Continuous medical time series data such as ECG is one of the most complex time series due to its dynamic and high dimensional characteristics. In addition, due to its sensitive nature, privacy concerns and legal restrictions, it is often even complex to use actual data for different medical research. As a result, generating continuous medical time series is a very critical research area. Several research works already showed that the ability of generative adversarial networks (GANs) in the case of continuous medical time series generation is promising. Most medical data generation works, such as ECG synthesis, are mainly driven by the GAN model and its variation. On the other hand, Some recent work on Neural Ordinary Differential Equation (Neural ODE) demonstrates its strength against informative missingness, high dimension as well as dynamic nature of continuous time series. Instead of considering continuous-time series as a discrete-time sequence, Neural ODE can train continuous time series in real-time continuously. In this work, we used Neural ODE based model to generate synthetic sine waves and synthetic ECG. We introduced a new technique to design the generative adversarial network with Neural ODE based Generator and Discriminator. We developed three new models to synthesise continuous medical data. Different evaluation metrics are then used to quantitatively assess the quality of generated synthetic data for real-world applications and data analysis. Another goal of this work is to combine the strength of GAN and Neural ODE to generate synthetic continuous medical time series data such as ECG. We also evaluated both the GAN model and the Neural ODE model to understand the comparative efficiency of models from the GAN and Neural ODE family in medical data synthesis.
翻译:诸如ECG等连续医疗时间序列数据是因其动态和高维特性而最复杂的时间序列之一。此外,由于其敏感性质、隐私关切和法律限制,使用实际数据进行不同医学研究往往甚至更为复杂。因此,产生连续医疗时间序列是一个非常关键的研究领域。一些研究已经表明,在连续医疗时间序列生成的情况下,基因对抗网络(GANs)的能力是充满希望的。大多数医学数据生成工作,如ECG合成,主要是由GAN模型及其变异驱动的。另一方面,最近关于神经普通差异比较变异(Neural Ode)的工作表明,它与信息缺失、高维度以及连续时间序列的动态性质相比,具有很强的力度。在连续时间序列中,Neural 对抗网络(GAN) 网络可以连续连续的时间序列(GAN) 生成合成时间序列。在这项工作中,我们使用神经内光量数据模型模型来生成合成正正弦数和合成ECGNAG。我们采用了一种新的技术来设计由Neural Inal Inde 数据生成的基因交换模型的基因模型。我们用这个模型和模型来进行实时合成合成数据合成数据合成数据合成数据合成合成数据。我们用这个模型和模型来进行新的数据合成数据合成数据合成合成的模型和合成数据合成数据合成数据合成数据合成数据合成数据合成数据合成。我们用三个的模型用来用来用来来对NALODIANIDADADADADADADADADADADADADADADADA。