Atrial Fibrillation (AF) is characterized by disorganised electrical activity in the atria and is known to be sustained by the presence of regions of fibrosis (scars) or functional cellular remodeling, both of which may lead to areas of slow conduction. Estimating the effective conductivity of the myocardium and identifying regions of abnormal propagation is therefore crucial for the effective treatment of AF. We hypothesise that the spatial distribution of tissue conductivity can be directly inferred from an array of concurrently acquired contact electrograms (EGMs). We generate a dataset of simulated cardiac AP propagation using randomised scar distributions and a phenomenological cardiac model and calculate contact electrograms at various positions on the field. A deep neural network, based on a modified U-net architecture, is trained to estimate the location of the scar and quantify conductivity of the tissue with a Jaccard index of $91$%. We adapt a wavelet-based surrogate testing analysis to confirm that the inferred conductivity distribution is an accurate representation of the ground truth input to the model. We find that the root mean square error (RMSE) between the ground truth and our predictions is significantly smaller ($p_{val}=0.007$) than the RMSE between the ground truth and surrogate samples.
翻译:工地纤维化(AF)的特征是,在阿提亚州内,电动活动无组织,已知是用纤维化或功能细胞改造区域的存在维持的,这两种区域都可能导致慢导导区。因此,估计心心肌瘤的有效导电率和辨别异常传播区域对于有效治疗AF至关重要。我们假设,组织导电率的空间分布可以从同时获得的一系列接触电图中直接推断出来。我们利用随机化的疤分分布和血细胞心脏模型生成模拟心血管传播的数据集,并计算实地各位置的接触电图。一个以经过修改的U-net结构为基础的深神经网络,以估计伤疤的位置和对组织导力的量化为91%的雅卡指数。我们通过基于波点的模拟电门测试分析,确认推断的导力分布是模型中地面事实输入的准确表示。我们发现,在地面和地面的模型中,根平方差值(ARMS-7)之间,地面的测距地面测距甚小。