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Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning

Early variations of fetal movements are the hallmark of a healthy developing central nervous system. However, there are no automatic methods to quantify the complex 3D motion of the developing fetus in utero. The aim of this prospective study was to use machine learning (ML) on in utero MRI to perfo...

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Autores principales: Vasung, Lana, Xu, Junshen, Abaci-Turk, Esra, Zhou, Cindy, Holland, Elizabeth, Barth, William H., Barnewolt, Carol, Connolly, Susan, Estroff, Judy, Golland, Polina, Feldman, Henry A., Adalsteinsson, Elfar, Grant, P. Ellen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: S. Karger AG 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10233700/
https://www.ncbi.nlm.nih.gov/pubmed/36538911
http://dx.doi.org/10.1159/000528757
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author Vasung, Lana
Xu, Junshen
Abaci-Turk, Esra
Zhou, Cindy
Holland, Elizabeth
Barth, William H.
Barnewolt, Carol
Connolly, Susan
Estroff, Judy
Golland, Polina
Feldman, Henry A.
Adalsteinsson, Elfar
Grant, P. Ellen
author_facet Vasung, Lana
Xu, Junshen
Abaci-Turk, Esra
Zhou, Cindy
Holland, Elizabeth
Barth, William H.
Barnewolt, Carol
Connolly, Susan
Estroff, Judy
Golland, Polina
Feldman, Henry A.
Adalsteinsson, Elfar
Grant, P. Ellen
author_sort Vasung, Lana
collection PubMed
description Early variations of fetal movements are the hallmark of a healthy developing central nervous system. However, there are no automatic methods to quantify the complex 3D motion of the developing fetus in utero. The aim of this prospective study was to use machine learning (ML) on in utero MRI to perform quantitative kinematic analysis of fetal limb movement, assessing the impact of maternal, placental, and fetal factors. In this cross-sectional, observational study, we used 76 sets of fetal (24–40 gestational weeks [GW]) blood oxygenation level-dependent (BOLD) MRI scans of 52 women (18–45 years old) during typical pregnancies. Pregnant women were scanned for 5–10 min while breathing room air (21% O<sub>2</sub>) and for 5–10 min while breathing 100% FiO<sub>2</sub> in supine and/or lateral position. BOLD acquisition time was 20 min in total with effective temporal resolution approximately 3 s. To quantify upper and lower limb kinematics, we used a 3D convolutional neural network previously trained to track fetal key points (wrists, elbows, shoulders, ankles, knees, hips) on similar BOLD time series. Tracking was visually assessed, errors were manually corrected, and the absolute movement time (AMT) for each joint was calculated. To identify variables that had a significant association with AMT, we constructed a mixed-model ANOVA with interaction terms. Fetuses showed significantly longer duration of limb movements during maternal hyperoxia. We also found a significant centrifugal increase of AMT across limbs and significantly longer AMT of upper extremities <31 GW and longer AMT of lower extremities >35 GW. In conclusion, using ML we successfully quantified complex 3D fetal limb motion in utero and across gestation, showing maternal factors (hyperoxia) and fetal factors (gestational age, joint) that impact movement. Quantification of fetal motion on MRI is a potential new biomarker of fetal health and neuromuscular development.
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spelling pubmed-102337002023-06-02 Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning Vasung, Lana Xu, Junshen Abaci-Turk, Esra Zhou, Cindy Holland, Elizabeth Barth, William H. Barnewolt, Carol Connolly, Susan Estroff, Judy Golland, Polina Feldman, Henry A. Adalsteinsson, Elfar Grant, P. Ellen Dev Neurosci In Tribute to Verne S. Caviness, Jr.: Research Article Early variations of fetal movements are the hallmark of a healthy developing central nervous system. However, there are no automatic methods to quantify the complex 3D motion of the developing fetus in utero. The aim of this prospective study was to use machine learning (ML) on in utero MRI to perform quantitative kinematic analysis of fetal limb movement, assessing the impact of maternal, placental, and fetal factors. In this cross-sectional, observational study, we used 76 sets of fetal (24–40 gestational weeks [GW]) blood oxygenation level-dependent (BOLD) MRI scans of 52 women (18–45 years old) during typical pregnancies. Pregnant women were scanned for 5–10 min while breathing room air (21% O<sub>2</sub>) and for 5–10 min while breathing 100% FiO<sub>2</sub> in supine and/or lateral position. BOLD acquisition time was 20 min in total with effective temporal resolution approximately 3 s. To quantify upper and lower limb kinematics, we used a 3D convolutional neural network previously trained to track fetal key points (wrists, elbows, shoulders, ankles, knees, hips) on similar BOLD time series. Tracking was visually assessed, errors were manually corrected, and the absolute movement time (AMT) for each joint was calculated. To identify variables that had a significant association with AMT, we constructed a mixed-model ANOVA with interaction terms. Fetuses showed significantly longer duration of limb movements during maternal hyperoxia. We also found a significant centrifugal increase of AMT across limbs and significantly longer AMT of upper extremities <31 GW and longer AMT of lower extremities >35 GW. In conclusion, using ML we successfully quantified complex 3D fetal limb motion in utero and across gestation, showing maternal factors (hyperoxia) and fetal factors (gestational age, joint) that impact movement. Quantification of fetal motion on MRI is a potential new biomarker of fetal health and neuromuscular development. S. Karger AG 2023-06 2022-12-20 /pmc/articles/PMC10233700/ /pubmed/36538911 http://dx.doi.org/10.1159/000528757 Text en The Author(s). Published by S. Karger AG, Basel https://creativecommons.org/licenses/by/4.0/This article is licensed under the Creative Commons Attribution 4.0 International License (CC BY). Usage, derivative works and distribution are permitted provided that proper credit is given to the author and the original publisher.
spellingShingle In Tribute to Verne S. Caviness, Jr.: Research Article
Vasung, Lana
Xu, Junshen
Abaci-Turk, Esra
Zhou, Cindy
Holland, Elizabeth
Barth, William H.
Barnewolt, Carol
Connolly, Susan
Estroff, Judy
Golland, Polina
Feldman, Henry A.
Adalsteinsson, Elfar
Grant, P. Ellen
Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title_full Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title_fullStr Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title_full_unstemmed Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title_short Cross-Sectional Observational Study of Typical in utero Fetal Movements Using Machine Learning
title_sort cross-sectional observational study of typical in utero fetal movements using machine learning
topic In Tribute to Verne S. Caviness, Jr.: Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10233700/
https://www.ncbi.nlm.nih.gov/pubmed/36538911
http://dx.doi.org/10.1159/000528757
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