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A multi-modal, multi-atlas-based approach for Alzheimer detection via machine learning

机译:通过机器学习进行阿尔茨海默病检测的多模式,多图谱方法

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The use of biomarkers for early detection of Alzheimer's disease (AD) improves the accuracy of imaging-based prediction of AD and its prodromal stage that is mild cognitive impairment (MCI). Brain parcellation-based computer-aided methods for detecting AD and MCI segregate the brain in different anatomical regions and use their features to predict AD and MCI. Brain parcellation generally is carried out based on existing anatomical atlas templates, which vary in the boundaries and number of anatomical regions. This works considers dividing the brain based on different atlases and combining the features extracted from these anatomical parcellations for a more holistic and robust representation. We collected data from the ADNI database and divided brains based on two well-known atlases: LONI Probabilistic Brain Atlas (LPBA40) and Automated Anatomical Labeling (AAL). We used baselines images of structural magnetic resonance imaging (MRI) and F-18-fluorodeoxyglucose positron emission tomography (FDG-PET) to calculate average gray-matter density and average relative cerebral metabolic rate for glucose in each region. Later, we classified AD, MCI and cognitively normal (CN) subjects using the individual features extracted from each atlas template and the combined features of both atlases. We reduced the dimensionality of individual and combined features using principal component analysis, and used support vector machines for classification. We also ranked features mostly involved in classification to determine the importance of brain regions for accurately classifying the subjects. Results demonstrated that features calculated from multiple atlases lead to improved performance compared to those extracted from one atlas only.
机译:使用生物标记物早期检测阿尔茨海默氏病(AD)可以提高基于影像的AD预测及其轻度认知障碍(MCI)的前驱阶段的准确性。用于检测AD和MCI的基于脑分裂的计算机辅助方法将大脑隔离在不同的解剖区域中,并使用其功能预测AD和MCI。通常,基于现有的解剖图谱模板进行脑分割,所述解剖图谱模板在解剖区域的边界和数量上有所不同。这项工作考虑了根据不同的图谱对大脑进行划分,并结合从这些解剖学单元中提取的特征,以实现更全面,更可靠的表示。我们从ADNI数据库收集了数据,并根据两个著名的图集对大脑进行了划分:LONI概率脑图集(LPBA40)和自动解剖标记(AAL)。我们使用结构磁共振成像(MRI)和F-18-氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)的基线图像来计算每个区域中葡萄糖的平均灰质密度和平均相对脑代谢率。后来,我们使用从每个图集模板中提取的单个特征以及两个图集的组合特征对AD,MCI和认知正常(CN)受试者进行了分类。我们使用主成分分析降低了单个特征和组合特征的维数,并使用了支持向量机进行分类。我们还对主要涉及分类的要素进行了排名,以确定大脑区域对准确分类对象的重要性。结果表明,与仅从一个图集提取的特征相比,从多个图集计算的特征可提高性能。

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