Effectiveness of Using Radiology Images and Mask R-CNN for Stomatology

H. Jayasinghe, Nipuni Pallepitiya, Anuththara Chandrasiri, Chathunika Heenkenda, S. Vidhanaarachchi, Archchana Kugathasan, Kushan Rathnayaka, J. Wijekoon
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引用次数: 2

Abstract

Dental health-related disorders have proliferated worldwide due to the excessive intake of fast food and sugary foods, which was followed by bad oral hygiene practices. The cost of dental examinations may change based on how critical the condition is, regardless of whether they are not regular. For a person, diagnosing an oral health problem, particularly locating the disease’s underlying cause, can be challenging. To properly diagnose and treat such conditions, advanced dental diagnostic techniques may be necessary. By offering convenience and enhancing their oral health knowledge, the system seeks to serve as a prediction tool that regular people can utilize to detect potential tooth illnesses at an early stage. It is encompassed as a mobile application where a Mask R-CNN model is used in the core that accepts a dental radiograph as the input. The trained model will be able to identify diseases related to the bone and teeth. Based on the performance evaluations, the accuracy of the results that are obtained in tooth type, restoration quality, dental caries, and periodontal disease identification falls in the range of 75%-80%.
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放射学图像与掩膜R-CNN在口腔医学中的应用效果
由于过量摄入快餐和含糖食品,随之而来的是不良的口腔卫生习惯,与牙齿健康有关的疾病在世界范围内激增。牙科检查的费用可能会根据病情的严重程度而变化,而不管是否定期检查。对于一个人来说,诊断口腔健康问题,特别是找出疾病的根本原因,可能是具有挑战性的。为了正确诊断和治疗这些疾病,可能需要先进的牙科诊断技术。通过提供便利和提高他们的口腔健康知识,该系统旨在成为普通人可以利用的预测工具,以便在早期发现潜在的牙齿疾病。它被包含为一个移动应用程序,其中在核心中使用Mask R-CNN模型,该模型接受牙科x光片作为输入。经过训练的模型将能够识别与骨骼和牙齿相关的疾病。通过性能评价,在牙型、修复体质量、龋齿、牙周病鉴定等方面获得的结果准确率在75%-80%之间。
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