Chapter title |
A Waveform Archiving System for the GE Solar 8000i Bedside Monitor
|
---|---|
Chapter number | 36 |
Book title |
Intracranial Pressure & Neuromonitoring XVI
|
Published in |
Acta neurochirurgica Supplement, January 2018
|
DOI | 10.1007/978-3-319-65798-1_36 |
Pubmed ID | |
Book ISBNs |
978-3-31-965797-4, 978-3-31-965798-1
|
Authors |
Andrea Fanelli, Rohan Jaishankar, Aristotelis Filippidis, James Holsapple, Thomas Heldt |
Abstract |
Our objective was to develop, deploy, and test a data-acquisition system for the reliable and robust archiving of high-resolution physiological waveform data from a variety of bedside monitoring devices, including the GE Solar 8000i patient monitor, and for the logging of ancillary clinical and demographic information. The data-acquisition system consists of a computer-based archiving unit and a GE Tram Rac 4A that connects to the GE Solar 8000i monitor. Standard physiological front-end sensors connect directly to the Tram Rac, which serves as a port replicator for the GE monitor and provides access to these waveform signals through an analog data interface. Together with the GE monitoring data streams, we simultaneously collect the cerebral blood flow velocity envelope from a transcranial Doppler ultrasound system and a non-invasive arterial blood pressure waveform along a common time axis. All waveform signals are digitized and archived through a LabView-controlled interface that also allows for the logging of relevant meta-data such as clinical and patient demographic information. The acquisition system was certified for hospital use by the clinical engineering team at Boston Medical Center, Boston, MA, USA. Over a 12-month period, we collected 57 datasets from 11 neuro-ICU patients. The system provided reliable and failure-free waveform archiving. We measured an average temporal drift between waveforms from different monitoring devices of 1 ms every 66 min of recorded data. The waveform acquisition system allows for robust real-time data acquisition, processing, and archiving of waveforms. The temporal drift between waveforms archived from different devices is entirely negligible, even for long-term recording. |
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