AI Article Synopsis

  • A consistent blood supply to the brain is essential for cognitive function, and there is potential for using Doppler ultrasonography combined with machine learning to better understand cerebrovascular health, especially in children.
  • The study aims to analyze blood flow dynamics in three key arteries across different ages and genders, while also developing machine learning models to predict and classify age groups based on ultrasound data.
  • Findings indicate that blood velocities decline with age, with certain similarities between genders and hemispheres. Machine learning models successfully distinguish between children and adults, highlighting that blood velocities are more crucial than vessel diameters in age classification.

Article Abstract

A constant blood supply to the brain is required for mental function. Research with Doppler ultrasonography has important clinical value and burgeoning potential with machine learning applications in studies predicting gestational age and vascular aging. Critically, studies on ultrasound metrics in school-age children are sparse and no machine learning study to date has used color duplex ultrasonography to predict age and classify age-group. The purpose of our study is two-fold: first to document cerebrovascular hemodynamics considering age, gender, and hemisphere in three arteries; and second to construct machine learning models that can predict and classify the age and age-group of a participant using ultrasonography metrics. We record peak systolic, end-diastolic, and time-averaged maximum velocities bilaterally in internal carotid, vertebral, and middle cerebral arteries from 821 participants. Results confirm that ultrasonography values decrease with age and reveal that gender and hemispheres show more similarities than differences, which depend on age, artery, and metric. Machine learning algorithms predict age and classifier models distinguish cerebrovascular hemodynamics between children and adults. Blood velocities, rather than blood vessel diameters, are more important for classifier models, and common and distinct variables contribute to age classification models for males and females.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8815867PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0263106PLOS

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