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Heterogeneity of structural and functional imaging patterns of advanced brain aging revealed via machine learning methods

机译:通过机器学习方法揭示高级大脑衰老的结构和功能成像模式的异质性

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摘要

Disentangling the heterogeneity of brain aging in cognitively normal older adults is challenging, as multiple co-occurring pathologic processes result in diverse functional and structural changes. Capitalizing on machine learning methods applied to magnetic resonance imaging data from 400 participants aged 50 to 96 years in the Baltimore Longitudinal Study of Aging, we constructed normative crosssectional brain aging trajectories of structural and functional changes. Deviations from typical trajectories identified individuals with resilient brain aging and multiple subtypes of advanced brain aging. We identified 5 distinct phenotypes of advanced brain aging. One group included individuals with relatively extensive structural and functional loss and high white matter hyperintensity burden. Another subgroup showed focal hippocampal atrophy and lower posterior-cingulate functional coherence, low white matter hyperintensity burden, and higher medial-temporal connectivity, potentially reflecting high brain tissue reserve counterbalancing brain loss that is consistent with early stages of Alzheimer’s disease. Other subgroups displayed distinct patterns. These results indicate that brain changes should not be measured seeking a single signature of brain aging but rather via methods capturing heterogeneity and subtypes of brain aging. Our findings inform future studies aiming to better understand the neurobiological underpinnings of brain aging imaging patterns.
机译:解开认知正常的成年人大脑衰老的异质性具有挑战性,因为多种共同发生的病理过程导致功能和结构的变化。在巴尔的摩纵向老龄化研究中,利用机器学习方法将40位年龄在50至96岁的参与者的磁共振成像数据应用于机器学习,我们构建了结构和功能变化的规范性横断面大脑衰老轨迹。与典型轨迹的偏差表明个体具有弹性的大脑衰老和晚期大脑衰老的多种亚型。我们确定了高级脑衰老的5个不同的表型。一组包括具有相对广泛的结构和功能丧失以及高白质高强度负担的个体。另一个亚组显示局灶性海马萎缩和后扣带回功能低下,白质高信号负担低,内侧-颞部连接性较高,这可能反映了高脑组织储备平衡了脑部丧失,这与阿尔茨海默氏病的早期阶段是一致的。其他子组显示出不同的模式。这些结果表明,不应通过寻求大脑衰老的单一特征来测量大脑变化,而应通过捕获大脑衰老的异质性和亚型的方法进行测量。我们的发现为将来的研究提供了参考,旨在更好地了解大脑衰老成像模式的神经生物学基础。

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