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Unsupervised Caries Detection in Non-standardized Bitewing Dental X-Rays

机译:非标准化咬合牙科X射线的无监督龋病检测

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In recent years dental image processing has become a useful tool in aiding healthcare professionals diagnose patients. Despite advances in the field, accurate diagnoses are still problematic due to the non-uniform nature of dental X-rays. This is attributed to current systems utilizing a supervised learning model for their deterministic algorithm when identifying caries. This paper presents a method for the detection of caries across a variety of non-uniform X-ray images using an unsupervised learning model. This method aims to identify potential caries hallmarks within a tooth without comparing against a set of criteria learned from a database of images. The results show the viability of an unsupervised learning approach and the effectiveness of the method when compared to the supervised approaches.
机译:近年来,牙科图像处理已成为帮助医疗保健专业人员诊断患者的有用工具。尽管在该领域取得了进步,但是由于牙科X射线的不均匀性质,准确的诊断仍然存在问题。这归因于当前系统在识别龋齿时将监督学习模型用于其确定性算法。本文提出了一种使用无监督学习模型检测各种不均匀X射线图像中的龋齿的方法。该方法旨在识别牙齿内潜在的龋齿特征,而无需与从图像数据库中学习的一组标准进行比较。结果显示了无监督学习方法的可行性以及与有监督方法相比该方法的有效性。

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