脑MRI全自动检测和分割的深度学习技术

A. Tamer, Ahmed Youssef, Mohammed Ibrahim, M. Aziz, Youssef Hesham, Zeyad Mohammed, M. M. Eissa, Soha Ahmed, Ghada Khoriba
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引用次数: 0

摘要

在过去的十年中,肿瘤的自动分割因其对癌症治疗的重要影响而引起了人们的广泛关注。自动分割架构在减轻医务人员的巨大工作量方面发挥着重要作用。这促使我们探索自动分词的最新解决方案,将其用于自动分词。它的工作原理是自动绘制肿瘤轮廓,使放射治疗更容易实现,因为人工绘制轮廓是重复的,而且容易受到人为错误的影响。自动分割通常力求达到高精度,以减少放射科医生绘制肿瘤轮廓所需的时间。节省时间至关重要,因为放射科医生可以将时间花在分割肿瘤上,而不是绘制所有肿瘤的轮廓,从而可以在更短的时间内诊断出更多的患者。已经有很多为通用目的而创建的自动分割架构,比如Segnet,它有时用于医学分割,但是这些架构无法达到很高的准确性,特别是在肿瘤的细节上。U-Net是一种自动分割架构,专门用于MRI和CT等医学图像的自动分割。U-Net架构可以用较少的数据量实现较高的分割精度。我们通过在架构本身的每一层使用残余块(通常称为Res-U-Net)来提高U-Net性能。我们最终提出的微调Res-U-Net模型在使用的数据上达到了97.10%,这是我们提出的3个微调模型中最好的。使用的数据是低级别胶质瘤(LGGS)脑肿瘤数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning techniques for the fully automated detection and segmentation of brain MRI
Over the past decade, auto-segmentation for tumors has drawn a lot of attention due to its significant impact on cancer treatment. Auto-segmentation architectures have a significant role in alleviating the enormous workload on the medical staff. This has motivated us to explore the latest solutions in auto-segmentation to use it in auto-segmentation. It works on automatically contouring tumors to make radiology treatment more attainable since manual contouring is repetitive and subjective to human error. Auto-segmentation usually strives to achieve high accuracy to reduce the time the radiologists take to contour the tumor. Saving time is critical as instead of contouring all the tumors, the radiologist can spend the time editing on the segmented tumor thus more patients can be diagnosed in less amount of time. There have been a lot of auto-segmentation architectures created for general purposes like the Segnet which is sometimes used in medical segmentation, but such architectures fail to achieve high accuracy especially in the details of the tumor. The U-Net is an auto-segmentation architecture specifically created for auto-segmentation on medical images like MRI and CT. The U-Net architecture can achieve high accuracy of segmentation with fewer amounts of data. We improved U-Net performance by using residual blocks on each layer of the architecture itself usually referred to as Res-U-Net. Our final proposed fine-tuned Res-U-Net model has achieved 97.10% on the used data which was the best of our 3 proposed fine-tuned models. The used data was Low-grade gliomas (LGGS) brain tumor dataset.
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