School of Biomedical Engineering and Imaging Sciences, King's College London, 4th Floor, Lambeth Wing, St. Thomas' Hospital, London SE1 7EH, UK.
Department of Cardiology, St Thomas' Hospital, London SE1 7EH, UK.
Europace. 2023 Aug 2;25(9). doi: 10.1093/europace/euad198.
Substrate assessment of scar-mediated ventricular tachycardia (VT) is frequently performed using late gadolinium enhancement (LGE) images. Although this provides structural information about critical pathways through the scar, assessing the vulnerability of these pathways for sustaining VT is not possible with imaging alone.This study evaluated the performance of a novel automated re-entrant pathway finding algorithm to non-invasively predict VT circuit and inducibility.
Twenty post-infarct VT-ablation patients were included for retrospective analysis. Commercially available software (ADAS3D left ventricular) was used to generate scar maps from 2D-LGE images using the default 40-60 pixel-signal-intensity (PSI) threshold. In addition, algorithm sensitivity for altered thresholds was explored using PSI 45-55, 35-65, and 30-70. Simulations were performed on the Virtual Induction and Treatment of Arrhythmias (VITA) framework to identify potential sites of block and assess their vulnerability depending on the automatically computed round-trip-time (RTT). Metrics, indicative of substrate complexity, were correlated with VT-recurrence during follow-up.
Total VTs (85 ± 43 vs. 42 ± 27) and unique VTs (9 ± 4 vs. 5 ± 4) were significantly higher in patients with- compared to patients without recurrence, and were predictive of recurrence with area under the curve of 0.820 and 0.770, respectively. VITA was robust to scar threshold variations with no significant impact on total and unique VTs, and mean RTT between the four models. Simulation metrics derived from PSI 45-55 model had the highest number of parameters predictive for post-ablation VT-recurrence.
Advanced computational metrics can non-invasively and robustly assess VT substrate complexity, which may aid personalized clinical planning and decision-making in the treatment of post-infarction VT.
瘢痕介导的室性心动过速(VT)的底物评估通常使用钆延迟增强(LGE)图像进行。尽管这提供了关于瘢痕内关键通路的结构信息,但仅凭影像学无法评估这些通路维持 VT 的易损性。本研究评估了一种新型自动折返通路发现算法在预测 VT 环和可诱导性方面的性能。
对 20 例心肌梗死后 VT 消融患者进行回顾性分析。使用商业上可用的软件(ADAS3D 左心室),使用默认的 40-60 像素信号强度(PSI)阈值从 2D-LGE 图像生成瘢痕图。此外,还探索了使用 PSI 45-55、35-65 和 30-70 改变阈值对算法敏感性的影响。在虚拟诱导和心律失常治疗(VITA)框架上进行模拟,以确定潜在的阻滞部位,并根据自动计算的往返时间(RTT)评估其易损性。指示底物复杂性的指标与随访期间 VT 复发相关。
与无复发患者相比,有复发患者的总 VT(85±43 比 42±27)和独特 VT(9±4 比 5±4)明显更高,其曲线下面积分别为 0.820 和 0.770,可预测复发。VITA 对瘢痕阈值变化具有鲁棒性,对总 VT 和独特 VT 以及四个模型之间的平均 RTT 没有显著影响。源自 PSI 45-55 模型的模拟指标具有预测消融后 VT 复发的最高数量的参数。
先进的计算指标可以无创且稳健地评估 VT 底物的复杂性,这可能有助于个体化临床规划和决策,以治疗心肌梗死后的 VT。