Kataoka Yasuyuki, Tomoike Hitonobu
Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:625-628. doi: 10.1109/EMBC46164.2021.9630932.
The voltage criteria used to diagnose left ventricular hypertrophy (LVH) in the chest and limb leads are by no means absolute. In addition to QRS voltages, QRS axis and duration, and P wave characteristics, repolarization (STT) changes have been focused attention due to their representing left ventricular overload. Vectorcardiography (VCG) has been studied specifically on its repolarization abnormality. The present study aims to devise spatial feature extraction of VCG and assess it in the LVH classification task. A minimum volume ellipsoid enclosure was applied to six segments obtained from upstroke and downstroke of each P, QRS, and T loops of a single-beat VCG. For the evaluation, VCG and 12 lead ECG dataset along with LVH labels of 61 subjects were derived from public open data, PTB-XL. These classification performances were compared with the LVH diagnosis criteria in the standard 12 lead ECG. As a result, the Random Forest classifier trained by the proposed spatial VCG feature resulted in accuracy of 0.904 (95% confidence interval: 0.861-0.947) when the classbalanced dataset was evaluated, which slightly exceeded the feature of 12 lead ECG. The feature importance analysis provided the quantitative ranking of the spatial feature of VCG, which were practically similar to those of ECG in the LVH classification task. Since the VCG are spatially comparable with three-dimensional data of CT, MRI, or Echocardiography, VCG will shed light on the spatial behavior of electrical depolarization and repolarization abnormalities in cardiac diseases.
用于诊断胸导联和肢体导联左心室肥厚(LVH)的电压标准绝非绝对。除了QRS电压、QRS电轴和时限以及P波特征外,复极(STT)变化因其代表左心室负荷过重而受到关注。向量心电图(VCG)已针对其复极异常进行了专门研究。本研究旨在设计VCG的空间特征提取方法,并在LVH分类任务中对其进行评估。将最小体积椭球包络应用于从单搏VCG的每个P、QRS和T环的上升支和下降支获得的六个节段。为了进行评估,从公共开放数据PTB-XL中获取了VCG和12导联心电图数据集以及61名受试者的LVH标签。将这些分类性能与标准12导联心电图中的LVH诊断标准进行了比较。结果,在所提出的空间VCG特征训练的随机森林分类器在评估类别平衡数据集时的准确率为0.904(95%置信区间:0.861-0.947),略高于12导联心电图的特征。特征重要性分析提供了VCG空间特征的定量排名,在LVH分类任务中,这些排名与心电图的排名实际相似。由于VCG在空间上可与CT、MRI或超声心动图的三维数据相媲美,因此VCG将有助于揭示心脏疾病中电去极化和复极异常的空间行为。