A Machine Learning Approach to Predict Acute Ischemic Stroke Thrombectomy Reperfusion using Discriminative MR Image Features.

Haoyue Zhang, Jennifer Polson, Kambiz Nael, Noriko Salamon, Bryan Yoo, William Speier, Corey Arnold
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引用次数: 3

Abstract

Mechanical thrombectomy (MTB) is one of the two standard treatment options for Acute Ischemic Stroke (AIS) patients. Current clinical guidelines instruct the use of pretreatment imaging to characterize a patient's cerebrovascular flow, as there are many factors that may underlie a patient's successful response to treatment. There is a critical need to leverage pretreatment imaging, taken at admission, to guide potential treatment avenues in an automated fashion. The aim of this study is to develop and validate a fully automated machine learning algorithm to predict the final modified thrombolysis in cerebral infarction (mTICI) score following MTB. A total 321 radiomics features were computed from segmented pretreatment MRI scans for 141 patients. Successful recanalization was defined as mTICI score >= 2c. Different feature selection methods and classification models were examined in this study. Our best performance model achieved 74.42±2.52% AUC, 75.56±4.44% sensitivity, and 76.75±4.55% specificity, showing a good prediction of reperfusion quality using pretreatment MRI. Results suggest that MR images can be informative to predicting patient response to MTB, and further validation with a larger cohort can determine the clinical utility.

基于判别性MR图像特征预测急性缺血性卒中取栓再灌注的机器学习方法。
机械取栓(MTB)是急性缺血性卒中(AIS)患者的两种标准治疗方案之一。目前的临床指南指导使用预处理成像来表征患者的脑血管血流,因为有许多因素可能是患者对治疗成功反应的基础。目前迫切需要利用入院时的预处理成像,以自动化的方式指导潜在的治疗途径。本研究的目的是开发和验证一种全自动机器学习算法,以预测MTB后脑梗死后的最终改良血栓溶解(mTICI)评分。从141例患者的分割预处理MRI扫描中计算出总共321个放射组学特征。再通成功定义为mTICI评分>= 2c。本研究考察了不同的特征选择方法和分类模型。我们的最佳性能模型AUC为74.42±2.52%,灵敏度为75.56±4.44%,特异性为76.75±4.55%,可以很好地预测MRI预处理后的再灌注质量。结果表明,MR图像可以为预测患者对MTB的反应提供信息,并且通过更大的队列进一步验证可以确定临床效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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