Unsupervised Learning‐Based Measurement of Ultrasonic Axial Transmission Velocity in Neonatal Bone

Objectives To develop a robust algorithm for estimating ultrasonic axial transmission velocity from neonatal tibial bone, and to investigate the relationships between ultrasound velocity and neonatal anthropometric measurements as well as clinical biochemical markers of skeletal health. Methods This...

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Veröffentlicht in:Journal of ultrasound in medicine 2024-09, Vol.43 (9), p.1711-1722
Hauptverfasser: Li, Qing, Tran, Tho N. H. T., Guo, Jialin, Li, Boyi, Xu, Kailiang, Le, Lawrence H., Ta, Dean
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Sprache:eng
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Zusammenfassung:Objectives To develop a robust algorithm for estimating ultrasonic axial transmission velocity from neonatal tibial bone, and to investigate the relationships between ultrasound velocity and neonatal anthropometric measurements as well as clinical biochemical markers of skeletal health. Methods This study presents an unsupervised learning approach for the automatic detection of first arrival time and estimation of ultrasonic velocity from axial transmission waveforms, which potentially indicates bone quality. The proposed method combines the ReliefF algorithm and fuzzy C‐means clustering. It was first validated using an in vitro dataset measured from a Sawbones phantom. It was subsequently applied on in vivo signals collected from 40 infants, comprising 21 males and 19 females. The extracted neonatal ultrasonic velocity was subjected to statistical analysis to explore correlations with the infants' anthropometric features and biochemical indicators. Results The results of in vivo data analysis revealed significant correlations between the extracted ultrasonic velocity and the neonatal anthropometric measurements and biochemical markers. The velocity of first arrival signals showed good associations with body weight (ρ = 0.583, P value
ISSN:0278-4297
1550-9613
1550-9613
DOI:10.1002/jum.16505