Advancing Dental Diagnostics: A Review of Artificial Intelligence Applications and Challenges in Dentistry

Dhiaa Musleh, Haya Almossaeed, Fay Balhareth, Ghadah Alqahtani, Norah Alobaidan, Jana Altalag, May Issa Aldossary
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Abstract

The rise of artificial intelligence has created and facilitated numerous everyday tasks in a variety of industries, including dentistry. Dentists have utilized X-rays for diagnosing patients’ ailments for many years. However, the procedure is typically performed manually, which can be challenging and time-consuming for non-specialized specialists and carries a significant risk of error. As a result, researchers have turned to machine and deep learning modeling approaches to precisely identify dental disorders using X-ray pictures. This review is motivated by the need to address these challenges and to explore the potential of AI to enhance diagnostic accuracy, efficiency, and reliability in dental practice. Although artificial intelligence is frequently employed in dentistry, the approaches’ outcomes are still influenced by aspects such as dataset availability and quantity, chapter balance, and data interpretation capability. Consequently, it is critical to work with the research community to address these issues in order to identify the most effective approaches for use in ongoing investigations. This article, which is based on a literature review, provides a concise summary of the diagnosis process using X-ray imaging systems, offers a thorough understanding of the difficulties that dental researchers face, and presents an amalgamative evaluation of the performances and methodologies assessed using publicly available benchmarks.
推进牙科诊断:人工智能在牙科领域的应用和挑战综述
人工智能的兴起为包括牙科在内的各行各业创造和促进了大量日常工作。多年来,牙医一直利用 X 射线来诊断病人的疾病。然而,这一过程通常由人工完成,这对非专业专家来说具有挑战性,耗费时间,而且存在很大的出错风险。因此,研究人员转而采用机器和深度学习建模方法,利用 X 射线图片精确识别牙科疾病。本综述正是出于应对这些挑战的需要,并探索人工智能在提高牙科诊所诊断准确性、效率和可靠性方面的潜力。虽然人工智能经常被应用于牙科领域,但其结果仍受到数据集的可用性和数量、章节平衡和数据解读能力等方面的影响。因此,与研究界合作解决这些问题至关重要,以便找出最有效的方法用于正在进行的研究。本文以文献综述为基础,简明扼要地总结了使用 X 射线成像系统进行诊断的过程,透彻地阐述了牙科研究人员面临的困难,并对使用公开基准评估的性能和方法进行了综合评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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