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An automated dental caries detection and scoring system for optical images of tooth occlusal surface

机译:用于牙齿咬合面光学图像的自动龋齿检测和评分系统

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Dental caries are one of the most prevalent chronic diseases. The management of dental caries demands detection of carious lesions at early stages. This study aims to design an automated system to detect and score caries lesions based on optical images of the occlusal tooth surface according to the International Caries Detection and Assessment System (ICDAS) guidelines. The system detects the tooth boundaries and irregular regions, and extracts 77 features from each image. These features include statistical measures of color space, grayscale image, as well as Wavelet Transform and Fourier Transform based features. Used in this study were 88 occlusal surface photographs of extracted teeth examined and scored by ICDAS experts. Seven ICDAS codes which show the different stages in caries development were collapsed into three classes: score 0, scores 1 and 2, and scores 3 to 6. The system shows accuracy of 86.3%, specificity of 91.7%, and sensitivity of 83.0% in ten-fold cross validation in classification of the tooth images. While the system needs further improvement and validation using larger datasets, it presents promising potential for clinical diagnostics with high accuracy and minimal cost. This is a notable advantage over existing systems requiring expensive imaging and external hardware.
机译:龋齿是最普遍的慢性疾病之一。龋齿的处理要求在早期阶段检测出龋损。这项研究的目的是根据国际龋齿检测和评估系统(ICDAS)指南,设计一种基于咬合牙齿表面光学图像的龋齿病变检测和评分系统。该系统检测牙齿边界和不规则区域,并从每个图像中提取77个特征。这些功能包括色彩空间,灰度图像的统计度量,以及基于小波变换和傅立叶变换的功能。在这项研究中,使用了由ICDAS专家检查和评分的88颗拔牙的咬合面照片。七个显示龋齿发展不同阶段的ICDAS代码分为3类:0分,1分和2分,3分至6分。该系统显示出86.3%的准确性,91.7%的特异性和83.0%的敏感性。牙齿图像分类中的十倍交叉验证。尽管该系统需要使用更大的数据集进行进一步的改进和验证,但它具有很高的准确性和最低的成本,为临床诊断提供了广阔的前景。与需要昂贵的成像和外部硬件的现有系统相比,这是一个显着的优势。

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