Modrau Boris, Winder Anthony, Hjort Niels, Johansen Martin Nygård, Andersen Grethe, Fiehler Jens, Vorum Henrik, Forkert Nils D
Department of Neurology, Aalborg University Hospital, Aalborg, Denmark.
Departments of Radiology & Clinical Neurosciences, University of Calgary, Calgary, AB, Canada.
Front Neurol. 2021 May 21;12:613029. doi: 10.3389/fneur.2021.613029. eCollection 2021.
The theophylline in acute ischemic stroke trial investigated the neuroprotective effect of theophylline as an add-on to thrombolytic therapy in patients with acute ischemic stroke. The aim of this pre-planned subgroup analysis was to use predictive modeling to virtually test for differences in the follow-up lesion volumes. A subgroup of 52 patients from the theophylline in acute ischemic stroke trial with multi-parametric MRI data acquired at baseline and at 24-h follow-up were analyzed. A machine learning model using voxel-by-voxel information from diffusion- and perfusion-weighted MRI and clinical parameters was used to predict the infarct volume for each individual patient and both treatment arms. After training of the two predictive models, two virtual lesion outcomes were available for each patient, one lesion predicted for theophylline treatment and one lesion predicted for placebo treatment. The mean predicted volume of follow-up lesions was 11.4 ml (standard deviation 18.7) for patients virtually treated with theophylline and 11.2 ml (standard deviation 17.3) for patients virtually treated with placebo ( = 0.86). The predicted follow-up brain lesions for each patient were not significantly different for patients virtually treated with theophylline or placebo, as an add-on to thrombolytic therapy. Thus, this study confirmed the lack of neuroprotective effect of theophylline shown in the main clinical trial and is contrary to the results from preclinical stroke models.
急性缺血性卒中试验中的茶碱研究了茶碱作为急性缺血性卒中患者溶栓治疗附加药物的神经保护作用。这项预先计划的亚组分析旨在使用预测模型对随访病变体积的差异进行虚拟测试。对急性缺血性卒中试验中的52例患者亚组进行了分析,这些患者在基线和24小时随访时获取了多参数MRI数据。使用一种机器学习模型,该模型利用来自扩散加权和灌注加权MRI的逐体素信息以及临床参数来预测每个患者和两个治疗组的梗死体积。在训练这两个预测模型后,每个患者有两个虚拟病变结果,一个是预测的茶碱治疗病变,一个是预测的安慰剂治疗病变。虚拟接受茶碱治疗的患者随访病变的平均预测体积为11.4毫升(标准差18.7),虚拟接受安慰剂治疗的患者为11.2毫升(标准差17.3)(P = 0.86)。作为溶栓治疗的附加药物,虚拟接受茶碱或安慰剂治疗的患者的预测随访脑病变无显著差异。因此,本研究证实了主要临床试验中显示的茶碱缺乏神经保护作用,这与临床前卒中模型的结果相反。