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使用深度卷积神经网络对锥形束CT中的牙齿进行分类

Classification of teeth in cone-beam CT using deep convolutional neural network.

作者信息

Miki Yuma, Muramatsu Chisako, Hayashi Tatsuro, Zhou Xiangrong, Hara Takeshi, Katsumata Akitoshi, Fujita Hiroshi

机构信息

Department of Intelligent Image Information, Graduate School of Medicine, Gifu University, 1-1 Yanagido, Gifu, Gifu 501-1194, Japan.

Department of Intelligent Image Information, Graduate School of Medicine, Gifu University, 1-1 Yanagido, Gifu, Gifu 501-1194, Japan.

出版信息

Comput Biol Med. 2017 Jan 1;80:24-29. doi: 10.1016/j.compbiomed.2016.11.003. Epub 2016 Nov 12.

Abstract

Dental records play an important role in forensic identification. To this end, postmortem dental findings and teeth conditions are recorded in a dental chart and compared with those of antemortem records. However, most dentists are inexperienced at recording the dental chart for corpses, and it is a physically and mentally laborious task, especially in large scale disasters. Our goal is to automate the dental filing process by using dental x-ray images. In this study, we investigated the application of a deep convolutional neural network (DCNN) for classifying tooth types on dental cone-beam computed tomography (CT) images. Regions of interest (ROIs) including single teeth were extracted from CT slices. Fifty two CT volumes were randomly divided into 42 training and 10 test cases, and the ROIs obtained from the training cases were used for training the DCNN. For examining the sampling effect, random sampling was performed 3 times, and training and testing were repeated. We used the AlexNet network architecture provided in the Caffe framework, which consists of 5 convolution layers, 3 pooling layers, and 2 full connection layers. For reducing the overtraining effect, we augmented the data by image rotation and intensity transformation. The test ROIs were classified into 7 tooth types by the trained network. The average classification accuracy using the augmented training data by image rotation and intensity transformation was 88.8%. Compared with the result without data augmentation, data augmentation resulted in an approximately 5% improvement in classification accuracy. This indicates that the further improvement can be expected by expanding the CT dataset. Unlike the conventional methods, the proposed method is advantageous in obtaining high classification accuracy without the need for precise tooth segmentation. The proposed tooth classification method can be useful in automatic filing of dental charts for forensic identification.

摘要

牙科记录在法医鉴定中起着重要作用。为此,死后的牙科检查结果和牙齿状况会记录在牙科图表中,并与生前记录进行比较。然而,大多数牙医在记录尸体牙科图表方面缺乏经验,而且这是一项身心俱疲的任务,尤其是在大规模灾难中。我们的目标是通过使用牙科X光图像实现牙科档案记录过程的自动化。在本研究中,我们调查了深度卷积神经网络(DCNN)在牙科锥束计算机断层扫描(CT)图像上对牙齿类型进行分类的应用。从CT切片中提取包括单颗牙齿的感兴趣区域(ROI)。52个CT容积被随机分为42个训练案例和10个测试案例,从训练案例中获得的ROI用于训练DCNN。为了检验采样效果,进行了3次随机采样,并重复训练和测试。我们使用了Caffe框架中提供的AlexNet网络架构,它由5个卷积层、3个池化层和2个全连接层组成。为了减少过训练效应,我们通过图像旋转和强度变换对数据进行增强。训练好的网络将测试ROI分为7种牙齿类型。通过图像旋转和强度变换对训练数据进行增强后,平均分类准确率为88.8%。与未进行数据增强的结果相比,数据增强使分类准确率提高了约5%。这表明通过扩大CT数据集有望进一步提高准确率。与传统方法不同,所提出的方法在无需精确牙齿分割的情况下就能获得较高的分类准确率,具有优势。所提出的牙齿分类方法可用于法医鉴定中牙科图表的自动归档。

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