卷积神经网络
牙菌斑
人工智能
牙科
计算机科学
自体荧光
医学
模式识别(心理学)
荧光
量子力学
物理
作者
Cheng Wang,Haotian Qin,Guangyun Lai,Gang Zheng,Huazhong Xiang,Jun Wang,Dawei Zhang
标识
DOI:10.1142/s1793545820500145
摘要
Prevention is the most effective way to reduce dental caries. In order to provide a simple way to achieve oral healthcare direction in daily life, dual Channel, portable dental Imaging system that combine white light with autofluorescence techniques was established, and then, a group of volunteers were recruited, 7200 tooth pictures of different dental caries stage and dental plaque were taken and collected. In this work, a customized Convolutional Neural Networks (CNNs) have been designed to classify dental image with early stage caries and dental plaque. Eighty percentage ([Formula: see text]) of the pictures taken were used to supervised training of the CNNs based on the experienced dentists’ advice and the rest 20% ([Formula: see text]) were used to a test dataset to test the trained CNNs. The accuracy, sensitivity and specificity were calculated to evaluate performance of the CNNs. The accuracy for the early stage caries and dental plaque were 95.3% and 95.9%, respectively. These results shown that the designed image system combined the customized CNNs that could automatically and efficiently find early caries and dental plaque on occlusal, lingual and buccal surfaces. Therefore, this will provide a novel approach to dental caries prevention for everyone in daily life.
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