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首页> 外文期刊>american journal of neuroradiology >Hippocampal shape analysis of Alzheimer disease based on machine learning methods
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Hippocampal shape analysis of Alzheimer disease based on machine learning methods

机译:基于机器学习方法的阿尔茨海默病海马形状分析

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abstract_textpBACKGROUND AND PURPOSE: Alzheimer disease (AD) is a neurodegenerative disease characterized by progressive dementia. The hippocampus is particularly vulnerable to damage at the very earliest stages of AD. This article seeks to evaluate critical AD-associated regional changes in the hippocampus using machine learning methods./ppMATERIALS AND METHODS: High-resolution MR images were acquired from 19 patients with AD and 20 age- and sex-matched healthy control subjects. Regional changes of bilateral hippocampi were characterized using computational anatomic mapping methods. A feature selection method for support vector machine and leave-1-out cross-validation was introduced to determine regional shape differences that minimized the error rate in the datasets./ppRESULTS: Patients with AD showed significant deformations in the CA1 region of bilateral hippocampi, as well as the subiculum of the left hippocampus. There were also some changes in the CA2-4 subregions of the left hippocampus among patients with AD. Moreover, the left hippocampal surface showed greater variations than the right compared with those in healthy control subjects. The accuracies of leave-1-out cross-validation and 3-fold cross-validation experiments for assessing the reliability of these subregions were more than 80 in bilateral hippocampi./ppCONCLUSION: Subtle and spatially complex deformation patterns of hippocampus between patients with AD and healthy control subjects can be detected by machine learning methods./p/abstract_text
机译:背景和目的:阿尔茨海默病(AD)是一种以进行性痴呆为特征的神经退行性疾病。海马体在AD的早期阶段特别容易受到损害。本文旨在使用机器学习方法评估海马体中与AD相关的关键区域变化。材料和方法: 从 19 名 AD 患者和 20 名年龄和性别匹配的健康对照受试者中获取高分辨率 MR 图像。采用计算解剖图谱方法表征双侧海马的区域变化。引入支持向量机和留出交叉验证的特征选择方法,以确定区域形状差异,从而最大限度地降低数据集中的错误率。结果:AD患者双侧海马CA1区以及左侧海马下体明显变形。AD患者左侧海马的CA2-4亚区也发生了一些变化。此外,与健康对照组相比,左侧海马表面比右侧海马表面表现出更大的变化。在双侧海马体中,留出 1 个交叉验证和 3 个交叉验证实验评估这些亚区可靠性的准确率超过 80%。结论:通过机器学习方法可以检测AD患者与健康对照受试者之间微妙且空间复杂的海马体变形模式。

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