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A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography

The ideal Intracranial pressure (ICP) estimation method should be accurate, reliable, cost-effective, compact, and associated with minimal morbidity/mortality. To this end several described non-invasive methods in ICP estimation have yielded promising results, however the reliability of these techni...

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Autores principales: Abdul-Rahman, Anmar, Morgan, William, Yu, Dao-Yi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9521929/
https://www.ncbi.nlm.nih.gov/pubmed/36174066
http://dx.doi.org/10.1371/journal.pone.0275417
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author Abdul-Rahman, Anmar
Morgan, William
Yu, Dao-Yi
author_facet Abdul-Rahman, Anmar
Morgan, William
Yu, Dao-Yi
author_sort Abdul-Rahman, Anmar
collection PubMed
description The ideal Intracranial pressure (ICP) estimation method should be accurate, reliable, cost-effective, compact, and associated with minimal morbidity/mortality. To this end several described non-invasive methods in ICP estimation have yielded promising results, however the reliability of these techniques have yet to supersede invasive methods of ICP measurement. Over several publications, we described a novel imaging method of Modified Photoplethysmography in the evaluation of the retinal vascular pulse parameters decomposed in the Fourier domain, which enables computationally efficient information filtering of the retinal vascular pulse wave. We applied this method in a population of 21 subjects undergoing lumbar puncture manometry. A regression model was derived by applying an Extreme Gradient Boost (XGB) machine learning algorithm using retinal vascular pulse harmonic regression waveform amplitude (HRW(a)), first and second harmonic cosine and sine coefficients (a(n1,2), b(n1,2)) among other features. Gain and SHapley Additive exPlanation (SHAP) values ranked feature importance in the model. Agreement between the predicted ICP mean, median and peak density with measured ICP was assessed using Bland-Altman bias±standard error. Feature gain of intraocular pressure (IOP(i)) (arterial = 0.6092, venous = 0.5476), and of the Fourier coefficients, a(n1) (arterial = 0.1000, venous = 0.1024) ranked highest in the XGB model for both vascular systems. The arterial model SHAP values demonstrated the importance of the laterality of the tested eye (1.2477), which was less prominent in the venous model (0.8710). External validation was achieved using seven hold-out test cases, where the median venous predicted ICP showed better agreement with measured ICP. Although the Bland-Altman bias from the venous model (0.034±1.8013 cm water (p<0.99)) was lower compared to that of the arterial model (0.139±1.6545 cm water (p<0.94)), the arterial model provided a potential avenue for internal validation of the prediction. This approach can potentially be integrated into a neurological clinical decision algorithm to evaluate the indication for lumbar puncture.
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spelling pubmed-95219292022-09-30 A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography Abdul-Rahman, Anmar Morgan, William Yu, Dao-Yi PLoS One Research Article The ideal Intracranial pressure (ICP) estimation method should be accurate, reliable, cost-effective, compact, and associated with minimal morbidity/mortality. To this end several described non-invasive methods in ICP estimation have yielded promising results, however the reliability of these techniques have yet to supersede invasive methods of ICP measurement. Over several publications, we described a novel imaging method of Modified Photoplethysmography in the evaluation of the retinal vascular pulse parameters decomposed in the Fourier domain, which enables computationally efficient information filtering of the retinal vascular pulse wave. We applied this method in a population of 21 subjects undergoing lumbar puncture manometry. A regression model was derived by applying an Extreme Gradient Boost (XGB) machine learning algorithm using retinal vascular pulse harmonic regression waveform amplitude (HRW(a)), first and second harmonic cosine and sine coefficients (a(n1,2), b(n1,2)) among other features. Gain and SHapley Additive exPlanation (SHAP) values ranked feature importance in the model. Agreement between the predicted ICP mean, median and peak density with measured ICP was assessed using Bland-Altman bias±standard error. Feature gain of intraocular pressure (IOP(i)) (arterial = 0.6092, venous = 0.5476), and of the Fourier coefficients, a(n1) (arterial = 0.1000, venous = 0.1024) ranked highest in the XGB model for both vascular systems. The arterial model SHAP values demonstrated the importance of the laterality of the tested eye (1.2477), which was less prominent in the venous model (0.8710). External validation was achieved using seven hold-out test cases, where the median venous predicted ICP showed better agreement with measured ICP. Although the Bland-Altman bias from the venous model (0.034±1.8013 cm water (p<0.99)) was lower compared to that of the arterial model (0.139±1.6545 cm water (p<0.94)), the arterial model provided a potential avenue for internal validation of the prediction. This approach can potentially be integrated into a neurological clinical decision algorithm to evaluate the indication for lumbar puncture. Public Library of Science 2022-09-29 /pmc/articles/PMC9521929/ /pubmed/36174066 http://dx.doi.org/10.1371/journal.pone.0275417 Text en © 2022 Abdul-Rahman et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Abdul-Rahman, Anmar
Morgan, William
Yu, Dao-Yi
A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title_full A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title_fullStr A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title_full_unstemmed A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title_short A machine learning approach in the non-invasive prediction of intracranial pressure using Modified Photoplethysmography
title_sort machine learning approach in the non-invasive prediction of intracranial pressure using modified photoplethysmography
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9521929/
https://www.ncbi.nlm.nih.gov/pubmed/36174066
http://dx.doi.org/10.1371/journal.pone.0275417
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