基于深度学习网络的磁共振成像中痴呆的分割和严重程度分类

A. Sarath Vignesh, H. Denicke Solomon, P. Dheepan, G. Kavitha
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引用次数: 0

摘要

磁共振成像是分析大脑变形的公认标准。有许多生物标志物可用于分析阿尔茨海默病对大脑的影响。一个这样的生物标志物是在阿尔茨海默病进展过程中扩张的心室。脑室分割在诊断中起着至关重要的作用。自动分割方法是首选,因为人工分割需要更长的时间。在这项工作中,使用模糊c均值聚类和Chan-Vese轮廓技术的组合对磁共振图像进行颅骨剥离。利用深度学习架构、U-Net和SegUnet对来自ADNI (Alzheimer 's disease eneuroimaging Initiative)数据库的1164张横向MR图像进行脑室分割,该数据库是一个开展痴呆症研究的开源数据库。使用ResNet-101从分割后的图像中提取特征,并使用由3个分类器组成的分类器合并方法对其进行分类。最终的类标签是通过对单个分类器预测的多数投票获得的。对结果进行了比较和分析。
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Segmentation and Severity Classification of Dementia in Magnetic Resonance Imaging using Deep Learning Networks
Magnetic resonance imaging is the accepted standard for analyzing any deformation in brain. There are many biomarkers which can be considered for analyzing the effect of Alzheimer’s disease in brain. One such biomarker is the ventricle which expands during the progression of Alzheimer’s disease. Ventricle segmentation plays a vital role in the diagnosis. Automated segmentation approaches are preferred since manual segmentation takes a longer time. In this work, the magnetic resonance images are skull stripped using a combination of Fuzzy C-means clustering and the Chan-Vese contouring technique. segmentation of ventricle is performed by deep learning architectures, U-Net and SegUnet on 1164 transverse MR images acquired from ADNI (Alzheimer’s DiseaseNeuroimaging Initiative) database which is an open-source database for carrying researches on Dementia. The features are extracted from the segmented images using ResNet-101 and they are classified using a classifier merger approach which consists of 3 classifiers. The final class label is obtained by majority voting on the individual classifier predictions. The results were compared and analyzed.
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