根尖图像。人类观察者评估了上述图像中是否存在牙周缺陷。随后使用放射组学平台重复评估。通过 SVM 分析比较了通过人类观察和 ML 技术获得的所有数据。根据研究结果,与金标准相比,人类观察者和 ML 模型检测牙周缺陷的能力存在显著差异。然而,对于检测牙周缺陷,ML 和人类观察者的表现相似,没有显著差异。这项研究表明,可以通过将特定的放射组学特征与图像变量相结合来预测牙周缺陷。所提出的机器学习模型可用于辅助临床医生,最终替代人类观察者的评估,同时提高未来的性能水平。

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