首页> 外文期刊>The international journal of medical robotics + computer assisted surgery: MRCAS >Automatic 3D landmarking model using patch-based deep neural networks for CT image of oral and maxillofacial surgery
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Automatic 3D landmarking model using patch-based deep neural networks for CT image of oral and maxillofacial surgery

机译:基于补丁的深神经网络的自动3D地标模型,用于口腔和颌面外科的CT图像

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Background: Manual landmarking is a time consuming and highly professional work. Although some algorithm-based landmarking methods have been proposed, they lack flexibility and may be susceptible to data diversity. Methods: The CT images from 66 patients who underwent oral and maxillofacial surgery (OMS) were landmarked manually in MIMICS. Then the CT slices were exported as images for recreating the 3D volume. The coordinate data of landmarks were further processed in Matlab using a principal component analysis (PCA) method. A patch-based deep neural network model with a three-layer convolutional neural network (CNN) was trained to obtain landmarks from CT images. Results: The evaluating experiment showed that this CNN model could automatically finish landmarking in an average processing time of 37.871 seconds with an average accuracy of 5.785 mm. Conclusion: This study shows a promising potential to relieve the workload of the surgeon and reduces the dependence on human experience for OMS landmarking.
机译:背景:手动标记是一项耗时且高度专业的工作。虽然已经提出了一些基于算法的地标方法,但它们缺乏灵活性,并且可能容易受到数据多样性的影响。方法:对66例口腔颌面外科(OMS)患者的CT图像进行手动标记。然后将CT切片导出为图像,用于重建3D体积。使用主成分分析(PCA)方法在Matlab中进一步处理地标的坐标数据。训练了一个基于三层卷积神经网络(CNN)的贴片深度神经网络模型,从CT图像中获取地标。结果:评价实验表明,该CNN模型能在37.871s的平均处理时间内自动完成标记,平均准确度为5.785mm。结论:这项研究显示了一种有希望的潜力,可以减轻外科医生的工作量,减少OMS标记对人类经验的依赖。

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