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Automated detection of imaging features of disproportionately enlarged subarachnoid space hydrocephalus using machine learning methods

机译:使用机器学习方法自动检测不成比例扩大的蛛网膜下腔积水的成像特征

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ObjectiveCreate an automated classifier for imaging characteristics of disproportionately enlarged subarachnoid space hydrocephalus (DESH), a neuroimaging phenotype of idiopathic normal pressure hydrocephalus (iNPH).Methods1597 patients from the Mayo Clinic Study of Aging (MCSA) were reviewed for imaging characteristics of DESH. One core feature of DESH, the presence of tightened sulci in the high-convexities (THC), was used as a surrogate for the presence of DESH as the expert clinician-defined criterion on which the classifier was trained. Anatomical MRI scans were automatically segmented for cerebrospinal fluid (CSF) and overlaid with an atlas of 123 named sulcal regions. The volume of CSF in each sulcal region was summed and normalized to total intracranial volume. Area under the receiver operating characteristic curve (AUROC) values were computed for each region individually, and these values determined feature selection for the machine learning model. Due to class imbalance in the data (72 selected scans out of 1597 total scans) adaptive synthetic sampling (a technique which generates synthetic examples based on the original data points) was used to balance the data. A support vector machine model was then trained on the regions selected.ResultsUsing the automated classification model, we were able to classify scans for tightened sulci in the high convexities, as defined by the expert clinician, with an AUROC of about 0.99 (false negative ≈ 2%, false positive ≈ 5%). Ventricular volumes were among the classifier's most discriminative features but are not specific for DESH. The inclusion of regions outside the ventricles allowed specificity from atrophic neurodegenerative diseases that are also accompanied by ventricular enlargement.ConclusionAutomated detection of tight high convexity, a key imaging feature of DESH, is possible by using support vector machine models with selected sulcal CSF volumes as features.
机译:目的建立自动分类器,对特发性正常压力脑积水(iNPH)的神经影像学表现不成比例的蛛网膜下腔积水(DESH)的影像学特征进行研究。 DESH的一个核心特征,即高凸度(THC)中紧缩的沟渠的存在,被用来代替DESH的存在,这是训练分类器的专业医生定义的标准。解剖MRI扫描会自动进行脑脊液(CSF)分割,并覆盖123个命名的龈沟图集。将每个沟渠区域的CSF体积相加并归一化为总颅内体积。分别针对每个区域计算接收器工作特性曲线(AUROC)值下方的面积,这些值确定了机器学习模型的特征选择。由于数据类别不平衡(从1597次总扫描中选择了72个扫描),自适应合成采样(一种基于原始数据点生成合成示例的技术)被用来平衡数据。然后在选择的区域上训练一个支持向量机模型。结果使用自动分类模型,我们能够对高凸处的收紧龈沟的扫描进行分类,如专家临床医生所定义,AUROC约为0.99(假阴性2%,假阳性≈5%)。心室容积是分类器最具有区别性的特征之一,但并非特定于DESH。脑室外区域的包容可导致萎缩性神经退行性疾病的特异性,并伴有脑室扩大。结论使用支持向量机模型以选定的脑脊液容积为特征,可以自动检测紧密的高凸度,这是DESH的关键影像学特征。

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