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Nova · Professor Researcher · re-ranking top 20…
Daniel Bogen

Daniel Bogen

· Professor Emeritus

University of Pennsylvania · Biological Engineering

Active 1983–2023

h-index24
Citations2.3k
Papers483 last 5y
Funding
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Research topics

  • Artificial Intelligence
  • Computer Science
  • Machine Learning
  • Medicine
  • Developmental psychology
  • Physical medicine and rehabilitation
  • Communication
  • Psychology

Selected publications

  • Computer Vision to Automatically Assess Infant Neuromotor Risk

    IEEE Transactions on Neural Systems and Rehabilitation Engineering · 2020 · 109 citations

    • Computer Science
    • Artificial Intelligence
    • Machine Learning

    An infant's risk of developing neuromotor impairment is primarily assessed through visual examination by specialized clinicians. Therefore, many infants at risk for impairment go undetected, particularly in under-resourced environments. There is thus a need to develop automated, clinical assessments based on quantitative measures from widely-available sources, such as videos recorded on a mobile device. Here, we automatically extract body poses and movement kinematics from the videos of at-risk infants (N = 19). For each infant, we calculate how much they deviate from a group of healthy infants (N = 85 online videos) using a Naïve Gaussian Bayesian Surprise metric. After pre-registering our Bayesian Surprise calculations, we find that infants who are at high risk for impairments deviate considerably from the healthy group. Our simple method, provided as an open-source toolkit, thus shows promise as the basis for an automated and low-cost assessment of risk based on video recordings.

Frequent coauthors

  • David R. Naimi

    17 shared
  • Jean Bousquet

    16 shared
  • Carol A. Langford

    Cleveland Clinic

    16 shared
  • Leea Keski‐Nisula

    University of Eastern Finland

    16 shared
  • Martin Metz

    Charité - Universitätsmedizin Berlin

    16 shared
  • Deanna Shenaq

    University of Chicago

    16 shared
  • Harold S. Nelson

    National Jewish Health

    16 shared
  • Andrea Apter

    University of Pennsylvania

    16 shared

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