Early diagnosis of dementia based on intersubject whole-brain dissimilarities

S. Klein, M. Loog, F. Lijn, T. Heijer, A. Hammers, Marleen de Bruijne, A. Lugt, R. Duin, M. Breteler, W. Niessen
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引用次数: 38

Abstract

This article studies the possibility of detecting dementia in an early stage, using nonrigid registration of MR brain scans in combination with dissimilarity-based pattern recognition techniques. Instead of focussing on the shape of a single brain structure, we take into account the shape differences within the entire brain. Imaging data was obtained from a longitudinal, population based study of the elderly. A set of 29 subjects was identified, who were asymptomatic at the time of scanning, but were diagnosed as having dementia within 0.7 to 5 years after the scan, and a set of 29 age and gender matched healthy controls were selected. Each subject was registered to all other subjects, using a nonrigid registration algorithm. Based on statistics of the deformation field in the brain, a dissimilarity measure was calculated between each pair of subjects, yielding a 58×58 dissimilarity matrix. A kNN classifier was trained on the dissimilarity matrix and the performance was tested in a leave-one-out experiment. A classification accuracy of 81% was attained (spec. 83%, sens. 79%). This demonstrates the potential of whole-brain intersubject dissimilarities to aid in early diagnosis of dementia.
基于主体间全脑差异的痴呆早期诊断
本文研究了在早期阶段检测痴呆症的可能性,使用磁共振脑扫描的非刚性注册结合基于差异的模式识别技术。我们没有关注单一大脑结构的形状,而是考虑了整个大脑的形状差异。影像学数据来自一项以老年人为基础的纵向研究。确定了29名受试者,他们在扫描时无症状,但在扫描后0.7至5年内被诊断为患有痴呆症,并选择了29名年龄和性别匹配的健康对照组。使用非刚性配准算法将每个受试者与所有其他受试者进行配准。根据大脑变形场的统计数据,计算每对受试者之间的不相似度,得出58×58不相似矩阵。在不相似矩阵上训练了kNN分类器,并在留一实验中对其性能进行了测试。分类准确率为81%(规范83%,传感器79%)。这证明了全脑主体间差异有助于早期诊断痴呆症的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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