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Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †

Objective: To test the potential utility of applying machine learning methods to regional cerebral (rcSO(2)) and peripheral oxygen saturation (SpO(2)) signals to detect brain injury in extremely preterm infants. Study design: A subset of infants enrolled in the Management of Hypotension in Preterm i...

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Autores principales: Ashoori, Minoo, O’Toole, John M., O’Halloran, Ken D., Naulaers, Gunnar, Thewissen, Liesbeth, Miletin, Jan, Cheung, Po-Yin, EL-Khuffash, Afif, Van Laere, David, Straňák, Zbyněk, Dempsey, Eugene M., McDonald, Fiona B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10297241/
https://www.ncbi.nlm.nih.gov/pubmed/37371150
http://dx.doi.org/10.3390/children10060917
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author Ashoori, Minoo
O’Toole, John M.
O’Halloran, Ken D.
Naulaers, Gunnar
Thewissen, Liesbeth
Miletin, Jan
Cheung, Po-Yin
EL-Khuffash, Afif
Van Laere, David
Straňák, Zbyněk
Dempsey, Eugene M.
McDonald, Fiona B.
author_facet Ashoori, Minoo
O’Toole, John M.
O’Halloran, Ken D.
Naulaers, Gunnar
Thewissen, Liesbeth
Miletin, Jan
Cheung, Po-Yin
EL-Khuffash, Afif
Van Laere, David
Straňák, Zbyněk
Dempsey, Eugene M.
McDonald, Fiona B.
author_sort Ashoori, Minoo
collection PubMed
description Objective: To test the potential utility of applying machine learning methods to regional cerebral (rcSO(2)) and peripheral oxygen saturation (SpO(2)) signals to detect brain injury in extremely preterm infants. Study design: A subset of infants enrolled in the Management of Hypotension in Preterm infants (HIP) trial were analysed (n = 46). All eligible infants were <28 weeks’ gestational age and had continuous rcSO(2) measurements performed over the first 72 h and cranial ultrasounds performed during the first week after birth. SpO(2) data were available for 32 infants. The rcSO(2) and SpO(2) signals were preprocessed, and prolonged relative desaturations (PRDs; data-driven desaturation in the 2-to-15-min range) were extracted. Numerous quantitative features were extracted from the biosignals before and after the exclusion of the PRDs within the signals. PRDs were also evaluated as a stand-alone feature. A machine learning model was used to detect brain injury (intraventricular haemorrhage-IVH grade II–IV) using a leave-one-out cross-validation approach. Results: The area under the receiver operating characteristic curve (AUC) for the PRD rcSO(2) was 0.846 (95% CI: 0.720–0.948), outperforming the rcSO(2) threshold approach (AUC 0.593 95% CI 0.399–0.775). Neither the clinical model nor any of the SpO(2) models were significantly associated with brain injury. Conclusion: There was a significant association between the data-driven definition of PRDs in rcSO(2) and brain injury. Automated analysis of PRDs of the cerebral NIRS signal in extremely preterm infants may aid in better prediction of IVH compared with a threshold-based approach. Further investigation of the definition of the extracted PRDs and an understanding of the physiology underlying these events are required.
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spelling pubmed-102972412023-06-28 Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants † Ashoori, Minoo O’Toole, John M. O’Halloran, Ken D. Naulaers, Gunnar Thewissen, Liesbeth Miletin, Jan Cheung, Po-Yin EL-Khuffash, Afif Van Laere, David Straňák, Zbyněk Dempsey, Eugene M. McDonald, Fiona B. Children (Basel) Article Objective: To test the potential utility of applying machine learning methods to regional cerebral (rcSO(2)) and peripheral oxygen saturation (SpO(2)) signals to detect brain injury in extremely preterm infants. Study design: A subset of infants enrolled in the Management of Hypotension in Preterm infants (HIP) trial were analysed (n = 46). All eligible infants were <28 weeks’ gestational age and had continuous rcSO(2) measurements performed over the first 72 h and cranial ultrasounds performed during the first week after birth. SpO(2) data were available for 32 infants. The rcSO(2) and SpO(2) signals were preprocessed, and prolonged relative desaturations (PRDs; data-driven desaturation in the 2-to-15-min range) were extracted. Numerous quantitative features were extracted from the biosignals before and after the exclusion of the PRDs within the signals. PRDs were also evaluated as a stand-alone feature. A machine learning model was used to detect brain injury (intraventricular haemorrhage-IVH grade II–IV) using a leave-one-out cross-validation approach. Results: The area under the receiver operating characteristic curve (AUC) for the PRD rcSO(2) was 0.846 (95% CI: 0.720–0.948), outperforming the rcSO(2) threshold approach (AUC 0.593 95% CI 0.399–0.775). Neither the clinical model nor any of the SpO(2) models were significantly associated with brain injury. Conclusion: There was a significant association between the data-driven definition of PRDs in rcSO(2) and brain injury. Automated analysis of PRDs of the cerebral NIRS signal in extremely preterm infants may aid in better prediction of IVH compared with a threshold-based approach. Further investigation of the definition of the extracted PRDs and an understanding of the physiology underlying these events are required. MDPI 2023-05-23 /pmc/articles/PMC10297241/ /pubmed/37371150 http://dx.doi.org/10.3390/children10060917 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ashoori, Minoo
O’Toole, John M.
O’Halloran, Ken D.
Naulaers, Gunnar
Thewissen, Liesbeth
Miletin, Jan
Cheung, Po-Yin
EL-Khuffash, Afif
Van Laere, David
Straňák, Zbyněk
Dempsey, Eugene M.
McDonald, Fiona B.
Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title_full Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title_fullStr Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title_full_unstemmed Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title_short Machine Learning Detects Intraventricular Haemorrhage in Extremely Preterm Infants †
title_sort machine learning detects intraventricular haemorrhage in extremely preterm infants †
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10297241/
https://www.ncbi.nlm.nih.gov/pubmed/37371150
http://dx.doi.org/10.3390/children10060917
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