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Segmentation of intracerebral hemorrhage based on improved U-Net

机译:基于改进U形网的脑出血的分割

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Automatic medical image segmentation helps to diagnose and treat stroke timely. In this paper, it is proposing an improved U-Net neural network for the auxiliary diagnosis of intracerebral hemorrhage, which realizes the automatic segmentation of the hemorrhage on CT images. First, clustering the pixels of brain CT images into four categories: white matter, gray matter, cerebrospinal fluid, and hemorrhage by fuzzy C-means clustering method, then removing the skull by morphological image method, and finally proposing an improved U-Net neural network model to segment hemorrhage automatically. Experiments show that the dice similarity coefficient reaches 0.860 ± 0.031, which is better than the other methods. It dramatically improves the accuracy of segmentation for intracerebral hemorrhage.
机译:自动医学图像分割有助于及时诊断和治疗行程。本文提出了一种改进的U-Net神经网络,用于脑出血的辅助诊断,这实现了CT图像上出血的自动分割。首先,将脑CT图像的像素聚类为四类:白质,灰质,脑脊液,和出血通过模糊C-Means聚类方法,然后通过形态学图像方法去除头骨,最后提出改进的U-Net神经网络网络模型自动分割出血。实验表明,骰子相似度系数达到0.860±0.031,比其他方法更好。它显着提高了脑出血的分割的准确性。

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