首页> 外文期刊>Stroke: A Journal of Cerebral Circulation >Clot-Based Radiomics Predict a Mechanical Thrombectomy Strategy for Successful Recanalization in Acute Ischemic Stroke
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Clot-Based Radiomics Predict a Mechanical Thrombectomy Strategy for Successful Recanalization in Acute Ischemic Stroke

机译:基于凝块的射线瘤预测急性缺血性卒中成功再生的机械血栓切除术策略

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Background and Purpose: Mechanical thrombectomy (MTB) is a reference treatment for acute ischemic stroke, with several endovascular strategies currently available. However, no quantitative methods are available for the selection of the best endovascular strategy or to predict the difficulty of clot removal. We aimed to investigate the predictive value of an endovascular strategy based on radiomic features extracted from the clot on preinterventional, noncontrast computed tomography to identify patients with first-attempt recanalization with thromboaspiration and to predict the overall number of passages needed with an MTB device for successful recanalization. Methods: We performed a study including 2 cohorts of patients admitted to our hospital: a retrospective training cohort (n=109) and a prospective validation cohort (n=47). Thrombi were segmented on noncontrast computed tomography, followed by the automatic computation of 1485 thrombus-related radiomic features. After selection of the relevant features, 2 machine learning models were developed on the training cohort to predict (1) first-attempt recanalization with thromboaspiration and (2) the overall number of passages with MTB devices for successful recanalization. The performance of the models was evaluated on the prospective validation cohort. Results: A small subset of radiomic features (n=9) was predictive of first-attempt recanalization with thromboaspiration (receiver operating characteristic curve-area under the curve, 0.88). The same subset also predicted the overall number of passages required for successful recanalization (explained variance, 0.70; mean squared error, 0.76; Pearson correlation coefficient, 0.73;P<0.05). Conclusions: Clot-based radiomics have the ability to predict an MTB strategy for successful recanalization in acute ischemic stroke, thus allowing a potentially better selection of the MTB strategy, as well as patients who are most likely to benefit from the intervention.
机译:背景和目的:机械血栓切除术(MTB)是急性缺血性卒中的参考处理,目前可用几种血管内策略。然而,没有定量方法可以选择最佳的血管造型策略或预测凝块去除的难度。我们的旨在探讨基于从凝固的凝结性的射频特征的血管内策略的预测值,非转换计算断层摄影,以识别血栓抽吸首次重新重新化的患者,并预测MTB设备成功的MTB设备所需的总数重新化。方法:我们进行了一项研究,其中包括2名患者的一项患者,录取了我们的医院:回顾性培训队列(n = 109)和前瞻性验证队列(n = 47)。血栓在非共同塔上的计算断层扫描上进行分段,然后自动计算1485血栓相关的射域特征。在选择相关特征后,在培训队列中开发了2种机器学习模型,以预测(1)用绞动器的首次重新重新化,(2)MTB器件的总段数以成功重新定义。在预期验证队列中评估了模型的性能。结果:缩小的射线特征(n = 9)的小副尝试重新重新分布与血栓抽吸(曲线下的接收器操作特性曲线区)预测。相同的子集还预测了成功重新化所需的总数(解释的方差,0.70;平均平方误差,0.76; Pearson相关系数,0.73; P <0.05)。结论:基于凝块的射线学有能力预测急性缺血性卒中成功重新化的MTB策略,从而允许潜在更好地选择MTB策略,以及最有可能从干预中受益的患者。

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