Hippocampus segmentation in MR brain images using learned fuzzy mask and U-Net

Alireza Sadeghi, Hassan Khutanlou
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Abstract

The hippocampus is an important part of the human brain that is damaged in some diseases such as Alzheimer's, schizophrenia, and epilepsy. This paper presents a new method in hippocampus segmentation which is applicable in the early diagnosis of mentioned diseases. This method has introduced a two-section model to detect the hippocampus region in brain MR images. In the first section, the location of the hippocampus is roughly detected using a U-Net neural network model, and then a fuzzy mask is created around the detected area using a fuzzy function. In the second section, this mask is applied to the brain images and a U-Net neural network is used to segment these masked images, which finally predicts the location of the hippocampus. The main advantage and idea of this method is the use of a pre-trained fuzzy mask, which increases the quality of segmentation. The proposed method in this research was trained and tested using the HARP dataset, which contains 135 T1-weighted MRI volumes and the proposed model reached 0.95 dice in the best case.
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基于学习模糊掩模和U-Net的MR脑图像海马分割
海马体是人类大脑的一个重要部分,在阿尔茨海默氏症、精神分裂症和癫痫等一些疾病中受损。本文提出了一种新的海马分割方法,可用于上述疾病的早期诊断。该方法引入了两段模型来检测脑磁共振图像中的海马区。在第一部分中,使用U-Net神经网络模型粗略检测海马的位置,然后使用模糊函数在检测区域周围创建模糊掩模。在第二部分中,将该掩模应用于大脑图像,并使用U-Net神经网络对这些掩模图像进行分割,最终预测海马的位置。该方法的主要优点和思想是使用预训练的模糊掩模,提高了分割质量。本研究中提出的方法使用包含135个t1加权MRI体积的HARP数据集进行训练和测试,在最佳情况下提出的模型达到0.95 dice。
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