Background: The use of different imaging modalities to assist in skin cancer diagnosis is a common practice in clinical scenarios. Different features representative of the lesion under evaluation can be retrieved from image analysis and processing. However, the integration and understanding of these additional parameters can be a challenging task for physicians, so artificial intelligence (AI) methods can be implemented to assist in this process. This bibliographic research was performed with the goal of assessing the current applications of AI algorithms as an assistive tool in skin cancer diagnosis, based on information retrieved from different imaging modalities. Materials and methods: The bibliography databases ISI Web of Scienc...
This research has shown that features extracted from color skin tumor images by computer vision meth...
Image-based computer aided diagnosis systems have significant potential for screening and early dete...
Background: In recent studies, convolutional neural networks (CNNs) outperformed dermatologists in d...
The usage of expert systems to aid in medical decisions has been employed since 1980s in distinct ap...
Skin cancer continues to remain one of the major healthcare issues across the globe. If diagnosed ea...
In the past, the skills required to make an accurate dermatological diagnosis have required exposure...
Artificial intelligence (AI) based on machine learning and convolutional neuron networks (CNN) is ra...
Trabalho Final do Curso de Mestrado Integrado em Medicina, Faculdade de Medicina, Universidade de Li...
Skin cancer is caused by reasons such as unhealthy life style, air pollution, UV radiation, etc. Var...
Skin cancer, previously known to be a common disease in Western countries, is becoming more common i...
Introduction: Cutaneous neoplasms are the most common cancers in the world, and have high morbidity ...
Previous research articles have covered several methods used for identifying and categorizing malign...
The growing incidence of skin cancers, coupled with low awareness among the population fuels interes...
Skin cancers occur commonly worldwide. The prognosis and disease burden are highly dependent on the ...
Image-based computer aided diagnosis systems have significant potential for screening and early dete...
This research has shown that features extracted from color skin tumor images by computer vision meth...
Image-based computer aided diagnosis systems have significant potential for screening and early dete...
Background: In recent studies, convolutional neural networks (CNNs) outperformed dermatologists in d...
The usage of expert systems to aid in medical decisions has been employed since 1980s in distinct ap...
Skin cancer continues to remain one of the major healthcare issues across the globe. If diagnosed ea...
In the past, the skills required to make an accurate dermatological diagnosis have required exposure...
Artificial intelligence (AI) based on machine learning and convolutional neuron networks (CNN) is ra...
Trabalho Final do Curso de Mestrado Integrado em Medicina, Faculdade de Medicina, Universidade de Li...
Skin cancer is caused by reasons such as unhealthy life style, air pollution, UV radiation, etc. Var...
Skin cancer, previously known to be a common disease in Western countries, is becoming more common i...
Introduction: Cutaneous neoplasms are the most common cancers in the world, and have high morbidity ...
Previous research articles have covered several methods used for identifying and categorizing malign...
The growing incidence of skin cancers, coupled with low awareness among the population fuels interes...
Skin cancers occur commonly worldwide. The prognosis and disease burden are highly dependent on the ...
Image-based computer aided diagnosis systems have significant potential for screening and early dete...
This research has shown that features extracted from color skin tumor images by computer vision meth...
Image-based computer aided diagnosis systems have significant potential for screening and early dete...
Background: In recent studies, convolutional neural networks (CNNs) outperformed dermatologists in d...