使用卷积神经网络自动检测头颅图像上的点:两步法

IF 1.9 4区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE Dental materials journal Pub Date : 2024-09-04 DOI:10.4012/dmj.2024-052
Miki Hori, Makoto Jincho, Tadasuke Hori, Hironao Sekine, Akiko Kato, Ken Miyazawa, Tatsushi Kawai
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引用次数: 0

摘要

该项目旨在开发一款针对头颅测量图像的人工智能程序。该程序采用了一个具有 6 个卷积层和 2 个仿射层的卷积神经网络。它能识别头骨上的 18 个关键点,计算诊断所需的各种角度。利用一台配备中等价位图形处理单元的定制台式电脑,头颅影像被调整为 800×800 像素。训练数据由 833 张图像组成,增强了 100 倍;另外 179 张图像用于测试。由于使用全尺寸图像进行训练的复杂性,训练分为两个步骤。第一步将图像缩小到 128×128 像素,识别所有 18 个点。第二步,从原始图像中提取 100×100 像素的图块进行单点训练。然后,程序测量了六个角度,18 个点的平均误差为 3.1 像素,SNA 和 SNB 角度的平均差异小于 1°。
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Automatic point detection on cephalograms using convolutional neural networks: A two-step method.

This project aimed to develop an artificial intelligence program tailored for cephalometric images. The program employs a convolutional neural network with 6 convolutional layers and 2 affine layers. It identifies 18 key points on the skull to compute various angles essential for diagnosis. Utilizing a custom-built desktop computer with a moderately priced graphics processing unit, cephalogram images were resized to 800×800 pixels. Training data comprised 833 images, augmented 100 times; an additional 179 images were used for testing. Due to the complexity of training with full-size images, training was divided into two steps. The first step reduced images to 128×128 pixels, recognizing all 18 points. In the second step, 100×100 pixels blocks were extracted from original images for individual point training. The program then measured six angles, achieving an average error of 3.1 pixels for the 18 points, with SNA and SNB angles showing an average difference of less than 1°.

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来源期刊
Dental materials journal
Dental materials journal 医学-材料科学:生物材料
CiteScore
4.60
自引率
4.00%
发文量
102
审稿时长
3 months
期刊介绍: Dental Materials Journal is a peer review journal published by the Japanese Society for Dental Materials and Devises aiming to introduce the progress of the basic and applied sciences in dental materials and biomaterials. The dental materials-related clinical science and instrumental technologies are also within the scope of this journal. The materials dealt include synthetic polymers, ceramics, metals and tissue-derived biomaterials. Forefront dental materials and biomaterials used in developing filed, such as tissue engineering, bioengineering and artificial intelligence, are positively considered for the review as well. Recent acceptance rate of the submitted manuscript in the journal is around 30%.
期刊最新文献
Corrosion behavior of Zr-14Nb-5Ta-1Mo alloy in simulated body fluid. Wear characteristics of resin-based luting agents used in the bonded CAD-CAM resin blocks. Chemical and physical properties of radiopaque Portland cement formulation with reduced particle size. Five-year clinical follow-up of bulk-fill restorative materials in class II restorations. Automatic point detection on cephalograms using convolutional neural networks: A two-step method.
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