AI Techniques for Cone Beam Computed Tomography in Dentistry: Trends and Practices

S. Sarwar, S. Jabin
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Abstract

Cone-beam computed tomography (CBCT) is a popular imaging modality in dentistry for diagnosing and planning treatment for a variety of oral diseases with the ability to produce detailed, three-dimensional images of the teeth, jawbones, and surrounding structures. CBCT imaging has emerged as an essential diagnostic tool in dentistry. CBCT imaging has seen significant improvements in terms of its diagnostic value, as well as its accuracy and efficiency, with the most recent development of artificial intelligence (AI) techniques. This paper reviews recent AI trends and practices in dental CBCT imaging. AI has been used for lesion detection, malocclusion classification, measurement of buccal bone thickness, and classification and segmentation of teeth, alveolar bones, mandibles, landmarks, contours, and pharyngeal airways using CBCT images. Mainly machine learning algorithms, deep learning algorithms, and super-resolution techniques are used for these tasks. This review focuses on the potential of AI techniques to transform CBCT imaging in dentistry, which would improve both diagnosis and treatment planning. Finally, we discuss the challenges and limitations of artificial intelligence in dentistry and CBCT imaging.
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牙科锥形束计算机断层扫描的人工智能技术:趋势和实践
锥形束计算机断层扫描(CBCT)是一种流行的牙科成像方式,用于诊断和计划治疗各种口腔疾病,能够产生牙齿,颌骨和周围结构的详细三维图像。CBCT成像已成为一种重要的牙科诊断工具。随着人工智能(AI)技术的最新发展,CBCT成像在诊断价值、准确性和效率方面都有了显著提高。本文综述了近年来人工智能在牙科CBCT成像中的发展趋势和实践。人工智能已被用于病变检测、错牙合分类、颊骨厚度测量,以及使用CBCT图像对牙齿、牙槽骨、下颌骨、地标、轮廓和咽气道进行分类和分割。这些任务主要使用机器学习算法、深度学习算法和超分辨率技术。本文重点介绍了人工智能技术在牙科CBCT成像中的潜力,这将改善诊断和治疗计划。最后,我们讨论了人工智能在牙科和CBCT成像中的挑战和局限性。
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