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Initial study of the radiomics of intracranial aneurysms using Angiographic Parametric Imaging (API) to evaluate contrast flow changes

机译:血管造影参数(API)使用血管造影参数(API)来评估对比度流动变化的颅内动脉瘤的辐射研究

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Purpose: The purpose of this study is to apply targeted Parametric Imaging on aneurysms to quantitatively investigate contrast flow changes at pre-, post-treatment and follow-up with outcome scoring. Methods: The angiograms for 50 patients were acquired, 25 treated with coil embolization and 25 treated using a flow diverter. API was performed by synthesizing the time density curve (TDC) at every pixel. Based on the TDCs, we calculated various parameters for the quantitative characterization of contrast flow through the vascular network and aneurysms and displayed them using color encoded maps. The parameters included were: Time to Peak (TTP), Mean Transit Time (MTT), Time of Arrival (TTA), Peak Height (PH) and Area Under the Curve (AUC). Two Regions of Interest (ROI) were manually marked over the aneurysm dome and the main artery. Average aneurysm parameter values were normalized to those values recorded in the main artery and recorded pre-/post-treatment and follow-up and compared to Raymond Roy scores and flow diverter stent scoring. Results: The normalized mean values were as follows (pre and post treatment): TTP (1.09+/-0.14, 1.55+/-1.36), MTT (1.07+/-0.23, 1.27+/-0.42), TTA (0.14+/-0.15, 0.26+/-0.23), PH (1.2+/-0.54, 0.95+/-0.83) and AUC (1.29+/-0.69, 1.44+/-1.92). The neural network gave a validation accuracy of 0.8036 with a loss of 0.0927. A receiver operating characteristic curve with an AUC of 0.866 was obtained. Conclusions: API can quantitatively describe the flow in the aneurysm for initial investigation of the radiomics of intracranial aneurysms. It also shows a clear demarcation between pre and post treatment. Statistical modelling and a machine learning network is used to prove the success of our model.
机译:目的:本研究的目的是在动脉瘤上施加目标参数成像,以定量调查与结果评分的预处理和随访的对比度流动变化。方法:获得50例患者的血管仪,25例用线圈栓塞治疗,25例使用流动分流器处理。通过在每个像素处合成时间密度曲线(TDC)来执行API。基于TDC,我们计算了通过血管网络和动脉瘤的对比度流动定量表征的各种参数,并使用颜色编码的地图显示它们。包括的参数为:峰值(TTP),平均转运时间(MTT),到达时间(TTA),曲线(AUC)下的峰值高度(pH)和面积。手动标记在动脉瘤圆顶和主动脉上的两个感兴趣区域(ROI)。平均动脉瘤参数值被标准化为主动脉中记录的那些值,并记录了/后处理和后续行动,并与Raymond Roy评分和流动转向支架得分相比。结果:归一化平均值如下(前后处理):TTP(1.09 +/- 0.14,1.55 +/- 1.36),MTT(1.07 +/- 0.23,1.27 +/- 0.42),TTA(0.14+ /-0.15,0.26 +/- 0.23),pH(1.2 +/- 0.54,0.95 +/- 0.83)和AUC(1.29 +/- 0.69,1.44 +/- 1.92)。神经网络给出了0.8036的验证精度,损失为0.0927。获得了具有0.866的AUC的接收器操作特性曲线。结论:API可以定量描述动脉瘤中的流动,以便初次调查颅内动脉瘤的射出物。它还显示了前后治疗之间的明确划分。统计建模和机器学习网络用于证明我们模型的成功。

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