医学图像分割用于脑肿瘤提取:隐马尔可夫和深度学习方法的比较研究

Soukaina El Idrissi El kaitouni, H. Tairi
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引用次数: 4

摘要

恶性脑肿瘤是导致成人和儿童死亡的主要原因之一。为了识别脑肿瘤,需要获得MRI图像并由专家手动分析以发现病变。这一过程需要时间,而且同一案例的专家内部和专家之间的差异也很大。为了克服这些问题,近年来提出了许多自动和半自动的方法来帮助从业者做出决策。深度学习方法的出现及其在图像分类等许多应用中的成功有助于促进深度学习在医学图像分析中的应用。在本文中,我们将介绍两种检测医学图像中脑肿瘤的方法。第一种是基于深度学习的U-net架构,该架构已经证明了其在图像分割方面的鲁棒性,尤其是医学图像。得到的结果将通过我们在另一篇文章[1]中发表的第二种方法进行比较,该方法使用LBP和k-means技术。通过计算类的相关性,利用马尔可夫方法对发现的类进行改进。比较是在相同的BraTS2019数据集[2]上进行的,这将使我们对每个数据集的性能有一个了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of medical images for the extraction of brain tumors: A comparative study between the Hidden Markov and Deep Learning approaches
Malignant brain tumors are one of the leading causes of death in adults and children. To identify a brain tumor, an MRI image is acquired and analyzed manually by an expert to find lesions. This procedure takes time and the intra and inter expert variations for the same case vary a lot. To overcome these problems, many automatic and semi-automatic methods have been proposed in recent years to help practitioners make decisions. The advent of Deep Learning methods and their success in many applications such as image classification has helped to promote Deep Learning in the analysis of medical images. In this paper, we will present two methods for the detection of brain tumors in medical images. The first is based on Deep Learning through the U-net architecture that has proven its robustness vis-vis the segmentation of images, especially medical images. The results obtained will be compared by a second method that we have published in another article [1], which uses LBP and k-means techniques. The classes found are improved using the Markov method, by calculating the class correlation. The comparison was made on the same BraTS2019 dataset [2], which will give us an idea of the performance of each.
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