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Extracting and summarizing white matter hyperintensities using supervised segmentation methods in Alzheimer’s disease risk and aging studies

机译:在阿尔茨海默氏病风险和衰老研究中使用监督性分割方法提取和总结白质高信号

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摘要

Precise detection and quantification of white matter hyperintensities (WMH) observed in T2–weighted Fluid Attenuated Inversion Recovery (FLAIR) Magnetic Resonance Images (MRI) is of substantial interest in aging, and age related neurological disorders such as Alzheimer’s disease (AD). This is mainly because WMH may reflect comorbid neural injury or cerebral vascular disease burden. WMH in the older population may be small, diffuse and irregular in shape, and sufficiently heterogeneous within and across subjects. Here, we pose hyperintensity detection as a supervised inference problem and adapt two learning models, specifically, Support Vector Machines and Random Forests, for this task. Using texture features engineered by texton filter banks, we provide a suite of effective segmentation methods for this problem. Through extensive evaluations on healthy middle–aged and older adults who vary in AD risk, we show that our methods are reliable and robust in segmenting hyperintense regions. A measure of hyperintensity accumulation, referred to as normalized Effective WMH Volume, is shown to be associated with dementia in older adults and parental family history in cognitively normal subjects. We provide an open source library for hyperintensity detection and accumulation (interfaced with existing neuroimaging tools), that can be adapted for segmentation problems in other neuroimaging studies.
机译:在T2加权流体衰减倒置恢复(FLAIR)磁共振图像(MRI)中观察到的白质高强度(WMH)的精确检测和定量,对于衰老以及与年龄相关的神经系统疾病(例如阿尔茨海默氏病(AD))具有重大意义。这主要是因为WMH可能反映了合并性神经损伤或脑血管疾病负担。年龄较大的人群中的WMH可能很小,分散且形状不规则,并且在受试者内和受试者之间足够异质。在这里,我们将高强度检测作为监督推理问题提出,并针对此任务采用了两种学习模型,特别是支持向量机和随机森林。使用texton滤波器组设计的纹理特征,我们为该问题提供了一套有效的分割方法。通过对罹患AD风险变化的健康中老年人的广泛评估,我们证明了我们的方法在分割高强度区域方面是可靠且可靠的。高强度积累的一种测量值,被称为归一化有效WMH量,显示与老年人的痴呆症和认知正常受试者的父母家族史有关。我们提供了一个用于高强度检测和累积(与现有的神经影像工具接口)的开源库,该库可适用于其他神经影像研究中的分割问题。

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