From the Department of Radiology (K.N., E.T., A.M., A.H.D.), Neuroimaging Advanced and Exploratory Lab
From the Department of Radiology (K.N., E.T., A.M., A.H.D.), Neuroimaging Advanced and Exploratory Lab.
AJNR Am J Neuroradiol. 2019 Sep;40(9):1491-1497. doi: 10.3174/ajnr.A6170. Epub 2019 Aug 14.
The Bayesian probabilistic method has shown promising results to offset noise-related variability in perfusion analysis. Using CTP, we aimed to find optimal Bayesian-estimated thresholds based on multiparametric voxel-level models to estimate the ischemic core in patients with acute ischemic stroke.
Patients with anterior circulation acute ischemic stroke who had baseline CTP and achieved successful recanalization were included. In a subset of patients, multiparametric voxel-based models were constructed between Bayesian-processed CTP maps and follow-up MRIs to identify pretreatment CTP parameters that were predictive of infarction using robust logistic regression. Subsequently CTP-estimated ischemic core volumes from our Bayesian model were compared against routine clinical practice oscillation singular value decomposition-relative cerebral blood flow <30%, and the volumetric accuracy was assessed against final infarct volume.
In the constructed multivariate voxel-based model, 4 variables were identified as independent predictors of infarction: TTP, relative CBF, differential arterial tissue delay, and differential mean transit time. At an optimal cutoff point of 0.109, this model identified infarcted voxels with nearly 80% accuracy. The limits of agreement between CTP-estimated ischemic core and final infarct volume ranged from -25 to 27 mL for the Bayesian model, compared with -61 to 52 mL for oscillation singular value decomposition-relative CBF.
We established thresholds for the Bayesian model to estimate the ischemic core. The described multiparametric Bayesian-based model improved consistency in CTP estimation of the ischemic core compared with the methodology used in current clinical routine.
贝叶斯概率方法已显示出有希望的结果,可以抵消灌注分析中与噪声相关的可变性。使用 CTP,我们旨在根据多参数体素级模型找到最佳的贝叶斯估计阈值,以估计急性缺血性脑卒中患者的缺血核心。
纳入了具有基线 CTP 且实现成功再通的前循环急性缺血性脑卒中患者。在患者的亚组中,构建了贝叶斯处理 CTP 图与随访 MRI 之间的多参数体素级模型,以使用稳健逻辑回归确定预测梗塞的预处理 CTP 参数。随后,将我们的贝叶斯模型从 CTP 估计的缺血核心体积与常规临床实践中的振荡奇异值分解-相对脑血流量<30%进行比较,并根据最终梗塞体积评估容积准确性。
在构建的多变量体素模型中,有 4 个变量被确定为梗塞的独立预测因子:TTP、相对 CBF、动脉组织延迟差异和平均通过时间差异。在最佳截断点 0.109 处,该模型识别出梗塞的体素的准确性接近 80%。与振荡奇异值分解-相对 CBF 的-61 至 52 mL 相比,贝叶斯模型的 CTP 估计缺血核心与最终梗塞体积之间的一致性范围为-25 至 27 mL。
我们建立了贝叶斯模型估计缺血核心的阈值。与当前临床常规中使用的方法相比,描述的基于多参数贝叶斯的模型提高了 CTP 估计缺血核心的一致性。