Machine Learning in X-ray Diagnosis for Oral Health: A Review of Recent Progress

Mónica V. Martins, Luís Baptista, Henrique Luís, V. Assunção, Mário-Rui Araújo, Valentim Realinho
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Abstract

The past few decades have witnessed remarkable progress in the application of artificial intelligence (AI) and machine learning (ML) in medicine, notably in medical imaging. The application of ML to dental and oral imaging has also been developed, powered by the availability of clinical dental images. The present work aims to investigate recent progress concerning the application of ML in the diagnosis of oral diseases using oral X-ray imaging, namely the quality and outcome of such methods. The specific research question was developed using the PICOT methodology. The review was conducted in the Web of Science, Science Direct, and IEEE Xplore databases, for articles reporting the use of ML and AI for diagnostic purposes in X-ray-based oral imaging. Imaging types included panoramic, periapical, bitewing X-ray images, and oral cone beam computed tomography (CBCT). The search was limited to papers published in the English language from 2018 to 2022. The initial search included 104 papers that were assessed for eligibility. Of these, 22 were included for a final appraisal. The full text of the articles was carefully analyzed and the relevant data such as the clinical application, the ML models, the metrics used to assess their performance, and the characteristics of the datasets, were registered for further analysis. The paper discusses the opportunities, challenges, and limitations found.
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机器学习在口腔健康x射线诊断中的研究进展
过去几十年,人工智能(AI)和机器学习(ML)在医学领域的应用取得了显著进展,尤其是在医学成像领域。由于临床牙科图像的可用性,机器学习在牙科和口腔成像方面的应用也得到了发展。本研究旨在探讨口腔x射线成像在口腔疾病诊断中应用ML的最新进展,即这种方法的质量和结果。具体的研究问题是使用PICOT方法开发的。该综述是在Web of Science、Science Direct和IEEE Xplore数据库中进行的,针对报告在基于x射线的口腔成像中使用ML和AI诊断目的的文章。影像类型包括全景、根尖周、咬翼x线影像和口腔锥束计算机断层(CBCT)。搜索仅限于2018年至2022年以英语发表的论文。最初的搜索包括104篇被评估为合格的论文。其中22个被列入最后评估。对文章全文进行仔细分析,并登记相关数据,如临床应用、ML模型、用于评估其性能的指标以及数据集的特征等,以供进一步分析。本文讨论了机遇、挑战和发现的局限性。
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