Ameur Soualmi, Olivier Alata, Christophe Ducottet, Anne Petitjean-Robert, Aurélie Plat, Hugues Patural, Antoine Giraud
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引用次数: 0
摘要
一般运动评估(GMA)是一种有效的大脑成熟评估,对塑造早产儿早期个体发展轨迹至关重要。为了确保可靠的GMA,早产儿应记录30 - 60分钟,然后手动选择至少三个一般动作序列。手动从冗长的录像中选择短视频序列这一耗时的任务阻碍了其在新生儿病房的实施。此外,一个准确的早产儿姿态估计工具对GMA自动化领域的发展至关重要。我们引入了AGMA Pose Estimator and Sequence Selector (AGMA- pess)软件,基于最先进的深度学习婴儿姿势估计网络,自动选择早产儿和扭体年龄的GMA视频序列,并在2D中估计婴儿的姿势。它的简单和高效使AGMA-PESS有价值的工具,以促进GMA在新生儿单位使用,无论是临床实践和研究目的。
AGMA-PESS: a deep learning-based infant pose estimator and sequence selector software for general movement assessment.
The General Movement Assessment (GMA) is a validated evaluation of brain maturation essential to shaping early individual developmental trajectories of preterm infants. To ensure a reliable GMA, preterm infants should be recorded for 30 to 60 min before manually selecting at least three sequences with general movements. This time-consuming task of manually selecting short video sequences from lengthy recordings impedes its implementation within the Neonatal Unit. Moreover, an accurate pose estimation tool for preterm infants is paramount to developing the field of GMA automation. We introduce the AGMA Pose Estimator and Sequence Selector (AGMA-PESS) software, based on the state-of-the-art deep learning infant pose estimation network, to automatically select the video sequences for GMA at preterm and writhing ages and estimate the pose of infants in 2D. Its simplicity and efficiency make AGMA-PESS a valuable tool to promote GMA use within the Neonatal Unit, both for clinical practice and research purposes.
期刊介绍:
Frontiers in Pediatrics (Impact Factor 2.33) publishes rigorously peer-reviewed research broadly across the field, from basic to clinical research that meets ongoing challenges in pediatric patient care and child health. Field Chief Editors Arjan Te Pas at Leiden University and Michael L. Moritz at the Children''s Hospital of Pittsburgh are supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.
Frontiers in Pediatrics also features Research Topics, Frontiers special theme-focused issues managed by Guest Associate Editors, addressing important areas in pediatrics. In this fashion, Frontiers serves as an outlet to publish the broadest aspects of pediatrics in both basic and clinical research, including high-quality reviews, case reports, editorials and commentaries related to all aspects of pediatrics.