Canon Stroke and Vascular Research Center, University at Buffalo, 875 Ellicott Street, 14203, Buffalo, NY, USA.
Department of Pathology and Anatomical Sciences, University at Buffalo, Buffalo, NY, USA.
Clin Neuroradiol. 2024 Jun;34(2):431-439. doi: 10.1007/s00062-023-01380-1. Epub 2024 Jan 31.
Assessing clot composition on prethrombectomy computed tomography (CT) imaging may help in stroke treatment planning. In this study we seek to use microCT imaging of fabricated blood clots to understand the relationship between CT radiographic signals and the biological makeup.
Clots (n = 10) retrieved by mechanical thrombectomy (MT) were collected, and 6 clot analogs of varying RBC composition were made. We performed paired microCT and histological image analysis of all 16 clots using a ScanCo microCT 100 (4.9 µm resolution) and standard H&E staining (imaged at 40×). From these data types, first order statistic (FOS) radiomics were computed from microCT, and percent composition of RBCs (%RBC) was computed from histology. Polynomial and linear regression (LR) were used to build statistical models based on retrieved thrombus microCT and %RBC that were evaluated for their ability to predict the %RBC of clot analogs from mean HU. Correlation analyses of microCT FOS with composition were completed for both retrieved clots and analogs.
The LR model fits relating MT-retrieved clot %RBC with mean (R = 0.625, p = 0.006) and standard deviation (R = 0.564, p < 0.05) in HUs on microCT were significant. Similarly, LR models relating analog histological %RBC to analog protocol %RBC (R = 0.915, p = 0.003) and mean HUs on microCT (R = 0.872, p = 0.007) were also significant. When the LR model built using MT-retrieved clots was used to predict analog %RBC from mean HUs, significant correlation was observed between predictions and actual histological %RBC (R = 0.852, p = 0.009). For retrieved clots, significant correlations were observed for energy and total energy with %RBC and %FP (|R| > 0.7, q < 0.01). Analogs further demonstrated significant correlation between FOS energy, total energy, variance and %WBC (|R| > 0.9, q < 0.01).
MicroCT can be used to build models that predict AIS clot composition from routine CT parameters and help us to better understand radiomic signatures associated with clot composition and first pass outcomes. In future work, such observations can be used to better infer clot composition and inform thrombectomy prognostics from pretreatment CTs.
评估血栓切除术前计算机断层扫描(CT)成像中的血栓成分,可能有助于制定中风治疗计划。本研究旨在使用制造的血栓的 microCT 成像来了解 CT 射线照相信号与生物成分之间的关系。
通过机械血栓切除术(MT)收集血栓(n=10),并制作了 6 种不同 RBC 成分的血栓模拟物。我们对所有 16 个血栓使用 ScanCo microCT 100(4.9μm分辨率)和标准 H&E 染色(以 40×放大率成像)进行了 microCT 和组织学图像分析的配对。从这些数据类型中,我们从 microCT 计算了一阶统计(FOS)放射组学,并从组织学计算了 RBC 的百分比(%RBC)。基于从微 CT 中检索到的血栓和 %RBC,使用多项式和线性回归(LR)构建了统计模型,并评估了它们预测血凝块模拟物中 %RBC 的能力,从平均 HU 预测。对从 microCT 获得的血栓和模拟物的微 CT FOS 与组成之间的相关性分析完成。
LR 模型拟合与 MT 检索到的血栓 %RBC 与微 CT 上的平均(R=0.625,p=0.006)和标准偏差(R=0.564,p<0.05)相关。类似地,LR 模型与模拟组织学 %RBC 相关联模拟协议 %RBC(R=0.915,p=0.003)和微 CT 上的平均 HU(R=0.872,p=0.007)也很重要。当使用 MT 检索的血栓建立的 LR 模型用于从平均 HU 预测模拟物的 %RBC 时,观察到预测值与实际组织学 %RBC 之间存在显著相关性(R=0.852,p=0.009)。对于检索到的血栓,能量和总能量与 %RBC 和 %FP 之间存在显著相关性(|R|>0.7,q<0.01)。模拟物进一步显示出 FOS 能量,总能量,方差和 %WBC 之间的显著相关性(|R|>0.9,q<0.01)。
MicroCT 可用于构建可从常规 CT 参数预测 AIS 血栓成分的模型,并帮助我们更好地理解与血栓成分和初次通过结果相关的放射组学特征。在未来的工作中,可以利用这些观察结果更好地推断血栓成分,并从治疗前 CT 推断血栓切除术的预后。