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A Deep Learning Framework for Deriving Non-Invasive Intracranial Pressure Waveforms from Transcranial Doppler.

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Increased intracranial pressure (ICP) causes disability and mortality in the neuro-intensive care population. Current methods for monitoring ICP are invasive. We designed a deep learning framework using a domain adversarial… Click to show full abstract

Increased intracranial pressure (ICP) causes disability and mortality in the neuro-intensive care population. Current methods for monitoring ICP are invasive. We designed a deep learning framework using a domain adversarial neural network to estimate noninvasive ICP, from blood pressure, electrocardiogram, and cerebral blood flow velocity. Our model had a mean of median absolute error (MAE) of 3.88+/-3.26 mmHg for the Domain adversarial neural network and 3.94+/-1.71 mmHg for the Domain Adversarial Transformers. Compared to non-linear approaches such as support vector regression, this was 26.7% and 25.7% lower. Our proposed framework provides more accurate non-invasive ICP estimates than currently available. This article is protected by copyright. All rights reserved.

Keywords: non invasive; framework; pressure; deep learning; intracranial pressure; learning framework

Journal Title: Annals of neurology
Year Published: 2023

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