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Automatic classification of cardioembolic and arteriosclerotic ischemic strokes from apparent diffusion coefficient datasets using texture analysis and deep learning

机译:从纹理分析和深度学习自动分类表观扩散系数数据集的心脏栓塞和动脉粥样硬化缺血性冲程

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Stroke is a leading cause of death and disability in the western hemisphere. Acute ischemic strokes can be broadly classified based on the underlying cause into atherosclerotic strokes, cardioembolic strokes, small vessels disease, and stroke with other causes. The ability to determine the exact origin of an acute ischemic stroke is highly relevant for optimal treatment decision and preventing recurrent events. However, the differentiation of atherosclerotic and cardioembolic phenotypes can be especially challenging due to similar appearance and symptoms. The aim of this study was to develop and evaluate the feasibility of an image-based machine learning approach for discriminating between arteriosclerotic and cardioembolic acute ischemic strokes using 56 apparent diffusion coefficient (ADC) datasets from acute stroke patients. For this purpose, acute infarct lesions were semi-atomically segmented and 30,981 geometric and texture image features were extracted for each stroke volume. To improve the performance and accuracy, categorical Pearson's x~2 test was used to select the most informative features while removing redundant attributes. As a result, only 289 features were finally included for training of a deep multilayer feed-forward neural network without bootstrapping. The proposed method was evaluated using a leave-one-out cross validation scheme. The proposed classification method achieved an average area under receiver operator characteristic curve value of 0.93 and a classification accuracy of 94.64%. These first results suggest that the proposed image-based classification framework can support neurologists in clinical routine differentiating between atherosclerotic and cardioembolic phenotypes.
机译:中风是西半球死亡和残疾的主要原因。急性缺血卒中可以基于潜在的原因在动脉粥样硬化中风,心脏栓塞中风,小血管疾病和其他原因中卒中的基础上分类。确定急性缺血性卒中的确切来源的能力对于最佳治疗决策和预防复发事件具有高度相关。然而,由于类似的外观和症状,动脉粥样硬化和心脏栓塞表型的分化可能是特别挑战。本研究的目的是开发和评估基于图像的机器学习方法的可行性,用于使用来自急性中风患者的56个表观扩散系数(ADC)数据集在动脉粥样硬化和心脏病急性缺血性缺血性血症症之间进行歧视。为此目的,急性梗塞病变是半原子分段,并且针对每个行程体积提取30,981个几何和纹理图像特征。为了提高性能和准确性,分类Pearson的X〜2测试用于在删除冗余属性时选择最具信息性的功能。因此,最终仅包括289个功能以培训深层多层前馈神经网络而无需自动启动。使用休假交叉验证方案评估所提出的方法。所提出的分类方法在接收器操作员特征曲线值下实现平均面积为0.93,分类精度为94.64%。这些第一个结果表明,所提出的基于形象的分类框架可以支持临床常规中的神经科学家,区分动脉粥样硬化和心脏栓塞表型。

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