Abstract:
Many biomedical data are available as time series, especially in the field of public health and epidemiology, where indicators are usually collected over time. Clinical s...Show MoreMetadata
Abstract:
Many biomedical data are available as time series, especially in the field of public health and epidemiology, where indicators are usually collected over time. Clinical studies with long follow-up are also sometimes best analyzed with time series methods. The analysis of administrative health care data often gives rise to time series problems too, as events are frequently converted to counts over a given interval. Finally, some biomedical measurements also may be viewed as time series, such as ECG recordings. The methods of time series analysis can be very broadly divided into two categories: time-domain and frequency-domain methods. Frequency-domain methods are based on converting the time series, classically using Fourier transform, to a form where the time series is represented as the weighted sum of sinusoids [1]. This so-called spectral analysis allows us to get insight into the periodic components of the time series, making it possible to investigate cyclicity/seasonality of the original data. Fourier transform, however, does not allow the spectrum to evolve over time, so methods were developed which make a trade-off between time resolution and frequency resolution, such as wavelet analysis [2]. In addition to the investigation of periodicity in epidemiologic data (e.g. [3]), these methods are also widely used in biomedical signal analysis, such as the analysis of ECG recordings [4]. The vast majority of time series analyses, however, apply time-domain methods. Roughly speaking, they can be divided into “classic” time series regression methods employing only exogenous regressors (which may include long-term secular trend and seasonality in epidemiology, patient characteristics in a clinical study, or the past or contemporary value of another time series that is possibly related to the one under investigation, this can include an abrupt change giving rise to segmented regression models) and methods with stochastic component (autoregressive and moving average mo...
Published in: 2017 IEEE 30th Neumann Colloquium (NC)
Date of Conference: 24-25 November 2017
Date Added to IEEE Xplore: 18 January 2018
ISBN Information: