Detecting Dental Caries Through Captured Images Using The Machine Learning Technology Teachable Machine

Ikatan Dokter, Indonesia Wilayah, Jawa Timur, Tran Tuan Anh, Nguyen The Huy, Nguyen Thi Hoai, Nhi, Tran Hoang
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Abstract

Introduction: The aim is to apply artificial intelligence to identify deep tooth decay using the open-source tool Teachable Machine. Material and Methods: The study was conducted on 2063 digital images, including 1563 images with deep tooth decay and 500 images without deep tooth decay. Results: Out of the total 1563 images with deep tooth decay, when using the recognition tool, 1512 images were correctly identified (96%), and 51 images went undetected, accounting for 4%. Out of the total 2063 images, including both images with and without deep tooth decay, 1512 images were correctly identified (73.3%), and 551 images (26.7%) were not detected to have tooth decay. Conclusion: Through the study on 1563 images with deep tooth decay using the Teachable Machine learning tool, the results were promising with a high accuracy rate of 96%. However, on the mixed dataset of 2063 images, the accuracy rate for identifying images with tooth decay was only 73.3%. The difference is attributed to the early appearance of tooth decay, as its color closely correlates with normal tooth enamel. Therefore, the research team suggests the need for more data on this type of decay to enable more accurate classification and identification.
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利用机器学习技术 Teachable Machine 通过捕获的图像检测龋齿
内容简介目的是利用开源工具 Teachable Machine,应用人工智能识别深层蛀牙:研究对象为 2063 张数字图像,包括 1563 张有深度蛀牙的图像和 500 张没有深度蛀牙的图像:在总共 1563 张有深度蛀牙的图像中,使用识别工具正确识别出 1512 张图像(占 96%),未识别出 51 张图像,占 4%。在包括有深蛀牙和无深蛀牙的总共 2063 张图像中,1512 张图像被正确识别(73.3%),551 张图像(26.7%)未被检测出有蛀牙:通过使用 Teachable 机器学习工具对 1563 张有深度蛀牙的图像进行研究,结果令人欣喜,准确率高达 96%。然而,在包含 2063 张图像的混合数据集上,识别蛀牙图像的准确率仅为 73.3%。造成这一差异的原因是蛀牙出现较早,其颜色与正常牙釉质密切相关。因此,研究小组建议需要更多关于这类蛀牙的数据,以便进行更准确的分类和识别。
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