Department of Electrical and Computer Engineering, Aristotle University of Thessaloniki, GR 54645, Thessaloniki, Greece.
3rd Cardiology Department, Aristotle University of Thessaloniki, Hippokration General Hospital, 49 Konstantinoupoleos str, 54642, Thessaloniki, Greece.
Med Biol Eng Comput. 2021 Jun;59(6):1311-1324. doi: 10.1007/s11517-021-02353-7. Epub 2021 May 6.
Neurally mediated syncope (NMS) is the most common type of syncope, and head up tilt test (HUTT) is, so far, the most appropriate tool to identify NMS. In this work, an effort to predict the NMS before performing the HUTT is attempted. To achieve this, the heart rate variability (HRV) at rest and during the first minutes of tilting position during HUTT was analyzed using both time and frequency domains. Various features from HRV regularity and complexity, along with wavelet higher-order spectrum (WHOS) analysis in low-frequency (LF) and high-frequency (HF) bands were examined. The experimental results from 26 patients with history of NMS have shown that at rest, a time domain entropy measure and WHOS-based features in LF band exhibit significant differences between positive and negative HUTT as well as among 10 healthy subjects and NMS patients. The best performance of multilayer perceptron neural network (MPNN) was achieved by using an input vector consisted of WHOS-based HRV features in the LF zone and systolic blood pressure from the resting period, yielding an accuracy of 89.7%, assessed by 5-fold cross-validation. The promising results presented here pave the way for an early prediction of the HUTT outcome from resting state, contributing to the identification of patients at higher risk NMS. The HRV analysis along with systolic blood pressure at rest predict NMS using a multilayer perceptron neural network.
神经介导性晕厥 (NMS) 是最常见的晕厥类型,而头高位倾斜试验 (HUTT) 迄今为止是识别 NMS 的最适当工具。在这项工作中,尝试在进行 HUTT 之前预测 NMS。为此,使用时域和频域分析了 HUTT 倾斜位最初几分钟的静息和期间的心率变异性 (HRV)。检查了 HRV 规则性和复杂性的各种特征,以及低频 (LF) 和高频 (HF) 带中的小波高阶谱 (WHOS) 分析。来自 26 例 NMS 病史患者的实验结果表明,在静息时,时域熵测度和 LF 带中的基于 WHOS 的特征在 HUTT 阳性和阴性之间以及在 10 名健康受试者和 NMS 患者之间存在显著差异。使用由 LF 区域中的基于 WHOS 的 HRV 特征和休息期间的收缩压组成的输入向量,多层感知器神经网络 (MPNN) 的性能最佳,通过 5 倍交叉验证评估的准确率为 89.7%。这里提出的有希望的结果为从静息状态早期预测 HUTT 结果铺平了道路,有助于识别 NMS 风险较高的患者。使用多层感知器神经网络,静息时的 HRV 分析和收缩压可预测 NMS。