增强现实医疗实践:ct扫描分割的深度学习模型的比较研究

K. Amara, Hoceine Kennouche, Ali Aouf, O. Kerdjidj, N. Zenati, O. Djekoune, Mohamed Amine Guerroudji
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引用次数: 1

摘要

冠状病毒病几乎没有影响到世界各地的医疗保健系统。医生将放射检查作为诊断疑似COVID-19感染患者的主要临床工具。近年来,深度学习方法进一步增强了医学图像处理和分析,减少了放射科医生的工作量,提高了放射学系统的性能。本文主要研究医学图像分割;我们提出了四种神经网络“NN”模型的比较性能研究,U-Net, 3D-Unet, KiU-Net和SegNet,用于辅助诊断。此外,我们还展示了他对COVID-19病变和肺部的3D重建以及他的AR平台,包括AR可视化和互动。对这两项贡献提供了数量和质量评价。神经网络模型在AI-COVID-19诊断过程中表现良好。AR-COVID-19平台可被视为医疗实践的辅助诊断工具。它是支持放射科医生可视化和阅读的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmented Reality for medical practice: a comparative study of Deep learning models for Ct-scan segmentation
The coronavirus disease has hardly affected medical healthcare systems worldwide. Physicians use radiological examinations as a primary clinical tool for diagnosing patients with suspected COVID-19 infection. Recently, deep learning approaches have further enhanced medical image processing and analysis, reduced the workload of radiologists, and improved the performance of radiology systems. This paper addresses medical image segmentation; we present a comparative performance study of four neural networks ’NN’ models, U-Net, 3D-Unet, KiU-Net and SegNet, for aid diagnosis. Additionally, we present his 3D reconstruction of COVID-19 lesions and lungs and his AR platform with augmented reality, including AR visualization and interaction. Quantitative and qualitative assessments are provided for both contributions. The NN model performed well in the AI-COVID-19 diagnostic process. The AR-COVID-19 platform can be viewed as an ancillary diagnostic tool for medical practice. It serves as a tool to support radiologist visualization and reading.
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