Jabal Mohamed Sobhi, Joly Olivier, Kallmes David, Harston George, Rabinstein Alejandro, Huynh Thien, Brinjikji Waleed
Department of Radiology, Mayo Clinic, Rochester, MN, United States.
Brainomix Limited, Oxford, United Kingdom.
Front Neurol. 2022 May 19;13:884693. doi: 10.3389/fneur.2022.884693. eCollection 2022.
Mechanical thrombectomy greatly improves stroke outcomes. Nonetheless, some patients fall short of full recovery despite good reperfusion. The purpose of this study was to develop machine learning (ML) models for the pre-interventional prediction of functional outcome at 3 months of thrombectomy in acute ischemic stroke (AIS), using clinical and auto-extractable radiological information consistently available upon first emergency evaluation.
A two-center retrospective cohort of 293 patients with AIS who underwent thrombectomy was analyzed. ML models were developed to predict dichotomized modified Rankin score at 90 days (mRS-90) using clinical and imaging features, both separately and combined. Conventional and experimental imaging biomarkers were quantified using automated image-processing software from non-contract computed tomography (CT) and computed tomography angiography (CTA). Shapley Additive Explanation (SHAP) was applied for model interpretability and predictor importance analysis of the optimal model.
Merging clinical and imaging features returned the best results for mRS-90 prediction. The best performing classifier was Extreme Gradient Boosting (XGB) with an area under the receiver operating characteristic curve (AUC) = 84% using selected features. The most important classifying features were age, baseline National Institutes of Health Stroke Scale (NIHSS), occlusion side, degree of brain atrophy [primarily represented by cortical cerebrospinal fluid (CSF) volume and lateral ventricle volume], early ischemic core [primarily represented by e-Alberta Stroke Program Early CT Score (ASPECTS)], and collateral circulation deficit volume on CTA.
Machine learning that is applied to quantifiable image features from CT and CTA alongside basic clinical characteristics constitutes a promising automated method in the pre-interventional prediction of stroke prognosis. Interpretable models allow for exploring which initial features contribute the most to post-thrombectomy outcome prediction overall and for each individual patient outcome.
机械取栓术可显著改善卒中预后。然而,尽管实现了良好的再灌注,仍有一些患者未能完全康复。本研究的目的是利用急性缺血性卒中(AIS)患者首次急诊评估时始终可用的临床和自动提取的影像学信息,开发机器学习(ML)模型,用于预测取栓术后3个月的功能结局。
分析了一个包含293例行取栓术的AIS患者的两中心回顾性队列。开发ML模型,分别使用临床特征和影像特征以及两者结合来预测90天时的二分制改良Rankin量表评分(mRS-90)。使用来自非增强计算机断层扫描(CT)和计算机断层血管造影(CTA)的自动图像处理软件对传统和实验性影像生物标志物进行量化。应用Shapley加性解释(SHAP)进行模型可解释性分析以及对最优模型的预测因子重要性分析。
合并临床和影像特征对mRS-90预测的结果最佳。表现最佳的分类器是极端梯度提升(XGB),使用选定特征时,其受试者操作特征曲线下面积(AUC)=84%。最重要的分类特征是年龄、基线美国国立卫生研究院卒中量表(NIHSS)、闭塞侧、脑萎缩程度[主要由皮质脑脊液(CSF)体积和侧脑室体积表示]、早期缺血核心[主要由艾伯塔卒中项目早期CT评分(ASPECTS)表示]以及CTA上的侧支循环缺损体积。
将机器学习应用于CT和CTA的可量化影像特征以及基本临床特征,在卒中预后的介入前预测中构成了一种有前景的自动化方法。可解释模型有助于探究哪些初始特征对总体取栓术后结局预测以及每个患者个体结局贡献最大。