Lukoševičius Mantas, Marozas Vaidotas
Biomedical Engineering Institute, Kaunas University of Technology, Studentu g. 65, LT-51369 Kaunas, Lithuania.
Physiol Meas. 2014 Aug;35(8):1685-97. doi: 10.1088/0967-3334/35/7/1685. Epub 2014 Jul 29.
We address a classical fetal QRS detection problem from abdominal ECG recordings with a data-driven statistical machine learning approach. Our goal is to have a powerful, yet conceptually clean, solution. There are two novel key components at the heart of our approach: an echo state recurrent neural network that is trained to indicate fetal QRS complexes, and several increasingly sophisticated versions of statistics-based dynamic programming algorithms, which are derived from and rooted in probability theory. We also employ a standard technique for preprocessing and removing maternal ECG complexes from the signals, but do not take this as the main focus of this work. The proposed approach is quite generic and can be extended to other types of signals and annotations. Open-source code is provided.
我们采用数据驱动的统计机器学习方法,解决了腹部心电图记录中的经典胎儿QRS检测问题。我们的目标是找到一个强大且概念清晰的解决方案。我们方法的核心有两个新颖的关键组件:一个经过训练以指示胎儿QRS复合波的回声状态递归神经网络,以及几个基于概率理论衍生并扎根于概率理论的、日益复杂的基于统计的动态规划算法版本。我们还采用了一种标准技术对信号进行预处理并去除母体心电图复合波,但不将此作为这项工作的主要重点。所提出的方法非常通用,可以扩展到其他类型的信号和注释。我们提供了开源代码。