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Comparison of classification methods for voxel-based prediction of acute ischemic stroke outcome following intra-arterial intervention

机译:动脉内干预后急性缺血性脑卒中结果基于体素的分类方法的比较

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Voxel-based tissue outcome prediction in acute ischemic stroke patients is highly relevant for both clinical routine and research. Previous research has shown that features extracted from baseline multi-parametric MRI datasets have a high predictive value and can be used for the training of classifiers, which can generate tissue outcome predictions for both intravenous and conservative treatments. However, with the recent advent and popularization of intra-arterial thrombectomy treatment, novel research specifically addressing the utility of predictive classifiers for thrombectomy intervention is necessary for a holistic understanding of current stroke treatment options. The aim of this work was to develop three clinically viable tissue outcome prediction models using approximate nearest-neighbor, generalized linear model, and random decision forest approaches and to evaluate the accuracy of predicting tissue outcome after intra-arterial treatment. Therefore, the three machine learning models were trained, evaluated, and compared using datasets of 42 acute ischemic stroke patients treated with intra-arterial thrombectomy. Classifier training utilized eight voxel-based features extracted from baseline MRI datasets and five global features. Evaluation of classifier-based predictions was performed via comparison to the known tissue outcome, which was determined in follow-up imaging, using the Dice coefficient and leave-on-patient-out cross validation. The random decision forest prediction model led to the best tissue outcome predictions with a mean Dice coefficient of 0.37. The approximate nearest-neighbor and generalized linear model performed equally sub-optimally with average Dice coefficients of 0.28 and 0.27 respectively, suggesting that both non-linearity and machine learning are desirable properties of a classifier well-suited to the intra-arterial tissue outcome prediction problem.
机译:基于体素的组织结果预测急性缺血性卒中患者对临床常规和研究具有高度相关性。以前的研究表明,从基线多参数MRI数据集提取的特征具有高预测值,可用于分类器的培训,这可以产生静脉内和保守治疗的组织结果预测。然而,随着近期动脉内血栓切除术治疗的出现和普及,专门针对当前中风治疗方案的整体理解是必要的新研究,具体寻求预测性术语的预测分类器的效用。这项工作的目的是使用近似最近邻,广义的线性模型和随机决策森林方法开发三种临床活组织结果预测模型,并评估动脉内治疗后预测组织结果的准确性。因此,使用用动脉内血栓形成术治疗的42例急性缺血性卒中患者的数据集进行培训,评估三种机器学习模型。分类器培训利用了从基线MRI数据集和五个全局功能中提取的八个基于体素的特征。通过与已知组织结果进行比较进行基于基于分类的预测的评估,其在随访成像中确定使用骰子系数和留下患者的交叉验证。随机决策森林预测模型导致了具有0.37的平均骰子系数的最佳组织结果预测。近似最近邻和广义线性模型的平均骰子系数分别为0.28和0.27的平均骰子系数,表明非线性和机器学习都是适合于动脉内组织结果预测的分类器的理想性质问题。

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