Deep neural networks for segmentation of basal ganglia sub-structures in brain MR images

Akshay Sethi, Akshat Sinha, Ayush Agarwal, Chetan Arora, Anubha Gupta
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Abstract

Automated segmentation of brain structure in magnetic resonance imaging (MRI) scans is an important first step in diagnosis of many neurological diseases. In this paper, we focus on segmentation of the constituent sub-structures of basal ganglia (BG) region of the brain that are responsible for controlling movement and routine learning. Low contrast voxels and undefined boundaries across sub-regions of BG pose a challenge for automated segmentation. We pose the segmentation as a voxel classification problem and propose a Deep Neural Network (DNN) based classifier for BG segmentation. The DNN is able to learn distinct regional features for voxel-wise classification of BG area into four sub-regions, namely, Caudate, Putamen, Pallidum, and Accumbens. We use a public dataset with a collection of 83 T-1 weighted uniform dimension structural MRI scans of healthy and diseased (Bipolar with and without Psychosis, Schizophrenia) subjects. In order to build a robust classifier, the proposed classifier has been trained on a mixed collection of healthy and diseased MRs. We report an accuracy of above 94% (as calculated using the dice coefficient) for all the four classes of healthy and diseased dataset.
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脑磁共振图像基底神经节亚结构的深度神经网络分割
磁共振成像(MRI)扫描中脑结构的自动分割是许多神经系统疾病诊断的重要第一步。在本文中,我们重点研究了脑基底神经节(BG)区域的组成亚结构的分割,该区域负责控制运动和日常学习。低对比度体素和未定义的BG子区域边界对自动分割提出了挑战。我们将分割作为一个体素分类问题,并提出了一个基于深度神经网络(DNN)的BG分割分类器。DNN能够学习不同的区域特征,将BG区域按体素分类为四个子区域,即尾状核、壳核、Pallidum和伏隔核。我们使用了一个公共数据集,其中收集了83个健康和患病(伴有和不伴有精神病、精神分裂症的双相情感障碍)受试者的T-1加权均匀维结构MRI扫描。为了建立一个鲁棒分类器,所提出的分类器已经在健康和患病夫人的混合集合上进行了训练,我们报告了所有四类健康和患病数据集的准确率超过94%(使用骰子系数计算)。
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