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基于影像学的入院 CT 影像预测组织学血栓成分。

Imaging-based prediction of histological clot composition from admission CT imaging.

机构信息

Department of Diagnostic and Interventional Neuroradiology, University Medical Center Hamburg Eppendorf, Hamburg, Germany

Department of Neuroradiology, Clinic of Radiology and Nuclear Medicine, University Hospital Basel, Basel, Switzerland.

出版信息

J Neurointerv Surg. 2021 Nov;13(11):1053-1057. doi: 10.1136/neurintsurg-2020-016774. Epub 2021 Jan 22.

Abstract

BACKGROUND

Thrombus composition has been shown to be a major determinant of recanalization success and occurrence of complications in mechanical thrombectomy. The most important parameters of thrombus behavior during interventional procedures are relative fractions of fibrin and red blood cells (RBCs). We hypothesized that quantitative information from admission non-contrast CT (NCCT) and CT angiography (CTA) can be used for machine learning based prediction of thrombus composition.

METHODS

The analysis included 112 patients with occlusion of the carotid-T or middle cerebral artery who underwent thrombectomy. Thrombi samples were histologically analyzed and fractions of fibrin and RBCs were determined. Thrombi were semi-automatically delineated in CTA scans and NCCT scans were registered to the same space. Two regions of interest (ROIs) were defined for each thrombus: small-diameter ROIs capture vessel walls and thrombi, large-diameter ROIs reflect peri-vascular tissue responses. 4844 quantitative image markers were extracted and evaluated for their ability to predict thrombus composition using random forest algorithms in a nested fivefold cross validation.

RESULTS

Test set receiver operating characteristic area under the curve was 0.83 (95% CI 0.80 to 0.87) for differentiating RBC-rich thrombi and 0.84 (95% CI 0.80 to 0.87) for differentiating fibrin-rich thrombi. At maximum Youden-Index, RBC-rich thrombi were identified at 77% sensitivity and 74% specificity; for fibrin-rich thrombi the classifier reached 81% sensitivity at 73% specificity.

CONCLUSIONS

Machine learning based analysis of admission imaging allows for prediction of clot composition. Perspectively, such an approach could allow selection of clot-specific devices and retrieval procedures for personalized thrombectomy strategies.

摘要

背景

血栓成分已被证明是机械血栓切除术再通成功率和并发症发生的主要决定因素。在介入手术过程中,血栓行为最重要的参数是纤维蛋白和红细胞(RBC)的相对分数。我们假设入院时非对比 CT(NCCT)和 CT 血管造影(CTA)的定量信息可用于基于机器学习的血栓成分预测。

方法

该分析纳入了 112 例接受颈动脉-T 或大脑中动脉闭塞取栓术的患者。对血栓样本进行组织学分析,并确定纤维蛋白和 RBC 的分数。在 CTA 扫描中半自动勾画血栓,并将 NCCT 扫描与同一空间配准。为每个血栓定义了两个感兴趣区(ROI):小直径 ROI 捕获血管壁和血栓,大直径 ROI 反映血管周围组织反应。提取了 4844 个定量图像标记物,并使用随机森林算法在嵌套的五重交叉验证中评估其预测血栓成分的能力。

结果

测试集受试者工作特征曲线下面积(AUC)为 0.83(95%CI 0.80 至 0.87),用于区分 RBC 丰富的血栓,为 0.84(95%CI 0.80 至 0.87),用于区分富含纤维蛋白的血栓。在最大 Youden 指数处,RBC 丰富的血栓的识别灵敏度为 77%,特异性为 74%;对于富含纤维蛋白的血栓,分类器的灵敏度达到 81%,特异性为 73%。

结论

基于入院影像学的机器学习分析可预测血栓成分。从长远来看,这种方法可以为个性化取栓策略选择特定血栓的设备和回收程序。

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