基于注意力U-Net结构的胼胝体MRI扫描分割

Missba Khanam, K. Moria
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引用次数: 0

摘要

本文提出并实现了一种基于注意力u -net的脑磁共振成像(MRI)扫描胼胝体(CC)语义分割的深度学习方法。大多数神经学分析从脑MRI图像的分割中获得的结构数据中获益良多。该技术具有深度监督编码器-解码器架构和重新设计的注意力网络。该模型逐片分析整个MRI图像,以确定理想的胼胝体掩膜。该模型使用ABIDE和OASIS数据集进行训练,并使用骰子系数的标准度量对不同测试样本的性能进行了分析,得到了93.5%的骰子准确率。给出了脑MRI预测CC的视觉样本,并与原始的基础事实进行了对比,以帮助理解模型的性能。研究结果表明,所建议的方法是最好的分割技术之一,因为即使使用单个模型,它也能获得非常有竞争力的CC分割性能。
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 Corpus Callosum using Attention U-Net Architecture for MRI Scan
In this paper, an attention U-net-based deep learning method for the semantic segmentation of the corpus callosum (CC) from brain Magnetic Resonance Imaging (MRI) scans is proposed and implemented. Most neurological analyses benefit greatly from the structural data that can be obtained from the segmentation of brain MRI images. The proposed technique has a deep supervised encoder-decoder architecture and a redesigned attention network. Slice by slice, the model analyzes an entire MRI image to determine the ideal mask for corpus callosum. The model was trained using the ABIDE and OASIS datasets, and its performance was analyzed for different test samples using a standard measure of dice coefficient, yielding a dice accuracy of 93.5%. Visual samples of predicted CC from brain MRI are given and contrasted with the original ground truth to help understand how well the model performs. The findings demonstrate that the suggested approach is one of the best segmentation techniques, as it achieved very competitive CC segmentation performance even with a single model.
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