Intracranial hypertension prediction using extremely randomized decision trees

Med Eng Phys. 2012 Oct;34(8):1058-65. doi: 10.1016/j.medengphy.2011.11.010. Epub 2012 Mar 7.

Abstract

Intracranial pressure (ICP) elevation (intracranial hypertension, IH) in neurocritical care is typically treated in a reactive fashion; it is only delivered after bedside clinicians notice prolonged ICP elevation. A proactive solution is desirable to improve the treatment of intracranial hypertension. Several studies have shown that the waveform morphology of the intracranial pressure pulse holds predictors about future intracranial hypertension and could therefore be used to alert the bedside clinician of a likely occurrence of the elevation in the immediate future. In this paper, a computational framework is proposed to predict prolonged intracranial hypertension based on morphological waveform features computed from the ICP. A key contribution of this work is to exploit an ensemble classifier method based on extremely randomized decision trees (Extra-Trees). Experiments on a representative set of 30 patients admitted for various intracranial pressure related conditions demonstrate the effectiveness of the predicting framework on ICP pulses acquired under clinical conditions and the superior results of the proposed approach in comparison to linear and AdaBoost classifiers.

MeSH terms

  • Algorithms
  • Decision Trees*
  • Humans
  • Intracranial Hypertension / diagnosis*
  • Intracranial Hypertension / physiopathology
  • Intracranial Pressure
  • Linear Models
  • Random Allocation
  • Time Factors