Department of Biomedical Engineering, Ziauddin University, Karachi, Pakistan.
Department of Electrical Engineering, Ziauddin University, Karachi, Pakistan.
J Healthc Eng. 2022 Mar 31;2022:5032435. doi: 10.1155/2022/5032435. eCollection 2022.
Dental caries is one of the major oral health problems and is increasing rapidly among people of every age (children, men, and women). Deep learning, a field of Artificial Intelligence (AI), is a growing field nowadays and is commonly used in dentistry. AI is a reliable platform to make dental care better, smoother, and time-saving for professionals. AI helps the dentistry professionals to fulfil demands of patients and to ensure quality treatment and better oral health care. AI can also help in predicting failures of clinical cases and gives reliable solutions. In this way, it helps in reducing morbidity ratio and increasing quality treatment of dental problem in population.
The main objective of this study is to conduct a systematic review of studies concerning the association between dental caries and machine learning. The objective of this study is to design according to the PICO criteria.
A systematic search for randomized trials was conducted under the guidelines of PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses). In this study, e-search was conducted from four databases including PubMed, IEEE Xplore, Science Direct, and Google Scholar, and it involved studies from year 2008 to 2022.
This study fetched a total of 133 articles, from which twelve are selected for this systematic review. We analyzed different types of machine learning algorithms from which deep learning is widely used with dental caries images dataset. Neural Network Backpropagation algorithm, one of the deep learning algorithms, gives a maximum accuracy of 99%.
In this systematic review, we concluded how deep learning has been applied to the images of teeth to diagnose the detection of dental caries with its three types (proximal, occlusal, and root caries). Considering our findings, further well-designed studies are needed to demonstrate the diagnosis of further types of dental caries that are based on progression (chronic, acute, and arrested), which tells us about the severity of caries, virginity of lesion, and extent of caries. Apart from dental caries, AI in the future will emerge as supreme technology to detect other diseases of oral region combinedly and comprehensively because AI will easily analyze big datasets that contain multiple records.
龋齿是口腔健康的主要问题之一,且在各个年龄段的人群(儿童、男性和女性)中都在迅速增加。深度学习是人工智能(AI)领域的一个新兴领域,目前在牙科领域得到广泛应用。AI 是一个可靠的平台,可以使专业人员的口腔护理工作更轻松、更顺畅、更节省时间。AI 有助于满足患者的需求,确保治疗质量和更好的口腔保健。AI 还可以帮助预测临床病例的失败,并提供可靠的解决方案。这样可以降低发病率,提高人群中口腔问题的治疗质量。
本研究的主要目的是对涉及龋齿与机器学习关联的研究进行系统评价。本研究的目的是根据 PICO 标准进行设计。
根据 PRISMA(系统评价和荟萃分析的首选报告项目)指南,对随机试验进行了系统搜索。在这项研究中,从包括 PubMed、IEEE Xplore、Science Direct 和 Google Scholar 在内的四个数据库进行了电子搜索,涉及 2008 年至 2022 年的研究。
本研究共检索到 133 篇文章,从中选择了 12 篇进行系统评价。我们分析了不同类型的机器学习算法,其中深度学习广泛应用于龋齿图像数据集。神经网络反向传播算法是深度学习算法之一,其准确率最高可达 99%。
在本系统评价中,我们得出结论,深度学习已应用于牙齿图像,以诊断龋齿的检测,包括三种类型(邻面、咬合和根面龋)。考虑到我们的研究结果,需要进一步进行精心设计的研究,以证明基于进展(慢性、急性和静止)的进一步类型的龋齿诊断,这可以告诉我们龋齿的严重程度、病变的初发性和龋齿的程度。除了龋齿,人工智能在未来将成为检测口腔区域其他疾病的卓越技术,因为人工智能可以轻松分析包含多个记录的大型数据集。