Peer-reviewed research record.
Selected publications spanning surgical ergonomics, clinical motion analysis, machine learning applications in acute care, and human factors research. Full publication list maintained on Google Scholar.
publications
citations
Selected publications
Reverse chronological. For complete list including conference proceedings, book chapters, and technical reports, see Google Scholar.
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Matovu, R. & Ohu, I. (2024). DeepPayAuth: User Authentication in Mobile Payments Using Smartwatch Motion Sensors. Science and Information Conference.
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Matovu, R. & Ohu, I. (2024). Automatic Glottic Opening Segmentation in Endotracheal Intubation Using Deep Learning. IISE Annual Conference.
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Lim, C., Ko, H.S., Cho, S., Ohu, I., Wang, H.E., et al. (2021). Development of a hand motion-based assessment system for endotracheal intubation training. Journal of Medical Systems, 45(8), 81.
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Ohu, I., Benny, P.K., Rodrigues, S., & Carlson, J.N. (2020). Applications of machine learning in acute care research. JACEP Open, 1(5), 766–772.
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Ohu, I.P., Carlson, J.N., & Piovesan, D. (2020). The Hurst exponent: A novel approach for assessing focus during trauma resuscitation. Signal Processing in Medicine and Biology.
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Ohu, I.P., Cho, S., Carlson, J.N., & Wang, H.E. (2020). Preliminary experience with inertial movement technology to characterize endotracheal intubation kinematics. Simulation in Healthcare, 15(6), 409–415.
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Ohu, I., Cho, S., Ko, H.S., & Wang, H.E. (2020). Multi-sensor feature integration for assessment of endotracheal intubation. Journal of Medical and Biological Engineering, 40(4), 588–598.
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Ohu, I., Cho, S., Kim, J.H., & Wang, H.E. (2019). Development of classification models for assessment of endotracheal intubation training by cyber-physical system. Procedia Manufacturing, 39, 1346–1352.
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Ohu, I. & Cho, S. (2015). Analysis of surgical motions in minimally invasive surgery using complexity theory. International Journal of Biomedical Engineering and Technology, 17(2), 105–120.
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Zihni, A.M., Ohu, I., Cavallo, J.A., Cho, S., & Awad, M.M. (2014). Ergonomic analysis of robot-assisted and traditional laparoscopic procedures. Surgical Endoscopy, 28(12), 3379–3384.
Research themes
Motion-based assessment of clinical performance. Development of motion-capture, inertial-sensor, and machine-learning approaches for objective assessment of surgical and resuscitation skills — supported by ~$425K in American Heart Association funding.
Surgical ergonomics. Comparative ergonomic studies of robotic and laparoscopic surgical workflows; cognitive-load analysis in operating room contexts.
Machine learning in acute care. Applications of supervised and deep-learning methods to clinical performance datasets, including automatic glottic opening segmentation in intubation video.
Statistical methodology for performance assessment. Application of nonlinear dynamics — Hurst exponent, recurrence quantification analysis — to clinician performance datasets.