ElRefai Mohamed, Abouelasaad Mohamed, Conibear Isobel, Wiles Benedict M, Dunn Anthony J, Coniglio Stefano, Zemkoho Alain B, Morgan John, Roberts Paul R
Cardiology Department, University Hospital of Cambridge, Cambridge, United Kingdom.
Cardiac Rhythm Management Research Department, University Hospital Southampton NHS Foundation Trust, Southampton, United Kingdom.
Indian Pacing Electrophysiol J. 2024 Jul-Aug;24(4):192-199. doi: 10.1016/j.ipej.2024.06.003. Epub 2024 Jun 11.
The risk of complications associated with transvenous ICDs make the subcutaneous implantable cardiac defibrillator (S-ICD) a valuable alternative in patients with adult congenital heart disease (ACHD). However, higher S-ICD ineligibility and higher inappropriate shock rates-mostly caused by T wave oversensing (TWO)- are observed in this population. We report a novel application of deep learning methods to screen patients for S-ICD eligibility over a longer period than conventional screening.
Adult patients with ACHD and a control group of normal subjects were fitted with a 24-h Holters to record their S-ICD vectors. Their T:R ratio was analysed utilising phase space reconstruction matrices and a deep learning-based model to provide an in-depth description of the T: R variation plot for each vector. T: R variation was compared statistically using t-test.
13 patients (age 37.4 ± 7.89 years, 61.5 % male, 6 ACHD and 7 control subjects) were enrolled. A significant difference was observed in the mean and median T: R values between the two groups (p < 0.001). There was also a significant difference in the standard deviation of T: R between both groups (p = 0.04).
T:R ratio, a main determinant for S-ICD eligibility, is significantly higher with more tendency to fluctuate in ACHD patients when compared to a population with normal hearts. We hypothesise that our novel model could be used to select S-ICD eligible patients by better characterisation of T:R ratio, reducing the risk of TWO and inappropriate shocks in the ACHD patient cohort.
经静脉植入式心律转复除颤器(ICD)相关并发症的风险使得皮下植入式心脏除颤器(S-ICD)成为成人先天性心脏病(ACHD)患者的一种有价值的替代选择。然而,在这一人群中观察到较高的S-ICD不适用率和较高的不适当电击率,其中大部分是由T波过度感知(TWO)引起的。我们报告了一种深度学习方法的新应用,用于在比传统筛查更长的时间内筛选S-ICD适用患者。
为患有ACHD的成年患者和正常受试者对照组配备24小时动态心电图记录仪,以记录他们的S-ICD向量。利用相空间重构矩阵和基于深度学习的模型分析他们的T:R比值,以深入描述每个向量的T:R变化图。使用t检验对T:R变化进行统计学比较。
共纳入13例患者(年龄37.4±7.89岁,男性占61.5%,6例ACHD患者和7例对照受试者)。两组之间的平均和中位数T:R值存在显著差异(p<0.001)。两组之间T:R的标准差也存在显著差异(p = 0.04)。
T:R比值是S-ICD适用性的主要决定因素,与正常心脏人群相比,ACHD患者的T:R比值显著更高,且波动趋势更大。我们假设,我们的新模型可用于通过更好地表征T:R比值来选择适合S-ICD的患者,从而降低ACHD患者队列中TWO和不适当电击的风险。