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COVID-19 is a highly contagious disease that was first identified in 2019, and has since taken more than six million lives world wide till date, while also causing considerable economic, social, cultural and political turmoil. As a way to limit its spread, the World Health Organization and medical experts have advised properly wearing face masks, social distancing and hand sanitization, besides vaccination. However, people wear masks sometimes uncovering their mouths and/or noses consciously or unconsciously, thereby lessening the effectiveness of the protection they provide. A system capable of automatic recognition of face mask position could alert and ensure that an individual is wearing a mask properly before entering a crowded public area and putting themselves and others at risk. We first develop and publicly release a dataset of face mask images, which are collected from 391 individuals of different age groups and gender. Then, we study six different architectures of pre-trained deep learning models, and finally propose a model developed by fine tuning the pre-trained state of the art MobileNet model. We evaluate the performance (accuracy, F1-score, and Cohen's Kappa) of this model on the proposed dataset and MaskedFace-Net, a publicly available synthetic dataset created by image editing. Its performance is also compared to other existing methods. The proposed MobileNet is found as the best model providing an accuracy, F1-score, and Cohen's Kappa of 99.23%, 99.22%, and 99.19%, respectively for face mask position recognition. It outperforms the accuracy of the best existing model by about 2%. Finally, an automatic face mask position recognition system has been developed, which can recognize if an individual is wearing a mask correctly or incorrectly. The proposed model performs very well with no drop in recognition accuracy from real images captured by a camera.
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http://dx.doi.org/10.1016/j.smhl.2023.100382 | DOI Listing |
Ann Palliat Med
September 2025
Department of Palliative Care, Rehabilitation and Integrative Medicine, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Background: Delirium is a common condition at the end of life and causes significant distress in patients and their loved ones. A precipitant factor can be found in less than half of the patients and the management interventions are limited.
Case Description: A patient in his late sixties with low English proficiency with a metastatic neuroendocrine tumor was transferred to a palliative care unit on non-invasive bilevel ventilation.
Clin Exp Optom
September 2025
Department of Vitreoretinal Diseases, Sankara Nethralaya, Chennai, India.
Clinical Relevance: Dry eye disease (DED) is associated with use of video screen based gadgets and long hours spent looking through microscopes. Use of 3D goggles to view 3D screens leads to eye strain and worsening of dry eye symptoms. It is important to identify and treat the symptoms in professions carrying a high risk of DED.
View Article and Find Full Text PDFRespir Care
September 2025
Dr. Thomasian and Prof. Wunsch are affiliated with Department of Anesthesiology, Weill Cornell Medicine, New York, New York, USA.
Negative-pressure ventilation (NPV) is a form of noninvasive respiratory support in which an external subatmospheric pressure is applied to the thorax to facilitate lung expansion. Although largely supplanted by positive-pressure ventilation (PPV) in modern-day practice, NPV has garnered renewed interest as a potential noninvasive adjunct or alternative to PPV. Appropriate patient selection would be key, particularly in the ICU setting, where NPV is generally contraindicated in patients with severe upper airway obstruction, high oxygenation requirements, or absent airway reflexes.
View Article and Find Full Text PDFPLoS One
September 2025
Department of Psychology & Sociology, Texas A&M University - Corpus Christi, Corpus Christi, Texas, United States of America.
While the use of personal protective equipment protects healthcare workers against transmissible disease, it also obscures the lower facial regions that are vital for transmitting emotion signals. Previous studies have found that face coverings can impair recognition of emotional expressions, particularly those that rely on signals from the lower regions of the face, such as disgust. Recent research on the individual differences that may influence expression recognition, such as emotional intelligence, has shown mixed results.
View Article and Find Full Text PDFInt J Dermatol
July 2025
Brigham and Women's Hospital, Boston, Massachusetts, USA.