4.4 Article

Dynamic Intracranial Pressure Waveform Morphology Predicts Ventriculitis

Journal

NEUROCRITICAL CARE
Volume 36, Issue 2, Pages 404-411

Publisher

HUMANA PRESS INC
DOI: 10.1007/s12028-021-01303-3

Keywords

Neurocritical care; External ventricular drainage; Ventriculitis; ICP waveform; Clustering; Machine learning

Funding

  1. National Institutes of Health [R21NS113055]
  2. American Heart Association [20POST35210653]

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The study developed an automatic method to predict the onset of ventriculitis by analyzing intracranial pressure waveform morphology. The results showed that intracranial pressure waveform morphology analysis can classify ventriculitis without cerebrospinal fluid sampling.
Background Intracranial pressure waveform morphology reflects compliance, which can be decreased by ventriculitis. We investigated whether morphologic analysis of intracranial pressure dynamics predicts the onset of ventriculitis. Methods Ventriculitis was defined as culture or Gram stain positive cerebrospinal fluid, warranting treatment. We developed a pipeline to automatically isolate segments of intracranial pressure waveforms from extraventricular catheters, extract dominant pulses, and obtain morphologically similar groupings. We used a previously validated clinician-supervised active learning paradigm to identify metaclusters of triphasic, single-peak, or artifactual peaks. Metacluster distributions were concatenated with temperature and routine blood laboratory values to create feature vectors. A L2-regularized logistic regression classifier was trained to distinguish patients with ventriculitis from matched controls, and the discriminative performance using area under receiver operating characteristic curve with bootstrapping cross-validation was reported. Results Fifty-eight patients were included for analysis. Twenty-seven patients with ventriculitis from two centers were identified. Thirty-one patients with catheters but without ventriculitis were selected as matched controls based on age, sex, and primary diagnosis. There were 1590 h of segmented data, including 396,130 dominant pulses in patients with ventriculitis and 557,435 pulses in patients without ventriculitis. There were significant differences in metacluster distribution comparing before culture-positivity versus during culture-positivity (p < 0.001) and after culture-positivity (p < 0.001). The classifier demonstrated good discrimination with median area under receiver operating characteristic 0.70 (interquartile range 0.55-0.80). There were 1.5 true alerts (ventriculitis detected) for every false alert. Conclusions Intracranial pressure waveform morphology analysis can classify ventriculitis without cerebrospinal fluid sampling.

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