PLoS ONE (Jan 2016)

A Signal Processing Approach for Detection of Hemodynamic Instability before Decompensation.

  • Ashwin Belle,
  • Sardar Ansari,
  • Maxwell Spadafore,
  • Victor A Convertino,
  • Kevin R Ward,
  • Harm Derksen,
  • Kayvan Najarian

DOI
https://doi.org/10.1371/journal.pone.0148544
Journal volume & issue
Vol. 11, no. 2
p. e0148544

Abstract

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Advanced hemodynamic monitoring is a critical component of treatment in clinical situations where aggressive yet guided hemodynamic interventions are required in order to stabilize the patient and optimize outcomes. While there are many tools at a physician's disposal to monitor patients in a hospital setting, the reality is that none of these tools allow hi-fidelity assessment or continuous monitoring towards early detection of hemodynamic instability. We present an advanced automated analytical system which would act as a continuous monitoring and early warning mechanism that can indicate pending decompensation before traditional metrics can identify any clinical abnormality. This system computes novel features or bio-markers from both heart rate variability (HRV) as well as the morphology of the electrocardiogram (ECG). To compare their effectiveness, these features are compared with the standard HRV based bio-markers which are commonly used for hemodynamic assessment. This study utilized a unique database containing ECG waveforms from healthy volunteer subjects who underwent simulated hypovolemia under controlled experimental settings. A support vector machine was utilized to develop a model which predicts the stability or instability of the subjects. Results showed that the proposed novel set of features outperforms the traditional HRV features in predicting hemodynamic instability.