DeepSmile: Anomaly Detection Software for Facial Movement Assessment.
Eder Alejandro Rodriguez MartinezOlga PolezhaevaFélix MarcellinÉmilien ColinLisa BoyavalFrançois-Régis SarhanStéphanie DakpéPublished in: Diagnostics (Basel, Switzerland) (2023)
Facial movements are crucial for human interaction because they provide relevant information on verbal and non-verbal communication and social interactions. From a clinical point of view, the analysis of facial movements is important for diagnosis, follow-up, drug therapy, and surgical treatment. Current methods of assessing facial palsy are either (i) objective but inaccurate, (ii) subjective and, thus, depending on the clinician's level of experience, or (iii) based on static data. To address the aforementioned problems, we implemented a deep learning algorithm to assess facial movements during smiling. Such a model was trained on a dataset that contains healthy smiles only following an anomaly detection strategy. Generally speaking, the degree of anomaly is computed by comparing the model's suggested healthy smile with the person's actual smile. The experimentation showed that the model successfully computed a high degree of anomaly when assessing the patients' smiles. Furthermore, a graphical user interface was developed to test its practical usage in a clinical routine. In conclusion, we present a deep learning model, implemented on open-source software, designed to help clinicians to assess facial movements.
Keyphrases
- deep learning
- soft tissue
- end stage renal disease
- endothelial cells
- working memory
- healthcare
- chronic kidney disease
- newly diagnosed
- stem cells
- convolutional neural network
- palliative care
- emergency department
- prognostic factors
- ejection fraction
- peritoneal dialysis
- artificial intelligence
- electronic health record
- big data
- mesenchymal stem cells
- data analysis
- sleep quality
- smoking cessation
- patient reported outcomes
- patient reported