New research identifies less invasive method for examining brain activity following traumatic brain injury
- Date:
- July 23, 2024
- Source:
- Johns Hopkins Medicine
- Summary:
- Researchers have published new research that reports on a potential alternative and less-invasive approach to measure intracranial pressure (ICP) in patients.
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Johns Hopkins Medicine researchers have published new research that reports on a potential alternative and less-invasive approach to measure intracranial pressure (ICP) in patients.
This research was published July 12 in the journal Computers in Biology and Medicine.
ICP is a physiological variable that can increase abnormally when one has acute brain injury, stroke or obstruction to the flow of cerebrospinal fluid. Symptoms of elevated ICP may include headaches, blurred vision, vomiting, changes in behavior and decreased level of consciousness. It can be life-threatening, hence the need for ICP monitoring in selected patients who are at increased risk. However, the current standard for ICP monitoring is highly invasive: It requires the placement of an external ventricular drain (EVD) or an intraparenchymal brain monitor (IPM) in the functional tissue in the brain consisting of neurons and glial cells by drilling through the skull.
"ICP is universally accepted as a critical vital sign -- there is an imperative need to measure and treat ICP in patients with serious neurological disorders, yet the current standard for ICP measurement is invasive, risky, and resource-intensive. Here we explored a novel approach leveraging Artificial Intelligence which we believed could represent a viable noninvasive alternative ICP assessment method," says director, anesthesiology and critical care medicine precision medicine Robert Stevens, MD., MBA.
EVD procedures carry a number of risks including catheter misplacement, infection, and hemorrhaging at 15.3 %, 5.8 %, and 12.1 %, respectively, according to recent research. EVD and IPM procedures also require surgical expertise and specialized equipment that is not consistently available in many settings thus establishing a need for an alternative method in examining and monitoring ICP in patients.
The Johns Hopkins University School of Medicine team, an interdisciplinary group led by Stevens, hypothesized that severe forms of brain injury, and elevations in ICP in particular, are associated with pathological changes in systemic cardiocirculatory function due, for example, to dysregulation of the central autonomic nervous system. This hypothesis suggests that extracranial physiological waveforms can be studied to better understand brain activity and ICP severity.
In this study, the Johns Hopkins team set out to explore the relationship between the ICP waveform and the three physiological waveforms that are routinely captured in the ICU: invasive arterial blood pressure (ABP), photoplethysmography (PPG) and electrocardiography (ECG). ABP, PPG and ECG data were used to train and contrast a panel of different deep learning algorithms, resulting in a level of accuracy in determining ICP that rivals or exceeds other methodologies.
Overall study findings suggest a completely new, noninvasive alternative to monitor ICP in patients.
Stevens says, "with validation, physiology-based AI solutions, such as the one used here, could significantly expand the proportion of patients and health care settings in which ICP monitoring and management can be delivered."
Co-authors include recent Johns Hopkins University biomedical engineering graduates Shiker Nair '23, Alina Guo '23, Arushi Tandon '23, and Joseph Boen '22; master's student Meer Patel; biomedical engineering seniors Atas Aggarwal, Ojas Chahal and Sreenidhi Sankararaman; Nicholas D. Durr, associate professor of biomedical engineering; Tej D. Azad, a resident physician in the Johns Hopkins Department of Neurosurgery; and Romain Pirracchio, a professor of anesthesia at the University of California San Francisco.
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Materials provided by Johns Hopkins Medicine. Note: Content may be edited for style and length.
Journal Reference:
- Shiker S. Nair, Alina Guo, Joseph Boen, Ataes Aggarwal, Ojas Chahal, Arushi Tandon, Meer Patel, Sreenidhi Sankararaman, Nicholas J. Durr, Tej D. Azad, Romain Pirracchio, Robert D. Stevens. A deep learning approach for generating intracranial pressure waveforms from extracranial signals routinely measured in the intensive care unit. Computers in Biology and Medicine, 2024; 177: 108677 DOI: 10.1016/j.compbiomed.2024.108677
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