Toward an Automatic System for Computer-Aided Assessment in Facial Palsy
Diego L. Guarin, Yana Yunusova, Babak Taati, Joseph R Dusseldorp,, Suresh Mohan, Joana Tavares, Martinus M. van Veen, Emily Fortier, Tessa A., Hadlock, and Nate Jowett

TL;DR
This paper develops a machine learning system for accurate facial landmark detection in facial palsy patients, demonstrating improved performance with disease-specific training data, advancing automated facial assessment in clinical settings.
Contribution
The study introduces a novel ML model trained on a small, disease-specific dataset, significantly enhancing landmark localization accuracy in facial palsy patients compared to models trained on healthy faces.
Findings
Retraining with clinical images improves accuracy.
Disease-specific training outperforms general models.
First step towards automated facial palsy assessment.
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…
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