CT Images Segmentation Using a Deep Learning-Based Approach for Preoperative Projection of Human Organ Model Using Augmented Reality Technology

Nessrine Elloumi, Aicha Ben Makhlouf, Ayman Afli, B. Louhichi, M. Jaidane, J. M. R. Tavares
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Abstract

Over the last decades, facing the blooming growth of technological progress, interest in digital devices such as computed tomography (CT) as well as magnetic resource imaging which emerged in the 1970s has continued to grow. Such medical data can be invested in numerous visual recognition applications. In this context, these data may be segmented to generate a precise 3D representation of an organ that may be visualized and manipulated to aid surgeons during surgical interventions. Notably, the segmentation process is performed manually through the use of image processing software. Within this framework, multiple outstanding approaches were elaborated. However, the latter proved to be inefficient and required human intervention to opt for the segmentation area appropriately. Over the last few years, automatic methods which are based on deep learning approaches have outperformed the state-of-the-art segmentation approaches due to the use of the relying on Convolutional Neural Networks. In this paper, a segmentation of preoperative patients CT scans based on deep learning architecture was carried out to determine the target organ’s shape. As a result, the segmented 2D CT images are used to generate the patient-specific biomechanical 3D model. To assess the efficiency and reliability of the proposed approach, the 3DIRCADb dataset was invested. The segmentation results were obtained through the implementation of a U-net architecture with good accuracy.
基于深度学习的CT图像分割方法用于增强现实技术人体器官模型的术前投影
在过去的几十年里,面对技术进步的蓬勃发展,人们对数字设备的兴趣持续增长,如计算机断层扫描(CT)和20世纪70年代出现的磁资源成像。这些医疗数据可以投资于许多视觉识别应用程序。在这种情况下,这些数据可以被分割以生成器官的精确3D表示,可以可视化和操作,以帮助外科医生进行手术干预。值得注意的是,分割过程是通过使用图像处理软件手动执行的。在这个框架内,阐述了多种突出的方法。然而,后者被证明是低效的,需要人为干预来选择适当的分割区域。在过去的几年里,基于深度学习方法的自动分割方法由于使用了依赖于卷积神经网络的方法,已经优于最先进的分割方法。本文基于深度学习架构对术前患者CT扫描图像进行分割,确定目标器官的形状。因此,分割的2D CT图像用于生成患者特异性的生物力学3D模型。为了评估该方法的效率和可靠性,我们使用了3DIRCADb数据集。通过实现U-net结构,获得了精度较高的分割结果。
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