C. Soraghan, C. Fan, T. Hayakawa, H. Cronin, T. Foran, Gerard Boyle, R. Kenny, C. Finucane
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引用次数: 17
Abstract
The Irish Longitudinal Study on Ageing (TILDA) collected phasic blood pressure (pBP) data on over 5,000 participants in Wave 1. This required a Signal Processing Framework (SPF) for automating: 1) artefact rejection, and, 2) the extraction of clinically-useful features. The framework developed reduced the workload of the screening clinician by 43%. The work outlined in this paper details key steps in analysing a large dataset of pBP data and highlights the signal processing challenges encountered in modern epidemiological studies.