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A Radiomics-Based Machine Learning Approach to Assess Collateral Circulation in Ischemic Stroke on Non-contrast Computed Tomography

机译:基于射频的机器学习方法,以评估缺血性脑卒中的抵押品血液循环对非对比计算断层扫描的影响

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摘要

Assessment of collateral circulation in ischemic stroke, which can identify patients for the most appropriate treatment strategies, is currently conducted with visual inspection by a radiologist. Yet numerous studies have shown that visual inspection suffers from inter and intra-rater variability. We present an automatic evaluation of collaterals using radiomic features and machine learning based on the ASPECTS scoring terminology with non-contrast computed tomography (NCCT). The method includes ASPECTS regions identification, extraction of radiomic features, and classification of collateral scores with support vector machines (SVM). Experiments are performed on a dataset of 64 ischemic stroke patients to classify collateral circulation as good, intermediate, or poor and yield an overall area under the curve (AUC) of 0.86 with an average sensitivity of 80.33% and specificity of 79.33%. Thus, we show the feasibility of using automatic evaluation of collateral circulation using NCCT when compared to the ASPECTS score by radiologists using 4D CT angiography as ground truth.
机译:评估缺血性卒中中的抵押品血液循环,可以识别患者为最合适的治疗策略,目前通过放射科医师进行视觉检查。然而,许多研究表明,目视检查遭受间隙和帧内变异性。我们通过基于非对比计算断层扫描(NCCT)的术语评分术语来介绍使用射线特征和机器学习的抵押品的自动评估。该方法包括方面区域鉴定,提取射线特征,以及带有支撑载体机(SVM)的侧支分数的分类。对64例缺血性卒中患者的数据集进行实验,以将侧支循环分类为良好,中间体或差,并在0.86的曲线(AUC)下产生整体区域,平均敏感性为80.33%,特异性为79.33%。因此,当使用4D CT血管造影使用4D CT血管造影作为地面真理时,我们展示了使用NCCT使用NCCT自动评估抵押循环的可行性。

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