While artificial intelligence (AI) holds promise for supporting healthcare providers and improving the accuracy of medical diagnoses, a lack of transparency in the composition of datasets exposes AI models to the possibility of unintentional and avoidable mistakes. In particular, public and private image datasets of dermatological conditions rarely include information on skin color. As a start towards increasing transparency, AI researchers have appropriated the use of the Fitzpatrick skin type (FST) from a measure of patient photosensitivity to a measure for estimating skin tone in algorithmic audits of computer vision applications including facial recognition and dermatology diagnosis. In order to understand the variability of estimated F...
Background: Several recent publications have demonstrated the use of convolutional neural networks t...
More than 3 billion people lack access to care for skin disease. AI diagnostic tools may aid in earl...
Artificial intelligence (AI) algorithms for automated classification of skin diseases are available ...
Access to dermatological care is a major issue, with an estimated 3 billion people lacking access to...
Deep learning techniques for skin cancer diagnostics are evolving, with potential for rapid diagnosi...
Dermatological classification algorithms developed without sufficiently diverse training data may ge...
Background Artificial intelligence (AI) techniques are promising in early diagnosis of skin diseases...
Worldwide, it is believed that there are between 1000 to 2000 skin conditions of which 20 % are diff...
Most skin image-based artificial intelligence (AI) systems are trained on publicly available dataset...
Artificial intelligence (AI) based on machine learning and convolutional neuron networks (CNN) is ra...
Background: Dermoscopy is commonly used for the evaluation of pigmented lesions, but agreement betwe...
In medicine, dermatology is a promising pioneer for the use of artificial intelligence (AI). In derm...
Background: Computer vision has promise in image-based cutaneous melanoma diagnosis but clinical uti...
Background: Thanks to the rapid development of computer-based systems and deep-learning-based algori...
Background: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accuratel...
Background: Several recent publications have demonstrated the use of convolutional neural networks t...
More than 3 billion people lack access to care for skin disease. AI diagnostic tools may aid in earl...
Artificial intelligence (AI) algorithms for automated classification of skin diseases are available ...
Access to dermatological care is a major issue, with an estimated 3 billion people lacking access to...
Deep learning techniques for skin cancer diagnostics are evolving, with potential for rapid diagnosi...
Dermatological classification algorithms developed without sufficiently diverse training data may ge...
Background Artificial intelligence (AI) techniques are promising in early diagnosis of skin diseases...
Worldwide, it is believed that there are between 1000 to 2000 skin conditions of which 20 % are diff...
Most skin image-based artificial intelligence (AI) systems are trained on publicly available dataset...
Artificial intelligence (AI) based on machine learning and convolutional neuron networks (CNN) is ra...
Background: Dermoscopy is commonly used for the evaluation of pigmented lesions, but agreement betwe...
In medicine, dermatology is a promising pioneer for the use of artificial intelligence (AI). In derm...
Background: Computer vision has promise in image-based cutaneous melanoma diagnosis but clinical uti...
Background: Thanks to the rapid development of computer-based systems and deep-learning-based algori...
Background: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accuratel...
Background: Several recent publications have demonstrated the use of convolutional neural networks t...
More than 3 billion people lack access to care for skin disease. AI diagnostic tools may aid in earl...
Artificial intelligence (AI) algorithms for automated classification of skin diseases are available ...