PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individuals in the online community who have no formal training. Our aim was to develop a novel online tool designed to facilitate large-scale annotation of digital retinal images, and to assess the accuracy of crowdsource grading using this tool, comparing it to expert classification.METHODS: We used 100 retinal fundus photograph images with predetermined disease criteria selected by two experts from a large cohort study. The Amazon Mechanical Turk Web platform was used to drive traffic to our site so anonymous workers could perform a classification and annotation task of the fundus photographs in our dataset after a short training exercise. Three gr...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
We describe the development of web-based software that facilitates large-scale, crowdsourced image e...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
Crowdsourcing is the process of outsourcing numerous tasks to many untrained individuals. Our aim wa...
Crowdsourcing is the process of outsourcing numerous tasks to many untrained individuals. Our aim wa...
Abstract — Medical data presents a number of challenges. It tends to be unstructured, noisy and prot...
Crowdsourcing is the process of simplifying and outsourcing numerous tasks to many untrained individ...
Medical data presents a number of challenges. It tends to be unstructured, noisy and protected. To t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Accurate annotations of medical images are essential for various clinical applications. The remarkab...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
Altres ajuts: acord transformatiu CRUE-CSICPurpose: This study aims to evaluate the ability of an au...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
We describe the development of web-based software that facilitates large-scale, crowdsourced image e...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
PURPOSE: Crowdsourcing is based on outsourcing computationally intensive tasks to numerous individua...
Crowdsourcing is the process of outsourcing numerous tasks to many untrained individuals. Our aim wa...
Crowdsourcing is the process of outsourcing numerous tasks to many untrained individuals. Our aim wa...
Abstract — Medical data presents a number of challenges. It tends to be unstructured, noisy and prot...
Crowdsourcing is the process of simplifying and outsourcing numerous tasks to many untrained individ...
Medical data presents a number of challenges. It tends to be unstructured, noisy and protected. To t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Accurate annotations of medical images are essential for various clinical applications. The remarkab...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
Altres ajuts: acord transformatiu CRUE-CSICPurpose: This study aims to evaluate the ability of an au...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
We describe the development of web-based software that facilitates large-scale, crowdsourced image e...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...