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Toward an Automatic System for Computer-Aided Assessment in Facial Palsy (1910.11497v1)

Published 25 Oct 2019 in cs.CV and eess.IV

Abstract: Importance: Machine learning (ML) approaches to facial landmark localization carry great clinical potential for quantitative assessment of facial function as they enable high-throughput automated quantification of relevant facial metrics from photographs. However, translation from research settings to clinical applications requires important improvements. Objective: To develop an ML algorithm for accurate facial landmarks localization in photographs of facial palsy patients, and use it as part of an automated computer-aided diagnosis system. Design, Setting, and Participants: Facial landmarks were manually localized in portrait photographs of eight expressions obtained from 200 facial palsy patients and 10 controls. A novel ML model for automated facial landmark localization was trained using this disease-specific database. Model output was compared to manual annotations and the output of a model trained using a larger database consisting only of healthy subjects. Model accuracy was evaluated by the normalized root mean square error (NRMSE) between algorithms' prediction and manual annotations. Results: Publicly available algorithms provide poor results when applied to patients compared to healthy controls (NRMSE, 8.56 +/- 2.16 vs. 7.09 +/- 2.34, p << 0.01). We found significant improvement in facial landmark localization accuracy for the clinical population when using a model trained with a relatively small number patients' photographs (1440) compared to a model trained using several thousand more images of healthy faces (NRMSE, 6.03 +/- 2.43 vs. 8.56 +/- 2.16, p << 0.01). Conclusions: Retraining a landmark detection model with a small number of clinical images significantly improved landmark detection performance in frontal view photographs of the clinical population. These results represent the first steps towards an automatic system for computer-aided assessment in facial palsy.

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Authors (10)
  1. Diego L. Guarin (4 papers)
  2. Yana Yunusova (4 papers)
  3. Babak Taati (27 papers)
  4. Joseph R Dusseldorp (1 paper)
  5. Suresh Mohan (1 paper)
  6. Joana Tavares (1 paper)
  7. Martinus M. van Veen (1 paper)
  8. Emily Fortier (1 paper)
  9. Tessa A. Hadlock (1 paper)
  10. Nate Jowett (1 paper)
Citations (47)