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基于个人电脑的深度学习头影测量标志点检测,利用互联网上的头颅侧位片

Personal Computer-Based Cephalometric Landmark Detection With Deep Learning, Using Cephalograms on the Internet.

作者信息

Nishimoto Soh, Sotsuka Yohei, Kawai Kenichiro, Ishise Hisako, Kakibuchi Masao

机构信息

Department of Plastic Surgery, Hyogo College of Medicine, Nishinomiya, Japan.

出版信息

J Craniofac Surg. 2019 Jan;30(1):91-95. doi: 10.1097/SCS.0000000000004901.

Abstract

BACKGROUND

Cephalometric analysis has long been, and still is one of the most important tools in evaluating craniomaxillofacial skeletal profile. To perform this, manual tracing of x-ray film and plotting landmarks have been required. This procedure is time-consuming and demands expertise. In these days, computerized cephalometric systems have been introduced; however, tracing and plotting still have to be done on the monitor display. Artificial intelligence is developing rapidly. Deep learning is one of the most evolving areas in artificial intelligence. The authors made an automated landmark predicting system, based on a deep learning neural network.

METHODS

On a personal desktop computer, a convolutional network was built for regression analysis of cephalometric landmarks' coordinate values. Lateral cephalogram images were gathered through the internet and 219 images were obtained. Ten skeletal cephalometric landmarks were manually plotted and coordinate values of them were listed. The images were randomly divided into 153 training images and 66 testing images. Training images were expanded 51 folds. The network was trained with the expanded training images. With the testing images, landmarks were predicted by the network. Prediction errors from manually plotted points were evaluated.

RESULTS

Average and median prediction errors were 17.02 and 16.22 pixels. Angles and lengths in cephalometric analysis, predicted by the neural network, were not statistically different from those calculated from manually plotted points.

CONCLUSION

Despite the variety of image quality, using cephalogram images on the internet is a feasible approach for landmark prediction.

摘要

背景

长期以来,头影测量分析一直是评估颅颌面骨骼轮廓的最重要工具之一,并且至今仍是如此。要进行头影测量分析,需要对手动追踪X线片并绘制标志点。此过程既耗时又需要专业知识。如今,计算机化头影测量系统已被引入;然而,仍然必须在显示器上进行追踪和绘制。人工智能正在迅速发展。深度学习是人工智能中发展最快的领域之一。作者基于深度学习神经网络制作了一个自动标志点预测系统。

方法

在一台个人台式计算机上,构建了一个卷积网络用于对头影测量标志点的坐标值进行回归分析。通过互联网收集侧位头影图像,共获得219张图像。手动绘制了10个头影测量骨骼标志点,并列出了它们的坐标值。将图像随机分为153张训练图像和66张测试图像。训练图像扩充了51倍。使用扩充后的训练图像对网络进行训练。利用测试图像,由网络预测标志点。评估与手动绘制点之间的预测误差。

结果

平均预测误差和中位数预测误差分别为17.02像素和16.22像素。神经网络预测的头影测量分析中的角度和长度与手动绘制点计算得出的角度和长度在统计学上无差异。

结论

尽管图像质量各不相同,但使用互联网上的头影图像进行标志点预测是一种可行的方法。

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