Background: Dermoscopy is commonly used for the evaluation of pigmented lesions, but agreement between experts for identification of dermoscopic structures is known to be relatively poor. Expert labeling of medical data is a bottleneck in the development of machine learning (ML) tools, and crowdsourcing has been demonstrated as a cost- and time-efficient method for the annotation of medical images. Objective: The aim of this study is to demonstrate that crowdsourcing can be used to label basic dermoscopic structures from images of pigmented lesions with similar reliability to a group of experts. Methods: First, we obtained labels of 248 images of melanocytic lesions with 31 dermoscopic “subfeatures” labeled by 20 dermoscopy experts. These w...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Classifiers for medical image analysis are often trained with a single consensus label, based on com...
Background: Early detection of melanoma can be lifesaving but this remains a challenge. Recent diagn...
Background: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accuratel...
BACKGROUND: Dermoscopy improves diagnostic accuracy of the unaided eye for melanoma, and digital der...
Introduction: Artificial intelligence is widely used in various _elds of medicine. It also has great...
WOS: 000182977200004PubMed ID: 12734496Background: There is a need for better standardization of the...
Background: There is a need for better standardization of the dermoscopic terminology in assessing p...
28siBACKGROUND: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accu...
Background: There is a need for better standardization of the dermoscopic terminology in assessing p...
Background: Several recent publications have demonstrated the use of convolutional neural networks t...
Background: Recent studies have successfully demonstrated the use of deep-learning algorithms for de...
While artificial intelligence (AI) holds promise for supporting healthcare providers and improving t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Classifiers for medical image analysis are often trained with a single consensus label, based on com...
Background: Early detection of melanoma can be lifesaving but this remains a challenge. Recent diagn...
Background: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accuratel...
BACKGROUND: Dermoscopy improves diagnostic accuracy of the unaided eye for melanoma, and digital der...
Introduction: Artificial intelligence is widely used in various _elds of medicine. It also has great...
WOS: 000182977200004PubMed ID: 12734496Background: There is a need for better standardization of the...
Background: There is a need for better standardization of the dermoscopic terminology in assessing p...
28siBACKGROUND: Whether machine-learning algorithms can diagnose all pigmented skin lesions as accu...
Background: There is a need for better standardization of the dermoscopic terminology in assessing p...
Background: Several recent publications have demonstrated the use of convolutional neural networks t...
Background: Recent studies have successfully demonstrated the use of deep-learning algorithms for de...
While artificial intelligence (AI) holds promise for supporting healthcare providers and improving t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Background: Dermoscopy has been shown to enhance the diagnosis of melanoma. However, use of dermosco...
Classifiers for medical image analysis are often trained with a single consensus label, based on com...